NJFun - A Reinforcement Learning Spoken Dialogue System
نویسندگان
چکیده
This paper describes NJFun, a real-time spoken dialogue systemthat-provides users with information about things to d~ in New Jersey. NJFun automatically optimizes its dialogue strategy over time, by using a methodology for applying reinforcement learning to a working dialogue system with human
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