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handle: 2099/3586 , 10261/10351
[ES] Although the fuzzy retrieval model constitutes a powerful extension of the boolean one, being able to deal with the imprecision and subjectivity existing in the Information Retrieval process, users are not usually able to express their query requirements in the form of an extended boolean query including weights. To solve this problem, different tools to assist the user in the query formulation have been proposed. In this paper, the genetic algorithm-programming technique is considered to build an algorithm of this kind that will be able to automatically learn weighted queries --modeling the user s needs-- for a fuzzy information retrieval system by applying an off-line adaptive process starting from a set of relevant documents.
Peer reviewed
Artificial intelligence, Classificació AMS::68 Computer science::68P Theory of data, Informació -- Sistemes d'emmagatzematge i recuperació -- Gestió, fuzzy retrieval model, Fuzzy information retrieval, Ciències de la computació, Information storage and retrieval of data, :68 Computer science::68P Theory of data [Classificació AMS], Automatic query learning, genetic algorithm, GA-P algorithms, Weighted queries, Cerca bibliogràfica en línia
Artificial intelligence, Classificació AMS::68 Computer science::68P Theory of data, Informació -- Sistemes d'emmagatzematge i recuperació -- Gestió, fuzzy retrieval model, Fuzzy information retrieval, Ciències de la computació, Information storage and retrieval of data, :68 Computer science::68P Theory of data [Classificació AMS], Automatic query learning, genetic algorithm, GA-P algorithms, Weighted queries, Cerca bibliogràfica en línia
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