Evidential framework for Error Correcting Output Code classification.

Engineering Applications of Artificial Intelligence(2018)

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摘要
The Error Correcting Output Codes offer a proper matrix framework to model the decomposition of a multiclass classification problem into simpler subproblems. How to perform the decomposition to best fit the data while using a small number of classifiers has been a research hotspot, as well as the decoding part, which deals with the subproblem combination. In this work, we propose an evidential unified framework that handles both the coding and decoding steps. Using the Belief Function Theory, we propose an efficient modelling, where each dichotomizer in the ECOC strategy is considered as an independent information source. This framework allows us to easily model the refutation information provided by sparse dichotomizers and also to derive measures to detect tricky samples for which additional dichotomizers could be needed to ensure decisions. Our approach was tested on hyperspectral data used to classify nine different types of material. According to the results obtained, our approach allows us to achieve top performance using compact ECOC while presenting a high level of modularity.
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关键词
Classification,Error Coding Output Codes,Belief Function Theory,Hyperspectral data
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