POMDP-Based Statistical Spoken Dialog Systems: A Review

Steve Young(University of Cambridge), Milica Gašić(University of Cambridge), Blaise Thomson(University of Cambridge), J. D. Williams(Microsoft (United States))
Proceedings of the IEEE
January 9, 2013
Cited by 913

Abstract

Statistical dialog systems (SDSs) are motivated by the need for a data-driven framework that reduces the cost of laboriously handcrafting complex dialog managers and that provides robustness against the errors created by speech recognizers operating in noisy environments. By including an explicit Bayesian model of uncertainty and by optimizing the policy via a reward-driven process, partially observable Markov decision processes (POMDPs) provide such a framework. However, exact model representation and optimization is computationally intractable. Hence, the practical application of POMDP-based systems requires efficient algorithms and carefully constructed approximations. This review article provides an overview of the current state of the art in the development of POMDP-based spoken dialog systems.


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