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A GA-based feature selection and parameter optimization for linear support higher-order tensor machine

机译:基于GA的线性支持高阶张量机的特征选择和参数优化

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摘要

In the fields of pattern recognition, computer vision, and image processing, many real-world image and video data are more naturally represented as tensors. Recently, based on the supervised tensor learning (STL) framework, a linear support higher-order tensor machine (SHTM) has been proposed. Considering that there are much redundancy information in the tensor data and the model parameter largely affects the performance of SHTM, in this study, we present a genetic algorithm (GA) based feature selection and parameter optimization algorithm for the linear SHTM. The proposed algorithm can remove the redundancy information in tensor data and obtain a better generalized accuracy by searching for the optimal model parameter and feature subset simultaneously. A set of experiments is conducted on nine second-order face recognition datasets and three third-order gait recognition datasets to illustrate the performance of the proposed algorithm. The statistic test shows that compared with the original linear SHTM, the proposed algorithm can provide a significant performance gain in terms of generalized accuracy for tensor classification.
机译:在模式识别,计算机视觉和图像处理领域,许多真实世界的图像和视频数据更自然地表示为张量。最近,基于监督张量学习(STL)框架,提出了一种线性支持的高阶张量机(SHTM)。考虑到张量数据中存在大量冗余信息,并且模型参数极大地影响了SHTM的性能,本研究提出了一种基于遗传算法的线性SHTM特征选择和参数优化算法。通过同时搜索最优模型参数和特征子集,该算法可以去除张量数据中的冗余信息,并获得较好的广义精度。对九个二阶人脸识别数据集和三个三阶步态识别数据集进行了一组实验,以说明所提出算法的性能。统计测试表明,与原始线性SHTM相比,该算法在张量分类的广义精度方面可以提供显着的性能提升。

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