随机排列组合推理

Jixiang Deng, Yong Deng, Jian- Bo Yang
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引用次数: 0

摘要

在人工智能领域,模式识别系统处理具有不确定信息的数据至关重要,这就需要证据理论等不确定性推理方法。作为证据理论的有序扩展,随机置换集(RPS)理论受到越来越多的关注。然而,RPS 理论缺乏一种合适的置换质量函数(PMF)元素阶的生成方法,也缺乏一种有效的置换正交和(POS)融合阶的确定方法。为了解决这两个问题,本文提出了一种 RPS 理论的推理模型,称为随机置换集推理(RPSR)。RPSR 由三种技术组成,包括 RPS 生成法(RPSGM)、RPSR 组合规则和有序概率变换(OPT)。具体来说,RPSGM 可基于高斯判别模型和权重分析构建 RPS;RPSR 规则将 POS 与可靠性向量相结合,可将具有可靠性的 RPS 来源按融合顺序组合起来;OPT 用于将 RPS 转化为概率分布,供最终决策使用。此外,还提供了数值示例来说明所提出的 RPSR。此外,还将所提出的 RPSR 应用于分类问题。介绍了基于 RPSR 的分类算法(RPSRCA)及其超参数调整方法。结果表明,与现有分类器相比,RPSRCA 具有高效性和稳定性。
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Random Permutation Set Reasoning.

In artificial intelligence, it is crucial for pattern recognition systems to process data with uncertain information, necessitating uncertainty reasoning approaches such as evidence theory. As an orderable extension of evidence theory, random permutation set (RPS) theory has received increasing attention. However, RPS theory lacks a suitable generation method for the element order of permutation mass function (PMF) and an efficient determination method for the fusion order of permutation orthogonal sum (POS). To solve these two issues, this paper proposes a reasoning model for RPS theory, called random permutation set reasoning (RPSR). RPSR consists of three techniques, including RPS generation method (RPSGM), RPSR rule of combination, and ordered probability transformation (OPT). Specifically, RPSGM can construct RPS based on Gaussian discriminant model and weight analysis; RPSR rule incorporates POS with reliability vector, which can combine RPS sources with reliability in fusion order; OPT is used to convert RPS into a probability distribution for the final decision. Besides, numerical examples are provided to illustrate the proposed RPSR. Moreover, the proposed RPSR is applied to classification problems. An RPSR-based classification algorithm (RPSRCA) and its hyperparameter tuning method are presented. The results demonstrate the efficiency and stability of RPSRCA compared to existing classifiers.

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