<?xml version="1.0" encoding="utf-8"?><rss version="2.0"><channel><title>RSS for Diagnosis of Random-Effect Model Misspecification in Generalized Linear Mixed Models for Binary Response</title><link>http://academic.research.microsoft.com/Rss.aspx?cata=9&amp;id=16424335</link><description>Search RSS feed for Microsoft Academic Search</description><generator>MSRA Libra RSS Burner</generator><copyright>(c)2008 Microsoft Corpration, All right reserved.</copyright><pubDate>Sat, 18 May 2013 20:59:50 GMT</pubDate><lastBuildDate>Sat, 18 May 2013 20:59:50 GMT</lastBuildDate><category /><item><title>Diagnosis of Random-Effect Model Misspecification in Generalized Linear Mixed Models for Binary Response</title><link>http://academic.research.microsoft.com/Publication/16424335</link><pubDate>Sat, 18 May 2013 13:59:50 GMT</pubDate><guid isPermaLink="false">164243351</guid><description><![CDATA[<div><a href="http://academic.research.microsoft.com/Author/47677614">Xianzheng Huang</a>:
            
            <span style="margin-left:20px">(Citations:1)</span><span style="margin-left:20px"><a href="http://www.stat.sc.edu/~huang/index_files/HuangXZ_041408.pdf">view publication</a></span></div><div>Summary. Generalized linear mixed models (GLMMs) are widely used in the analysis of clustered data. However, the validity of likelihood-based inference in such analyses can be greatly affected by the assumed model for the random effects. We propose a <a href='http://academic.research.microsoft.com/Keyword/9732/diagnostic-method'>diagnostic method</a>  for random-effect <a href='http://academic.research.microsoft.com/Keyword/25750/model-misspecification'>model misspecification</a>  in GLMMs for clustered binary response. We provide a theoretical justification of the proposed method and investigate its finite sample performance via simulation. The proposed method is applied to data from a longitudinal <a href='http://academic.research.microsoft.com/Keyword/35419/respiratory-infection'>respiratory infection</a>  study.</div><div></div><div>Journal: <a href="http://academic.research.microsoft.com/Journal/7095">Biometrics</a>, vol. 65, no. 2, pp. 361-368, 2009</div><div />]]></description></item></channel></rss>