Abstract

Bias introduced by detection errors is a well‐documented issue for abundance and occupancy estimates of wildlife. Detection errors bias estimates of detection and abundance or occupancy in positive and negative directions, which can produce misleading results. There have been considerable design‐ and model‐based methods to address false‐negative errors, or missed detections. However, false‐positive errors, or detections of individuals that are absent but counted as present because of misidentifications or double counts, are often assumed to not occur in ecological studies. The dependent double‐observer survey method is a design‐based approach speculated to reduce false positives because observations have the ability to be confirmed by two observers. However, whether this method reduces false positives compared to single‐observer methods has not been empirically tested. We used prairie songbirds as a model system to test if a dependent double‐observer method reduced false positives compared to a single‐observer method. We used vocalizations of ten species to create auditory simulations and used naive and expert observers to survey these simulations using single‐observer and dependent double‐observer methods. False‐positive rates were significantly lower using the dependent double‐observer survey method in both observer groups. Expert observers reported a 3.2% false‐positive rate in dependent double‐observer surveys and a 9.5% false‐positive rate in single‐observer surveys, while naive observers reported a 39.1% false‐positive rate in dependent double‐observer surveys and a 49.1% false‐positive rate in single‐observer surveys. Misidentification errors arose in all survey scenarios and almost all species combinations. However, expert observers using the dependent double‐observer method performed significantly better than other survey scenarios. Given the use of double‐observer methods and the accumulating evidence that false positives occur in many survey methods across different taxa, this study is an important step forward in acknowledging and addressing false positives.

Highlights

  • Errors from imperfect detection, when left unaccounted for, are a prevalent source of bias when estimating wildlife population abundance or occupancy from field data

  • Logistic regression (Table 2) indicated that observers conducting Independent single-observer (ISO) surveys were 3.147 times more likely to report a false positive than observers conducting dependent double-observer (DDO) surveys (P < 0.001)

  • The interaction between survey method and experience was significant with an estimate of 0.478; false-positive rates in expert observers decreased by a greater amount when using the DDO method in comparison to the ISO method (P = 0.003)

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Summary

Introduction

Errors from imperfect detection, when left unaccounted for, are a prevalent source of bias when estimating wildlife population abundance or occupancy from field data. Observers cause two kinds of detection errors: (1) false-negative errors, when individuals are not detected when they truly are present, and (2) falsepositive errors (“false positives”), when individuals are counted as present when they are truly absent Manuscript received 9 May 2019; revised 27 August 2019; accepted 16 September 2019. Ecological Applications Vol 30, No 2 misidentification of an individual for the remainder of this study

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