Improvement of term weight result in the information retrieval systems

Amril Mutoi Siregar, Adam Puspabhuana
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引用次数: 2

Abstract

Now finding relevant information is absolutely needed by users of the information. Actually, finding relevant information is more difficult than just looking for information. The presence information retrieval (IR) system is a system for automatically searching the relevant information to the user needs, which is expressed in the required query, and this query will be used as an input and processed by IR system and then will get relevant documents to the required query. One of methods of finding relevant information by query is term weighting by both query and document. The commonly used methods are the term weighting of local and global weighting, while the local term weighting algorithms that are used such as TF, TF logarithmic, binary TF and augmented TF and global weighting is IDF, IDFP, IDFB. In this research, besides of comparison of term weighting algorithms, it is also proposed new improvement in term weighting algorithms by adding global weight value that changes base 10 logarithmic to base 2 logarithmic and adds the number 1 in the global term weighting IDFP. Measurements result of this research are Precision, Recall and NIAP. In This research, the best result for precision and NAIP have been performed by new propose term weighting algorithms. After compare and analyze the result of the weighting algorithms. It is necessary to combine the weighting with semantic algorithms so that it will get better result.
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关键词权重的改进导致了信息检索系统的发展
现在查找相关信息是信息使用者绝对需要的。事实上,找到相关信息比仅仅寻找信息要困难得多。存在信息检索(IR)系统是一种自动搜索用户需要的相关信息的系统,用户需要的信息以所需查询的形式表达出来,该查询作为输入,由IR系统进行处理,得到所需查询的相关文档。通过查询查找相关信息的方法之一是对查询和文档进行术语加权。常用的方法是局部加权和全局加权的术语加权,而使用的局部术语加权算法如TF、TF对数、二进制TF和增广TF和全局加权是IDF、IDFP、IDFB。本研究除了对术语加权算法进行比较外,还对术语加权算法提出了新的改进,即增加全局权重值,将以10为基数的对数改为以2为基数的对数,并在全局术语加权IDFP中增加数字1。本研究的测量结果为Precision、Recall和NIAP。在本研究中,新提出的术语加权算法在精度和NAIP方面取得了最好的结果。并对各加权算法的结果进行了比较和分析。为了得到更好的结果,有必要将权重与语义算法相结合。
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