A new fuzzy logic-based query expansion model for efficient information retrieval using relevance feedback approach

被引:0
作者
Jagendra Singh
Aditi Sharan
机构
[1] Jawaharlal Nehru University,
来源
Neural Computing and Applications | 2017年 / 28卷
关键词
Information retrieval system; Query expansion; Relevance feedback; Term weighting schemes; Fuzzy information system; Fuzzy logic controller;
D O I
暂无
中图分类号
学科分类号
摘要
Efficient query expansion (QE) terms selection methods are really very important for improving the accuracy and efficiency of the system by removing the irrelevant and redundant terms from the top-retrieved feedback documents corpus with respect to a user query. Each individual QE term selection method has its weaknesses and strengths. To overcome the weaknesses and to utilize the strengths of the individual method, we used multiple terms selection methods together. In this paper, we present a new method for QE based on fuzzy logic considering the top-retrieved document as relevance feedback documents for mining additional QE terms. Different QE terms selection methods calculate the degrees of importance of all unique terms of top-retrieved documents collection for mining additional expansion terms. These methods give different relevance scores for each term. The proposed method combines different weights of each term by using fuzzy rules to infer the weights of the additional query terms. Then, the weights of the additional query terms and the weights of the original query terms are used to form the new query vector, and we use this new query vector to retrieve documents. All the experiments are performed on TREC and FIRE benchmark datasets. The proposed QE method increases the precision rates and the recall rates of information retrieval systems for dealing with document retrieval. It gets a significant higher average recall rate, average precision rate and F measure on both datasets.
引用
收藏
页码:2557 / 2580
页数:23
相关论文
共 70 条
  • [1] Bache R(2013)The likelihood property in general retrieval operations original research article Inf Sci 234 97-111
  • [2] Ballie M(2014)Optimization techniques for improving the performance of information retrieval system Int J Res Adv Technol 2 263-267
  • [3] Crestani F(2012)A survey of automatic query expansion in information retrieval ACM Comput Surv 44 1-50
  • [4] Bade Y(2006)Adaptive relevance feedback method of extended boolean model using hierarchical clustering techniques Inform Process Manag 42 331-349
  • [5] Bhat R(1987)The vocabulary problem in human-system communication Commun ACM 30 964-971
  • [6] Borate P(2015)A new fuzzy logic based ranking function for efficient information retrieval system Expert Syst Appl 42 1223-1234
  • [7] Carpineto C(2011)Modeling term proximity for probabilistic information retrieval models Inf Sci 181 3017-3031
  • [8] Romano G(2011)A relational vector space model using an advanced weighting scheme for image retrieval Inform Process Manag 47 391-414
  • [9] Choi J(2014)Content-based image retrieval using extroverted semantics: a probabilistic approach Neural Comput Appl 24 1735-1748
  • [10] Kim M(1990)Fuzzy logic in control systems: fuzzy logic controller, Parts I and II IEEE Transaction on System, Man and Cybernetics 20 404-435