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Question Answering with Texts and Tables through Deep Reinforcement Learning

Authors :
José, Marcos M.
Cação, Flávio N.
Ribeiro, Maria F.
Cheang, Rafael M.
Pirozelli, Paulo
Cozman, Fabio G.
Publication Year :
2024

Abstract

This paper proposes a novel architecture to generate multi-hop answers to open domain questions that require information from texts and tables, using the Open Table-and-Text Question Answering dataset for validation and training. One of the most common ways to generate answers in this setting is to retrieve information sequentially, where a selected piece of data helps searching for the next piece. As different models can have distinct behaviors when called in this sequential information search, a challenge is how to select models at each step. Our architecture employs reinforcement learning to choose between different state-of-the-art tools sequentially until, in the end, a desired answer is generated. This system achieved an F1-score of 19.03, comparable to iterative systems in the literature.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.04858
Document Type :
Working Paper