Robust support function machines for set-valued data classification

IF 3.2 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Zhizheng Liang , Yuhan Min
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引用次数: 0

Abstract

Support function machines (SFMs) have been proposed to handle set-valued data, but they are sensitive to outliers and unstable for re-sampling due to the use of the hinge loss function. To address these problems, we propose a robust SFM model with proximity functions. We first define a family of proximity functions that are used to convert set-valued data into continuous functions in a Banach space, and then we use the margin maximization in a Banach space to construct the pinball SFMs (PinSFMs). We study some properties of the proposed model, and it is interesting to observe that the optimal measure of the proposed model has a specific representation under the total variation norm. Using the representation of the optimal measure, we convert an infinite-dimensional optimization problem into a finite-dimensional optimization problem. Unlike SFMs, we employ a sampling strategy to tackle the finite-dimensional optimization problem. We theoretically show that the sparse solution determines the sparsity of the sampling points though the sampling strategy causes uncertainty for the sampling points. In addition, we achieve kernel versions of proximity functions, and the attractive property of this kernelization is that the proposed model is convex even if indefinite kernels are employed. Experiments on a series of data sets are performed to demonstrate that the proposed model is superior to some existing models in the presence of outliers.

用于集值数据分类的稳健支持函数机
有人提出了支持函数机(SFM)来处理集合值数据,但由于使用了铰链损失函数,它们对异常值很敏感,而且对重新采样不稳定。为了解决这些问题,我们提出了一种带有邻近函数的稳健 SFM 模型。我们首先定义了一个邻近函数族,用于将集值数据转换为巴拿赫空间中的连续函数,然后使用巴拿赫空间中的边际最大化来构建弹球 SFM(PinSFM)。我们研究了所提模型的一些特性,发现有趣的是,所提模型的最优度量在总变异规范下有一个特定的表示。利用最优度量的表示,我们将无限维优化问题转化为有限维优化问题。与 SFM 不同,我们采用抽样策略来解决有限维优化问题。我们从理论上证明,虽然采样策略会导致采样点的不确定性,但稀疏解决定了采样点的稀疏性。此外,我们还实现了近似函数的核版本,这种核化的诱人特性是,即使采用不定核,所提出的模型也是凸的。在一系列数据集上进行的实验证明,在存在异常值的情况下,所提出的模型优于一些现有模型。
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来源期刊
International Journal of Approximate Reasoning
International Journal of Approximate Reasoning 工程技术-计算机:人工智能
CiteScore
6.90
自引率
12.80%
发文量
170
审稿时长
67 days
期刊介绍: The International Journal of Approximate Reasoning is intended to serve as a forum for the treatment of imprecision and uncertainty in Artificial and Computational Intelligence, covering both the foundations of uncertainty theories, and the design of intelligent systems for scientific and engineering applications. It publishes high-quality research papers describing theoretical developments or innovative applications, as well as review articles on topics of general interest. Relevant topics include, but are not limited to, probabilistic reasoning and Bayesian networks, imprecise probabilities, random sets, belief functions (Dempster-Shafer theory), possibility theory, fuzzy sets, rough sets, decision theory, non-additive measures and integrals, qualitative reasoning about uncertainty, comparative probability orderings, game-theoretic probability, default reasoning, nonstandard logics, argumentation systems, inconsistency tolerant reasoning, elicitation techniques, philosophical foundations and psychological models of uncertain reasoning. Domains of application for uncertain reasoning systems include risk analysis and assessment, information retrieval and database design, information fusion, machine learning, data and web mining, computer vision, image and signal processing, intelligent data analysis, statistics, multi-agent systems, etc.
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