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NTIS 바로가기응용통계연구 = The Korean journal of applied statistics, v.34 no.1, 2021년, pp.9 - 23
박선 (전북대학교 통계학과) , 조성일 (인하대학교 통계학과) , 이우주 (서울대학교 보건대학원)
In the following paper we introduce a variational Bayes method that approximates posterior distributions with mean-field method. In particular, we introduce automatic differentiation variation inference (ADVI), which approximates joint posterior distributions using the product of Gaussian distributi...
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