主题演讲1从数据到符号:信息颗粒的统一视角

W. Pedrycz
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摘要

人工智能(AI)的一些最新进展属于工业发展(主要由数字数据驱动)和可解释人工智能(XAI)的范畴。我们主张,在实现这两个及时的追求中,信息颗粒和颗粒计算发挥了重要作用。首先,研究表明,信息粒度在构建现实世界数据与人工智能处理中常见的符号之间的联系方面具有至关重要的相关性。其次,我们强调适当的抽象级别(信息粒度的特异性)对于支持面向用户的设计框架和功能人工智能工件至关重要。在这两种情况下,所有追求的核心是信息颗粒的形成过程及其谨慎的特征。利用合理粒度原理,讨论了一种开发信息颗粒的综合方法。这里讨论了各种构建场景,包括在信息颗粒设计中引入的条件作用和协作机制。介绍了评价颗粒质量的机理。在续集中,我们将研究信息颗粒的生成和判别方面,以支持它们在颗粒模型形成中的进一步使用。从数据的语义健全描述符和数据间关系的角度,提出并分析了信息颗粒的符号表现形式。在这方面,选择稳定性和总结面向符号的信息方面进行了讨论。
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Keynote Speech 1 From Data to Symbols: A Unified Perspective Through Information Granules
Some of the recent advancements in Artificial Intelligence (AI) fall under the umbrella of industrial developments (which are predominantly driven by numeric data) and explainable AI (XAI). We advocate that in the realization of these two timely pursuits, information granules and Granular Computing play a significant role. First, it is shown that information granularity is of paramount relevance in building linkages between real-world data and symbols commonly encountered in AI processing. Second, we stress that a suitable level of abstraction (specificity of information granularity) becomes essential to support user-oriented framework of design and functioning AI artifacts. In both cases, central to all pursuits is a process of formation of information granules and their prudent characterization. We discuss a comprehensive approach to the development of information granules by means of the principle of justifiable granularity. Here various construction scenarios are discussed including those engaging conditioning and collaborative mechanisms incorporated in the design of information granules. The mechanisms of assessing the quality of granules are presented. In the sequel, we look at the generative and discriminative aspects of information granules supporting their further usage in the formation of granular models. A symbolic manifestation of information granules is put forward and analyzed from the perspective of semantically sound descriptors of data and relationships among data. With this regard, selected aspects of stability and summarization of symbol-oriented information are discussed.
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