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Meta Learning on Small Biomedical Datasets

机译:小型生物医学数据集的元学习

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摘要

Meta-learning is one of subsections of supervised machine learning that has continuously grown with interests to apply on new data sets in the late years. Meta learning is the process of knowledge that is acquired by the examples. Bagging, dagging, decorate, rotation forest, and filtered classifiers are well known meta-learning algorithms that are performed to compare with these meta-learning algorithms on 8 different biomedical datasets. In these algorithms, the rotation forest had the better results according to F-measurement and ROC Area in most cases.
机译:元学习是有监督的机器学习的子部分之一,近年来随着人们的兴趣不断增长,可以应用于新的数据集。元学习是示例获取的知识过程。套袋,拖拽,装饰,旋转林和过滤的分类器是众所周知的元学习算法,其被执行以与这些元学习算法在8个不同的生物医学数据集上进行比较。在这些算法中,根据F度量和ROC面积,在大多数情况下,旋转林具有更好的结果。

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