<?xml version="1.0" encoding="UTF-8"?><!DOCTYPE article  PUBLIC "-//NLM//DTD Journal Publishing DTD v3.0 20080202//EN" "http://dtd.nlm.nih.gov/publishing/3.0/journalpublishing3.dtd"><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" dtd-version="3.0" xml:lang="en" article-type="research article"><front><journal-meta><journal-id journal-id-type="publisher-id">OJS</journal-id><journal-title-group><journal-title>Open Journal of Statistics</journal-title></journal-title-group><issn pub-type="epub">2161-718X</issn><publisher><publisher-name>Scientific Research Publishing</publisher-name></publisher></journal-meta><article-meta><article-id pub-id-type="doi">10.4236/ojs.2015.57083</article-id><article-id pub-id-type="publisher-id">OJS-62414</article-id><article-categories><subj-group subj-group-type="heading"><subject>Articles</subject></subj-group><subj-group subj-group-type="Discipline-v2"><subject>Physics&amp;Mathematics</subject></subj-group></article-categories><title-group><article-title>
 
 
  Semiparametric Estimation of Multivariate GARCH Models
 
</article-title></title-group><contrib-group><contrib contrib-type="author" xlink:type="simple"><name name-style="western"><surname>laudio</surname><given-names>Morana</given-names></name><xref ref-type="aff" rid="aff1"><sub>1</sub></xref><xref ref-type="corresp" rid="cor1"><sup>*</sup></xref></contrib></contrib-group><aff id="aff1"><label>1</label><addr-line>Department of Economics, Management and Statistics, University of Milan-Bicocca, Milan, Italy</addr-line></aff><author-notes><corresp id="cor1">* E-mail:<email>claudio.morana@unimib.it</email></corresp></author-notes><pub-date pub-type="epub"><day>11</day><month>12</month><year>2015</year></pub-date><volume>05</volume><issue>07</issue><fpage>852</fpage><lpage>858</lpage><history><date date-type="received"><day>30</day>	<month>November</month>	<year>2015</year></date><date date-type="rev-recd"><day>accepted</day>	<month>27</month>	<year>December</year>	</date><date date-type="accepted"><day>30</day>	<month>December</month>	<year>2015</year></date></history><permissions><copyright-statement>&#169; Copyright  2014 by authors and Scientific Research Publishing Inc. </copyright-statement><copyright-year>2014</copyright-year><license><license-p>This work is licensed under the Creative Commons Attribution International License (CC BY). http://creativecommons.org/licenses/by/4.0/</license-p></license></permissions><abstract><p>
 
 
   The paper introduces a new simple semiparametric estimator of the conditional variance-covariance and correlation matrix (SP-DCC). While sharing a similar sequential approach to existing dynamic conditional correlation (DCC) methods, SP-DCC has the advantage of not requiring the direct parameterization of the conditional covariance or correlation processes, therefore also avoiding any assumption on their long-run target. In the proposed framework, conditional variances are estimated by univariate GARCH models, for actual and suitably transformed series, in the first step; the latter are then nonlinearly combined in the second step, according to basic properties of the covariance and correlation operator, to yield nonparametric estimates of the various conditional covariances and correlations. Moreover, in contrast to available DCC methods, SP-DCC allows for straightforward estimation also for the non-symultaneous case, i.e. for the estimation of conditional cross-covariances and correlations, displaced at any time horizon of interest. A simple expost procedure to ensure well behaved conditional variance-covariance and correlation matrices, grounded on nonlinear shrinkage, is finally proposed. Due to its sequential implementation and scant computational burden, SP-DCC is very simple to apply and suitable for the modeling of vast sets of conditionally heteroskedastic time series. 
