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Journal ArticleDOI

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

Jagendra Singh, +1 more
- 01 Sep 2017 - 
- Vol. 28, Iss: 9, pp 2557-2580
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TLDR
This paper presents a new method for QE based on fuzzy logic considering the top-retrieved document as relevance feedback documents for mining additional QE terms and increases the precision rates and the recall rates of information retrieval systems for dealing with document retrieval.
Abstract
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.

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Citations
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Journal ArticleDOI

Query expansion techniques for information retrieval: A survey

TL;DR: This paper surveys QE techniques in IR from 1960 to 2017 with respect to core techniques, data sources used, weighting and ranking methodologies, user participation and applications – bringing out similarities and differences.
Journal ArticleDOI

An accelerated PSO for query expansion in web information retrieval: application to medical dataset

TL;DR: A new modelling of QE that aims to find the suitable expanded query from among a set of expanded query candidates and demonstrates that the proposed APSO for QE is very competitive and yields substantial improvement over the other methods in terms of retrieval effectiveness and computational complexity.
Journal Article

Query Term Expansion and Reweighting using Term Co-Occurrence Similarity and Fuzzy Inference

TL;DR: In this paper, a novel technique for term expansion and term reweighting is proposed to improve the effectiveness of the classic relevance techniques for the vector model, which is based on term co-occurrence similarity.
Journal ArticleDOI

A hybrid evolutionary algorithm based automatic query expansion for enhancing document retrieval system

TL;DR: Fuzzy logic is also employed, which improves the performance of accelerated particle swarm optimization by controlling various parameters in this paper, which gets better results in comparison to other automatic query expansion approaches.
Journal ArticleDOI

A Fuzzy Word Similarity Measure for Selecting Top- $k$ Similar Words in Query Expansion

TL;DR: This article proposes to use association rules for measuring word similarity at a global level, and a fuzzy similarity measure for top-k words selection that jointly encodes the local and the global similarities.
References
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Journal ArticleDOI

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