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Reactive SINDy: Discovering governing reactions from concentration data.

Moritz HoffmannChristoph FröhnerFrank Noé
Published in: The Journal of chemical physics (2019)
The inner workings of a biological cell or a chemical reactor can be rationalized by the network of reactions, whose structure reveals the most important functional mechanisms. For complex systems, these reaction networks are not known a priori and cannot be efficiently computed with ab initio methods; therefore, an important goal is to estimate effective reaction networks from observations, such as time series of the main species. Reaction networks estimated with standard machine learning techniques such as least-squares regression may fit the observations but will typically contain spurious reactions. Here we extend the sparse identification of nonlinear dynamics (SINDy) method to vector-valued ansatz functions, each describing a particular reaction process. The resulting sparse tensor regression method "reactive SINDy" is able to estimate a parsimonious reaction network. We illustrate that a gene regulation network can be correctly estimated from observed time series.
Keyphrases
  • machine learning
  • electron transfer
  • big data
  • stem cells
  • computed tomography
  • artificial intelligence
  • magnetic resonance
  • wastewater treatment