Abstract
Examination of various feature selection algorithms has led to an improvement in the performance of a probabilistic neural network (PNN) cloud classifier. These algorithms reduce the number of network inputs by eliminating redundant and/or irrelevant features (spectral, textural, and physical measurements). One such algorithm, selecting 11 of the 204 total features, provides a 7% increase in PNN overall accuracy compared to an earlier version using 15 features. This algorithm employs the same search procedure as before, but a different evaluation function than used previously, which provides a similar bias to that of the PNN classifier. Noticeable accuracy improvements were also evident in individual cloud-type classes.
Cite
CITATION STYLE
Bankert, R. L., & Aha, D. W. (1996). Improvement to a neural network cloud classifier. Journal of Applied Meteorology, 35(11), 2036–2039. https://doi.org/10.1175/1520-0450(1996)035<2036:ITANNC>2.0.CO;2
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