PathFinder: MCTS and LLM Feedback-based Path Selection for Multi-Hop Question Answering

Maram, Durga Prasad, Gunaratna, Kalpa, Srinivasan, Vijay, Jeelani, Haris, Chappidi, Srinivas

arXiv.org Artificial Intelligence 

ABSTRACT Multi-hop question answering is a challenging task in which language models must reason over multiple steps to reach the correct answer. With the help of Large Language Models and their reasoning capabilities, existing systems are able to think and decompose an input question over multiple steps to analyze, retrieve, and reason. However, training-based approaches for this problem still suffer from LLM hallucinations and incorrect reasoning paths that hinder performance. Hence, we propose P A THFINDER, an approach that: (i) uses Monte Carlo Tree Search to generate training path traces, (ii) improves training data quality by filtering erroneous and lengthy traces using sub-answer recall and LLM-as-a-judge verification, and (iii) reformulates sub-queries to handle failed retrieval cases. By following these steps, we demonstrate that P A THFINDER improves the performance of multi-hop QA over public benchmark datasets. Index T erms-- multi-hop question answering, retrieval augmented generation, reasoning, large language models 1. INTRODUCTION Large Language Models (LLMs) have demonstrated remarkable capabilities in reasoning-intensive tasks.

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