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An experimental comparison of a genetic algorithm and a hill‐climber for term selection

A. MacFarlane (Centre for Interactive Systems Research, Department of Information Science, City University, London, UK)
A. Secker (Computing Laboratory, University of Kent, Canterbury, UK)
P. May (Computing Laboratory, University of Kent, Canterbury, UK)
J. Timmis (Departments of Electronics and Computer Science, University of York, York, UK)

Journal of Documentation

ISSN: 0022-0418

Article publication date: 27 July 2010

512

Abstract

Purpose

The term selection problem for selecting query terms in information filtering and routing has been investigated using hill‐climbers of various kinds, largely through the Okapi experiments in the TREC series of conferences. Although these are simple deterministic approaches, which examine the effect of changing the weight of one term at a time, they have been shown to improve the retrieval effectiveness of filtering queries in these TREC experiments. Hill‐climbers are, however, likely to get trapped in local optima, and the use of more sophisticated local search techniques for this problem that attempt to break out of these optima are worth investigating. To this end, this paper aims to apply a genetic algorithm (GA) to the same problem.

Design/methodology/approach

A standard TREC test collection is used from the TREC‐8 filtering track, recording mean average precision and recall measures to allow comparison between the hill‐climber and GAs. It also varies elements of the GA, such as probability of a word being included, probability of mutation and population size in order to measure the effect of these variables. Different strategies such as elitist and non‐elitist methods are used, as well as roulette wheel and rank selection GAs.

Findings

The results of tests suggest that both techniques are, on average, better than the baseline, but, the implemented GA does not match the overall performance of a hill‐climber. The Rank selection algorithm does better on average than the Roulette Wheel algorithm. There is no evidence in this study that varying word inclusion probability, mutation probability or Elitist method make much difference to the overall results. Small population sizes do not appear to be as effective as larger population sizes.

Research limitations/implications

The evidence provided here would suggest that being stuck in a local optima for the term selection optimization problem does not appear to be detrimental to the overall success of the hill‐climber. The evidence from term rank order would appear to provide extra useful evidence, which hill climbers can use efficiently, and effectively, to narrow the search space.

Originality/value

The paper represents the first attempt to compare hill‐climbers with GAs on a problem of this type.

Keywords

Citation

MacFarlane, A., Secker, A., May, P. and Timmis, J. (2010), "An experimental comparison of a genetic algorithm and a hill‐climber for term selection", Journal of Documentation, Vol. 66 No. 4, pp. 513-531. https://doi.org/10.1108/00220411011052939

Publisher

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Emerald Group Publishing Limited

Copyright © 2010, Emerald Group Publishing Limited

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