Support vector machine with discriminative low-rank embedding

IF 8.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE CAAI Transactions on Intelligence Technology Pub Date : 2024-04-02 DOI:10.1049/cit2.12329
Guangfei Liang, Zhihui Lai, Heng Kong
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Abstract

Support vector machine (SVM) is a binary classifier widely used in machine learning. However, neglecting the latent data structure in previous SVM can limit the performance of SVM and its extensions. To address this issue, the authors propose a novel SVM with discriminative low-rank embedding (LRSVM) that finds a discriminative latent low-rank subspace more suitable for SVM classification. The extension models of LRSVM are introduced by imposing different orthogonality constraints to prevent computational inaccuracies. A detailed derivation of the authors’ iterative algorithms are given that is essentially for solving the SVM on the low-rank subspace. Additionally, some theorems and properties of the proposed models are presented by the authors. It is worth mentioning that the subproblems of the proposed algorithms are equivalent to the standard or the weighted linear discriminant analysis (LDA) problems. This indicates that the projection subspaces obtained by the authors’ algorithms are more suitable for SVM classification compared to those from the LDA method. The convergence analysis for the authors proposed algorithms are also provided. Furthermore, the authors conduct experiments on various machine learning data sets to evaluate the algorithms. The experiment results show that the authors’ algorithms perform significantly better than other algorithms, which indicates their superior abilities on classification tasks.

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支持向量机与鉴别性低秩嵌入
支持向量机(SVM)是一种广泛应用于机器学习的二元分类器。然而,以往的 SVM 忽略了潜在数据结构,会限制 SVM 及其扩展的性能。为了解决这个问题,作者提出了一种新型的具有鉴别性低秩嵌入的 SVM(LRSVM),它能找到更适合 SVM 分类的鉴别性潜在低秩子空间。通过施加不同的正交约束,引入了 LRSVM 的扩展模型,以防止计算不准确。详细推导了作者的迭代算法,该算法主要用于求解低阶子空间上的 SVM。此外,作者还介绍了所提模型的一些定理和属性。值得一提的是,所提算法的子问题等同于标准或加权线性判别分析(LDA)问题。这表明与 LDA 方法相比,作者算法得到的投影子空间更适合 SVM 分类。作者还提供了所提算法的收敛性分析。此外,作者还在各种机器学习数据集上进行了实验,以评估算法。实验结果表明,作者的算法性能明显优于其他算法,这表明其在分类任务中具有卓越的能力。
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来源期刊
CAAI Transactions on Intelligence Technology
CAAI Transactions on Intelligence Technology COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
11.00
自引率
3.90%
发文量
134
审稿时长
35 weeks
期刊介绍: CAAI Transactions on Intelligence Technology is a leading venue for original research on the theoretical and experimental aspects of artificial intelligence technology. We are a fully open access journal co-published by the Institution of Engineering and Technology (IET) and the Chinese Association for Artificial Intelligence (CAAI) providing research which is openly accessible to read and share worldwide.
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