This paper deals with the problem of evaluating the predictive ability of regression models. In some cases, model validation by internal cross-validation technique is not enough and validation by an external test set has been suggested as an effective way of evaluating the model predictive ability. Different functions for calculating the predictive squared correlation coefficient Q2 from an external set were proposed, which lead to occasionally different estimates of the model predictive ability and therefore to contrasting decisions about model adequacy. In this paper, advantages and drawbacks of these functions in estimating model predictive ability from some simulated datasets are discussed by comparison. © 2010 John Wiley & Sons, Ltd.
Consonni, V., Ballabio, D., Todeschini, R. (2010). Evaluation of model predictive ability by external validation techniques. JOURNAL OF CHEMOMETRICS, 24(3-4), 194-201 [10.1002/cem.1290].
Evaluation of model predictive ability by external validation techniques
CONSONNI, VIVIANA
;BALLABIO, DAVIDE;TODESCHINI, ROBERTO
2010
Abstract
This paper deals with the problem of evaluating the predictive ability of regression models. In some cases, model validation by internal cross-validation technique is not enough and validation by an external test set has been suggested as an effective way of evaluating the model predictive ability. Different functions for calculating the predictive squared correlation coefficient Q2 from an external set were proposed, which lead to occasionally different estimates of the model predictive ability and therefore to contrasting decisions about model adequacy. In this paper, advantages and drawbacks of these functions in estimating model predictive ability from some simulated datasets are discussed by comparison. © 2010 John Wiley & Sons, Ltd.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.