Contribution to Skin Cancer Prevention in South Africa: Modelling the UV Index Utilizing Imprecise Data
DOI:
https://doi.org/10.17713/ajs.v31i2&3.479Abstract
South Africa has a high incidence of skin cancer and eye disorders because of the high number of sunshine hours per day. The ultraviolet (UV) index (UVI) provides a factual measure of the UV irradiance including biological effects. It is considered extremely important when gauging ultraviolet doses. A survey conducted across South Africa during January 1999 provided data records that contain nine independent variables for UVI inference purposes. This set of data includes cloud cover and other subjectively observedvariables such as turbidity. The data set was recorded at 272 locations. Modelling the UVI by standard regression techniques using this data failed to produce reliable models for UVI prediction. The imprecision in some of the variables and small sample size implied that much more sophisticated techniques should be used. In the current research we resorted to artificial neural networks (ANNs) to cluster the data and then to model the UVI estimate in each of the data clusters. In the ANN training, we utilized the weights pruning method of optimal brain surgeon type to enable good generalization of the ANN models. The results obtained in the UVI assessment by this method produced results of significant accuracy.
References
H. Akaike. Information theory and an extension of the maximum likelihood principle. In B.N. Petrov and F. Csaki, editors, Proc. 2nd International Symposium on Information Theory, pages 267–281. Tsahkadsov, Armenia, USSR, 1973.
C.M. Bishop. Neural Networks for Pattern Recognition. Clarendon Press, Oxford, 1995.
B. Hassibi and D.G. Stork. Second order derivatives for network pruning: Optimal brain surgeon. In S.J. Hanson, J.D. Cowan, and C.L. Giles, editors, Advances in Neural Information Processing Systems 5, pages 164–171. Morgan Kaufmann, San Mateo,
USA, 1993.
S. Human and V.B. Bajic. Estimation of uv index by neural networks. In V.B. Bajic, editor, Development and Practice of Artificial Intelligence Techniques, pages 75–77. IAAMSAD, South Africa, 1999.
T. Kohonen. Self-Organizing Maps. Springer-Verlag, Heidelberg, 1995.
J. Long. Monitoring uvi. In Proc. of the Skin Cancer Conference. Les Diablerets, Switzerland, 1997.
M.W. Pederson, L.K. Hansen, and J. Larsen. Pruning with generalization based weight saliences. In Proc. of the Neural Information Processing Systems, page 8. 1995.
F. Sitas, J. Madhoo, and J. Wessie. Cancer in South Africa, 1993-1995. 1998.
J.M. Zurada. Introduction to Artificial Neural Systems. West Publishing Company, St.Paul, Minnesota, 1992.
Downloads
Published
Issue
Section
License
The Austrian Journal of Statistics publish open access articles under the terms of the Creative Commons Attribution (CC BY) License.
The Creative Commons Attribution License (CC-BY) allows users to copy, distribute and transmit an article, adapt the article and make commercial use of the article. The CC BY license permits commercial and non-commercial re-use of an open access article, as long as the author is properly attributed.
Copyright on any research article published by the Austrian Journal of Statistics is retained by the author(s). Authors grant the Austrian Journal of Statistics a license to publish the article and identify itself as the original publisher. Authors also grant any third party the right to use the article freely as long as its original authors, citation details and publisher are identified.
Manuscripts should be unpublished and not be under consideration for publication elsewhere. By submitting an article, the author(s) certify that the article is their original work, that they have the right to submit the article for publication, and that they can grant the above license.