scispace - formally typeset
Journal ArticleDOI

On Some Aspects of Variable Selection for Partial Least Squares Regression Models

Partha Pratim Roy, +1 more
- 01 Mar 2008 - 
- Vol. 27, Iss: 3, pp 302-313
Reads0
Chats0
TLDR
In this article, the optimum variable selection strategy for Partial Least Squares (PLS) regression using a model dataset of cytoprotection data is explored, where the compounds of the dataset were classified using K-means clustering technique applied on standardized descriptor matrix and ten combinations of training and test sets were generated based on the obtained clusters.
Abstract
This paper tries to explore the optimum variable selection strategy for Partial Least Squares (PLS) regression using a model dataset of cytoprotection data. The compounds of the dataset were classified using K-means clustering technique applied on standardized descriptor matrix and ten combinations of training and test sets were generated based on the obtained clusters. For a particular training set, PLS models were developed with a number of components optimized by leave-one-out Q2 and then the developed models were validated (externally) using the test set compounds. For each set, PLS model was initially constructed using all descriptors (variables). The variables having least standardized values of regression coefficients were deleted and the next model was developed with a reduced set of variables. These steps were performed several times until further reduction in number of variables did not improve Q2 value. In each case, statistical parameters like predictive R2 (R2pred), squared correlation coefficient between observed and predicted values with (r2) and without () intercept and Root Mean Square Error of Prediction (RMSEP) were calculated from the test set compounds. In case of all ten sets, Q2 values steadily increase on deletion of variables while R2pred values do not show any specific trend. In no case, the highest Q2 and highest R2pred appear in the same trial, i.e., with the same combinations of variables. This suggests that from the viewpoint of external predictability, choice of variables for PLS based on Q2 value may not be optimum. Moreover, a clear separation of r2 and r02 curves in some sets suggests that such models may not be truly predictive in spite of acceptable R2pred values. Another observation is that coefficient of determination R2 for the training set is more immune to changes on deletion of variables than the validation parameters like Q2 and R2pred. Finally, a new parameter rm2 has been suggested to indicate external predictability of QSAR models.

read more

Citations
More filters
Journal ArticleDOI

Nonlinear Genetic-Based Models for Prediction of Flow Number of Asphalt Mixtures

TL;DR: In this article, a promising variant of genetic programming, namely, gene expression programming (GEP), is utilized to predict the flow number of dense asphalt-aggregate mixtures.
Journal ArticleDOI

Multi-stage genetic programming: A new strategy to nonlinear system modeling

TL;DR: The proposed MSGP-based solutions are capable of effectively simulating the nonlinear behavior of the investigated systems and are found to be more accurate than those of standard GP and artificial neural network-based models.
Journal ArticleDOI

Assessment of artificial neural network and genetic programming as predictive tools

TL;DR: The performances of two well-known soft computing predictive techniques, artificial neural network and genetic programming (GP), are evaluated based on several criteria, including over-fitting potential and results indicate model acceptance criteria should include engineering analysis from parametric studies.
Journal ArticleDOI

Comparative QSARs for antimalarial endochins: Importance of descriptor-thinning and noise reduction prior to feature selection

TL;DR: It has been found that models developed from variable selection by stepwise regression followed by GFA and G/PLS are the best two models for QSAR models.
Journal ArticleDOI

An evolutionary approach for modeling of shear strength of RC deep beams

TL;DR: In this paper, a new variant of genetic programming, namely gene expression programming (GEP), is utilized to predict the shear strength of reinforced concrete (RC) deep beams, and a constitutive relationship was obtained correlating the ultimate load with seven mechanical and geometrical parameters.
References
More filters
Book

Cluster Analysis

TL;DR: This fourth edition of the highly successful Cluster Analysis represents a thorough revision of the third edition and covers new and developing areas such as classification likelihood and neural networks for clustering.
Journal ArticleDOI

Beware of q2

TL;DR: It is argued that the high value of LOO q2 appears to be the necessary but not the sufficient condition for the model to have a high predictive power, which is the general property of QSAR models developed using LOO cross-validation.
Journal ArticleDOI

PLS regression methods

TL;DR: In this paper, the mathematical and statistical structure of PLS regression is developed and the PLS decomposition of the data matrices involved in model building is analyzed. But the PLP regression algorithm can be interpreted in a model building setting.
Related Papers (5)