Mohammad-Ali Yaghoub-Zadeh-Fard, B. Minaei-Bidgoli, Saeed Rahmani, Saeed Shahrivari
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引用次数: 9

摘要

随着新的信息资源的出现,搜索引擎不得不存储大量的文本材料,这给搜索引擎带来了新的挑战。对于那些缺乏硬件资源和预算有限的小型公司来说,这种情况就更加严重了。在这种情况下,减少索引大小是至关重要的,因为这是为了保持检索的准确性。在文本处理系统中,减少索引大小的主要方法之一是删除停止词,即那些对文档的信息内容没有贡献的频繁出现的术语。尽管世界上几乎所有的语言都有手动建立的停词列表,但停词列表是特定于领域的;换句话说,一个特定领域的停用词可能在另一个领域发挥不可或缺的作用。本文提出了一种波斯语信息检索系统中自动建立停止词表的聚合方法。该方法通过词性标注和分析词汇的统计特征,提高了检索的准确性,并最大限度地减少了删除信息词汇的潜在副作用。实验结果表明,该方法提高了平均精度,减小了索引存储大小,提高了整体响应时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PSWG: An automatic stop-word list generator for Persian information retrieval systems based on similarity function & POS information
By the advent of new information resources, search engines have encountered a new challenge since they have been obliged to store a large amount of text materials. This is even more drastic for small-sized companies which are suffering from a lack of hardware resources and limited budgets. In such a circumstance, reducing index size is of paramount importance as it is to maintain the accuracy of retrieval. One of the primary ways to reduce the index size in text processing systems is to remove stop-words, frequently occurring terms which do not contribute to the information content of documents. Even though there are manually built stop-word lists almost for all languages in the world, stop-word lists are domain-specific; in other words, a term which is a stop-word in a specific domain may play an indispensable role in another one. This paper proposes an aggregated method for automatically building stop-word lists for Persian information retrieval systems. Using part of speech tagging and analyzing statistical features of terms, the proposed method tries to enhance the accuracy of retrieval and minimize potential side effects of removing informative terms. The experiment results show that the proposed approach enhances the average precision, decreases the index storage size, and improves the overall response time.
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