6533b7dbfe1ef96bd127157b
RESEARCH PRODUCT
Towards interpretable classifiers with blind signal separation
Sandra Ortega-martorellAlfredo VellidoIan H. JarmanHéctor RuizPaulo J. G. LisboaEnrique RomeroJosé D. Martínsubject
business.industryPattern recognitionBlind signal separationSynthetic dataData mappingsymbols.namesakeComponent (UML)Metric (mathematics)symbolsArtificial intelligenceFisher informationbusinessFisher information metricInterpretabilityMathematicsdescription
Blind signal separation (BSS) is a powerful tool to open-up complex signals into component sources that are often interpretable. However, BSS methods are generally unsupervised, therefore the assignment of class membership from the elements of the mixing matrix may be sub-optimal. This paper proposes a three-stage approach using Fisher information metric to define a natural metric for the data, from which a Euclidean approximation can then be used to drive BSS. Results with synthetic data models of real-world high-dimensional data show that the classification accuracy of the method is good for challenging problems, while retaining interpretability.
year | journal | country | edition | language |
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2012-06-01 |