TL;DR
This paper analyzes multi-turn conversation relevance for answer retrieval, introduces a BERT-based neural relevance model, and demonstrates significant improvements in context-aware retrieval performance.
Contribution
It provides a detailed annotation of conversational relevance and proposes a novel BERT-based model that outperforms existing baselines in multi-turn conversation understanding.
Findings
38% relative improvement in nDCG@20 using the proposed model
Annotated dataset of conversational relevance released for research
Effective incorporation of conversation context improves answer retrieval
Abstract
With the improvements in speech recognition and voice generation technologies over the last years, a lot of companies have sought to develop conversation understanding systems that run on mobile phones or smart home devices through natural language interfaces. Conversational assistants, such as Google Assistant and Microsoft Cortana, can help users to complete various types of tasks. This requires an accurate understanding of the user's information need as the conversation evolves into multiple turns. Finding relevant context in a conversation's history is challenging because of the complexity of natural language and the evolution of a user's information need. In this work, we present an extensive analysis of language, relevance, dependency of user utterances in a multi-turn information-seeking conversation. To this aim, we have annotated relevant utterances in the conversations…
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Taxonomy
MethodsLinear Layer · Residual Connection · Attention Dropout · Linear Warmup With Linear Decay · Weight Decay · Refunds@Expedia|||How do I get a full refund from Expedia? · Dense Connections · Adam · WordPiece · Softmax
