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4 months ago

Deep Complex Networks

Chiheb Trabelsi; Olexa Bilaniuk; Ying Zhang; Dmitriy Serdyuk; Sandeep Subramanian; João Felipe Santos; Soroush Mehri; Negar Rostamzadeh; Yoshua Bengio; Christopher J Pal

Deep Complex Networks

Abstract

At present, the vast majority of building blocks, techniques, and architectures for deep learning are based on real-valued operations and representations. However, recent work on recurrent neural networks and older fundamental theoretical analysis suggests that complex numbers could have a richer representational capacity and could also facilitate noise-robust memory retrieval mechanisms. Despite their attractive properties and potential for opening up entirely new neural architectures, complex-valued deep neural networks have been marginalized due to the absence of the building blocks required to design such models. In this work, we provide the key atomic components for complex-valued deep neural networks and apply them to convolutional feed-forward networks and convolutional LSTMs. More precisely, we rely on complex convolutions and present algorithms for complex batch-normalization, complex weight initialization strategies for complex-valued neural nets and we use them in experiments with end-to-end training schemes. We demonstrate that such complex-valued models are competitive with their real-valued counterparts. We test deep complex models on several computer vision tasks, on music transcription using the MusicNet dataset and on Speech Spectrum Prediction using the TIMIT dataset. We achieve state-of-the-art performance on these audio-related tasks.

Code Repositories

ypeleg/komplex
tf
Mentioned in GitHub
MRSRL/complex-networks-release
tf
Mentioned in GitHub
ChihebTrabelsi/deep_complex_networks
Official
Mentioned in GitHub
Medabid1/ComplexValuedCNN
pytorch
Mentioned in GitHub
Doyosae/Deep-Complex-Networks
tf
Mentioned in GitHub
JesperDramsch/keras-complex
tf
Mentioned in GitHub
omrijsharon/torchlex
pytorch
Mentioned in GitHub
ispamm/htorch
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-classification-on-cifar-10Deep Complex
Percentage correct: 94.4
image-classification-on-svhnDeep Complex
Percentage error: 3.3
music-transcription-on-musicnetDeep Complex Network
APS: 72.9
Number of params: 8.8M
music-transcription-on-musicnetDeep Real Network
APS: 69.6
Number of params: 10.0M

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Deep Complex Networks | Papers | HyperAI