Stepwise Linear Regression Dimensionality Reduction in Neural Network Modelling
Proceedings of the International Conference on Artificial Intelligence and Applications,
pages 363--368,
- Feb 2004
This work considers the applicability of applying the
derivatives of stepwise linear regression modelling
(specifically the p-values which indicate the importance of a
variable to the modelling process) as a feature extraction
technique. We utilise it in conjunction with several data sets
of varying levels of complexity, and compare our results to
other dimensionality reduction techniques such as genetic
algorithms, sensitivity analysis and linear principal
components analysis prior to data modelling using several
different neural network models. Our results indicate that
stepwise linear regression is highly effective in this role with
results comparable to and sometimes superior then more
established techniques
@InProceedings{AMWM04, author = {Addison, J. F. Dale and McGarry, Ken and Wermter, Stefan and MacIntyre, J.}, title = {Stepwise Linear Regression Dimensionality Reduction in Neural Network Modelling}, booktitle = {Proceedings of the International Conference on Artificial Intelligence and Applications}, editors = {}, number = {}, volume = {}, pages = {363--368}, year = {2004}, month = {Feb}, publisher = {}, doi = {}, }