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大規模言語モデルと人間の表象様式の比較研究
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ポイント
- 大規模言語モデル(LLM)と人間の情報処理・表象様式の比較研究を行った。
- LLMは言語タスクで高い性能を示す一方、人間とは異なる処理を行い、推論タスクでは学習・一般化効率で劣る。
- 本研究は、言語知識の表象と実世界推論・計画の2領域におけるLLMと人間の差異を明らかにした。
Abstract
Much work on the cognitive foundations of AI has focussed on comparisons between the ways in which Large Language Models (LLMs) and humans process information and represent it. One aspect of this comparison involves determining the extent to which LLMs can achieve or surpass human performance on a variety of cognitively interesting tasks. A second explores points of convergence and divergence between LLM and human systems for processing information. Here, I consider some recent research that has addressed both issues in two informational domains. The first is the representation of linguistic knowledge. The second is real world reasoning and planning. While LLMs frequently achieve impressive levels of performance and fluency on linguistic applications, they tend to handle linguistic content in ways that are distinct from human processing. They are also, for the most part, less efficient than humans in learning and generalisation for reasoning tasks.
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