Efficient evaluation of Top-k Skyline queries.
Resumo
Emerging technologies have made available very large data repositories, which may be unreliable for a given preference criteria. In order to be able to process these repositories, users may need to discard useless information based on some preference conditions. Different preference-based query languages have been defined to support the bases for discriminating poor quality data and to express user”™s preference criteria. In this paper, we consider the preference-based query language, “Top-k Skyline”, which combines the order-based and score-based paradigms. Thus, “Top-k Skyline” is able to identify the top-k objects w.r.t. a score function f among the ordering induced by a multicriteria function m. Several algorithms have been proposed to implement these two paradigms independently; however, the problem of efficiently evaluating “Top-k Skyline” queries remains open. In this work, we propose evaluation strategies for “Top-k Skyline” queries and we report initial experimental results that show the properties of our proposed solutions.
Downloads
Copyright
La Revista Técnica de la Facultad de Ingeniería declara que los derechos de autor de los trabajos originales publicados, corresponden y son propiedad intelectual de sus autores. Los autores preservan sus derechos de autoría y publicación sin restricciones, según la licencia pública internacional no comercial ShareAlike 4.0