变量信息势的粒度表示概念

Adam Kiersztyn, Paweł Karczmarek, Krystyna Kiersztyn, R. Lopucki, S. Grzegórski, W. Pedrycz
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引用次数: 2

摘要

随着颗粒计算特别是信息颗粒研究的出现,人们对数据的思考方式也逐渐发生了变化。研究人员和实践者不仅考虑它们的特定属性,而且还试图以更一般的方式看待数据,更接近于人们的思维方式。这种类型的知识表示特别是在基于语言建模或模糊技术(如模糊聚类)的方法中表达,但也有与解释人工智能如何处理这些数据(所谓的可解释人工智能)相关的新方法。因此,从数据研究方法论的角度来看,尤其重要的是试图理解它们作为信息颗粒的潜力。这种数据表示和分析方法可能会引入更高、更一般的抽象级别,同时可靠地描述数据和观察到的信息颗粒之间的关系网络。在这项研究中,我们特别强调了选择预测模型的问题。在一系列基于人工生成数据、气候变化背景下鸟类到达日期变化的生态数据和COVID-19感染数据的数值实验中,我们证明了基于信息势颗粒的新应用构建的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Concept of Granular Representation of the Information Potential of Variables
With the advent of research into Granular Computing, in particular information granules, the way of thinking about data has changed gradually. Researchers and practitioners do not consider only their specific properties, but also try to look at the data in a more general way, closer to the way people think. This kind of knowledge representation is expressed particularly in approaches based on linguistic modeling or fuzzy techniques such as fuzzy clustering, but also newer approaches related to the explanation of how artificial intelligence works on these data (so-called explainable artificial intelligence). Therefore, especially important from the point of view of the methodology of data research is an attempt to understand their potential as information granules. Such a kind of approach to data presentation and analysis may introduce considerations of a higher, more general level of abstraction, while at the same time reliably describing the network of relationships between the data and the observed information granules. In this study, we tackle this topic with particular emphasis on the problem of choosing a predictive model. In a series of numerical experiments based on both artificially generated data, ecological data on changes in bird arrival dates in the context of climate change, and COVID-19 infections data we demonstrate the effectiveness of the proposed approach built with a novel application of information potential granules.
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