Latest YouTube Video

Wednesday, June 15, 2016

Natural Language Generation as Planning under Uncertainty Using Reinforcement Learning. (arXiv:1606.04686v1 [cs.CL])

We present and evaluate a new model for Natural Language Generation (NLG) in Spoken Dialogue Systems, based on statistical planning, given noisy feedback from the current generation context (e.g. a user and a surface realiser). We study its use in a standard NLG problem: how to present information (in this case a set of search results) to users, given the complex trade- offs between utterance length, amount of information conveyed, and cognitive load. We set these trade-offs by analysing existing MATCH data. We then train a NLG pol- icy using Reinforcement Learning (RL), which adapts its behaviour to noisy feed- back from the current generation context. This policy is compared to several base- lines derived from previous work in this area. The learned policy significantly out- performs all the prior approaches.



from cs.AI updates on arXiv.org http://ift.tt/1WO6HV5
via IFTTT

No comments: