Weakly-Supervised Neural Response Selection from an Ensemble of Task-Specialised Dialogue Agents (2005.03066v1)
Abstract: Dialogue engines that incorporate different types of agents to converse with humans are popular. However, conversations are dynamic in the sense that a selected response will change the conversation on-the-fly, influencing the subsequent utterances in the conversation, which makes the response selection a challenging problem. We model the problem of selecting the best response from a set of responses generated by a heterogeneous set of dialogue agents by taking into account the conversational history, and propose a \emph{Neural Response Selection} method. The proposed method is trained to predict a coherent set of responses within a single conversation, considering its own predictions via a curriculum training mechanism. Our experimental results show that the proposed method can accurately select the most appropriate responses, thereby significantly improving the user experience in dialogue systems.
- Asir Saeed (2 papers)
- Khai Mai (2 papers)
- Pham Minh (2 papers)
- Nguyen Tuan Duc (2 papers)
- Danushka Bollegala (84 papers)