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Automatic inference of cross-modal connection topologies for X-CNNs

Accepted version
Peer-reviewed

Type

Article

Change log

Authors

Karazija, L 
Veličković, P 
Liò, P 

Abstract

This paper introduces a way to learn cross-modal convolutional neural network (X-CNN) architectures from a base convolutional network (CNN) and the training data to reduce the design cost and enable applying cross-modal networks in sparse data environments. Two approaches for building X-CNNs are presented. The base approach learns the topology in a data-driven manner, by using measurements performed on the base CNN and supplied data. The iterative approach performs further optimisation of the topology through a combined learning procedure, simultaneously learning the topology and training the network. The approaches were evaluated agains examples of hand-designed X-CNNs and their base variants, showing superior performance and, in some cases, gaining an additional 9% of accuracy. From further considerations, we conclude that the presented methodology takes less time than any manual approach would, whilst also significantly reducing the design complexity. The application of the methods is fully automated and implemented in Xsertion library.

Description

Keywords

Deep learning, Model selection and structure learning, Optimisation algorithms, Evolutionary neural networks

Journal Title

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Conference Name

Journal ISSN

0302-9743
1611-3349

Volume Title

10878 LNCS

Publisher

Springer International Publishing