In many contexts, it is extremely costly to perform enough high-quality experimental measurements to accurately parametrize a predictive quantitative model. However, it is often much easier to carry out large numbers of experiments that indicate whether each sample is above or below a given threshold. Can many such categorical or "coarse" measurements be combined with a much smaller number of high-resolution or "fine" measurements to yield accurate models? Here, we demonstrate an intuitive strategy, inspired by statistical physics, wherein the coarse measurements are used to identify the salient features of the data, while the fine measurements determine the relative importance of these features. A linear model is inferred from the fine mea...
Based on the premise that, for a given class of related chemical compounds, there exists a relations...
In predictive microbiology, dynamic mathematical models are developed to describe microbial evolutio...
Pairwise-based methods such as the free energy perturbation (FEP) method have been widely deployed t...
We discuss a data-driven, coarse-graining formulation in the context of equilibrium statistical mech...
The enormous amount of molecular dynamics data available calls for an ever-growing need for extracti...
Coarse-Grained (CG) models provide a promising direction to study variety of chemical systems at a r...
Compared to top-down coarse-grained (CG) models, bottom-up approaches are capable of offering higher...
Experiments and surveys are often performed to obtain data that constrain some pre-viously undercons...
Many problems of interest in modern science originate from the complex network of interactions of di...
We report the results of testing quantitative structure-property relationships (QSPR) that were trai...
The selection of optimal preprocessing is among the main bottlenecks in chemometric data analysis. P...
We report the results of testing quantitative structure–property relationships (QSPR) that were trai...
In any experimental science we are sometimes confronted with new experimental situations, where unde...
Experiment design optimization requires that the quality of any particular design can be both quanti...
All-atom Molecular Dynamics (MD) is the standard approach to perform in silico simulations of biomol...
Based on the premise that, for a given class of related chemical compounds, there exists a relations...
In predictive microbiology, dynamic mathematical models are developed to describe microbial evolutio...
Pairwise-based methods such as the free energy perturbation (FEP) method have been widely deployed t...
We discuss a data-driven, coarse-graining formulation in the context of equilibrium statistical mech...
The enormous amount of molecular dynamics data available calls for an ever-growing need for extracti...
Coarse-Grained (CG) models provide a promising direction to study variety of chemical systems at a r...
Compared to top-down coarse-grained (CG) models, bottom-up approaches are capable of offering higher...
Experiments and surveys are often performed to obtain data that constrain some pre-viously undercons...
Many problems of interest in modern science originate from the complex network of interactions of di...
We report the results of testing quantitative structure-property relationships (QSPR) that were trai...
The selection of optimal preprocessing is among the main bottlenecks in chemometric data analysis. P...
We report the results of testing quantitative structure–property relationships (QSPR) that were trai...
In any experimental science we are sometimes confronted with new experimental situations, where unde...
Experiment design optimization requires that the quality of any particular design can be both quanti...
All-atom Molecular Dynamics (MD) is the standard approach to perform in silico simulations of biomol...
Based on the premise that, for a given class of related chemical compounds, there exists a relations...
In predictive microbiology, dynamic mathematical models are developed to describe microbial evolutio...
Pairwise-based methods such as the free energy perturbation (FEP) method have been widely deployed t...