Clustering stock price volatility using intuitionistic fuzzy sets
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Published:2022-09-08
Issue:3
Volume:28
Page:343-352
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ISSN:1310-4926
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Container-title:Notes on Intuitionistic Fuzzy Sets
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language:
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Short-container-title:NIFS
Author:
Urumov Georgy, ,Chountas Panagiotis,
Abstract
Clustering involves gathering a collection of objects into homogeneous groups or clusters, such that objects in the same cluster are more similar when compared to objects present in other groups. Clustering algorithms that generate a tree of clusters called dendrogram which can be either divisive or agglomerative. The partitional clustering gives a single partition of objects, with a predefined K number of clusters. The most popular partition clustering approaches are: k-means and fuzzy C-means (FCM). In k-means clustering, data are divided into a number of clusters where data elements belong to exactly one cluster. The k-means clustering works well when data elements are well separable. To overcome the problem of non-separability, FCM and IFCM clustering algorithm were proposed. Here we review the use of FCM/IFCM with reference to the problem of market volatility.
Publisher
Prof. Marin Drinov Publishing House of BAS (Bulgarian Academy of Sciences)
Subject
Cell Biology,Developmental Biology,Embryology,Anatomy
Cited by
1 articles.
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1. Essay on Volatility Clusters and Time Series Prediction;2022 IEEE 11th International Conference on Intelligent Systems (IS);2022-10-12