In this mathematical study, we delve into the realm of statistical inference and introduce a novel approach to variational non-Bayesian inference.
This paper is available on arxiv under CC BY-NC-ND 4.0 DEED license. Authors: U Jin Choi, Department of mathematical science, Korea Advanced Institute of Science and Technology & ujchoi@kaist.ac.kr; Kyung Soo Rim, Department of mathematics, Sogang University & ksrim@sogang.ac.kr.
Authors: Authors: U Jin Choi, Department of mathematical science, Korea Advanced Institute of Science and Technology & ujchoi@kaist.ac.kr; Kyung Soo Rim, Department of mathematics, Sogang University & ksrim@sogang.ac.kr.
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