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Protein-Protein Interaction Prediction Using Single Class SVM

机译:使用单类支持向量机的蛋白质-蛋白质相互作用预测

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We study the single class SVM (SCSVM) classifier performance on the positive data points while considering the impact of SCSVM on negative protein pair data points. We compare the result with the AA classifier (amino acids maximum entropy classifier) [9] to see if a better performance can be achieved for the same data configuration. The conclusion is that although positive classifier is slightly better than the negative one, the SCSVM classifier performance does not outperform the AA classifier for current data configuration. The "vote" strategy does not change the SCSVM's ROC behavior but increase the confidence of the true positive. Our explanation is that in SCSVM, only one class of training data is available. It is very hard to determine how tight the decision boundary should be to best characterize the known class. Due to the same reason, SCSVM tends to over-fit and under-fit easily. Furthermore, the SCSVM's performance depends on testing data's distribution.
机译:我们研究了正数据点上的单类SVM(SCSVM)分类器性能,同时考虑了SCSVM对负蛋白质对数据点的影响。我们将结果与AA分类器(氨基酸最大熵分类器)[9]进行比较,以查看是否可以在相同的数据配置下实现更好的性能。结论是,尽管正分类器略好于负分类器,但对于当前数据配置,SCSVM分类器的性能并不优于AA分类器。 “投票”策略不会改变SCSVM的ROC行为,但会增加真实肯定的置信度。我们的解释是,在SCSVM中,只有一类训练数据可用。很难确定决策边界应如何严格地描述已知类别。由于相同的原因,SCSVM倾向于容易过度拟合和过度拟合。此外,SCSVM的性能取决于测试数据的分布。

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