Recent advances in deep learning have established Transformer architectures as the predominant modeling paradigm. Central to the success of Transformers is the self-attention mechanism, which scores the similarity between query and key matrices to modulate a value matrix. This operation bears striking similarities to digraph convolution, prompting an investigation into whether digraph convolution could serve as an alternative to self-attention. In this study, we formalize this concept by introducing a synthetic unitary digraph convolution based on the digraph Fourier transform. The resulting model, which we term Converter, effectively converts a Transformer into a Directed Graph Neural Network (DGNN) form. We have tested Converter on Long-Range Arena benchmark, long document classification, and DNA sequence-based taxonomy classification. Our experimental results demonstrate that Converter achieves superior performance while maintaining computational efficiency and architectural simplicity, which establishes it as a lightweight yet powerful Transformer variant.
Converting Transformers into DGNNs Form
Converter, a model that transforms Transformers into Directed Graph Neural Networks using synthetic unitary digraph convolution, achieves superior performance with computational efficiency and simplicity across various tasks.
- Year
- 2025
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- converting-transformers-into-dgnns-form
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- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2502.00585ARXIV-DEFAULT
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