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Revisiting Convolution Architecture in the Realm of DNA Foundation Models

25 February 2025
Yu Bo
Weian Mao
Yanjun Shao
Weiqiang Bai
Peng Ye
Xinzhu Ma
Junbo Zhao
Hao Chen
Chunhua Shen
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Abstract

In recent years, a variety of methods based on Transformer and state space model (SSM) architectures have been proposed, advancing foundational DNA language models. However, there is a lack of comparison between these recent approaches and the classical architecture convolutional networks (CNNs) on foundation model benchmarks. This raises the question: are CNNs truly being surpassed by these recent approaches based on transformer and SSM architectures? In this paper, we develop a simple but well-designed CNN-based method termed ConvNova. ConvNova identifies and proposes three effective designs: 1) dilated convolutions, 2) gated convolutions, and 3) a dual-branch framework for gating mechanisms. Through extensive empirical experiments, we demonstrate that ConvNova significantly outperforms recent methods on more than half of the tasks across several foundation model benchmarks. For example, in histone-related tasks, ConvNova exceeds the second-best method by an average of 5.8%, while generally utilizing fewer parameters and enabling faster computation. In addition, the experiments observed findings that may be related to biological characteristics. This indicates that CNNs are still a strong competitor compared to Transformers and SSMs. We anticipate that this work will spark renewed interest in CNN-based methods for DNA foundation models.

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@article{bo2025_2502.18538,
  title={ Revisiting Convolution Architecture in the Realm of DNA Foundation Models },
  author={ Yu Bo and Weian Mao and Yanjun Shao and Weiqiang Bai and Peng Ye and Xinzhu Ma and Junbo Zhao and Hao Chen and Chunhua Shen },
  journal={arXiv preprint arXiv:2502.18538},
  year={ 2025 }
}
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