ROBUST COLLABORATIVE LEARNING FOR SEQUENCE MODELLING
Francois Buet-Golfouse, Hans Roggeman, Islam Utyagulov
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Current deep learning techniques for RNA classification suffer from over-fitting and reproducibility. We show that, by introducing robustness by design in both CNN and RNN (with attention mechanism) algorithms, we are able to achieve standalone state-of-the-art accuracy on the most widely used dataset. By constructing model-agnostic robustness checks and reusing features obtained from both architectures, we build a collaborative framework that improves performance and stability.