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Quantitative three-way class-specific attribute reducts based on region preservations

机译:基于区域保留的定量三向特定类属性约简

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摘要

Attribute reduction of rough set theory is effective for intelligent information processing, and class-specific attribute reducts are beneficial for pattern recognition and rule reasoning. According to three-way decisions, class-specific reducts already have three-way types (namely, positive, negative, and positive-negative) of qualitative optimization, which adhere to classical rough sets. In terms of region preservations, there are no corresponding three-way types of quantitative optimization that match probabilistic rough sets. Thus, this paper constructs and investigates quantitative three-way class-specific attribute reducts based on region preservations. First, the uncertaintyonmonotonicity of quantitative region change is revealed, and it naturally induces the reduction criteria of quantitative region preservations. Then, quantitative three-way class-specific reducts are constructed, and their basic properties regarding their necessary conditions, attribute cores, and reduct algorithms are achieved. Furthermore, their interrelation regarding equivalence and strengthening/balance are obtained for consistent and inconsistent decision classes, respectively, and their expansions for qualitative three-way class-specific reducts are proved. Finally, relevant concepts and obtained results are effectively verified by decision tables and data experiments. By virtue of sure region preservations, quantitative three-way class-specific attribute reducts robustly extend the existing qualitative three-way class-specific reducts and facilitate the optimal identification and quantitative reasoning of class-specific patterns. (C) 2019 Elsevier Inc. All rights reserved.
机译:粗糙集理论的属性约简对于智能信息处理是有效的,而特定于类的属性约简对于模式识别和规则推理是有益的。根据三向决策,特定于类的归约已经具有三向类型(即正,负和正负)的定性优化,它们遵循经典的粗糙集。就区域保存而言,没有与概率粗糙集相匹配的相应的三向量化优化类型。因此,本文构建并研究了基于区域保护的定量三向类特定属性约简。首先,揭示了定量区域变化的不确定性/非单调性,自然推导了定量区域保存量的降低标准。然后,构建了定量的三类特定类还原,并获得了其必要条件,属性核心和还原算法的基本属性。此外,分别针对一致和不一致的决策类分别获得了关于等价性和增强/平衡的相互关系,并证明了针对定性三向类特定还原的扩展。最后,决策表和数据实验有效地验证了相关概念和获得的结果。借助于确定的区域保留,定量的三向特定类别的属性归约可以稳健地扩展现有的定性三向特定类别的归约,并有助于对特定于类别的模式进行最佳识别和定量推理。 (C)2019 Elsevier Inc.保留所有权利。

著录项

  • 来源
    《高分子論文集》 |2020年第2期|96-121|共26页
  • 作者

  • 作者单位

    Sichuan Normal Univ Sch Math Sci Chengdu 610066 Peoples R China|Sichuan Normal Univ Inst Intelligent Informat & Quantum Informat Chengdu 610066 Peoples R China;

    Sichuan Normal Univ Inst Intelligent Informat & Quantum Informat Chengdu 610066 Peoples R China;

    Chengdu Univ Informat Technol Coll Management Chengdu 610225 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Rough sets; Probabilistic rough sets; Attribute reduction; Class-specific attribute reducts; Three-way decisions;

    机译:粗糙集;概率粗糙集;属性约简;特定于类的属性归约;三路决策;

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