Least Squares Generalization-Memorization Regression

Shuai Wang, Yu Wang, Yiwei Song
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引用次数: 0

Abstract

Generalization-Memorization learning endeavors to minimize empirical risk while simultaneously reducing expected risk. Although we often do not pay attention to whether the training samples are accurately memorized during regression, improving generalization performance with better memory is always a goal pursued by regression. To tackle this issue, we introduce two new regression models, Least Squares Generalization-Memorization Regression (LSGMR) and Soft Least Squares Generalization-Memorization Regression (SLSGMR), by introducing the memory kernel learning on Least Squares Support Vector Regression (LSSVR). We conduct tests on these models using synthetic dataset and showcase that the LSSVR model can be viewed as a special case of our proposed model. Our experiments highlight that, for numerous problems, the models incorporating the employed memory mechanisms, LSGMR and SLSGMR, prove highly effective in yielding superior results compared to LSSVR on noise regression.
最小二乘法概括-记忆回归
泛化记忆学习致力于最大限度地降低经验风险,同时减少预期风险。虽然在回归过程中,我们通常不会关注训练样本是否被准确记忆,但通过更好的记忆来提高泛化性能始终是回归所追求的目标。为了解决这个问题,我们在最小二乘支持向量回归(LSSVR)的基础上引入了记忆核学习,从而引入了两种新的回归模型:最小二乘泛化记忆回归(LSGMR)和软最小二乘泛化记忆回归(SLSGMR)。我们使用合成数据集对这些模型进行了测试,结果表明,LSSVR 模型可视为我们所提模型的一个特例。我们的实验突出表明,对于许多问题,结合了所使用的记忆机制(LSGMR 和 SLSGMR)的模型在噪声回归方面证明比 LSSVR 更有效,能产生更好的结果。
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