Improving Pairwise Preference Mining Algorithms Using Preference Degrees

Autor: A. Ramos Costa, Juliete, de Amo, Sandra
Přispěvatelé: Federal University of Uberlândia
Jazyk: angličtina
Rok vydání: 2017
Předmět:
Zdroj: Journal of Information and Data Management; Vol 7 No 2 (2016): JOURNAL OF INFORMATION AND DATA MANAGEMENT; 86
Journal of Information and Data Management; v. 7 n. 2 (2016): JOURNAL OF INFORMATION AND DATA MANAGEMENT; 86
Journal of Information and Data Management; v. 7, n. 2 (2016): JOURNAL OF INFORMATION AND DATA MANAGEMENT; 86
ISSN: 2178-7107
Popis: Different preference mining techniques designed to predict a preference order on objects have been proposed in the literature, with very good accuracy results. In this paper, we propose to consider not only the fact that the user prefer an item i1 to an item i2 but also the degree of his preference on the two items. We propose the algorithm FuzzyPrefMiner designed to predict fuzzy preferences and show through a series of experiments that it outperforms pairwise preference mining techniques whose training phase do not include information on preference degrees.
Databáze: OpenAIRE