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FourierNAT: a Fourier-mixing-based non-autoregressive transformer for parallel sequence generation

Andrew Kiruluta

International Journal of Complexity in Applied Science and Technology, 2026, vol. 2, issue 1, 63-75

Abstract: We present FourierNAT, a novel non-autoregressive transformer (NAT) architecture that leverages Fourier-based mixing in the decoder to generate output sequences in parallel. While traditional NAT approaches often face challenges in capturing global dependencies, our method uses a discrete Fourier transform with learned frequency-domain gating to mix token embeddings across the entire sequence dimension. This design enables efficient propagation of context without explicit autoregressive steps. Empirically, FOURIERNAT achieves competitive results on WMT14 En-De and CNN/DailyMail benchmarks, highlighting that frequency-domain operations can mitigate coherence gaps often associated with NAT generation. Our approach underscores the potential of integrating spectral-domain operations to accelerate and improve parallel text generation.

Keywords: non-autoregressive transformer: NAT; Fourier mixing; parallel sequence generation; global spectral operations; NAT architecture. (search for similar items in EconPapers)
Date: 2026
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