Attribution assignment for deep-generative sequence models enables interpretability analysis using positive-only data
Attribution assignment for deep-generative sequence models enables interpretability analysis using positive-only data
Generative machine learning models offer a powerful framework for therapeutic design by efficiently exploring large spaces of biological sequences enriched for desirable properties. Unlike supervised learning methods, which require both positive and negative labeled data, generative models such as LSTMs can be trained solely on positively labeled sequences, for example, high-affinity antibodies. This is particularly advantageous in biological settings where negative data are scarce, unreliable, or biologically ill-defined. However, the lack of attribution methods for generative models has hindered the ability to extract interpretable biological insights from such models. To address this gap, we developed Generative Attribution Metric Analysis (GAMA), an attribution method for autoregressive generative models based on Integrated Gradients. We assessed GAMA using synthetic datasets with known ground truths to characterize its statistical behavior and validate its ability to recover biologically relevant features. We further demonstrated the utility of GAMA by applying it to experimental antibody-antigen binding data. GAMA enables model interpretability and the validation of generative sequence design strategies without the need for negative training data.
Robert Frank、Michael Widrich、Rahmad Akbar、Günter Klambauer、Geir Kjetil Sandve、Philippe A. Robert、Victor Greiff
生物科学研究方法、生物科学研究技术计算技术、计算机技术
Robert Frank,Michael Widrich,Rahmad Akbar,Günter Klambauer,Geir Kjetil Sandve,Philippe A. Robert,Victor Greiff.Attribution assignment for deep-generative sequence models enables interpretability analysis using positive-only data[EB/OL].(2025-07-11)[2025-08-02].https://arxiv.org/abs/2506.23182.点此复制
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