Détail du document
Identifiant

oai:arXiv.org:2407.06112

Sujet
Computer Science - Computation and...
Auteur
Zhang, Yadong Mao, Shaoguang Wu, Wenshan Xia, Yan Ge, Tao Lan, Man Wei, Furu
Catégorie

Computer Science

Année

2024

Date de référencement

10/07/2024

Mots clés
potential deliberation information outcomes language contexts historical reasoning
Métrique

Résumé

This paper introduces BI-Directional DEliberation Reasoning (BIDDER), a novel reasoning approach to enhance the decision rationality of language models.

Traditional reasoning methods typically rely on historical information and employ uni-directional (left-to-right) reasoning strategy.

This lack of bi-directional deliberation reasoning results in limited awareness of potential future outcomes and insufficient integration of historical context, leading to suboptimal decisions.

BIDDER addresses this gap by incorporating principles of rational decision-making, specifically managing uncertainty and predicting expected utility.

Our approach involves three key processes: Inferring hidden states to represent uncertain information in the decision-making process from historical data; Using these hidden states to predict future potential states and potential outcomes; Integrating historical information (past contexts) and long-term outcomes (future contexts) to inform reasoning.

By leveraging bi-directional reasoning, BIDDER ensures thorough exploration of both past and future contexts, leading to more informed and rational decisions.

We tested BIDDER's effectiveness in two well-defined scenarios: Poker (Limit Texas Hold'em) and Negotiation.

Our experiments demonstrate that BIDDER significantly improves the decision-making capabilities of LLMs and LLM agents.

Zhang, Yadong,Mao, Shaoguang,Wu, Wenshan,Xia, Yan,Ge, Tao,Lan, Man,Wei, Furu, 2024, Enhancing Language Model Rationality with Bi-Directional Deliberation Reasoning

Document

Ouvrir

Partager

Source

Articles recommandés par ES/IODE IA