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首页> 外文期刊>IAENG Internaitonal journal of computer science >Training an Improved TSVR Based on Wavelet Transform Weight Via Unconstrained Convex Minimization
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Training an Improved TSVR Based on Wavelet Transform Weight Via Unconstrained Convex Minimization

机译:通过无约束凸最小化训练基于小波变换权重的改进TSVR

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An improved wavelet transform based weighted ε-twin support vector regression (WW-ε-TSVR) is proposed in this paper. In our WW-ε-TSVR, to reduce the impact of outliers, the wavelet weight matrix is introduced to give different penalties for the samples located in different places. Further, by using the 'plus' function, a pair of unconstrained minimization problems is solved in primal space rather than dual space, in which three smooth functions are introduced to replace the non-differentiable non-smooth 'plus' function. To speed up the training procedure, the generalized derivative iterative approach and Newton iterative approach are used to obtain the approximate solution, and five more detailed iterative algorithms are given. At last, the experimental results on several artificial and UCI datasets indicate that the proposed method is of effectiveness and applicability, it not only gives similar or better generalization performance with other popular methods such as TSVR and ε-TSVR, but also requires less computational time.
机译:提出了一种改进的基于小波变换的加权ε-双胞胎支持向量回归(WW-ε-TSVR)。在我们的WW-ε-TSVR中,为了减少离群值的影响,引入了小波加权矩阵,以对位于不同位置的样本给出不同的惩罚。此外,通过使用“加”函数,在原始空间而非对偶空间中解决了一对无约束的最小化问题,其中引入了三个平滑函数来代替不可微的非平滑“加”函数。为了加快训练过程,使用广义导数迭代法和牛顿迭代法获得近似解,并给出了五种更详细的迭代算法。最后,在几个人工和UCI数据集上的实验结果表明,该方法具有有效性和适用性,不仅可以提供与TSVR和ε-TSVR等其他流行方法相似或更好的泛化性能,而且所需的计算时间更少。

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