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Self-Learning Web Question Answering System

机译:自学网络问题应答系统

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While being quite successful in providing keyword based access to web pages, commercial search portals, such as Google, Yahoo, AltaVista, and AOL, still lack the ability to answer questions expressed in a natural language. In this paper, we present a probabilistic approach to automated question answering on the Web. Our approach is based on pattern matching and answer triangulation. By taking advantage of the redundancy inherent in the Web, each answer found by the system is triangulated (confirmed or disconfirmed) against other possible answers. Our approach is entirely self-learning: it does not involve any linguistic resources, nor it does require any manual tuning. Thus, the propose approach can easily be replicated in other information systems with large redundancy.
机译:虽然非常成功地提供基于关键字的访问网页,商业搜索门户,例如Google,Yahoo,Altavista和Aol,仍然缺乏回答以自然语言表达的问题的能力。在本文中,我们提出了一种对网上的自动问题的概率方法。我们的方法是基于模式匹配和回答三角测量。通过利用Web中固有的冗余,系统发现的每个答案都是针对其他可能答案的三角形(确认或忽略)。我们的方法完全是自学的:它不涉及任何语言资源,也不需要任何手动调整。因此,提出方法可以在具有大冗余的其他信息系统中容易地复制。

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