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MicroRNA Target Prediction Based on Support Vector Machine Ensemble Classification Algorithm of Under-sampling Technique / 生物医学工程学杂志
Journal of Biomedical Engineering ; (6): 72-77, 2016.
Article in Chinese | WPRIM | ID: wpr-357849
ABSTRACT
Considering the low accuracy of prediction in the positive samples and poor overall classification effects caused by unbalanced sample data of MicroRNA (miRNA) target, we proposes a support vector machine (SVM)-integration of under-sampling and weight (IUSM) algorithm in this paper, an under-sampling based on the ensemble learning algorithm. The algorithm adopts SVM as learning algorithm and AdaBoost as integration framework, and embeds clustering-based under-sampling into the iterative process, aiming at reducing the degree of unbalanced distribution of positive and negative samples. Meanwhile, in the process of adaptive weight adjustment of the samples, the SVM-IUSM algorithm eliminates the abnormal ones in negative samples with robust sample weights smoothing mechanism so as to avoid over-learning. Finally, the prediction of miRNA target integrated classifier is achieved with the combination of multiple weak classifiers through the voting mechanism. The experiment revealed that the SVM-IUSW, compared with other algorithms on unbalanced dataset collection, could not only improve the accuracy of positive targets and the overall effect of classification, but also enhance the generalization ability of miRNA target classifier.
Subject(s)
Full text: Available Index: WPRIM (Western Pacific) Main subject: Algorithms / Chemistry / MicroRNAs / Support Vector Machine Type of study: Prognostic study Language: Chinese Journal: Journal of Biomedical Engineering Year: 2016 Type: Article

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Full text: Available Index: WPRIM (Western Pacific) Main subject: Algorithms / Chemistry / MicroRNAs / Support Vector Machine Type of study: Prognostic study Language: Chinese Journal: Journal of Biomedical Engineering Year: 2016 Type: Article