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Learning Verifiable Ensembles for Classification Problems with High Safety Requirements

Learning Verifiable Ensembles for Classification Problems with High Safety Requirements
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Author(s): Sebastian Nusser (Otto-von-Guericke-University, Germany), Clemens Otte (Siemens AG, Germany), Werner Hauptmann (Siemens AG, Germany)and Rudolf Kruse (Otto-von-Guericke-University, Germany)
Copyright: 2010
Pages: 27
Source title: Intelligent Soft Computation and Evolving Data Mining: Integrating Advanced Technologies
Source Author(s)/Editor(s): Leon Shyue-Liang Wang (National University of Kaohsiung, Taiwan)and Tzung-Pei Hong (National University of Kaohsiung, Taiwan)
DOI: 10.4018/978-1-61520-757-2.ch019

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Abstract

This chapter describes a machine learning approach for classification problems in safety-related domains. The proposed method is based on ensembles of low-dimensional submodels. The usage of low-dimensional submodels enables the domain experts to understand the mechanisms of the learned solution. Due to the limited dimensionality of the submodels each individual model can be visualized and can thus be interpreted and validated according to the domain knowledge. The ensemble of all submodels overcomes the limited predictive performance of each single submodel while the overall solution remains interpretable and verifiable. By different examples from real-world applications the authors will show that their classification approach is applicable to a wide range of classification problems in the field of safety-related applications - ranging from decision support systems over plant monitoring and diagnosis systems to control tasks with very high safety requirements.

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