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Parallel orthogonal deep neural network

Sheikholharam Mashhadi, Peyman, 1982- (author)
Högskolan i Halmstad,CAISR Centrum för tillämpade intelligenta system (IS-lab)
Nowaczyk, Sławomir, 1978- (author)
Högskolan i Halmstad,CAISR Centrum för tillämpade intelligenta system (IS-lab)
Pashami, Sepideh, 1985- (author)
Högskolan i Halmstad,CAISR Centrum för tillämpade intelligenta system (IS-lab)
 (creator_code:org_t)
Oxford : Elsevier BV, 2021
2021
English.
In: Neural Networks. - Oxford : Elsevier BV. - 0893-6080 .- 1879-2782. ; 140, s. 167-183
  • Journal article (peer-reviewed)
Abstract Subject headings
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  • Ensemble learning methods combine multiple models to improve performance by exploiting their diversity. The success of these approaches relies heavily on the dissimilarity of the base models forming the ensemble. This diversity can be achieved in many ways, with well-known examples including bagging and boosting.It is the diversity of the models within an ensemble that allows the ensemble to correct the errors made by its members, and consequently leads to higher classification or regression performance. A mistake made by a base model can only be rectified if other members behave differently on that particular instance, and provide the aggregator with enough information to make an informed decision. On the contrary, lack of diversity not only lowers model performance, but also wastes computational resources. Nevertheless, in the current state of the art ensemble approaches, there is no guarantee on the level of diversity achieved, and no mechanism ensuring that each member will learn a different decision boundary from the others.In this paper, we propose a parallel orthogonal deep learning architecture in which diversity is enforced by design, through imposing an orthogonality constraint. Multiple deep neural networks are created, parallel to each other. At each parallel layer, the outputs of different base models are subject to Gram–Schmidt orthogonalization. We demonstrate that this approach leads to a high level of diversity from two perspectives. First, the models make different errors on different parts of feature space, and second, they exhibit different levels of uncertainty in their decisions. Experimental results confirm the benefits of the proposed method, compared to standard deep learning models and well-known ensemble methods, in terms of diversity and, as a result, classification performance. © 2021 The Author(s). Published by Elsevier Ltd.

Subject headings

TEKNIK OCH TEKNOLOGIER  -- Elektroteknik och elektronik (hsv//swe)
ENGINEERING AND TECHNOLOGY  -- Electrical Engineering, Electronic Engineering, Information Engineering (hsv//eng)

Keyword

Ensemble learning
Deep learning
Orthogonalization
Diversity
Uncertainty

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Sheikholharam Ma ...
Nowaczyk, Sławom ...
Pashami, Sepideh ...
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ENGINEERING AND TECHNOLOGY
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and Electrical Engin ...
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Neural Networks
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Halmstad University

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