Memorization $\neq$ Understanding: Do Large Language Models Have the Ability of Scenario Cognition?
By: Boxiang Ma , Ru Li , Yuanlong Wang and more
Potential Business Impact:
Computers don't truly understand stories, they just remember them.
Driven by vast and diverse textual data, large language models (LLMs) have demonstrated impressive performance across numerous natural language processing (NLP) tasks. Yet, a critical question persists: does their generalization arise from mere memorization of training data or from deep semantic understanding? To investigate this, we propose a bi-perspective evaluation framework to assess LLMs' scenario cognition - the ability to link semantic scenario elements with their arguments in context. Specifically, we introduce a novel scenario-based dataset comprising diverse textual descriptions of fictional facts, annotated with scenario elements. LLMs are evaluated through their capacity to answer scenario-related questions (model output perspective) and via probing their internal representations for encoded scenario elements-argument associations (internal representation perspective). Our experiments reveal that current LLMs predominantly rely on superficial memorization, failing to achieve robust semantic scenario cognition, even in simple cases. These findings expose critical limitations in LLMs' semantic understanding and offer cognitive insights for advancing their capabilities.
Similar Papers
Do Large Language Models Truly Understand Cross-cultural Differences?
Computation and Language
Tests if computers understand different cultures.
Unveiling the Learning Mind of Language Models: A Cognitive Framework and Empirical Study
Computation and Language
Helps computers learn like humans do.
Evaluating LLMs Across Multi-Cognitive Levels: From Medical Knowledge Mastery to Scenario-Based Problem Solving
Computation and Language
Tests how well AI understands complex medical problems.