INVESTIGADORES
BRIGNOLE Nelida Beatriz
artículos
Título:
Multiobjective evolutionary algorithms for context-based search
Autor/es:
CECCHINI R.L.; LORENZETTI C.M.; MAGUITMAN A.G.; BRIGNOLE N.B
Revista:
JOURNAL OF THE AMERICAN SOCIETY FOR INFORMATION SCIENCE AND TECHNOLOGY
Editorial:
JOHN WILEY & SONS INC
Referencias:
Lugar: New York; Año: 2010 vol. 61 p. 1258 - 1274
ISSN:
1532-2882
Resumen:
Formulating high-quality queries is a key aspect of context-based search. However, determining the effectiveness of a query is challenging because multiple objectives, such as high precision and high recall, are usually involved. In this work, we study techniques that can be applied to evolve contextualized queries when the criteria for determining query quality are based on multiple objectives. We report on the results of three different strategies for evolving queries: (a) single-objective, (b) multiobjective with Pareto-based ranking, and (c) multiobjective with aggregative ranking. After a comprehensive evaluation with a large set of topics, we discuss the limitations of the single-objective approach and observe that both the Pareto-based and aggregative strategies are highly effective for evolving topical queries. In particular, our experiments lead us to conclude that the multiobjective techniques are superior to a baseline as well as to well-known and ad hoc query reformulation techniques.