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arxiv: 1703.09439 · v1 · pith:EDVBIQBCnew · submitted 2017-03-28 · 💻 cs.CL · cs.NE

A practical approach to dialogue response generation in closed domains

classification 💻 cs.CL cs.NE
keywords customertemplatesagentanswerscloseddialoguedomaingeneration
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We describe a prototype dialogue response generation model for the customer service domain at Amazon. The model, which is trained in a weakly supervised fashion, measures the similarity between customer questions and agent answers using a dual encoder network, a Siamese-like neural network architecture. Answer templates are extracted from embeddings derived from past agent answers, without turn-by-turn annotations. Responses to customer inquiries are generated by selecting the best template from the final set of templates. We show that, in a closed domain like customer service, the selected templates cover $>$70\% of past customer inquiries. Furthermore, the relevance of the model-selected templates is significantly higher than templates selected by a standard tf-idf baseline.

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