Abstract

In the framework of evidence theory, one of the open and crucial issues is how to determine the basic probability assignment (BPA), which is directly related to whether the decision result is correct. This paper proposes a novel method for obtaining BPA based on Adaboost. The method uses training data to generate multiple strong classifiers for each attribute model, which is used to determine the BPA of the singleton proposition since the weights of classification provide necessary information for fundamental hypotheses. The BPA of the composite proposition is quantified by calculating the area ratio of the singleton proposition’s intersection region. The recursive formula of the area ratio of the intersection region is proposed, which is very useful for computer calculation. Finally, BPAs are combined by Dempster’s rule of combination. Using the proposed method to classify the Iris dataset, the experiment concludes that the total recognition rate is 96.53% and the classification accuracy is 90% when the training percentage is 10%. For the other datasets, the experiment results also show that the proposed method is reasonable and effective, and the proposed method performs well in the case of insufficient samples.

Highlights

  • This paper proposes the area ratio method to reallocate the basic probability assignment (BPA) of samples located in the intersection region

  • If the mass of a sample is determined by the strong classifier of class A and class B, and the test sample is located in region ABC, as Figure 2 shows, the process of reallocating the mass of the singleton proposition according to the area ratio method is as follows:

  • A novel method to determine BPA based on Adaboost is proposed

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. In [16], the BPA determination is based on the assumption that the probability distribution of samples is the Gaussian model. Adaboost does not make any assumptions about the probability distribution of samples It has a simple structure and is not susceptible to overfit the training data [39]. Inspired by the above discussion, this paper proposes a novel BPA determination method without the assumptions about probability distribution for the sample, which is effective when the number of samples is small. The main contributions of this paper are as follows: (1) A novel method to determine BPA based on Adaboost is proposed, which is data-driven and does not make any assumptions about the probability distribution, so it can reduce the uncertainty of subjectivity.

The Basic Theories of DSET
Adaboost
Determine the BPA of the Singleton Proposition
Determine the BPA of the Composite Proposition
The Architecture of the Proposed Method
Experiments
An Example of Iris Dataset to Determine BPA
Experiments on Changing the Training Percentage of Four UCI Datasets
Findings
Conclusions
Full Text
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