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A weight perturbation-based regularisation technique for convolutional neural networks and the application in medical imaging
journal contribution
posted on 2020-01-01, 00:00 authored by Seyedamin Khatami, Asef NazariAsef Nazari, Abbas KhosraviAbbas Khosravi, Chee Peng LimChee Peng Lim, Saeid NahavandiA convolutional neural network has the capacity to learn multiple representation levels and abstraction in order to provide a better understanding of image data. In addition, a good multi-level representation of data typically results in a better generalisation capability. This fact emphasises the importance of concentrating on the regularity information of training data in order to improve generalisation. However, the training data contain erroneous information owing to noise and outliers. In this paper, we propose a new regularisation approach for convolutional neural networks with better generalisation properties. Specifically, the weights of the convolution layers are perturbed by additive noise in each learning iteration. The approach provides a better model for prediction, as shown by the experimental results on a number of medical benchmark data sets. Furthermore, the effectiveness and accuracy of the proposed convolutional neural network are demonstrated by comparing with several recent perturbation techniques.
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Journal
Expert systems with applicationsVolume
149Article number
113196Pagination
1 - 8Publisher
ElsevierLocation
Amsterdam, The NetherlandsPublisher DOI
ISSN
0957-4174Language
engPublication classification
C1 Refereed article in a scholarly journalUsage metrics
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