{"pk":50397,"title":"Beyond Interpolation: Enhancing Large Language Models (LLMs) with Mental Models","subtitle":null,"abstract":"Large Language Models (LLMs) demonstrate high performance across various tasks, yet they struggle with those requiring complex comprehension and reasoning. LLMs are not solely reliant on memorization: responses can be generated to novel prompts by interpolating between learned data points in a continuous vector space. However, they exhibit limitations in their inherent reasoning capabilities.\nDespite efforts to enhance their reasoning abilities, such as Chain-of-Thought prompting and test-time inference techniques, LLMs still face challenges in this domain. In contrast, humans utilize mental modelsâ€”internal representations of situations and conceptsâ€”to adapt and solve novel situations.\nIntegrating external modules that emulate the construction and utilization of mental models could offer a promising avenue for enhancing the reasoning abilities of LLMs. This approach could bridge the gap between current LLM capabilities and human-like reasoning, potentially leading to more robust and reliable LLMs.","language":"eng","license":{"name":"","short_name":"","text":null,"url":""},"keywords":[{"word":"Artificial Intelligence; Psychology; Neural Networks"}],"section":"Member Abstracts with Poster Presentation","is_remote":true,"remote_url":"https://escholarship.org/uc/item/5k8295z6","frozenauthors":[{"first_name":"SalomŽ","middle_name":"","last_name":"Cojean","name_suffix":"","institution":"Univ. Grenoble Alpes","department":""},{"first_name":"Nicolas","middle_name":"","last_name":"Martin","name_suffix":"","institution":"LIG","department":""},{"first_name":"Petra","middle_name":"","last_name":"Galuscakova","name_suffix":"","institution":"University of Stavanger","department":""}],"date_submitted":null,"date_accepted":null,"date_published":"2025-01-01T18:00:00Z","render_galley":null,"galleys":[{"label":"PDF","type":"pdf","path":"https://journalpub.escholarship.org/cognitivesciencesociety/article/50397/galley/38359/download/"}]}