基于可拓理论的商空间计算模型

Zhi-hang Tang, Hui-ying Peng
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引用次数: 0

摘要

人类解决问题的一个基本特征是能够在不同的粒度上对世界进行概念化,并容易地从一个抽象级别转换到另一个抽象级别,即多粒度计算的能力。提出的商空间理论旨在提供一个多粒度计算模型。传统的单颗粒计算方法在处理复杂问题时往往面临较高的计算复杂度。多粒度计算的主要目标是降低计算复杂度。利用商空间模型,我们展示了在什么条件下多粒度计算可以降低计算复杂度。基于商空间模型,讨论了自顶向下分层问题求解的特点。这个过程实际上暗示了可拓学的概念。可拓法主要用于通过物元转换来解决矛盾问题。为此,我们将可拓方法与商空间理论结合起来解决人工智能系统中的一些复杂问题,建立了一个基于可拓的商空间计算模型。结果表明,该方法具有一定的应用价值。
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A Novel Quotient Space Computing Model Based on Extension Theory
one of the basic characteristics in human problem solving is the ability to conceptualize the world at different granularities and translate from one abstraction level to the others easily, i.e., the ability of multi-granular computing. The proposed quotient space theory is intended to provide a multi-granular computing model. The traditional single-granular computing methodology usually confronts with high computational complexity when dealing with complex problems. The main aim of multi-granular computing is intended to reduce the computational complexity. By using the quotient space model, we show in what conditions the multi-granular computing could reduce the computational complexity. Based on the quotient space model, the characteristics of the top-down hierarchical problem solving are discussed. The process actually implies the idea of extenics. Extension method is mainly used to solve contradictory problems by transformations of matter-elements. So we integrate extension method with theory of quotient space to solve some complicated problems in artificial intelligence system, and set up an extension-based quotient space computing model. The result shows this method is quite valuable.
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