Quantum annealing versus classical machine learning applied to a simplified computational biology problem
Articolo
Data di Pubblicazione:
2018
Abstract:
Transcription factors regulate gene expression, but how these proteins recognize and specifically bind to their DNA targets is still debated. Machine learning models are effective means to reveal interaction mechanisms. Here we studied the ability of a quantum machine learning approach to classify and rank binding affinities. Using simplified data sets of a small number of DNA sequences derived from actual binding affinity experiments, we trained a commercially available quantum annealer to classify and rank transcription factor binding. The results were compared to state-of-the-art classical approaches for the same simplified data sets, including simulated annealing, simulated quantum annealing, multiple linear regression, LASSO, and extreme gradient boosting. Despite technological limitations, we find a slight advantage in classification performance and nearly equal ranking performance using the quantum annealer for these fairly small training data sets. Thus, we propose that quantum annealing might be an effective method to implement machine learning for certain computational biology problems.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Annealing; Binding energy; Bioinformatics; DNA sequences; Learning systems
Elenco autori:
DI FELICE, Rosa
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