通过图距离最小化实现实体链接

Roi Blanco, P. Boldi, Andrea Marino
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引用次数: 4

摘要

实体链接是一种自然语言处理任务,它包括识别一段文本中提到的实体,将每个实体链接到某个知识库中的适当项目;当知识库是Wikipedia时,问题就被称为wiki化(在本例中,条目是Wikipedia文章)。实体链接的一个实例可以形式化为基础概念图上的优化问题,其中要优化的数量是所选项目之间的平均距离。受此应用的启发,我们定义了一个新的图问题,它是最大容量代表集的自然变体。我们证明了我们的问题对于一般图是np困难的;然而,在一些限制性的假设下,它在线性时间内是可解的。对于一般情况,我们提出了两种启发式方法:一种尝试执行上述假设,另一种基于击球距离的概念;我们通过实验展示了这些方法在现实世界数据集上的一些基线上的表现。
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Entity-Linking via Graph-Distance Minimization
Entity-linking is a natural-language-processing task that consists in identifying the entities mentioned in a piece of text, linking each to an appropriate item in some knowledge base; when the knowledge base is Wikipedia, the problem comes to be known as wikification (in this case, items are wikipedia articles). One instance of entity-linking can be formalized as an optimization problem on the underlying concept graph, where the quantity to be optimized is the average distance between chosen items. Inspired by this application, we define a new graph problem which is a natural variant of the Maximum Capacity Representative Set. We prove that our problem is NP-hard for general graphs; nonetheless, under some restrictive assumptions, it turns out to be solvable in linear time. For the general case, we propose two heuristics: one tries to enforce the above assumptions and another one is based on the notion of hitting distance; we show experimentally how these approaches perform with respect to some baselines on a real-world dataset.
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