 
</p></abstract><kwd-group><kwd>Multivariate GARCH Model</kwd><kwd> Dynamic Conditional Correlation</kwd><kwd> Semiparametric Estimation</kwd></kwd-group></article-meta></front><body><sec id="s1"><title>1. Introduction</title><p>Since the seminal contribution of [<xref ref-type="bibr" rid="scirp.62414-ref1">1</xref>] , the literature on multivariate Generalized Autoregressive Conditional Heteroskedasticity (GARCH) models has rapidly developed (see [<xref ref-type="bibr" rid="scirp.62414-ref2">2</xref>] and [<xref ref-type="bibr" rid="scirp.62414-ref3">3</xref>] , for surveys). To date, three generations of models can be counted. First generation models, likewise the VEC model of [<xref ref-type="bibr" rid="scirp.62414-ref1">1</xref>] and the BEKK model of [<xref ref-type="bibr" rid="scirp.62414-ref4">4</xref>] , are straightforward extensions of the univariate GARCH model. They allow for very general conditional variance covariance matrix dynamics, yet at the cost of a very profligate parameterization, which limits their use to small sets of time series. This drawback has been overcome by second generation models, yet at the cost of imposing either parameter restrictions on the BEKK model, as for the case of the scalar BEKK model and the exponentially weighted moving average model introduced by [<xref ref-type="bibr" rid="scirp.62414-ref5">5</xref>] , or on the conditional correlation matrix, assumed time-invariant in the constant conditional correlation CCC model of [<xref ref-type="bibr" rid="scirp.62414-ref6">6</xref>] . Alternatively, restrictions have been imposed through factor structures, likewise [<xref ref-type="bibr" rid="scirp.62414-ref7">7</xref>] and the orthogonal models of [<xref ref-type="bibr" rid="scirp.62414-ref8">8</xref>] -[<xref ref-type="bibr" rid="scirp.62414-ref10">10</xref>] and [<xref ref-type="bibr" rid="scirp.62414-ref11">11</xref>] . On the other hand, a different approach has been pursued by the most recent third generation of multivariate GARCH models, i.e. the dynamic conditional correlation models, grounded on a two-step estimation procedure, involving the estimation of univariate GARCH models for the conditional variances in the first step and then the estimation of the conditional covariances in the second step. Although inefficient, the latter sequential procedure is consistent and asymptotically normal. Moreover, by dramatically reducing the numerical optimization burden, it can be implemented also in the case of vast sets of time series. In this respect, seminal is the Dynamic Conditional Correlation models (DCC) of [<xref ref-type="bibr" rid="scirp.62414-ref12">12</xref>] and [<xref ref-type="bibr" rid="scirp.62414-ref13">13</xref>] . Further extensions are [<xref ref-type="bibr" rid="scirp.62414-ref14">14</xref>] , the Dynamic Conditional Equi- Correlation (DECO) model of [<xref ref-type="bibr" rid="scirp.62414-ref15">15</xref>] , [<xref ref-type="bibr" rid="scirp.62414-ref16">16</xref>] and [<xref ref-type="bibr" rid="scirp.62414-ref17">17</xref>] .</p><p>Dynamic conditional correlation models, in order to ensure positive definiteness of the conditional variance-covariance matrix, posit the correlation matrix to be a transformation of a latent matrix, which is a function of past devolatilized innovations. In particular, while the CCC model of [<xref ref-type="bibr" rid="scirp.62414-ref6">6</xref>] assumes time invariant, but pairwise specific correlations, the DECO model of [<xref ref-type="bibr" rid="scirp.62414-ref15">15</xref>] makes the opposite assumption, positing time varying correlations, but equal across series. Both CCC and DECO therefore rely on assumptions on conditional correlation dynamics which are unlikely to be supported by the data. On the other hand, in the alternative formulation of [<xref ref-type="bibr" rid="scirp.62414-ref13">13</xref>] , the correlation matrix is modeled directly and as a function of past correlations of devolatilized innovations. As a common drawback, all of the available dynamic conditional correlation models rely on the choice, neither unique nor obvious, of a long run target for the conditional variance-covariance or correlation matrix.</p><p>In the light of the above issues, the paper then contributes to the literature by introducing a new simple semiparametric estimator of the conditional variance-covariance and correlation matrix (SP-DCC). While sharing a similar sequential approach to DCC and DECO, SP-DCC has the advantage of not requiring the direct parameterization of the conditional covariance or correlation processes, therefore also avoiding any assumption on their long-run target. In the proposed framework, conditional variances are estimated by univariate GARCH models, for actual and suitable transformed series, in the first step; the latter are then nonlinearly combined in the second step, according to basic properties of the covariance and correlation operator, to yield nonparametric estimates of the corresponding conditional covariances and correlations. In contrast to available DCC methods, SP-DCC allows for straightforward estimation also for the non-symultaneous case, i.e. for the estimation of conditional cross-covariances and correlations displaced at any time horizon of interest. A simple ex-post procedure to ensure well behaved conditional covariance and correlation matrices, grounded on nonlinear shrinkage, is finally proposed. Due to its sequential implementation and scant computational burden, SP-DCC is very simple to apply and suitable for the modeling of vast sets of conditionally heteroskedastic time series. We point to [<xref ref-type="bibr" rid="scirp.62414-ref18">18</xref>] for an empirical application of the proposed approach.