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Lazy lasso for local regression

机译:惰性套索进行局部回归

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摘要

Locally weighted regression is a technique that predicts the response for new data items from their neighbors in the training data set, where closer data items are assigned higher weights in the prediction. However, the original method may suffer from overfitting and fail to select the relevant variables. In this paper we propose combining a regularization approach with locally weighted regression to achieve sparse models. Specifically, the lasso is a shrinkage and selection method for linear regression. We present an algorithm that embeds lasso in an iterative procedure that alternatively computes weights and performs lasso-wise regression. The algorithm is tested on three synthetic scenarios and two real data sets. Results show that the proposed method outperforms linear and local models for several kinds of scenarios.
机译:局部加权回归是一种预测新数据项来自训练数据集中邻居的响应的技术,其中在预测中为较近的数据项分配较高的权重。但是,原始方法可能会过拟合并且无法选择相关变量。在本文中,我们建议将正则化方法与局部加权回归结合以实现稀疏模型。具体地说,套索是用于线性回归的收缩和选择方法。我们提出了一种将套索嵌入到迭代过程中的算法,该迭代过程可替代地计算权重并执行套索明智的回归。该算法在三个综合场景和两个真实数据集上进行了测试。结果表明,该方法在多种情况下均优于线性模型和局部模型。

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