Title
Wing Pattern-Based Classification of the Rhagoletis pomonella Species Complex Using Genetic Neural Networks
Abstract
The Rhagoletis pomonella species complex consists of at least four sibling species. They are highly host specific as larvae, and display great fidelity as adults. The only certain way to identify them is to know the host materials from which they came, because these fruit flies are very similar or identical, and have been especially recalcitrant to morphological separation. In this paper we hypothesize that there is hidden biological information in the wing vein structure in the pomonella species group that can be used to distinguish them. Classification of the species complex is modeled via Bayesian and probability neural networks using information on wing size, shape and vein structure. The classification models were optimized through a genetic algorithm by selecting the optimal features and performed well in classifying new specimens. The results have implications for agricultural production and quarantine issues and could be helpful in devising a classification system for rapid identification of certain invasive species at ports of entry.
Year
Venue
Keywords
2007
IJCSA
bayes theory,rhagoletis pomonella species complex,genetic algorithm,pattern classification,probability neural network,agricultural production,classification system,neural network,invasive species,genetics,species complex
Field
DocType
Volume
Species group,Wing,Rhagoletis,Species complex,Computer science,Sibling species,Artificial intelligence,Artificial neural network,Evolutionary biology,Genetic algorithm,Machine learning,Bayesian probability
Journal
4
Issue
Citations 
PageRank 
3
1
0.68
References 
Authors
2
3
Name
Order
Citations
PageRank
Chengpeng Bi113111.29
Michael C. Saunders210.68
Bruce A. Mcpheron310.68