Abstract

Many papers on fuzzy risk analysis calculate the similarity between fuzzy numbers. Usually, they use symmetric and reflexive similarity measures between parameters of fuzzy sets or “centers of gravity” of generalized fuzzy numbers represented by real numbers. This paper studies bipolar similarity functions (fuzzy relations) defined on a domain with involutive (negation) operation. The bipolarity property reflects a structure of the domain with involutive operation, and bipolar similarity functions are more suitable for calculating a similarity between elements of such domain. On the set of real numbers, similarity measures should take into account symmetry between positive and negative numbers given by involutive negation of numbers. Another reason to consider bipolar similarity functions is that these functions define measures of correlation (association) between elements of the domain. The paper gives a short introduction to the theory of correlation functions defined on sets with an involutive operation. It shows that the dissimilarity function generating Pearson’s correlation coefficient is bipolar. Further, it proposes new normalized similarity and dissimilarity functions on the set of real numbers. It shows that non-bipolar similarity functions have drawbacks in comparison with bipolar similarity functions. For this reason, bipolar similarity measures can be recommended for use in fuzzy risk analysis. Finally, the correlation functions between numbers corresponding to bipolar similarity functions are proposed.

Highlights

  • Risk assessment is a significant step of risk analysis, which involves identifying, analyzing, and controlling, hazards and risks, which are detrimental to the process under investigation

  • This paper studies bipolar similarity functions defined on a domain with involutive operation

  • The bipolarity property reflects some structure of the domain related to involutive operation, and bipolar similarity functions are more suitable for calculating a similarity between elements of such domain

Read more

Summary

Introduction

Risk assessment is a significant step of risk analysis, which involves identifying, analyzing, and controlling, hazards and risks, which are detrimental to the process under investigation. Such mapping can be obtained as a result of the multiplication of numbers by −1 Another reason to consider bipolar similarity functions is that these functions define measures of correlation (association) between elements of the domain. It was shown that most of the correlation and association coefficients introduced in statistics during more than one hundred years satisfy these properties after a suitable definition of involutive operation on the domain set It was proposed several general methods of construction of such correlation functions using suitable similarity and dissimilarity functions.

Correlation Functions (Association Measures)
Similarity and Dissimilarity Functions (Fuzzy Relations)
Constructing Correlation Functions from Similarity and Dissimilarity Functions
Constructing Pearson’s Linear Correlation Coefficient Using Bipolar Dissimilarity Function
Non-Bipolar Similarity, Dissimilarity, and Correlation Functions for Real Numbers
Bipolar
Bipolar Dissimilarity and Similarity Correlation in Risk Assessment
Previously
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call