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Online Learning Algorithms for Double-Weighted Least Squares Twin Bounded Support Vector Machines

机译:双权最小二乘有界支持向量机的在线学习算法

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Twin support vector machine with two nonparallel classifying hyperplanes and its extensions have attracted much attention in machine learning and data mining. However, the prediction accuracy may be highly influenced when noise is involved. In particular, for the least squares case, the intractable computational burden may be incurred for large scale data. To address the above problems, we propose the double-weighted least squares twin bounded support vector machines and develop the online learning algorithms. By introducing the double-weighted mechanism, the linear and nonlinear double-weighted learning models are proposed to reduce the influence of noise. The online learning algorithms for solving the two models are developed, which can avoid computing the inverse of the large scale matrices. Furthermore, a new pruning mechanism which can avoid updating the kernel matrices in every iteration step for solving nonlinear model is also developed. Simulation results on three UCI data with noise demonstrate that the online learning algorithm for the linear double-weighted learning model can get least computation time as well considerable classification accuracy. Simulation results on UCI data and two-moons data with noise demonstrate that the nonlinear double-weighted learning model can be effectively solved by the online learning algorithm with the pruning mechanism.
机译:具有两个非并行分类超平面的双支持向量机及其扩展在机器学习和数据挖掘中引起了极大的关注。但是,当涉及噪声时,预测精度可能会受到很大影响。特别地,对于最小二乘的情况,对于大规模数据可能引起难以计算的负担。为了解决上述问题,我们提出了双加权最小二乘孪生有界支持向量机,并开发了在线学习算法。通过引入双重加权机制,提出了线性和非线性双重加权学习模型,以减少噪声的影响。开发了用于求解这两个模型的在线学习算法,该算法可避免计算大规模矩阵的逆。此外,还开发了一种新的修剪机制,该机制可以避免在求解非线性模型的每个迭代步骤中更新内核矩阵。对三个带噪声的UCI数据的仿真结果表明,线性双加权学习模型的在线学习算法可以获得最少的计算时间以及相当大的分类精度。对带有噪声的UCI数据和两月数据的仿真结果表明,采用修剪机制的在线学习算法可以有效地解决非线性双重加权学习模型。

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