利用实体网格的二部结构进行文档一致性和检索

C. Lioma, Fabien Tarissan, J. Simonsen, Casper Petersen, Birger Larsen
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引用次数: 7

摘要

文档连贯性描述了文本在逻辑组织和话语流方面的意义。尽管相干性是一个相对难以精确量化的概念,但它可以自动近似。这种类型的连贯性建模不仅本身很有趣,而且对许多其他文本处理任务也很有用,包括信息检索(Information Retrieval, IR),其中根据文档的相关性和连贯性调整文档的排名已被证明可以提高检索效率[37]。无监督连贯建模的最新技术将文档表示为句子和话语实体的二部图,然后将这些二部图投影到一模无向图中。然而,单模投影可能会导致原始二部结构中存在的信息的重大损失。为了解决这个问题,我们提出了三个新的图形度量,计算句子和实体的原始二部图上的文档一致性。对标准设置的评估表明:(i)我们的相干度量之一在相干精度方面优于最先进的技术;(ii)我们的所有三个一致性指标都提高了检索效率,因为正如更深入的分析所揭示的那样,它们捕获了基于关键字的标准排名和垃圾邮件过滤都无法检测到的文档质量方面。这项工作提供了理论上有原则的、无参数的、对IR有用的文档一致性度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting the Bipartite Structure of Entity Grids for Document Coherence and Retrieval
Document coherence describes how much sense text makes in terms of its logical organisation and discourse flow. Even though coherence is a relatively difficult notion to quantify precisely, it can be approximated automatically. This type of coherence modelling is not only interesting in itself, but also useful for a number of other text processing tasks, including Information Retrieval (IR), where adjusting the ranking of documents according to both their relevance and their coherence has been shown to increase retrieval effectiveness [37]. The state of the art in unsupervised coherence modelling represents documents as bipartite graphs of sentences and discourse entities, and then projects these bipartite graphs into one--mode undirected graphs. However, one--mode projections may incur significant loss of the information present in the original bipartite structure. To address this we present three novel graph metrics that compute document coherence on the original bipartite graph of sentences and entities. Evaluation on standard settings shows that: (i) one of our coherence metrics beats the state of the art in terms of coherence accuracy; and (ii) all three of our coherence metrics improve retrieval effectiveness because, as closer analysis reveals, they capture aspects of document quality that go undetected by both keyword-based standard ranking and by spam filtering. This work contributes document coherence metrics that are theoretically principled, parameter-free, and useful to IR.
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