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Joint Learning of Interactive Spoken Content Retrieval and Trainable User Simulator

Authors :
Chung, Pei-Hung
Tung, Kuan
Tai, Ching-Lun
Lee, Hung-Yi
Publication Year :
2018

Abstract

User-machine interaction is crucial for information retrieval, especially for spoken content retrieval, because spoken content is difficult to browse, and speech recognition has a high degree of uncertainty. In interactive retrieval, the machine takes different actions to interact with the user to obtain better retrieval results; here it is critical to select the most efficient action. In previous work, deep Q-learning techniques were proposed to train an interactive retrieval system but rely on a hand-crafted user simulator; building a reliable user simulator is difficult. In this paper, we further improve the interactive spoken content retrieval framework by proposing a learnable user simulator which is jointly trained with interactive retrieval system, making the hand-crafted user simulator unnecessary. The experimental results show that the learned simulated users not only achieve larger rewards than the hand-crafted ones but act more like real users.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1804.00318
Document Type :
Working Paper