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arxiv: 1910.10202 · v2 · pith:XITJLY6A · submitted 2019-10-22 · cs.LG · cs.SD· eess.AS· stat.ML

Complex Transformer: A Framework for Modeling Complex-Valued Sequence

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classification cs.LG cs.SDeess.ASstat.ML
keywords complextransformercomplex-valueddatasetdeeplearningmodelmodeling
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While deep learning has received a surge of interest in a variety of fields in recent years, major deep learning models barely use complex numbers. However, speech, signal and audio data are naturally complex-valued after Fourier Transform, and studies have shown a potentially richer representation of complex nets. In this paper, we propose a Complex Transformer, which incorporates the transformer model as a backbone for sequence modeling; we also develop attention and encoder-decoder network operating for complex input. The model achieves state-of-the-art performance on the MusicNet dataset and an In-phase Quadrature (IQ) signal dataset.

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