User Intent Inference for Web Search and Conversational Agents

Ali Ahmadvand
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引用次数: 2

Abstract

User intent understanding is a crucial step in designing both conversational agents and search engines. Detecting or inferring user intent is challenging, since the user utterances or queries can be short, ambiguous, and contextually dependent. To address these research challenges, my thesis work focuses on: 1) Utterance topic and intent classification for conversational agents 2) Query intent mining and classification for Web search engines, focusing on the e-commerce domain. To address the first topic, I proposed novel models to incorporate entity information and conversation-context clues to predict both topic and intent of the user's utterances. For the second research topic, I plan to extend the existing state of the art methods in Web search intent prediction to the e-commerce domain, via: 1) Developing a joint learning model to predict search queries' intents and the product categories associated with them, 2) Discovering new hidden users' intents. All the models will be evaluated on the real queries available from a major e-commerce site search engine. The results from these studies can be leveraged to improve performance of various tasks such as natural language understanding, query scoping, query suggestion, and ranking, resulting in an enriched user experience.
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Web搜索和会话代理的用户意图推理
用户意图理解是设计会话代理和搜索引擎的关键一步。检测或推断用户意图是具有挑战性的,因为用户的话语或查询可能很短、含糊不清,并且依赖于上下文。为了解决这些研究挑战,我的论文工作集中在:1)会话代理的话语主题和意图分类2)Web搜索引擎的查询意图挖掘和分类,重点是电子商务领域。为了解决第一个主题,我提出了新的模型来结合实体信息和对话上下文线索来预测用户话语的主题和意图。对于第二个研究课题,我计划将现有的Web搜索意图预测方法扩展到电子商务领域,通过:1)开发一个联合学习模型来预测搜索查询的意图和与之相关的产品类别,2)发现新的隐藏用户的意图。所有模型都将根据一个主要电子商务网站搜索引擎提供的真实查询进行评估。可以利用这些研究的结果来提高各种任务的性能,例如自然语言理解、查询范围、查询建议和排名,从而丰富用户体验。
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