認知科学
Online ISSN : 1881-5995
Print ISSN : 1341-7924
ISSN-L : 1341-7924
特集-新しい計算論が切り拓く認知科学の展開
確率モデルに基づくロボットによる概念・言語獲得
中村 友昭長井 隆行
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ジャーナル フリー

2016 年 24 巻 1 号 p. 23-32

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 In this study, we define concepts as categories into which a robot classifies perceptual
information obtained through interaction with others and the environment, and the
inference of unobserved information through the concepts is defined as understanding.
Furthermore, a robot can infer unobserved perceptual information from words by con-
necting concepts and words. This inference is the understanding of word meanings.
We propose probabilistic models that enable robots to learn concepts and language. In
this paper, we present an overview of the proposed models.

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© 2016 日本認知科学会
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