Interpreting TF-IDF term weights as making relevance decisions

Author:

Wu Ho Chung1,Luk Robert Wing Pong1,Wong Kam Fai2,Kwok Kui Lam3

Affiliation:

1. The Hong Kong Polytechnic University, Kowloon, Hong Kong

2. The Chinese University of Hong Kong, Hong Kong SAR, The People's Republic of China

3. Queens College, City University of New York, Flushing, NY

Abstract

A novel probabilistic retrieval model is presented. It forms a basis to interpret the TF-IDF term weights as making relevance decisions. It simulates the local relevance decision-making for every location of a document, and combines all of these “local” relevance decisions as the “document-wide” relevance decision for the document. The significance of interpreting TF-IDF in this way is the potential to: (1) establish a unifying perspective about information retrieval as relevance decision-making; and (2) develop advanced TF-IDF-related term weights for future elaborate retrieval models. Our novel retrieval model is simplified to a basic ranking formula that directly corresponds to the TF-IDF term weights. In general, we show that the term-frequency factor of the ranking formula can be rendered into different term-frequency factors of existing retrieval systems. In the basic ranking formula, the remaining quantity - logp(r¯|td) is interpreted as the probability of randomly picking a nonrelevant usage (denoted by r¯) of termt. Mathematically, we show that this quantity can be approximated by the inverse document-frequency (IDF). Empirically, we show that this quantity is related to IDF, using four reference TREC ad hoc retrieval data collections.

Funder

Research Grants Council, University Grants Committee, Hong Kong

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Science Applications,General Business, Management and Accounting,Information Systems

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