</p></sec><sec id="s2"><title>2. Semiparametric Estimation of Dynamic Conditional Correlations</title><p>Consider a discrete time, real-valued vector stochastic process <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x6.png" xlink:type="simple"/></inline-formula> of dimension <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x7.png" xlink:type="simple"/></inline-formula></p><disp-formula id="scirp.62414-formula1222"><label>(1)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x8.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x9.png" xlink:type="simple"/></inline-formula> is the conditional mean vector<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x10.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x11.png" xlink:type="simple"/></inline-formula>is a vector of parameter, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x12.png" xlink:type="simple"/></inline-formula>is the sigma field, and</p><disp-formula id="scirp.62414-formula1223"><label>(2)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x13.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x14.png" xlink:type="simple"/></inline-formula> is a positive definite matrix of dimension<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x15.png" xlink:type="simple"/></inline-formula>.</p><p>The random vector <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x16.png" xlink:type="simple"/></inline-formula> is of dimension <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x17.png" xlink:type="simple"/></inline-formula> and assumed to be i.i.d. with first two moments</p><disp-formula id="scirp.62414-formula1224"><label>(3)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x18.png"  xlink:type="simple"/></disp-formula><disp-formula id="scirp.62414-formula1225"><label>(4)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x19.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x20.png" xlink:type="simple"/></inline-formula> is the identity matrix of dimension N.</p><p>It is straightforward to show that <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x21.png" xlink:type="simple"/></inline-formula> is the conditional variance-covariance matrix; in fact</p><disp-formula id="scirp.62414-formula1226"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x22.png"  xlink:type="simple"/></disp-formula><p>In general both <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x23.png" xlink:type="simple"/></inline-formula> and <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x23.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x24.png" xlink:type="simple"/></inline-formula> depend on the parameter vector<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x23.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x24.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x25.png" xlink:type="simple"/></inline-formula>. While, the conditional mean vector does not depend on the conditional variance parameter, apart from the GARCH-in-mean case, the conditional variance matrix depends on the conditional mean parameters through the residuals. In what follow, for simplicity, we leave out <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x23.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x24.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x25.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x26.png" xlink:type="simple"/></inline-formula> from notation and neglect the conditional mean vector, which might be modelled in various ways, i.e. by means of univariate or multivariate ARMA models.</p><sec id="s2_1"><title>2.1. The Conditional Variance Process</title><p>We assume the elements along the main diagonal of <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x27.png" xlink:type="simple"/></inline-formula> follow a GARCH (1, 1) process</p><disp-formula id="scirp.62414-formula1227"><label>(5)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x28.png"  xlink:type="simple"/></disp-formula><p>subject to the usual restrictions required to ensure that the generic ith conditional variance process <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x30.png" xlink:type="simple"/></inline-formula> is positive almost surely at any point in time. For instance, sufficient (not necessary) conditions are<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x30.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x31.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x30.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x31.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x32.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x30.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x31.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x32.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x33.png" xlink:type="simple"/></inline-formula>, with stationarity condition<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x30.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x31.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x32.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x33.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x34.png" xlink:type="simple"/></inline-formula>.<sup>1</sup></p><p>An extended specification is in principle also viable, i.e.</p><disp-formula id="scirp.62414-formula1228"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x35.png"  xlink:type="simple"/></disp-formula><p>yet actually feasible only for small N.</p></sec><sec id="s2_2"><title>2.2. The Conditional Covariance Process</title><p>Consider the identity</p><disp-formula id="scirp.62414-formula1229"><label>(6)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x36.png"  xlink:type="simple"/></disp-formula><p>given that<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x37.png" xlink:type="simple"/></inline-formula>.</p><p>The off-diagonal elements of <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x38.png" xlink:type="simple"/></inline-formula> can then be defined accordingly, i.e.