Accurate
and efficient determination of site-specific reaction
rate constants over a wide temperature range remains challenging,
both experimentally and theoretically. Taking the dehydrogenation
reaction as an example, our study addresses this issue by an innovative
combination of machine learning techniques and cost-effective NMR
spectra. Through descriptor screening, we identified a minimal set
of NMR chemical shifts that can effectively determine reaction rate
constants. The constructed model performs exceptionally well on theoretical
data sets and demonstrates impressive generalization capabilities,
extending from small molecules to larger ones. Furthermore, this model
shows outstanding performance when applied to limited experimental
data sets, highlighting its robust applicability and transferability.
Utilizing the Sure Independence Screening and Sparsifying Operator
(SISSO) algorithm, we also present an interpretable rate constant-temperature-NMR
(k-T-NMR) relationship with a mathematical formula. This study reveals
the great potential of combining machine learning with easily accessible
spectroscopic descriptors in the study of reaction kinetics, enabling
the rapid determination of reaction rate constants and promoting our
understanding of reactivity.