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  • 标题:不定自然変換理論に基づく比喩理解モデルの計算論的実装の試み
  • 本地全文:下载
  • 作者:池田 駿介 ; 布山 美慕 ; 西郷 甲矢人
  • 期刊名称:認知科学
  • 印刷版ISSN:1341-7924
  • 电子版ISSN:1881-5995
  • 出版年度:2021
  • 卷号:28
  • 期号:1
  • 页码:39-56
  • DOI:10.11225/cs.2020.065
  • 出版社:Japanese Cognitive Science Society
  • 摘要:Machine learning techniques have realized some principal cognitive functionalities such as nonlinear generalization and causal model construction, as far as huge amount of data are available. A next frontier for cognitive modelling would be the ability of humans to transfer past knowledge to novel, ongoing experience, making analogies from the known to the unknown. Novel metaphor comprehension may be considered as an example of such transfer learning and analogical reasoning that can be empirically tested in a relatively straightforward way. Based on some concepts inherent in category theory, we implement a model of metaphor comprehension called the theory of indeterminate natural transformation (TINT), and test its descriptive validity of humans' metaphor comprehension. We simulate metaphor comprehension with two models: one being structure-ignoring, and the other being structure-respecting. The former is a sub-TINT model, while the latter is the minimal-TINT model. As the required input to the TINT models, we gathered the association data from human participants to construct the “latent category” for TINT, which is a complete weighted directed graph. To test the validity of metaphor comprehension by the TINT models, we conducted an experiment that examines how humans comprehend a metaphor. While the sub-TINT does not show any significant correlation, the minimal-TINT shows significant correlations with the human data. It suggests that we can capture metaphor comprehension processes in a quite bottom-up manner realized by TINT.
  • 关键词:圏論;類推;転移学習;関手;構造保存;準同型写像;category theory;analogy;transfer learning;functor;structure-preserving;homomorphism
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