</p><disp-formula id="scirp.62414-formula1230"><label>(7)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x39.png"  xlink:type="simple"/></disp-formula><p>By defining the new variables <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x40.png" xlink:type="simple"/></inline-formula> and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x40.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x41.png" xlink:type="simple"/></inline-formula>, and assuming a GARCH (1, 1) specification for their conditional variance processes <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x40.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x41.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x42.png" xlink:type="simple"/></inline-formula>and <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x40.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x41.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x42.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x43.png" xlink:type="simple"/></inline-formula></p><disp-formula id="scirp.62414-formula1231"><label>(8)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x44.png"  xlink:type="simple"/></disp-formula><disp-formula id="scirp.62414-formula1232"><label>(9)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x45.png"  xlink:type="simple"/></disp-formula><p>subject to the usual restrictions required to ensure a well behaved conditional variance process, (7) becomes</p><disp-formula id="scirp.62414-formula1233"><label>(10)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x46.png"  xlink:type="simple"/></disp-formula><p>Moreover, if residuals are obtained from linear transformations of the original variables<sup>2</sup>, then <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x47.png" xlink:type="simple"/></inline-formula> and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x47.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x48.png" xlink:type="simple"/></inline-formula>; hence, (8) and (9) can be written as</p><disp-formula id="scirp.62414-formula1234"><label>(11)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x49.png"  xlink:type="simple"/></disp-formula><disp-formula id="scirp.62414-formula1235"><label>(12)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x50.png"  xlink:type="simple"/></disp-formula><p>By means of the proposed method conditional cross-covariances and correlations can also be computed, as</p><disp-formula id="scirp.62414-formula1236"><label>(13)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x56.png"  xlink:type="simple"/></disp-formula></sec><sec id="s2_3"><title>2.3. Estimation</title><p>Consistent and asymptotically normal estimation is performed in two steps.</p><p>Firstly, the conditional variances<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula>, i.e. the elements along the main diagonal of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula>, and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x61.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x61.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x62.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x61.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x62.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x63.png" xlink:type="simple"/></inline-formula>, are estimated equation by equation by means of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x61.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x62.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x63.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x64.png" xlink:type="simple"/></inline-formula>; this yields<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x57.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x58.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x59.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x60.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x61.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x62.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x63.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x64.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x65.png" xlink:type="simple"/></inline-formula>,</p><p><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x66.png" xlink:type="simple"/></inline-formula>, and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x66.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x67.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x66.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x67.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x68.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x66.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x67.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x68.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x69.png" xlink:type="simple"/></inline-formula>,<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x66.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x67.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x68.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x69.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x70.png" xlink:type="simple"/></inline-formula>.</p><p>Then, in the second step the off-diagonal elements of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x71.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x71.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x72.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x71.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x72.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x73.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x71.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x72.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x73.