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A Novel Online LS-SVM Approach for Regression and Classification

机译:一种新的在线LS-SVM方法,用于回归和分类

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In this paper, a novel online least squares support vector machine approach is proposed for classification and regression problems. Gaussian kernel function is used due to its strong generalization capability. The contribution of the paper is twofold. As the first novelty, all parameters of the SVM including the kernel width parameter σ are trained simultaneously when a new sample arrives. Unscented Kalman filter is adopted to train the parameters since it avoids the sub-optimal solutions caused by linearization in contrast to extended Kalman filter. The second novelty is the variable size moving window by an intelligent update strategy for the support vector set. This provides that SVM model captures the dynamics of data quickly while not letting it become clumsy due to the big amount of useless or out-of-date support vector data. Simultaneous training of the kernel parameter by unscented Kalman filter and intelligent update of support vector set provide significant performance using small amount of support vector data for both classification and system identification application results.
机译:本文提出了一种新的在线最小二乘支持向量机方法,用于分类和回归问题。由于其强大的泛化能力,使用高斯内核功能。纸张的贡献是双重的。作为第一新颖性,当新的样本到达时,包括内核宽度参数σ的SVM的所有参数都是同时训练。采用Unscented Kalman滤波器培训参数,因为它避免了与扩展卡尔曼滤波器相比,通过线性化引起的次优溶液。第二新颖性是由支持向量集的智能更新策略的可变尺寸移动窗口。这提供了SVM模型快速捕获数据的动态,同时由于无用或过时支持传染媒介数据的大量,不会让它变得笨拙。通过Unscented Kalman滤波器同时培训Kernel参数和支持向量集的智能更新,使用少量支持向量数据为分类和系统识别应用结果提供显着性能。

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