识别对低质量数据具有鲁棒性的学习者

A. Folleco, T. Khoshgoftaar, J. V. Hulse, Amri Napolitano
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引用次数: 63

摘要

现实世界的数据集通常包含分布在自变量和因变量中的噪声。噪声通常由错误的变量值组成,已被证明会显著影响学习器的分类性能。在本研究中,我们识别了在低质量(噪声)测量数据存在下具有鲁棒性能的学习器。将噪声注入到五类不平衡软件工程测量数据集中,初始相对无噪声。考虑的实验因素包括使用的学习器、注入噪声的水平、使用的数据集(每个数据集都具有独特的属性)以及包含噪声的少数实例的百分比。没有其他相关的研究发现,已经确定学习者在低质量的测量数据的存在是稳健的。基于本研究的结果,我们建议使用随机森林学习器从噪声数据中构建分类模型。
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Identifying learners robust to low quality data
Real world datasets commonly contain noise that is distributed in both the independent and dependent variables. Noise, which typically consists of erroneous variable values, has been shown to significantly affect the classification performance of learners. In this study, we identify learners with robust performance in the presence of low quality (noisy) measurement data. Noise was injected into five class imbalanced software engineering measurement datasets, initially relatively free of noise. The experimental factors considered included the learner used, the level of injected noise, the dataset used (each with unique properties), and the percentage of minority instances containing noise. No other related studies were found that have identified learners that are robust in the presence of low quality measurement data. Based on the results of this study, we recommend using the random forest learner for building classification models from noisy data.
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