Richness estimation with species identity error
Jai-Hua Yen, Chun-Huo Chiu

TL;DR
This paper introduces a novel method to correct species richness estimates by accounting for species identity errors, improving accuracy in biodiversity surveys with small samples or misidentification issues.
Contribution
The study proposes a new bias correction approach for richness estimation that incorporates species identity error rates into existing estimators.
Findings
Simulation results show improved accuracy of richness estimates.
Real data application demonstrates practical effectiveness.
Corrected estimates outperform traditional methods.
Abstract
Richness estimation of an interesting area is always a challenge statistical work due to small sample size or species identity error. In the literatures, most richness estimators were only proposed to tackle the underestimation of the size-limited sample. However, species identity error almost occurs in each species survey and seriously reduces the accuracy of observed, singleton, and doubleton richness in turns to influence the behavior of richness estimator. Therefore, to estimate the true richness, the biased collected data due to species identity error should be modified before processing the richness estimation work. In the manuscript, we propose a new approach to correct the bias of richness estimation due to species identity error. First, a species list inventory from a subplot obtained by the investigator was used to estimate the species identity error rate. Then, we can correct…
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Taxonomy
TopicsPlant and animal studies · Ecology and Vegetation Dynamics Studies · Animal Ecology and Behavior Studies
