Robust RNA Secondary Structure Prediction with a Mixture of Deep Learning and Physics-based Experts
Xiangyun Qiu
Abstract:A mixture of experts (MoE) approach is developed to mitigate poor out-of-distribution (OOD) generalization of deep learning (DL) models for single-sequence-based prediction of RNA secondary structure. The main idea is to use DL models for in-distribution (ID) test sequences to take advantage of their superior ID performances, while relying on physics-based models for OOD sequences to ensure robust predictions. One key ingredient of the pipeline, named MoEFold2D, is automated ID/OOD detection via consensus anal… Show more
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