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Learning From Mislabeled Training Data Through Ambiguous Learning for In-Home Health Monitoring

机译:通过模糊学习在家庭健康监测中学习误标记的培训数据

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摘要

Data are widely collected via the IoT for machine learning tasks in in-home health monitoring applications and mislabeled training data lead to unreliable machine learning models in in-home health monitoring. Researchers have proposed a wide arrangement of algorithms to deal with mislabeled training data, in which one straightforward and effective solution is to directly filter noise from training data so that the negative effects of mislabeled data can be minimized. In essence, noise filtering might be a suboptimal solution because the mislabeled data are not completely useless. The features and distributions of mislabeled data are still useful for learning, especially when training data are insufficient. In this work, we propose a novel framework to learn from mislabeled training data through ambiguous learning (LeMAL). LeMAL mainly consists of two parts. First, it converts the original training data to ambiguous data. Second, an ambiguous learning algorithm is applied to the ambiguous data. In this work, we propose a novel distance-based ambiguous learning algorithm so that the ambiguous data can be used in a better way. Finally, we demonstrate that LeMAL can effectively improve learning performance over existing noise filtering methods.
机译:数据广泛收集通过内部健康监测应用中的机器学习任务,并误标记培训数据导致家庭健康监测中的不可靠的机器学习模型。研究人员提出了广泛的算法,以处理误标记的训练数据,其中一个简单且有效的解决方案是直接从训练数据过滤噪声,以便最小化误标记数据的负面影响。实质上,噪声过滤可能是次优溶液,因为误标记的数据并不完全无用。误标记数据的特征和分布仍然有用于学习,特别是当训练数据不足时。在这项工作中,我们提出了一种新颖的框架,通过模糊学习(Lemal)来从错误标记的培训数据中学习。 Lemal主要由两部分组成。首先,它将原始训练数据转换为模糊数据。其次,将模糊的学习算法应用于模糊数据。在这项工作中,我们提出了一种新颖的距离的模糊学习算法,以便以更好的方式使用模糊的数据。最后,我们展示了Lemal可以通过现有的噪声滤波方法有效地改善学习性能。

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