scholarly journals ファジィ分類関数(Fuzzy Classification Function)

Author(s):  
雄智 神澤
Author(s):  
Yukihiro Hamasuna ◽  
◽  
Yasunori Endo ◽  
Sadaaki Miyamoto ◽  

This paper presents a new type of clustering algorithms by using a tolerance vector called tolerant fuzzyc-means clustering (TFCM). In the proposed algorithms, the new concept of tolerance vector plays very important role. In the original concept of tolerance, a tolerance vector attributes to each data. This concept is developed to handle data flexibly, that is, a tolerance vector attributes not only to each data but also each cluster. Using the new concept, we can consider the influence of clusters to each data by the tolerance. First, the new concept of tolerance is introduced into optimization problems based on conventional fuzzyc-means clustering (FCM). Second, the optimization problems with tolerance are solved by using Karush-Kuhn-Tucker conditions. Third, new clustering algorithms are constructed based on the explicit optimal solutions of the optimization problems. Finally, the effectiveness of the proposed algorithms is verified through numerical examples by fuzzy classification function.


Author(s):  
Yuchi Kanzawa ◽  
Sadaaki Miyamoto ◽  
◽  

This study shows that a general regularized fuzzy c-means (rFCM) clustering algorithm, including some conventional clustering algorithms, can be constructed if a given regularizer function value, its derivative function value, and its inverse derivative function value can be calculated. Furthermore, the results of the study show that the behavior of the fuzzy classification function for rFCM at an infinity point is similar to that for some conventional clustering algorithms.


Author(s):  
Yuchi Kanzawa ◽  
Sadaaki Miyamoto ◽  
◽  

This study shows that a generalized fuzzy c-means (gFCM) clustering algorithm, which covers both standard and exponential fuzzy c-means clustering, can be constructed if a given fuzzified function, its derivative, and its inverse derivative can be calculated. Furthermore, our results show that the fuzzy classification function for gFCM exhibits a behavior similar to that of both standard and exponential fuzzy c-means clustering.


Author(s):  
L.I. Shalamay ◽  
E.Y. Nechai ◽  
A.I. Sakerina ◽  
A.G. Gabdullin

This article the properties of matrix metalloproteinases, their classification, function and role in the development of dental diseases are presented. The analysis of matrix metalloproteinases has been performed, which proves their important role in the physiological and pathological processes of the oral cavity. The possibility of using matrix metalloproteinases as part of one of the methods for diagnosing diseases and using them to evaluate the effectiveness of treatment has been considered. The structure of different types of metalloproteinases, as well as a model of the catalytic domain of the MMP-8 molecule has been presented.


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