Histogram Model with Plausible Parametric Detection Function for Line Transect Data |
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Authors: | Omar Eidous |
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Institution: | Department of Statistics, Faculty of Science , King Abdel Aziz University , Jeddah , Saudi Arabia |
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Abstract: | This article develops a new model that combines between the histogram and plausible parametric detection function to estimate the population density (abundance) by using line transects technique. A parametric detection function is introduced to improve the properties of the classical histogram estimator. Asymptotic properties of the resulting estimator are derived and an expression for the asymptotic mean square error (AMSE) is given. A general formula for the optimal choice of the histogram bin width based on AMSE is derived. Moreover, other possible alternative procedures to select the bin width are suggested and studied via simulation technique. The results show the superiority of the proposed estimators over both the classical histogram and the usual kernel estimators in most reasonable cases. In addition, the simulation results indicate that the choice of a plausible detection function is less sensitive than the choice of a bin width on the performance of the proposed estimator. |
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Keywords: | Histogram method Half-Normal model Kernel method Line transect method Logistic model |
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