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x74.png" xlink:type="simple"/></inline-formula>, are estimated nonparametrically by computing</p><disp-formula id="scirp.62414-formula1237"><label>(14)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x75.png"  xlink:type="simple"/></disp-formula><p>By defining</p><disp-formula id="scirp.62414-formula1238"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x76.png"  xlink:type="simple"/></disp-formula><p>the conditional correlation matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x77.png" xlink:type="simple"/></inline-formula> is then estimated as</p><disp-formula id="scirp.62414-formula1239"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x78.png"  xlink:type="simple"/></disp-formula><p>By definition the matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x79.png" xlink:type="simple"/></inline-formula> is positive definite; our estimation approach does not restrict <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x79.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x80.png" xlink:type="simple"/></inline-formula> to be almost surely positive definite at any point in time. The latter property can however be checked ex-post by computing the eigenvalues of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x79.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x80.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x81.png" xlink:type="simple"/></inline-formula>, which by being a real, square and symmetric matrix, under positive definiteness are expected to be all positive. In practice this can be performed by means of Descartes’ rule of alternating signs applied to its characteristic polynomial<sup>3</sup>, as well as by means of Sylvester’s criterion<sup>4</sup>, or by assessing the existence and uniqueness of its Cholesky decomposition.</p><p>However, the positive definiteness property might also be imposed ex-post, by means of shrinkage methods, as in Ledoit and Wolf (2004, 2012). In the latter case a compromise estimate of the conditional correlation matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x82.png" xlink:type="simple"/></inline-formula> is obtained by shrinking the estimated conditional correlation matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x82.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x83.png" xlink:type="simple"/></inline-formula> towards the identity matrix, i.e. by computing</p><disp-formula id="scirp.62414-formula1240"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x84.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x85.png" xlink:type="simple"/></inline-formula> is the shrinkage intensity at time period<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x85.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x86.png" xlink:type="simple"/></inline-formula>. The compromise estimate of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x85.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x86.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x87.png" xlink:type="simple"/></inline-formula>, i.e., <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x85.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x86.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x87.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x88.png" xlink:type="simple"/></inline-formula>can then be obtained as</p><disp-formula id="scirp.62414-formula1241"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x89.png"  xlink:type="simple"/></disp-formula><p>which is positive definite by construction, as <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x90.png" xlink:type="simple"/></inline-formula> is positive definite and the elements of <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x90.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x91.png" xlink:type="simple"/></inline-formula> are well-defined.</p></sec><sec id="s2_4"><title>2.4. Ex-Post Correction for Well-Behaved Conditional Covariances and Correlations</title><p>Alternatively, the validity of the Cauchy-Schwarz inequality and the condition of positive definiteness can be imposed sequentially, at each point in time t, following the below procedure.</p><p>Firstly, the estimated conditional correlations in<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x92.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x92.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x93.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x92.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x93.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x94.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x92.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x93.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x94.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x95.png" xlink:type="simple"/></inline-formula>, are bounded to lie within the range<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x92.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x93.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x94.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x95.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x96.png" xlink:type="simple"/></inline-formula>, by applying the sign-preserving bounding transformation</p><disp-formula id="scirp.62414-formula1242"><label>(15)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x97.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x98.png" xlink:type="simple"/></inline-formula> and even; the value of k can be selected optimally by solving</p><disp-formula id="scirp.62414-formula1243"><label>(16)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x99.png"  xlink:type="simple"/></disp-formula><p>i.e. by setting k in such a way that the sum of Frobenious norms over the temporal sample is minimized; this yields<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x100.png" xlink:type="simple"/></inline-formula>, the transformed correlation matrix, which satisfies, by construction, the Cauchy-Schwarz inequality.</p><p>Secondly, positive definiteness is enforced by computing the eigenvalue-eigenvector decomposition of the transformed conditional correlation matrix<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x101.png" xlink:type="simple"/></inline-formula>, yielding</p><disp-formula id="scirp.62414-formula1244"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x102.