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Improving the Structuring Capabilities of Statistics-Based Local Learners

机译:提高基于统计局的本地学习者的结构性能力

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Function approximation, a mainstay of machine learning, is a useful tool in science and engineering. Local learning approches subdivide the learning space into regions to be approximated locally by linear models. An arrangement of regions that conforms to the structure of the target function leads to learning with fewer resources and gives an insight into the function being approximated. This paper introduces a covariance-based update for the size and shape of each local region. An evaluation shows that the method improves the structuring capabilities of state-of-the-art statistics-based local learners.
机译:函数近似是机器学习的主干,是科学和工程的有用工具。本地学习批准将学习空间细分为由线性模型将学习空间分解为区域近似的区域。符合目标函数结构的区域的布置导致利用较少的资源学习,并对近似的功能进行了解。本文介绍了基于协方差的更新,用于每个本地区域的大小和形状。评估表明,该方法提高了最先进的基于统计局的本地学习者的结构化能力。

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