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A Zero-Norm Feature Selection Method for Improving the Performance of the One-Class Machine Learning for MicroRNA Target Detection

机译:用于提高MicroRNA目标检测的单级机器学习性能的零规范特征选择方法

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The application of one-class machine learning is gaining attention in the computational biology community. Different studies have described the use of two-class machine learning to predict microRNAs (miRNAs) gene target. Most of these methods require the generation of an artificial negative class. However, designation of the negative class can be problematic and if it is not properly done can affect the performance of the classifier dramatically and/or yield a biased estimate of performance. We present study using one-class machine learning for miRNA target discovery and compare one-class to two-class approaches using a zero-norm for feature selection. The usage of this simple feature selection cause an improving of the one-class results, where in some cases reaches the performance of the two-class approach. Of all the one-class methods tested based on the all features, we found that most of them gave similar accuracy that range from 0.81 to 0.89 while the two-class gave 0.93-0.99 accuracy. Interestingly, using zero-norm feature selection improves the results to reach accuracy of about 0.96. One and two class methods can both give useful classification accuracies. The advantage of one class methods is that they don't require any additional effort for choosing the best way of generating the negative class. In these cases one-class methods can be superior to two-class methods when the features which are chosen as representative of that positive class are well defined.
机译:单级机器学习在计算生物社区中的应用。不同的研究已经描述了使用两班机器学习来预测微大RNA(miRNA)基因靶标。大多数这些方法都需要生成人为负类。然而,负类的指定可能是有问题的,如果没有正确完成,可以显着地影响分类器的性能和/或产生偏置的性能估计。我们在使用单级机器学习的Mirna Target发现的研究和使用零常态比较为特征选择的单级方法进行比较。这种简单的特征选择的使用导致改进单级结果,在某些情况下达到了双层方法的性能。在基于所有特征测试的所有单级方法中,我们发现大多数的准确性相似,从0.81到0.89的准确性提供了0.81〜0.89。有趣的是,使用零常态特征选择改善了达到约0.96的准确度的结果。一个和两个类方法都可以提供有用的分类精度。一种类方法的优势在于它们不需要任何额外的努力来选择生成负类的最佳方式。 In these cases one-class methods can be superior to two-class methods when the features which are chosen as representative of that positive class are well defined.

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