基于CASISS的半结构化文档信息检索:CASISS模型

Larbi Guezouli , Hassane Essafi
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引用次数: 3

摘要

本文旨在解决文件之间或文件片段之间的相似性评估问题。为此,我们开发了CASISS(计算半结构化文档的相似性)方法来量化两个给定文本的相似程度。该方法可用于广泛的应用领域,包括内容重用检测,这是一个热点和具有挑战性的课题。它还可以用于提高信息检索过程的准确性,不仅考虑给定文档中查询词的存在(仅内容搜索- CO),而且考虑这些词的拓扑结构(位置连续性)(基于内容和结构搜索- CAS)。跟踪社交媒体信息的来源、版权管理、抄袭检测、社交媒体挖掘和监控、数字取证等应用都需要CASISS等工具来高精度地测量两个文档之间的内容重叠。CASISS使用元素描述符标识半结构化文档的元素。在提取一组元素描述符(描述元素的内容)之前,对每个半结构化文档进行预处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CAS-based information retrieval in semi-structured documents: CASISS model

This paper aims to address the assessment the similarity between documents or pieces of documents. For this purpose we have developed CASISS (CAlculation of SImilarity of Semi-Structured documents) method to quantify how two given texts are similar. The method can be employed in wide area of applications including content reuse detection which is a hot and challenging topic. It can be also used to increase the accuracy of the information retrieval process by taking into account not only the presence of query terms in the given document (Content Only search — CO) but also the topology (position continuity) of these terms (based on Content And Structure Search — CAS). Tracking the origin of the information in social media, copy right management, plagiarism detection, social media mining and monitoring, digital forensic are among other applications require tools such as CASISS to measure, with a high accuracy, the content overlap between two documents.

CASISS identify elements of semi-structured documents using elements descriptors. Each semi-structured document is pre-processed before the extraction of a set of elements descriptors, which characterize the content of the elements.

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