A Reinforcement Learning-driven Translation Model for Search-Oriented Conversational Systems
Aissa, Wafa, Soulier, Laure, Denoyer, Ludovic
Search-oriented conversational systems rely on information needs expressed in natural language (NL). We focus here on the understanding of NL expressions for building keyword-based queries. We propose a reinforcement-learning-driven translation model framework able to 1) learn the translation from NL expressions to queries in a supervised way, and, 2) to overcome the lack of large-scale dataset by framing the translation model as a word selection approach and injecting relevance feedback in the learning process. Experiments are carried out on two TREC datasets and outline the effectiveness of our approach.
Aug-29-2018
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- North America > Canada
- Europe > France
- Île-de-France > Paris > Paris (0.05)
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- Research Report (0.50)
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