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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Density-Dependent Quantized Least Squares Support Vector Machine for Large Data Sets
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Density-Dependent Quantized Least Squares Support Vector Machine for Large Data Sets

机译:大数据集的密度相关量化最小二乘支持向量机

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摘要

Based on the knowledge that input data distribution is important for learning, a data density-dependent quantization scheme (DQS) is proposed for sparse input data representation. The usefulness of the representation scheme is demonstrated by using it as a data preprocessing unit attached to the well-known least squares support vector machine (LS-SVM) for application on big data sets. Essentially, the proposed DQS adopts a single shrinkage threshold to obtain a simple quantization scheme, which adapts its outputs to input data density. With this quantization scheme, a large data set is quantized to a small subset where considerable sample size reduction is generally obtained. In particular, the sample size reduction can save significant computational cost when using the quantized subset for feature approximation via the Nyström method. Based on the quantized subset, the approximated features are incorporated into LS-SVM to develop a data density-dependent quantized LS-SVM (DQLS-SVM), where an analytic solution is obtained in the primal solution space. The developed DQLS-SVM is evaluated on synthetic and benchmark data with particular emphasis on large data sets. Extensive experimental results show that the learning machine incorporating DQS attains not only high computational efficiency but also good generalization performance.
机译:基于输入数据分布对于学习很重要的认识,提出了一种数据密度依赖的量化方案(DQS),用于稀疏输入数据表示。通过将表示方案用作附加在众所周知的最小二乘支持向量机(LS-SVM)上的数据预处理单元来证明该方案的实用性,以用于大数据集。本质上,建议的DQS采用单个收缩阈值来获得简单的量化方案,从而使其输出适应输入数据密度。使用这种量化方案,可以将大数据集量化为一个小的子集,在该子集上通常会获得相当大的样本大小减少。特别是,当通过Nyström方法将量化子集用于特征逼近时,样本大小的减少可以节省大量的计算成本。基于量化子集,将近似特征合并到LS-SVM中,以开发依赖于数据密度的量化LS-SVM(DQLS-SVM),从而在原始解空间中获得解析解。对开发的DQLS-SVM进行综合和基准数据评估,尤其着重于大型数据集。大量的实验结果表明,结合了DQS的学习机不仅具有较高的计算效率,而且具有良好的泛化性能。

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