An Integrated Framework for Estimating the Number of Classes with Application for Species Estimation
Citation:
Al-Ghamdi, Asmaa, An Integrated Framework for Estimating the Number of Classes with Application for Species Estimation, Trinity College Dublin.School of Computer Science & Statistics, 2021Download Item:

Abstract:
The two most common approaches for estimating the number of distinct classes
within a population are either to use sampling data directly with combinatorial
arguments or to extrapolate historical discovery data. However, in the former
case, such detailed sampling data is often unavailable, while the latter approach
makes assumptions on the form of parametric curves used to fit the discovery
data, that are often lacking in theoretical justification. Instead, we propose an
integrated transdisciplinary framework that dissolves the boundaries between the
above two approaches. This is achieved by directly describing the samplingdiscovery
process in parallel with describing a co-variate latent e↵ort process,
where we have historical discovery data for the former process and some proxy
data for the latent process. The linkage between these two processes allows one to
form data on sampling records by forcing some constraints on how many samples
were taken over time. Due to the nature of the constrained data, many inference
techniques become infeasible. However, simulation-based methods such as
Approximate Bayesian Computation remain available. Our proposed approach
is demonstrated and analysed through many simulation experiments, and finally
applied in the ecology field to estimate the number of species as an example of
the number of classes problem.
Sponsor
Grant Number
Scholarship from King Abdulaziz University, Saudi Arabia
Author's Homepage:
https://tcdlocalportal.tcd.ie/pls/EnterApex/f?p=800:71:0::::P71_USERNAME:AALGHAMDDescription:
APPROVED
Author: Al-Ghamdi, Asmaa
Advisor:
Wilson, SimonPublisher:
Trinity College Dublin. School of Computer Science & Statistics. Discipline of StatisticsType of material:
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