• DocumentCode
    1209201
  • Title

    Connectionist-based Dempster-Shafer evidential reasoning for data fusion

  • Author

    Basir, Otman ; Karray, Fakhri ; Zhu, Hongwei

  • Author_Institution
    Pattern Anal. & Machine Intelligence Res. Group, Univ. of Waterloo, Ont., Canada
  • Volume
    16
  • Issue
    6
  • fYear
    2005
  • Firstpage
    1513
  • Lastpage
    1530
  • Abstract
    Dempster-Shafer evidence theory (DSET) is a popular paradigm for dealing with uncertainty and imprecision. Its corresponding evidential reasoning framework is theoretically attractive. However, there are outstanding issues that hinder its use in real-life applications. Two prominent issues in this regard are 1) the issue of basic probability assignments (masses) and 2) the issue of dependence among information sources. This paper attempts to deal with these issues by utilizing neural networks in the context of pattern classification application. First, a multilayer perceptron neural network with the mean squared error as a cost function is implemented to calculate, for each information source, posteriori probabilities for all classes. Second, an evidence structure construction scheme is developed for transferring the estimated posteriori probabilities to a set of masses along with the corresponding focal elements, from a Bayesian decision point of view. Third, a network realization of the Dempster-Shafer evidential reasoning is designed and analyzed, and it is further extended to a DSET-based neural network, referred to as DSETNN, to manipulate the evidence structures. In order to tackle the issue of dependence between sources, DSETNN is tuned for optimal performance through a supervised learning process. To demonstrate the effectiveness of the proposed approach, we apply it to three benchmark pattern classification problems. Experiments reveal that the DSETNN outperforms DSET and provide encouraging results in terms of classification accuracy and the speed of learning convergence.
  • Keywords
    Bayes methods; benchmark testing; case-based reasoning; learning (artificial intelligence); mean square error methods; multilayer perceptrons; neural nets; pattern classification; probability; sensor fusion; uncertainty handling; Bayesian decision; DSET-based neural network; DSETNN; Dempster-Shafer evidence theory; basic probability assignments; benchmark pattern classification; classification accuracy; connectionist-based Dempster-Shafer evidential reasoning; cost function; data fusion; evidence structure construction scheme; evidential reasoning framework; focal elements; information sources; learning convergence speed; mean squared error; multilayer perceptron neural network; neural networks; posteriori probability; supervised learning process; Bayesian methods; Convergence; Cost function; Multi-layer neural network; Multilayer perceptrons; Neural networks; Pattern classification; Probability; Supervised learning; Uncertainty; DSET-based neural network (DSETNN); Data fusion; Dempster–Shafer evidence theory (DSET); neural network; Algorithms; Artificial Intelligence; Computer Simulation; Database Management Systems; Databases, Factual; Information Storage and Retrieval; Models, Statistical; Pattern Recognition, Automated;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2005.853337
  • Filename
    1528528