Affective detection based on an imbalanced fuzzy support vector machine

•A new algorithm named IBFSVM is proposed, which is based on fuzzy support vector and can be used in imbalanced classification.•Then three artificial datasets and six UCI datasets are used to test the performance of IBFSVM.•Finally IBFSVM is employed in the experiment of affective detection. The int...

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Bibliographic Details
Published inBiomedical signal processing and control Vol. 18; pp. 118 - 126
Main Authors Cheng, Jing, Liu, Guang-Yuan
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.04.2015
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ISSN1746-8094
DOI10.1016/j.bspc.2014.12.006

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Summary:•A new algorithm named IBFSVM is proposed, which is based on fuzzy support vector and can be used in imbalanced classification.•Then three artificial datasets and six UCI datasets are used to test the performance of IBFSVM.•Finally IBFSVM is employed in the experiment of affective detection. The interpretation of physiological signals is an important subject in affective computing. In this paper, we report an experiment to collect affective galvanic skin response signals (GRS), and describe a new imbalanced fuzzy support vector machine (IBFSVM) for their classification. IBFSVM introduces denoising factors and class compensation factors, thus defining a new fuzzy membership. The effectiveness of IBFSVM is verified on various real and artificial datasets. We define an appropriate evaluation criterion (g_mean) that combines the classification accuracy of positive and negative samples, and show that IBFSVM outperforms traditional support vector machines on imbalanced datasets. By running the IBFSVM for the datasets in our experiment, we can find that the g_mean of happiness, sadness, angry and fear is 85.17%, 86.6%, 87.4%, and 81.53% respectively. So IBFSVM is an effective and feasible solution for imbalanced learning in our experiment.
ISSN:1746-8094
DOI:10.1016/j.bspc.2014.12.006