岭回归、Lasso估计和弹性网正则化三种常用正则化方法的预测精度

Adel Aloraini
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引用次数: 3

摘要

本文使用13个数据集进行了大量的经验实验,以了解岭回归、lasso估计和弹性网正则化方法的正则化效果。该研究提供了一个深入的理解数据集如何影响每个正则化方法对给定问题的预测精度的好坏,因为使用的数据集存在多样性。结果表明,数据集对正则化方法的性能起着至关重要的作用,预测精度在很大程度上取决于采样数据集的性质。
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On the Prediction Accuracies of Three Most Known Regularizers : Ridge Regression, The Lasso Estimate and Elastic Net Regularization Methods
The work in this paper shows intensive empirical experiments using 13 datasets to understand the regularization effectiveness of ridge regression, the lasso estimate, and elastic net regularization methods. The study offers a deep understanding of how the datasets affect the goodness of the prediction accuracy of each regularization method for a given problem given the diversity in the datasets used. The results have shown that datasets play crucial rules on the performance of the regularization method and that the predication accuracy depends heavily on the nature of the sampled datasets.
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