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Learning and inference in hierarchical models with singularities

机译:具有奇异性的层次模型中的学习和推理

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摘要

When we infer the underlying rule which generates a large amount of data, we assume a family of hierarchical statistical models and estimate an appropriate model and its parameters. In this case, the parameter space of the model usually includes singularities, and interesting phenomena, different from those appearing in conventional inference theory, are observed. In this paper, we review the studies of singular models in learning and inference which are being extensively developed in Japan, and elucidate the mechanisms of strange behavior by using simple models.
机译:当我们推断生成大量数据的基本规则时,我们假设使用一系列的分层统计模型,并估计适当的模型及其参数。在这种情况下,模型的参数空间通常包含奇点,并且观察到与传统推理理论中出现的现象不同的有趣现象。在本文中,我们回顾了在日本广泛开发的学习和推理中的奇异模型的研究,并通过使用简单模型阐明了奇怪行为的机制。

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