LGJul 29, 2025

Hyperbolic Genome Embeddings

arXiv:2507.21648v15 citationsh-index: 54Has CodeICLR
Originality Highly original
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This work addresses the challenge of genome interpretation for computational biology by providing a more expressive and efficient representation learning paradigm.

The authors tackled the problem of aligning machine learning models with evolutionary biological structure by developing hyperbolic CNNs for genomic sequence modeling, achieving superior performance over Euclidean equivalents on 37 out of 42 benchmark datasets and surpassing state-of-the-art on seven GUE benchmarks with fewer parameters and no pretraining.

Current approaches to genomic sequence modeling often struggle to align the inductive biases of machine learning models with the evolutionarily-informed structure of biological systems. To this end, we formulate a novel application of hyperbolic CNNs that exploits this structure, enabling more expressive DNA sequence representations. Our strategy circumvents the need for explicit phylogenetic mapping while discerning key properties of sequences pertaining to core functional and regulatory behavior. Across 37 out of 42 genome interpretation benchmark datasets, our hyperbolic models outperform their Euclidean equivalents. Notably, our approach even surpasses state-of-the-art performance on seven GUE benchmark datasets, consistently outperforming many DNA language models while using orders of magnitude fewer parameters and avoiding pretraining. Our results include a novel set of benchmark datasets--the Transposable Elements Benchmark--which explores a major but understudied component of the genome with deep evolutionary significance. We further motivate our work by exploring how our hyperbolic models recognize genomic signal under various data-generating conditions and by constructing an empirical method for interpreting the hyperbolicity of dataset embeddings. Throughout these assessments, we find persistent evidence highlighting the potential of our hyperbolic framework as a robust paradigm for genome representation learning. Our code and benchmark datasets are available at https://github.com/rrkhan/HGE.

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