主催: 人工知能学会
会議名: 第95回 人工知能基本問題研究会
回次: 95
開催地: 大阪大学産業科学研究所 管理棟1F講堂
開催日: 2014/10/10
p. 05-
A large amount of observational data has been accumulated in various fields in recent times, and there is a growing need to estimate the generating processes of these data. A linear non-Gaussian acyclic model (LiNGAM) based on the non-Gaussianity of external influences has been proposed to estimate the data-generating processes of variables. However, the results of the estimation can be biased if there are latent classes. In this paper, we first review LiNGAM, its extended model, as well as the estimation procedure for LiNGAM in a Bayesian framework. We then propose a new Bayesian estimation procedure that solves the problem.