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Active Learning with Model Selection in Linear Regression

机译:线性回归模型选择的主动学习

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Optimally designing the location of training input points (active learning) and choosing the best model (model selection) are two important components of supervised learning and have been studied extensively. However, these two issues seem to have been investigated separately as two independent problems. If training input points and models are simultaneously optimized, the generalization performance would be further improved. In this paper, we propose a new approach called ensemble active learning for solving the problems of active learning and model selection at the same time. We demonstrate by numerical experiments that the proposed method compares favorably with alternative approaches such as iteratively performing active learning and model selection in a sequential manner.
机译:最佳地设计训练输入点(主动学习)和选择最佳模型(模型选择)的位置是监督学习的两个重要组成部分,并已广泛研究。但是,这两个问题似乎已被单独调查为两个独立问题。如果同时优化培训输入点和模型,则概括性性能将进一步提高。在本文中,我们提出了一种称为集合主动学习的新方法,同时解决主动学习和模型选择的问题。我们通过数值实验证明了所提出的方法利用替代方法比较,例如以顺序方式迭代地执行主动学习和模型选择。

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