Importance of Search and Evaluation Strategies in Neural Dialogue Modeling

WS 2019 Ilia KulikovAlexander H. MillerKyunghyun ChoJason Weston

We investigate the impact of search strategies in neural dialogue modeling. We first compare two standard search algorithms, greedy and beam search, as well as our newly proposed iterative beam search which produces a more diverse set of candidate responses... (read more)

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