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Forming consensus in the networks of knowledge
Affiliation:1. Department of Electrical and Computer Engineering, University of Alberta, Edmonton, Canada T6R 2G7;2. Systems Research Institute, Polish Academy of Sciences, Warsaw, Poland;3. Department of Computational Intelligence and Intelligent Informatics, Interdisciplinary Graduate School of Science and Engineering, Tokyo Institute of Technology, G3-49, 4259 Nagatsuta, Midori-ku, Yokohama-city 226-8502, Japan;1. Silesian University of Technology, Faculty of Mechanical Engineering, 18A Konarskiego Str., 44-100 Gliwice, Poland;2. Silesian University of Technology, Faculty of Mechanical Engineering, 18A Konarskiego Str., 44-100 Gliwice, Poland;3. Silesian University of Technology, Faculty of Mechanical Engineering, 18A Konarskiego Str., 44-100 Gliwice, Poland;1. Department of Electrical and Electronics Engineering, VSSUT, Burla 768018, India;2. Department of Electronics and Telecommunication Engineering, VSSUT, Burla 768018, India;3. Machine Intelligence Research Labs (MIR Labs) Scientific Network for Innovation and Research Excellence, WA 98071-2259, USA;1. Intelligent Mechatronics System Research Units, Faculty of Engineering, IIUM, Malaysia;2. Department of Aerospace Engineering, Konkuk University, South Korea
Abstract:Information granules, such as e.g., fuzzy sets, capture essential knowledge about data and the key dependencies between them. Quite commonly, we may envision that information granules (fuzzy sets) have become a result of fuzzy clustering and therefore could be succinctly represented in the form of some fuzzy partition matrices. Interestingly, the same data set could be represented from various standpoints and this multifaceted view yields a collection of different partition matrices being reflective of the higher-order granular knowledge about the data. The levels of specificity of the clusters the data are organized into could be quite different—the larger the number of clusters, the more detailed insight into the structure of data becomes available. Given the granularity of the resulting constructs (rather than plain data themselves), one could view a collection of partition matrices as a certain type of a network of knowledge. Considering a variety of sources of knowledge encountered across the network, we are interested in forming consensus between them. In a nutshell, this leads to the construction of certain fuzzy partition matrices which “reconcile” the knowledge captured by the individual partition matrices. Given that the granularity of the sources of knowledge under consideration could vary quite substantially, we develop a unified optimization perspective by introducing fuzzy proximity matrices that are induced by the corresponding partition matrices. In the sequel, the optimization is realized on a basis of these proximity matrices. We offer a detailed algorithm and illustrate its performance using a series of numeric experiments.
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