Neural Potts Model

user-5f8cf9244c775ec6fa691c99(2021)

引用 10|浏览144
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摘要
We propose the Neural Potts Model objective as an amortized optimization problem. The objective enables training a single model with shared parameters to explicitly model energy landscapes across multiple protein families. Given a protein sequence as input, the model is trained to predict a pairwise coupling matrix for a Potts model energy function describing the local evolutionary landscape of the sequence. Couplings can be predicted for novel sequences. A controlled ablation experiment assessing unsupervised contact prediction on sets of related protein families finds a gain from amortization for low-depth multiple sequence alignments; the result is then confirmed on a database with broad coverage of protein sequences.
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关键词
Potts model,Unsupervised learning,Optimization problem,Matrix (mathematics),Algorithm,Evolutionary landscape,Coupling,Protein family,Computer science,Pairwise coupling
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