Bootstrap confidence intervals for biodiversity measures based on Gini index and entropy
Nicola Pesenti (),
Piero Quatto and
Enrico Ripamonti
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Nicola Pesenti: University of Milan-Bicocca
Piero Quatto: University of Milan-Bicocca
Enrico Ripamonti: University of Milan-Bicocca
Quality & Quantity: International Journal of Methodology, 2017, vol. 51, issue 2, No 23, 847-858
Abstract:
Abstract Monitoring the richness and the diversity of species living in an ecosystem is an important goal of ecology. To this purpose, measures of biodiversity have been introduced as statistical summaries of the abundance vector. In particular, we take into consideration the Gini–Simpson and the Shannon–Wiener indices, along with the effective number of species calculated through these measures, proposed, respectively, by Laakso and Taagepera (Comp Polit Stud 12:3–25, 1979) and Leti (Statistica descrittiva, Bologna, Il Mulino, 1983). It is an open question how to associate to these indices a measure of uncertainty. In this paper we compare confidence intervals based on these measures, calculated through three different bootstrap methods: percentile, -t and accelerated bias-corrected percentile. We recommend to practitioners to use the percentile procedure, as it is straightforward and computationally feasible, providing results very close to those obtained by more complex techniques.
Keywords: Gini–Simpson index; Shannon–Wiener index; Leti index; Laakso–Taagepera index; Bootstrap methods; Confidence intervals (search for similar items in EconPapers)
Date: 2017
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DOI: 10.1007/s11135-016-0443-x
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