We propose a novel support vector regression approach called e-Distance Weighted Support Vector Regression (e-DWSVR).e-DWSVR specifically addresses two challenging issues in support vector regression: first, the process of noisy data; second, how to deal with the situation when the distribution of boundary data is different from that of the overall data. The proposed e-DWSVR optimizes the minimum margin and the mean of functional margin simultaneously to tackle these two issues. In addition, we use both dual coordinate descent (CD) and averaged stochastic gradient descent (ASGD) strategies to make e-DWSVR scalable to large scale problems. We report promising results obtained by e-DWSVR in comparison with existing methods on several benchmark datasets.
翻译:我们建议采用新的支持矢量回归法,称为电子偏差加权支持矢量回归(e-DWSVR).e-DWSVR,具体解决支持矢量回归的两个具有挑战性的问题:第一,数据噪音的过程;第二,如何处理边界数据分布与总体数据不同的情况;拟议的e-DWSVR优化最低差幅和功能差平均值,同时解决这两个问题;此外,我们使用双协调基底(CD)和平均随机梯度梯因(ASGD)战略,使e-DWSVR能够适应大规模问题。我们报告,与若干基准数据集的现有方法相比,电子DWSVR所取得的有希望的结果。