| --- |
| license: cc-by-4.0 |
| task_categories: |
| - text-generation |
| language: |
| - en |
| tags: |
| - paper |
| - transformer |
| - hebbian-learning |
| - sparse-neural-networks |
| - efficient-ai |
| - net2net |
| - kwta |
| pretty_name: "HSNNM: A Hebbian Sparse Neural Network Model for Efficient Transformer Learning" |
| size_categories: |
| - n<1K |
| --- |
| |
| # HSNNM: A Hebbian Sparse Neural Network Model for Efficient Transformer Learning |
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| **Author:** Kastiel Tjuandra |
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| **DOI:** [10.5281/zenodo.21271668](https://zenodo.org/record/21271668) |
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| **GITHUB:** The link can be found on my Zenodo page. |
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| ## Abstract |
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| We introduce the Hebbian Sparse Neural Network Model (HSNNM), a biologically-inspired transformer architecture that replaces the standard dense Feed-Forward Network (FFN) with a dynamically routed system of sparse, competing expert sub-networks termed "lobes". HSNNM integrates three core mechanisms: k-Winners-Take-All (k-WTA) lateral inhibition, non-gradient Hebbian plasticity, and net2net structural neurogenesis. We demonstrate that HSNNM achieves a 49.6% reduction in FLOPs per token (7.18M vs 14.25M FLOPs/token) compared to a matched dense baseline, while incurring a 3.4 percentage point accuracy trade-off (76.06% vs 79.45%), a favorable efficiency-accuracy balance given the significant compute savings. Through ablation studies, we show that both Hebbian plasticity and k-WTA sparsity contribute to stability over medium term training (5,000 steps). Our results establish HSNNM as an efficient and robust alternative to dense transformers. |
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| ## Download |
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| [Download PDF](HSNNM-3.pdf) |
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| ## Citation |
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| ```bibtex |
| @misc{tjuandra2026hsnnm, |
| title={HSNNM: A Hebbian Sparse Neural Network Model for Efficient Transformer Learning}, |
| author={Tjuandra, Kastiel}, |
| year={2026}, |
| publisher={Zenodo}, |
| doi={10.5281/zenodo.21271668} |
| } |