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Dmytro Perepolkin. Foto.

Dmytro Perepolkin

Doktorand

Dmytro Perepolkin. Foto.

Scientific methods for integrating expert knowledge in Bayesian models

Författare

  • Dmytro Perepolkin

Summary, in English

Generating scientific advice to environmental management involves assessments with complex models, sparse data, and challenging empirical experiments, necessitating the integration of expert judgment with data into scientific models. To integrate expert judgement, assessors might elicit judgement by experts as quantiles, find a probability distribution that matches the quantiles, and add this information to the model. Data is then integrated into the model by Bayesian inference to learn parameters or make predictions. This thesis aims to simplify such
integration of expert judgment, and introduce the use of Quantile-Parameterized Distributions (QPDs) into Bayesian models. Key questions addressed include identifying suitable QPDs for encoding expert judgment, and conditions for using QPDs as priors or likelihoods in Bayesian inference. The creation of new QPDs through quantile function transformation is explored, providing a methodological advancement. The use of the proposed methodology is demonstrated on expert-informed bias-adjustment of citizen science data in a Species Distribution
Model for conservation assessment.

Avdelning/ar

  • Centrum för miljö- och klimatvetenskap (CEC)
  • BECC: Biodiversity and Ecosystem services in a Changing Climate

Publiceringsår

2023-12-13

Språk

Engelska

Dokumenttyp

Doktorsavhandling

Förlag

Lund University

Ämne

  • Probability Theory and Statistics
  • Environmental Sciences

Nyckelord

  • Bayesian inference
  • Expert judgement
  • Quantile-parameterized distributions
  • Quantile functions

Status

Published

Projekt

  • Expert Knowledge

Handledare

  • Ullrika Sahlin
  • Erik Lindström
  • Johan Elmberg

ISBN/ISSN/Övrigt

  • ISBN: 978-91-8039-914-2
  • ISBN: 978-91-8039-915-9

Försvarsdatum

23 januari 2024

Försvarstid

13:00

Försvarsplats

Blå hallen, Ekologihuset.

Opponent

  • John Quigley (Professor)