Demonstration of interactive teaching for end-to-end dialog control with hybrid code networks
2017-08-01WS 2017Unverified0· sign in to hype
Jason D. Williams, Lars Liden
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This is a demonstration of interactive teaching for practical end-to-end dialog systems driven by a recurrent neural network. In this approach, a developer teaches the network by interacting with the system and providing on-the-spot corrections. Once a system is deployed, a developer can also correct mistakes in logged dialogs. This demonstration shows both of these teaching methods applied to dialog systems in three domains: pizza ordering, restaurant information, and weather forecasts.