Freshwater inhabitants in Piedmont (Italy) have been deeply disadvantaged by environmental changes caused by human disturbance. Hence there are engendered species that need human intervention of an entirely different kind ??? better management through the development of innovative practical tools. The most ecologically important of the river-dwelling invertebrates is a threatened species, the native white-clawed crayfish Austropotamobius pallipes. This is the species that we focused on in our effort to contribute to species conservation. Specifically we contrasted three different techniques of managing data relating to the presence/absence of this species: logistic regression, decision-tree models and artificial neural networks. Logistic regression and decision tree models (unpruned and pruned) performed worse than artificial neural networks. In this case, tree-pruning techniques did not make these models significantly more reliable, but did make the trees less complex and therefore did make the models clearer. Artificial neural networks (ANN) performed the best. Therefore we have judged them to be the most effective techniques.

Performance comparison among multivariate and data miningapproaches to model presence/absence of Austropotamobius pallipes complex in Piedmont (North Western Italy)

TIRELLI, Santina
First
;
FAVARO, LIVIO;GAMBA, Marco;PESSANI, Daniela
Last
2011-01-01

Abstract

Freshwater inhabitants in Piedmont (Italy) have been deeply disadvantaged by environmental changes caused by human disturbance. Hence there are engendered species that need human intervention of an entirely different kind ??? better management through the development of innovative practical tools. The most ecologically important of the river-dwelling invertebrates is a threatened species, the native white-clawed crayfish Austropotamobius pallipes. This is the species that we focused on in our effort to contribute to species conservation. Specifically we contrasted three different techniques of managing data relating to the presence/absence of this species: logistic regression, decision-tree models and artificial neural networks. Logistic regression and decision tree models (unpruned and pruned) performed worse than artificial neural networks. In this case, tree-pruning techniques did not make these models significantly more reliable, but did make the trees less complex and therefore did make the models clearer. Artificial neural networks (ANN) performed the best. Therefore we have judged them to be the most effective techniques.
2011
334
695
704
freshwater ecosystem; management; logistic regression; decision trees; artificial neural network
Tina Tirelli; Livio Favaro; Marco Gamba; Daniela Pessani
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/88972
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