A quantum mechanical/neural net model for boiling points with error estimation

Beck B, Clark T (2001)


Publication Status: Published

Publication Type: Journal article

Publication year: 2001

Journal

Book Volume: 41

Pages Range: 457-462

Journal Issue: 2

DOI: 10.1021/ci0004614

Abstract

We present QSPR models for normal boiling points employing a neural network approach and descriptors calculated using semiempirical MO theory (AM1 and PM3). These models are based on a data set of 6000 compounds with widely varying functionality and should therefore be applicable to a diverse range of systems. We include cross-validation by simultaneously training 10 different networks, each with different training and test sets. The predicted boiling point is given by the mean of the 10 results, and the individual error of each compound is related to the standard deviation of these predictions. For our best model we find that the standard deviation of the training error is 16.5 K for 6000 compounds and the correlation coefficient (R-2) between our prediction and experiment is 0.96. We also examine the effect of different conformations and tautomerism on our calculated results. Large deviations between our predictions and experiment can generally be explained by experimental errors or problems with the semiempirical methods.

Authors with CRIS profile

How to cite

APA:

Beck, B., & Clark, T. (2001). A quantum mechanical/neural net model for boiling points with error estimation. Journal of Chemical Information and Computer Sciences, 41(2), 457-462. https://dx.doi.org/10.1021/ci0004614

MLA:

Beck, Bernd, and Timothy Clark. "A quantum mechanical/neural net model for boiling points with error estimation." Journal of Chemical Information and Computer Sciences 41.2 (2001): 457-462.

BibTeX: Download