Title
Term frequency with average term occurrences for textual information retrieval
Abstract
In the context of information retrieval (IR) from text documents, the term weighting scheme (TWS) is a key component of the matching mechanism when using the vector space model. In this paper, we propose a new TWS that is based on computing the average term occurrences of terms in documents and it also uses a discriminative approach based on the document centroid vector to remove less significant weights from the documents. We call our approach Term Frequency With Average Term Occurrence (TF-ATO). An analysis of commonly used document collections shows that test collections are not fully judged as achieving that is expensive and maybe infeasible for large collections. A document collection being fully judged means that every document in the collection acts as a relevant document to a specific query or a group of queries. The discriminative approach used in our proposed approach is a heuristic method for improving the IR effectiveness and performance and it has the advantage of not requiring previous knowledge about relevance judgements. We compare the performance of the proposed TF-ATO to the well-known TF-IDF approach and show that using TF-ATO results in better effectiveness in both static and dynamic document collections. In addition, this paper investigates the impact that stop-words removal and our discriminative approach have on TF-IDF and TF-ATO. The results show that both, stop-words removal and the discriminative approach, have a positive effect on both term-weighting schemes. More importantly, it is shown that using the proposed discriminative approach is beneficial for improving IR effectiveness and performance with no information on the relevance judgement for the collection.
Year
DOI
Venue
2016
10.1007/s00500-015-1935-7
Soft Computing - A Fusion of Foundations, Methodologies and Applications
Keywords
Field
DocType
Heuristic term-weighting scheme, Random term weights, Textual information retrieval, Discriminative approach, Stop-words removal
Heuristic,Weighting,Information retrieval,Computer science,Textual information,Judgement,Artificial intelligence,Vector space model,Discriminative model,Centroid,Machine learning
Journal
Volume
Issue
ISSN
20
8
1432-7643
Citations 
PageRank 
References 
8
0.51
20
Authors
2
Name
Order
Citations
PageRank
o ali sadek ibrahim180.51
Dario Landa Silva231628.38