Title
Empirical Fuzzy Sets
Abstract
In this paper, we introduce a new form of describing fuzzy sets (FSs) and a new form of fuzzy rule-based (FRB) systems, namely, empirical fuzzy sets (epsilon FSs) and empirical fuzzy rule-based (epsilon FRB) systems. Traditionally, the membership functions (MFs), which are the key mathematical representation of FSs, are designed subjectively or extracted from the data by clustering projections or defined subjectively. epsilon FSs, on the contrary, are described by the empirically derived membership functions (epsilon MFs). The new proposal made in this paper is based on the recently introduced Empirical Data Analytics (EDA) computational framework and is closely linked with the density of the data. This allows to keep and improve the link between the objective data and the subjective labels, linguistic terms, and classes definition. Furthermore, epsilon FSs can deal with heterogeneous data combining categorical with continuous and/or discrete data in a natural way. epsilon FRB systems can be extracted from data including data streams and can have dynamically evolving structure. However, they can also be used as a tool to represent expert knowledge. The main difference from the traditional FSs and FRB systems is that the expert does not need to define the MF per variable; instead, possibly multimodal, densities will be extracted automatically from the data and used as epsilon MFs in a vector form for all numerical variables. This is done in a seamless way whereby the human involvement is only required to label the classes and linguistic terms. Moreover, even this intervention is optional. Thus, the proposed new approach to define and design the FSs and FRB systems puts the human in the driving seat. Instead of asking experts to define features and MFs correspondingly, to parameterize them, to define algorithm parameters, to choose types of MFs, or to label each individual item, it only requires (optionally) to select prototypes from data and (again, optionally) to label them. Numerical examples as well as a naive empirical fuzzy (epsilon F) classifier are presented with an illustrative purpose. Due to the very fundamental nature of the proposal, it can have a very wide area of applications resulting in a series of new algorithms such as epsilon F classifiers, epsilon F predictors, epsilon F controllers, and so on. This is left for the future research. (C) 2017 Wiley Periodicals, Inc.
Year
DOI
Venue
2018
10.1002/int.21935
INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS
DocType
Volume
Issue
Journal
33
2
ISSN
Citations 
PageRank 
0884-8173
2
0.38
References 
Authors
0
2
Name
Order
Citations
PageRank
Plamen Angelov195467.44
Xiaowei Gu29910.96