跨语言信息检索中的文本预处理方法

Sakthi Vel S, P. R
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引用次数: 0

摘要

跨语言信息检索(CLIR)是检索相关文档的过程,其中给定查询的语言与检索文档的语言不同。CLIR系统允许用户以不同于搜索查询语言的语言搜索和访问文档。基于查询语言和文档语言的不同,可将CLIR系统分为单语CLIR、双语CLIR和多语CLIR。跨语言信息检索系统的第一步是将给定的文本文档预处理成有用的表示形式。预处理是将给定的文本文档转换为适合任何高级文本相关应用程序的格式的一组任务。该技术可用于减少给定文本文档中的计算过程、噪声数据和不相关信息。本文详细讨论了从BBC在线网站手动采集的两种语言数据集(即泰米尔语和马拉雅拉姆语)的不同预处理技术,如数据集创建、标记化、去噪、去停词、词干提取、词法化和最后的术语加权。最后,研究了词频-逆文档频率(TF-IDF)特征提取技术。这些技术将有助于高性能CLIR系统的设计和建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text Pre-Processing Methods on Cross Language Information Retrieval
Cross Language Information Retrieval (CLIR), is the process of retrieving relevant documents, where in the language of the given query is different from the language of the retrieved documents. CLIR systems allow the users to search and access documents in the language different from the language of the search query. CLIR systems have been divided into Monolingual CLIR, Bi-lingual CLIR, and Multilingual CLIR based on different languages of query and documents. The first step of the Cross Language Information Retrieval system is the text pre-processing of given text documents in to useful representations. Pre-processing is the set of tasks that convert the given text documents into a suitable format for any higher-level text related applications. This technique can be used to reduce the computational process, noise data, and irrelevant information from the given text documents. This paper discusses in detail the different pre-processing techniques such as dataset creation, tokenization, noise removal, stop word removal, stemming, lemmatization and finally term weighting of two languages dataset (i.e., Tamil and Malayalam), which is manually collected from BBC online website. Finally, the study investigates feature extraction techniques of Term Frequency- Inverse Document Frequency (TF-IDF). These techniques will help to design and model CLIR systems with high performance.
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