A ranking algorithm for query expansion based on the term's appearing probability in the single document

Author:

Chou Shihchieh,Cheng Chinyi,Huang Szujui

Abstract

PurposeThe purpose of this paper is to establish a new approach for solving the expansion term problem.Design/methodology/approachThis study develops an expansion term weighting function derived from the valuable concepts used by previous approaches. These concepts include probability measurement, adjustment according to situations, and summation of weights. Formal tests have been conducted to compare the proposed weighting function with the baseline ranking model and other weighting functions.FindingsThe results reveal stable performance by the proposed expansion term weighting function. It proves more effective than the baseline ranking model and outperforms other weighting functions.Research limitations/implicationsThe paper finds that testing additional data sets and potential applications to real working situations is required before the generalisability and superiority of the proposed expansion term weighting function can be asserted.Originality/valueStable performance and an acceptable level of effectiveness for the proposed expansion term weighting function indicate the potential for further study and development of this approach. This would add to the current methods studied by the information retrieval community for culling information from documents.

Publisher

Emerald

Subject

Library and Information Sciences,Computer Science Applications,Information Systems

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