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Joint machine learning and human learning design with sequential active learning and outlier detection for linear regression problems

机译:联合机器学习和人工学习设计,具有顺序主动学习和离群值检测的线性回归问题

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In this paper, we propose a joint machine learning and human learning design approach to make the training data labeling task in linear regression problems more efficient and robust to noise, modeling mismatch, and human labeling errors. Considering a sequential active learning scheme which relies on human learning to enlarge training data set, we integrate it with sparse outlier detection algorithms to mitigate the inevitable human errors during training data labeling. First, we assume sparse human errors and formulate the outlier detection as a sparse optimization problem within the sequential active learning procedure. Then, for non-sparse human errors, with the IRT (item response theory) to model the distribution of human errors, appropriate data are selected to reconstruct a training data set with sparse human errors. Simulations are conducted to verify the desirable performance of the proposed approach.
机译:在本文中,我们提出了一种联合机器学习和人工学习的设计方法,以使线性回归问题中的训练数据标记任务对噪声,建模失配和人工标记错误更有效,更可靠。考虑到依赖于人类学习来扩大训练数据集的顺序主动学习方案,我们将其与稀疏离群值检测算法集成在一起,以减轻训练数据标记过程中不可避免的人为错误。首先,我们假设稀疏的人为错误,并将异常检测公式化为顺序主动学习过程中的稀疏优化问题。然后,对于非稀疏的人为错误,使用IRT(项目响应理论)对人为错误的分布进行建模,选择适当的数据以重建具有稀疏人为错误的训练数据集。进行仿真以验证所提出方法的理想性能。

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