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On-line legal aid(Markov chain model for efficient retrieval of legal documents

机译:在线法律援助(有效检索法律文件的马尔可夫链模型)

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It is widely accepted that, with large databases, the key to good performance is effective data-clustering. In any large document database clustering is essential for efficient search, browse and therefore retrieval. Cluster analysis allows the identification of groups, or clusters, of similar objects in multi-dimensional space [ 1 ]. Conventional document retrieval systems involve the matching of a query against individual documents, whereas a clustered search compares a query with clusters of documents, thereby achieving efficient retrieval. In most document databases, periodic updating of clusters is required due to the dynamic nature of a database. Experimental evidence, however, shows that clustered searches are substantially less effective than conventional searches of corresponding non-clustered documents. In this paper, we investigate the present clustering criteria and its drawbacks. We propose a new approach to clustering and justify the reasons why this new approach should be tested and (if proved beneficial) adopted.
机译:对于大型数据库,获得良好性能的关键是有效的数据聚类,这已被广泛接受。在任何大型文档中,数据库簇对于有效搜索,浏览以及因此检索都是必不可少的。聚类分析可以识别多维空间中相似对象的组或聚类[1]。传统的文档检索系统涉及查询与单个文档的匹配,而聚类搜索将查询与文档簇进行比较,从而实现高效检索。在大多数文档数据库中,由于数据库的动态性质,需要定期更新群集。但是,实验证据表明,与常规搜索相应的非聚簇文档相比,聚簇搜索的效率要低得多。在本文中,我们研究了当前的聚类标准及其缺点。我们提出了一种新的聚类方法,并说明了为什么应该测试和采用这种新方法(如果证明是有益的)的原因。

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