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x103.png" xlink:type="simple"/></inline-formula> is the <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x103.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x104.png" xlink:type="simple"/></inline-formula> diagonal matrix containing the N ordered eigenvalues along the main diagonal, and <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x103.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x104.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x105.png" xlink:type="simple"/></inline-formula> is the <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x103.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x104.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x105.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x106.png" xlink:type="simple"/></inline-formula> matrix containing the N associated orthogonal eigenvectors. In the case of violation of the positive definiteness condition one or more of the eigenvalues will be negative; an empirically viable strategy to impose positive definiteness ex-post consists of replacing the negative sample eigenvalues with positive values, computed for instance from their sample average value when positive or from the grand average across sample eigenvalues. The rationale guiding this practice is the well-known issue of downward biased estimation of the smallest eigenvalues (versus upward biased estimation of the largest eigenvalues). Rather than shrinking all the sample eigenvalues towards their grand average, as occurring by implementing [<xref ref-type="bibr" rid="scirp.62414-ref19">19</xref>] , only the negative eigenvalues are shrank towards positive average values. The latter practice is consistent with nonlinear shrinkage of the covariance matrix ([<xref ref-type="bibr" rid="scirp.62414-ref20">20</xref>] ), allowing in principle for different shrinkage intensities to be applied to the various eigenvalues.</p><p>The shrank matrix of eigenvalues <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x107.png" xlink:type="simple"/></inline-formula> would then be obtained, and therefore</p><disp-formula id="scirp.62414-formula1245"><label>(17)</label><graphic position="anchor" xlink:href="http://html.scirp.org/file/19-1240620x108.png"  xlink:type="simple"/></disp-formula><p>which, by construction, is well-behaved at each point in time. The implied conditional covariance process at time period t can then be obtained as</p><disp-formula id="scirp.62414-formula1246"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x109.png"  xlink:type="simple"/></disp-formula><p>where</p><disp-formula id="scirp.62414-formula1247"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x110.png"  xlink:type="simple"/></disp-formula><p>as before. The implied estimated variance-covariance matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x111.png" xlink:type="simple"/></inline-formula> then obeys the Cauchy-Schwarz inequality and the positive definiteness condition, at each point in time, by construction.</p></sec><sec id="s2_5"><title>2.5. Asymptotic Properties</title><p>Under assumptions (1) through (5), estimation and inference for the parameters of the univariate GARCH (1, 1) processes (5), (8) and (9) can be performed by means of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x112.png" xlink:type="simple"/></inline-formula>. The Gaussian log likelihood function for the generic process<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x112.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x113.png" xlink:type="simple"/></inline-formula>, assuming for simplicity <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x112.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x113.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x114.png" xlink:type="simple"/></inline-formula> and a GARCH (1, 1) structure</p><p><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x115.png" xlink:type="simple"/></inline-formula>can then be written as</p><disp-formula id="scirp.62414-formula1248"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x116.png"  xlink:type="simple"/></disp-formula><p>and numerically maximized with respect to the vector of parameters<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x117.png" xlink:type="simple"/></inline-formula>. Similarly for the other variables <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x117.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x118.png" xlink:type="simple"/></inline-formula> and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x117.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x118.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x119.png" xlink:type="simple"/></inline-formula>.</p><p>Under fairly general conditions, the asymptotic distribution of <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x120.png" xlink:type="simple"/></inline-formula> is</p><disp-formula id="scirp.62414-formula1249"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x121.png"  xlink:type="simple"/></disp-formula><p>where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula> denotes the true value of the vector of parameters, and where <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula> is the Hessian and <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x124.png" xlink:type="simple"/></inline-formula> is the outer product gradient, both of which are evaluated at the true parameter values. This also establishes the consistent and asymptotically normal estimation of the conditional variance of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x124.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x125.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x124.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x125.