Higher-Level Cognitive Functions and Connectionist Modeling. Developmental and Computational Neuroscience Approaches to Cognition: The Case of Generalization.
スポンサーリンク
概要
- 論文の詳細を見る
The ability to generalize—to abstract regularities from our experiences that can be applied to new experiences—is fundamental to human cognition and our abilities to flexibly adapt to changing situations. However, the generalization abilities of children and adults are far from perfect, with many clear demonstrations of failures to generalize in situations that would otherwise appear to lend themselves to generalization. It seems that people require extensive experience with a domain to demonstrate good generalization, and that their generalization abilities are best when dealing with relatively concrete, familiar situations. In this paper, we argue that people's successes and failures in generalization are well characterized by neural network models. Networks of neurons connected by synaptic weights are naturally predisposed to encode information in a highly specific fashion, which does not support generalization (as has been seized upon by critics of such models). However, with sufficient experience and appropriate architectural properties, such models can develop abstract representations that support good generalization. Implications for the neural bases and development of generalization abilities are discussed.
- 日本認知科学会の論文
日本認知科学会 | 論文
- 推論と判断の等確率性仮説 : 思考の対称性とその適応的意味
- 日本語の語順選好は動詞に還元できない文レベルの意味と相関する : 心理実験に基づく日本語の構文研究への提案
- 形容詞と名詞とからなる句の理解の発達過程
- 名詞句と動詞との間の意味的適合度が文の意味表象形成過程に及ぼす効果
- 児童の論理的な読み書き能力を育む思考の相互観察活動 : デジタルペン黒板システムを使用した授業実践から