Local Similarity Search for Unstructured Text

Pei Wang, Chuan Xiao, Jianbin Qin, Wei Wang, Xiaoyan Zhang, Y. Ishikawa
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引用次数: 25

Abstract

With the growing popularity of electronic documents, replication can occur for many reasons. People may copy text segments from various sources and make modifications. In this paper, we study the problem of local similarity search to find partially replicated text. Unlike existing studies on similarity search which find entirely duplicated documents, our target is to identify documents that approximately share a pair of sliding windows which differ by no more than τ tokens. Our problem is technically challenging because for sliding windows the tokens to be indexed are less selective than entire documents, rendering set similarity join-based algorithms less efficient. Our proposed method is based on enumerating token combinations to obtain signatures with high selectivity. In order to strike a balance between signature and candidate generation, we partition the token universe and for different partitions we generate combinations composed of different numbers of tokens. A cost-aware algorithm is devised to find a good partitioning of the token universe. We also propose to leverage the overlap between adjacent windows to share computation and thus speed up query processing. In addition, we develop the techniques to support the large thresholds. Experiments on real datasets demonstrate the efficiency of our method against alternative solutions.
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非结构化文本的局部相似度搜索
随着电子文档的日益普及,复制的发生有很多原因。人们可以从各种来源复制文本片段并进行修改。在本文中,我们研究了局部相似搜索的问题,以找到部分复制的文本。与现有的相似性搜索研究发现完全重复的文档不同,我们的目标是识别大约共享一对滑动窗口的文档,其差异不超过τ个令牌。我们的问题在技术上是具有挑战性的,因为对于滑动窗口,要索引的令牌比整个文档的选择性要低,使得基于集合相似度连接的算法效率较低。我们提出的方法是基于枚举令牌组合来获得高选择性的签名。为了在签名和候选生成之间取得平衡,我们对令牌域进行分区,对于不同的分区,我们生成由不同数量的令牌组成的组合。设计了一种成本感知算法来找到令牌域的良好划分。我们还建议利用相邻窗口之间的重叠来共享计算,从而加快查询处理。此外,我们还开发了支持大阈值的技术。在真实数据集上的实验证明了我们的方法对替代解决方案的有效性。
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