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Can We Predict User Intents from Queries: Intent Discovery for Web Search

机译:我们可以预测来自查询的用户意图:Web搜索的意图发现

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Although Web search engine technologies have made a great progress in recent years, they are still suffering from the low search performance (precision and recall) because of the following reasons: (1) Queries for search engines are mostly limited to keywords or short natural language sentences, and (2) Most search engines use traditional "keyword-in-document" information retrieval models. Obviously, a user's search intent is not easily expressed by a set of keyword terms. A same keyword-query is formulated and executed by many users, but its search intents (e.g. what information are the "really relevant" answers for the users) are different from users. Also, the traditional "keyword-in-document" IR model assumes that query keywords (and/or related keywords) are contained in the target documents (Web pages). For example, it makes difficult to search for documents (Web pages) whose reputation are specified in user queries. Search intent discovery is a hot research area in Web search, such as search query classification (informational, navigational and transactional queries), search result diversification, and query recommendation. In this talk, after a brief survey on the research of search intent discovery and query type classification, we introduce a new framework on search intent discovery and intent-based Web search. In our framework, search-intents are roughly classified into four types: (1) content-related intents (topic-relevance, diversity, comprehensibility, concreteness etc.), (2) task-related intents (search for doing some actions), (3) "social" intents (popularity, typicality, novelty/unexpectedness etc.), and (4) aggregation-based intents (such as retrieving the most expensive Kyoto foods). Then, we survey our research activities to discover "search-intent types" for user search queries. The proposing methods are based on the usages of ontolog-ical knowledge, user behavior data analysis, knowledge extracted from CQA corpus & ads, and "relevance" feedback by intent-based page features.
机译:(1)对搜索引擎的查询大多局限于关键字或短的自然语言:尽管Web搜索引擎技术在近几年取得了长足的进步,他们仍然因为以下原因,低搜索性能(精确度和召回)痛苦句子,和(2)大多数搜索引擎使用传统的“关键字的文档”信息检索模型。显然,用户的搜索意图不容易由一组关键字方面的表示。一个相同的关键字查询制定和执行许多用户执行,但其搜索意图(例如,什么样的信息是针对用户的“真正相关”的回答)是从用户的不同。此外,传统的“关键字的文档” IR模型假定查询关键字(和/或相关的关键字)包含在目标文件(网页)。例如,它使得难以搜索其声誉在用户查询中指定的文件(网页)。搜索意图的发现是在网络搜索的热点研究领域,如搜索查询分类(信息,导航和交易查询),搜索结果的多样化,以及查询建议。在这次讲座中,对搜索意图的发现和查询类型的分类研究一个简短的调查后,我们引进的搜索意图发现和基于意图的网络搜索的新框架。在我们的框架,搜索意图大致分为四种类型:(1)内容相关的意图(主题的相关性,多样性,综合性,具体性等),(2)任务有关的意图(搜索做一些动作), (3)“社会”意图(普及,典型性,新颖性/意外等),和(4)基于聚集的意图(如检索最昂贵的京都食品)。然后,我们调查我们的研究活动,以发现“搜索意图类型”为用户搜索查询。提出建议的方法是基于ontolog,iCal的知识,用户行为数据分析,从CQA语料库和广告中提取知识,“相关性”的反馈通过基于意图的页面功能用途。

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