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x126.png" xlink:type="simple"/></inline-formula>, as well as of the transformed variables <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x124.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x125.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x126.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x127.png" xlink:type="simple"/></inline-formula> and<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x122.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x123.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x124.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x125.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x126.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x127.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x128.png" xlink:type="simple"/></inline-formula>.</p><p>Consistent and asymptotically normal estimation of the off-diagonal elements of the conditional variance-co- variance matrix <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x129.png" xlink:type="simple"/></inline-formula> then follows directly from the consistent and asymptotically normal estimation of the conditional variances of the transformed variables in (8) and (9). In fact, considering the generic off-diagonal <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x129.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x130.png" xlink:type="simple"/></inline-formula> element of<inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x129.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x130.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x131.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x129.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x130.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x131.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x132.png" xlink:type="simple"/></inline-formula>, <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x129.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x130.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x131.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x132.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x133.png" xlink:type="simple"/></inline-formula>, one has</p><disp-formula id="scirp.62414-formula1250"><graphic  xlink:href="http://html.scirp.org/file/19-1240620x134.png"  xlink:type="simple"/></disp-formula><p>as the conditional covariance estimator <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x135.png" xlink:type="simple"/></inline-formula> is a linear combination of the (consitent and asymptotically normal) conditional variance estimators for the transformed variables <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x135.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x136.png" xlink:type="simple"/></inline-formula> and <inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x135.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x136.png" xlink:type="simple"/></inline-formula><inline-formula><inline-graphic xlink:href="http://html.scirp.org/file/19-1240620x137.png" xlink:type="simple"/></inline-formula>.</p></sec></sec><sec id="s3"><title>3. Conclusion</title><p>The paper introduces a new simple semiparametric estimator of the conditional variance-covariance and correlation matrix (SP-DCC). While sharing a similar sequential approach to existing dynamic conditional correlation methods, SP-DCC has the advantage of not requiring the direct parameterization of the conditional covariance or correlation processes. In the first step, conditional variances are estimated by univariate GARCH models for actual and suitably transformed series. In the second step, the estimated conditional covariances are then nonlinearly combined, according to basic properties of the covariance and correlation operator, to yield nonparametric estimates of the various conditional covariances and correlations. At this step, SP-DCC also allows for the estimation of conditional cross-covariances and correlations, displaced at any time horizon. In the third step, well behaved conditional variance-covariance and correlation matrices are obtained by means of nonlinear shrinkage. Due to its sequential implementation and scant computational burden, SP-DCC is very simple to apply and suitable for the modeling of vast sets of conditionally heteroskedastic time series.</p></sec><sec id="s4"><title>Acknowledgements</title><p>The author is grateful to the referee, M. Rockinger and M. Dacorogna for their comments. This project has received funding from the European Union’s Seventh Framework Programme for research, technological development and demonstration under grant agreement no. 3202782013-2015. On rainy days, be in the rain/In windy days, be in the wind (Mitsuo Aida).</p></sec><sec id="s5"><title>Cite this paper</title><p>ClaudioMorana,11,11, (2015) Semiparametric Estimation of Multivariate GARCH Models. Open Journal of Statistics,05,852-858. doi: 10.4236/ojs.2015.57083</p></sec><sec id="s6"><title>NOTES</title></sec></body><back><ref-list><title>References</title><ref id="scirp.62414-ref1"><label>1</label><mixed-citation publication-type="other" xlink:type="simple">Bollerslev, T., Engle, R.F. and Wooldridge, J. (1988) A Capital Asset Pricing Model with Time Varying Covariances. Journal of Political Economy, 96, 116-131. &lt;/br&gt;http://dx.doi.org/10.1086/261527</mixed-citation></ref><ref id="scirp.62414-ref2"><label>2</label><mixed-citation publication-type="other" xlink:type="simple">Bauwens, L., Laurent, S. and Rombouts, L. (2006) Multivariate GARCH Models: A Survey. Journal of Applied Econometrics, 21, 79-109. &lt;/br&gt;http://dx.doi.org/10.1002/jae.842</mixed-citation></ref><ref id="scirp.62414-ref3"><label>3</label><mixed-citation publication-type="book" xlink:type="simple">Silvennoinen, A. and Terasvirta, T. (2009) Multivariate GARCH Models. 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