Probabilistic Transformer: Modelling Ambiguities and Distributions for RNA Folding and Molecule Design
–Neural Information Processing Systems
Our world is ambiguous and this is reflected in the data we use to train our algorithms. This is particularly true when we try to model natural processes where collected data is affected by noisy measurements and differences in measurement techniques. Sometimes, the process itself is ambiguous, such as in the case of RNA folding, where the same nucleotide sequence can fold into different structures. This suggests that a predictive model should have similar probabilistic characteristics to match the data it models. Therefore, we propose a hierarchical latent distribution to enhance one of the most successful deep learning models, the Transformer, to accommodate ambiguities and data distributions.
Neural Information Processing Systems
Jan-18-2025, 12:28:42 GMT
- Technology: