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When QSAR models are fitted, it is important to validate any fitted model-to check that it is plausible that its predictions will carry over to fresh data not used in the model fitting exercise. There are two standard ways of doing this-using a separate hold-out test sample and the computationally much more burdensome leave-one-out cross-validation in which the entire pool of available compounds is used both to fit the model and to assess its validity. We show by theoretical argument and empiric study of a large QSAR data set that when the available sample size is small-in the dozens or scores rather than the hundreds, holding a portion of it back for testing is wasteful, and that it is much better to use cross-validation, but ensure that this is done properly.
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Douglas M. Hawkins
Subhash C. Basak
Denise Mills
Journal of Chemical Information and Computer Sciences
University of Minnesota, Duluth
Minnesota Department of Natural Resources
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Hawkins et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69decc265e217d93a5558a20 — DOI: https://doi.org/10.1021/ci025626i
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