PSVM: a preference-enhanced SVM model using preference data for classification

Classification is an essential task in data mining, machine learning and pattern recognition areas.Conventional classification models focus on distinctive samples from different categories. There are fine-grained differences between data instances within a particular category. These differences form...

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Veröffentlicht in:Science China. Information sciences 2017-12, Vol.60 (12), p.161-174, Article 122103
Hauptverfasser: Ma, Lerong, Song, Dandan, Liao, Lejian, Wang, Jingang
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Sprache:eng
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Zusammenfassung:Classification is an essential task in data mining, machine learning and pattern recognition areas.Conventional classification models focus on distinctive samples from different categories. There are fine-grained differences between data instances within a particular category. These differences form the preference information that is essential for human learning, and, in our view, could also be helpful for classification models. In this paper, we propose a preference-enhanced support vector machine(PSVM), that incorporates preference-pair data as a specific type of supplementary information into SVM. Additionally, we propose a two-layer heuristic sampling method to obtain effective preference-pairs, and an extended sequential minimal optimization(SMO)algorithm to fit PSVM. To evaluate our model, we use the task of knowledge base acceleration-cumulative citation recommendation(KBA-CCR) on the TREC-KBA-2012 dataset and seven other datasets from UCI,Stat Lib and mldata.org. The experimental results show that our proposed PSVM exhibits high performance with official evaluation metrics.
ISSN:1674-733X
1869-1919
DOI:10.1007/s11432-016-9020-4