首页> 外文期刊>Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on >Probability-Confidence-Kernel-Based Localized Multiple Kernel Learning With Norm
【24h】

Probability-Confidence-Kernel-Based Localized Multiple Kernel Learning With Norm

机译:基于概率-可信-核的局部多核学习

获取原文
获取原文并翻译 | 示例
           

摘要

Localized multiple kernel learning (LMKL) is an attractive strategy for combining multiple heterogeneous features in terms of their discriminative power for each individual sample. However, models excessively fitting to a specific sample would obstacle the extension to unseen data, while a more general form is often insufficient for diverse locality characterization. Hence, both learning sample-specific local models for each training datum and extending the learned models to unseen test data should be equally addressed in designing LMKL algorithm. In this paper, for an integrative solution, we propose a probability confidence kernel (PCK), which measures per-sample similarity with respect to probabilistic-prediction-based class attribute: The class attribute similarity complements the spatial-similarity-based base kernels for more reasonable locality characterization, and the predefined form of involved class probability density function facilitates the extension to the whole input space and ensures its statistical meaning. Incorporating PCK into support-vectormachine-based LMKL framework, we propose a new PCK-LMKL with arbitrary -norm constraint implied in the definition of PCKs, where both the parameters in PCK and the final classifier can be efficiently optimized in a joint manner. Evaluations of PCK-LMKL on both benchmark machine learning data sets (ten University of California Irvine (UCI) data sets) and challenging computer vision data sets (15-scene data set and Caltech-101 data set) have shown to achieve state-of-the-art performances.
机译:本地化多核学习(LMKL)是一种吸引人的策略,可以根据每个样本的判别能力来组合多个异构特征。但是,过度适合于特定样本的模型将阻碍扩展看不见的数据,而更通用的形式通常不足以进行各种局部特征描述。因此,在设计LMKL算法时,应同时解决为每个训练数据学习样本特定的局部模型以及将学习的模型扩展到看不见的测试数据的问题。在本文中,对于一个综合解决方案,我们提出了一个概率置信度内核(PCK),它可以测量基于概率预测的类属性的每个样本的相似性:类属性相似性是对基于空间相似性的基础内核的补充。更合理的局部特征描述以及所涉及的类概率密度函数的预定义形式有助于扩展到整个输入空间并确保其统计意义。将PCK集成到基于支持向量机的LMKL框架中,我们提出了一种新PCK-LMKL,该PCK-LMKL在PCK的定义中暗含了任意范数约束,其中PCK中的参数和最终分类器可以通过联合方式进行有效优化。对基准机器学习数据集(十个加州大学尔湾分校(UCI)数据集)和具有挑战性的计算机视觉数据集(15场景数据集和Caltech-101数据集)的PCK-LMKL评估均显示出达到了最先进的表演。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号