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About The Book
Description
Author(s)
This book introduces some&nbsp;contemporary&nbsp;approaches&nbsp;on the application of&nbsp;fuzzy and hesitant fuzzy sets in machine learning tasks such as&nbsp;classification clustering and dimension&nbsp;reduction.&nbsp;Many&nbsp;situations&nbsp;arise&nbsp;in machine learning algorithms&nbsp;in&nbsp;which&nbsp;applying methods for uncertainty&nbsp;modeling and&nbsp;multi-criteria&nbsp;decision making can lead to&nbsp;a&nbsp;better&nbsp;understanding of&nbsp;algorithms behavior as well as achieving&nbsp;good performances.&nbsp;Specifically&nbsp;the present book is a collection of novel viewpoints&nbsp;on how&nbsp;fuzzy and&nbsp;hesitant fuzzy concepts&nbsp;can be&nbsp;applied&nbsp;to&nbsp;data uncertainty modeling as&nbsp;well as&nbsp;being used to solve&nbsp;multi-criteria decision&nbsp;making challenges&nbsp;raised in machine learning problems. Using the multi-criteria decision&nbsp;making framework the book shows how different algorithms rather than&nbsp;human experts&nbsp;are&nbsp;employed&nbsp;to determine membership degrees. The book is expected to bring closer&nbsp;the&nbsp; communities of pure mathematicians of fuzzy&nbsp;sets and data scientists.&nbsp;<br>