Data classification using the Dempster-Shafer method
Qi Chen, Amanda Whitbrook, Uwe Aickelin, Chris Roadknight

TL;DR
This paper explores using the Dempster-Shafer method for data classification, demonstrating high accuracy on benchmark datasets and discussing its potential with automation for complex problems.
Contribution
It applies the Dempster-Shafer theory to data classification, showing competitive accuracy and highlighting the need for automated mass function design.
Findings
High classification accuracy on benchmark datasets
Comparable performance to popular algorithms
Automation could improve handling of complex data
Abstract
In this paper, the Dempster-Shafer method is employed as the theoretical basis for creating data classification systems. Testing is carried out using three popular (multiple attribute) benchmark datasets that have two, three and four classes. In each case, a subset of the available data is used for training to establish thresholds, limits or likelihoods of class membership for each attribute, and hence create mass functions that establish probability of class membership for each attribute of the test data. Classification of each data item is achieved by combination of these probabilities via Dempster's Rule of Combination. Results for the first two datasets show extremely high classification accuracy that is competitive with other popular methods. The third dataset is non-numerical and difficult to classify, but good results can be achieved provided the system and mass functions are…
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