Abstract

Multisource information fusion has received much attention in the past few decades, especially for the smart Internet of Things (IoT). Because of the impacts of devices, the external environment, and communication problems, the collected information may be uncertain, imprecise, or even conflicting. How to handle such kinds of uncertainty is still an open issue. Complex evidence theory (CET) is effective at disposing of uncertainty problems in the multisource information fusion of the IoT. In CET, however, how to measure the distance among complex basis belief assignments (CBBAs) to manage conflict is still an open issue, which is a benefit for improving the performance in the fusion process of the IoT. In this paper, therefore, a complex Pignistic transformation function is first proposed to transform the complex mass function; then, a generalized betting commitment-based distance (BCD) is proposed to measure the difference among CBBAs in CET. The proposed BCD is a generalized model to offer more capacity for measuring the difference among CBBAs. Additionally, other properties of the BCD are analyzed, including the non-negativeness, nondegeneracy, symmetry, and triangle inequality. Besides, a basis algorithm and its weighted extension for multi-attribute decision-making are designed based on the newly defined BCD. Finally, these decision-making algorithms are applied to cope with the medical diagnosis problem under the smart IoT environment to reveal their effectiveness.

Highlights

  • The Internet of Things (IoT) refers to a very large network, which connects various devices for intelligent identification, locating, tracking, monitoring, and management [1,2].Thanks to the development of information and communication technologies, the IoT is becoming ubiquitous in all kinds of applications

  • When complex basis belief assignments (CBBAs) reduce to the classical basis belief assignment (BBA), the betting commitment distance (BCD) degenerates into Liu’s distance

  • It is concluded that the BCD d BCD is a better conflict measure compared with the methods of |K| and dCBBA to judge the contradiction among CBBAs

Read more

Summary

Introduction

The Internet of Things (IoT) refers to a very large network, which connects various devices for intelligent identification, locating, tracking, monitoring, and management [1,2]. A basis algorithm and its weighted extension for multi-attribute decision-making are designed based on the newly defined BCD These decision-making algorithms are applied to cope with the medical diagnosis problem under the smart IoT environment to reveal its effectiveness. This is the first work to propose the complex pignistic transformation-based evidential betting commitment distance (BCD) for the multisource information fusion of medical diagnosis in the IoT. The BCD is a strict distance metric that satisfies the axioms of the nonnegativity, nondegeneracy, symmetry, and triangle inequality, which is a generalization of the classical evidential distance of Liu. A basis algorithm and its weighted extension for decision-making are designed on the basis of the BCD, which are applied to the medical IoT to demonstrate their effectiveness.

Medical IoT
Uncertainty Modeling and Information Fusion
Complex Evidence Theory
A New Conflict Measure Model
Complex Pignistic Transformation
Betting Commitment-Based Distance Versus Conflict
Comparisons and Analysis
Methods
Algorithm and Application
Algorithm for Decision-Making
Background
Extension and Comparison
Findings
Conclusions
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