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引用次数: 0

摘要

具有大量文档间相似性的文本文件或文档集合在不同的领域中很常见。这类相似之处和双重差异的一个实际意义重大的类别,可以很好地通过编辑脚本(或者通俗地说,使用简单的文档序列模型的差异)来描述。对这些差异的研究为了解集合内的文档间关系提供了有价值的见解,并可以指导集合内部和跨集合的数据集成。本文描述了一个基于频繁发生的文件间差异的研究框架。它激发并定义了挖掘频繁差异的一般问题,并概述了一些具体实例。提出了一个用于频繁差异交互发现和可视化的原型系统的设计与实现。该方法的一个显著特点是使用差分组件(delta)来引导发现文件集合中感兴趣的结构。本文描述了该方法的初步实验评估和在一个广泛使用的文件集合语料库上的实现。
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Mining Frequent Differences in File Collections
Collections of textual files, or documents, with substantial inter-document similarities are common in diverse domains. A practically significant class of such similarities, and the dual differences, are well characterized by edit scripts, or colloquially diffs, that use a simple sequence model for documents. The study of such diffs provides valuable insights into the inter-document relationships within a collection and can guide data integration within and across collections. This paper describes a framework for such study that is based on frequently occurring inter-document differences. It motivates and defines a general problem of mining frequent differences and outlines some specific instances. It presents the design and implementation of a prototype system for interactively discovering and visualizing frequent differences. A notable feature of this method is its use of difference-components, or deltas, to bootstrap the discovery of interesting structure in file collections. The paper describes a preliminary experimental evaluation of the method and implementation on a widely used corpus of file-collections.
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