Probase:用于文本理解的概率分类法

Wentao Wu, Hongsong Li, Haixun Wang, Kenny Q. Zhu
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引用次数: 796

摘要

知识是理解的必要条件。持续的信息爆炸凸显了让机器更好地理解人类语言的电子文本的必要性。很多工作都致力于为此目的创建通用本体或分类法。然而,现有的本体都不具备普遍理解所需的深度和广度。在本文中,我们提出了一个普遍的概率分类,它比任何现有的分类都更全面。它包含了从16.8亿个网页的语料库中自动提取的270万个概念。与将知识视为非黑即白的传统分类法不同,它使用概率对其包含的不一致、模糊和不确定的信息进行建模。我们详细介绍了分类法是如何构建的,它的概率建模,以及它在文本理解中的潜在应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probase: a probabilistic taxonomy for text understanding
Knowledge is indispensable to understanding. The ongoing information explosion highlights the need to enable machines to better understand electronic text in human language. Much work has been devoted to creating universal ontologies or taxonomies for this purpose. However, none of the existing ontologies has the needed depth and breadth for universal understanding. In this paper, we present a universal, probabilistic taxonomy that is more comprehensive than any existing ones. It contains 2.7 million concepts harnessed automatically from a corpus of 1.68 billion web pages. Unlike traditional taxonomies that treat knowledge as black and white, it uses probabilities to model inconsistent, ambiguous and uncertain information it contains. We present details of how the taxonomy is constructed, its probabilistic modeling, and its potential applications in text understanding.
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