{"title":"从数据到信息颗粒:一个颗粒计算环境","authors":"W. Pedrycz","doi":"10.1109/ICCICC53683.2021.9811327","DOIUrl":null,"url":null,"abstract":"With enormous amounts of data come opportunities of building models of real-world systems that are instrumental in realizing a plethora of control, prediction, and classification tasks. The interpretability facet of ensuing models becomes highly relevant in light of designing autonomous systems and those constructs supporting human-centric decision-making environments. To transform data to tangible and actionable pieces of knowledge and formulate a problem at hand at a suitable level of abstraction, a convenient way to proceed is to position the problem in the environment of Granular Computing.We advocate that a systematic way of capturing knowledge residing within acquired data and encapsulating such knowledge in the form of interpretable models is supported by a suitable level of abstraction at which the data are to be represented. In turn, we show that an abstraction mechanism is conveniently realized in the form of information granules. Information granules and Granular Computing delivers an operational and flexible setting in which granular models are built and analyzed. 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引用次数: 2
摘要
有了大量的数据,就有机会为现实世界的系统构建模型,这些模型有助于实现大量的控制、预测和分类任务。在设计自主系统和那些支持以人为中心的决策环境的结构时,随后模型的可解释性方面变得高度相关。要将数据转换为有形的、可操作的知识片段,并在适当的抽象级别上制定手头的问题,一种方便的方法是将问题定位在颗粒计算环境中。我们提倡用一种系统的方法来获取存在于所获取数据中的知识,并将这些知识封装为可解释模型的形式,这种方法得到了合适的抽象级别的支持,在该抽象级别上数据将被表示。反过来,我们证明了一种抽象机制可以方便地以信息颗粒的形式实现。信息颗粒和颗粒计算提供了一种可操作且灵活的设置,在该设置中可以构建和分析颗粒模型。介绍了信息颗粒的正式表征,其中它们被简洁地描述为三重(G, I, R),捕获它们在数据空间(G)中的底层几何形状,信息内容(I)和底层实验证据(R)的表示能力。一套将数据转换为信息颗粒的设计方法在各种正式设置(例如,区间,模糊集,对粗糙集进行了分析,并讨论了一系列的推广(包括在一些辅助领域知识存在的情况下构建颗粒的协作方法)。在后续部分中,展示了作为功能模块的信息颗粒如何有效地用于构建大量可解释模型,特别是基于规则的体系结构。
From Data to Information Granules: An Environment of Granular Computing
With enormous amounts of data come opportunities of building models of real-world systems that are instrumental in realizing a plethora of control, prediction, and classification tasks. The interpretability facet of ensuing models becomes highly relevant in light of designing autonomous systems and those constructs supporting human-centric decision-making environments. To transform data to tangible and actionable pieces of knowledge and formulate a problem at hand at a suitable level of abstraction, a convenient way to proceed is to position the problem in the environment of Granular Computing.We advocate that a systematic way of capturing knowledge residing within acquired data and encapsulating such knowledge in the form of interpretable models is supported by a suitable level of abstraction at which the data are to be represented. In turn, we show that an abstraction mechanism is conveniently realized in the form of information granules. Information granules and Granular Computing delivers an operational and flexible setting in which granular models are built and analyzed. A formal characterization of information granules is introduced where they are concisely described as triple (G, I, R) capturing their underlying geometry in the data space (G), information content (I), and representation capabilities of the underlying experimental evidence (R).A suite of design methods transforming data into information granules being articulated in various formal settings (e.g., intervals, fuzzy sets, rough sets) is analyzed and an array of generalizations is discussed (including collaborative ways of building granules in the presence of some auxiliary domain knowledge).In the sequel, it is shown how information granules regarded as functional modules are efficiently used in the construction of a vast array of interpretable models, especially rule-based architectures.