Please use this identifier to cite or link to this item: http://dspace.utpl.edu.ec/handle/123456789/18864
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dc.contributor.authorShi, D.es_ES
dc.date.accessioned2017-06-16T22:02:30Z-
dc.date.available2017-06-16T22:02:30Z-
dc.date.issued2015-10-01es_ES
dc.identifier10.1109/APCASE.2015.13es_ES
dc.identifier.issn9.78E+17es_ES
dc.identifier.other10.1109/APCASE.2015.13es_ES
dc.identifier.urihttp://dspace.utpl.edu.ec/handle/123456789/18864-
dc.description.abstractThe research using computational intelligence methods to improve bad debt recovery is imperative due to the rapid increase in the cost of healthcare in the U.S. This study explores effectiveness of using cost-sensitive learning methods to classify the unknown cases in imbalanced bad debt datasets and compares the results with those of two other methods: undersampling and oversampling, often used in processing imbalanced datasets. The study also analyzes the function of a semi-supervised learning algorithm in different circumstances. The results show that although the predictive accuracy rates with oversampling in balanced testing datasets is the best, it is unpractical due to the existence of imbalanced classes in real healthcare situations. The models constructed by undersampling have high classification accuracy rates of the minority class in imbalanced datasets, but they tend to make the overall classification accuracy rates of the majority class worse. The results show that cost-sensitive learning methods can improve the classification accuracy rates of the minority class in imbalanced datasets while achieving considerably good overall classification accuracy rates and classification accuracy rates of majority class. The results and analysis in this study show that cost-sensitive learning methods provide a potentially viable approach to classify the unknown cases in imbalanced bad debt datasets. At last, more practical predictive results are obtained by using the models to predict the unlabeled cases. Although oversampling and the cost-sensitive learning methods with the semi-supervised learning can improve the overall and majority class classification accuracy rates, the minority class classification accuracy rates are still relatively low. The semi-supervised learning algorithms need to be improved to adapt to the imbalanced bad debt datasets.es_ES
dc.subjectbad debt recoveyes_ES
dc.subjectcost-sensitivees_ES
dc.subjectimbalancedes_ES
dc.subjectsemi-supervised learninges_ES
dc.titleCost-Sensitive Learning for Imbalanced Bad Debt Datasets in Healthcare Industryes_ES
dc.typeArticlees_ES
dc.publisherProceedings - 2015 Asia-Pacific Conference on Computer-Aided System Engineering, APCASE 2015es_ES
Appears in Collections:Artículos de revistas Científicas

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