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Learning about a Moving Target in Resource Management: Optimal Bayesian Disease Control

Author

Listed:
  • MacLachlan, Matthew J.
  • Springborn, Michael R.
  • Fackler, Paul L.

Abstract

Resource managers must often make difficult choices in the face of imperfectly observed and dynamically changing systems (e.g. livestock, fisheries, water and invasive species). A rich set of techniques exists for identifying optimal choices under such uncertainty, though that uncertainty is typically, and unrealistically, assumed to be understood and irreducible. The adaptive management literature overcomes this limitation with tools for optimal learning, however rich descriptions of system dynamics are ironed out for tractability, e.g. the model component that is targeted for learning is not allowed to vary. We overcome this trade-off through a novel extension of the existing Partially Observable Markov Decision Process (POMDP) framework, to allow for learning about a dynamically changing and continuous state. We illustrate this methodology by exploring optimal control of bovine tuberculosis in New Zealand's cattle. Disease testing---the control variable---serves to identify herds for treatment and provide information on prevalence, which is both imperfectly observed and subject to change due to controllable and uncontrollable factors. We find substantial efficiency losses from both ignoring learning (standard stochastic optimization) and from simplifying system dynamics (standard adaptive management), though the latter effect dominates. We also find that under an adaptive management approach, simplifying dynamics can lead to a belief trap in which information gathering ceases, beliefs become increasingly inaccurate and losses abound.

Suggested Citation

  • MacLachlan, Matthew J. & Springborn, Michael R. & Fackler, Paul L., 2015. "Learning about a Moving Target in Resource Management: Optimal Bayesian Disease Control," 2015 AAEA & WAEA Joint Annual Meeting, July 26-28, San Francisco, California 205715, Agricultural and Applied Economics Association.
  • Handle: RePEc:ags:aaea15:205715
    DOI: 10.22004/ag.econ.205715
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    Cited by:

    1. Xiaoli Fan & Miguel I. Gómez & Shady S. Atallah & Jon M. Conrad, 2020. "A Bayesian State‐Space Approach for Invasive Species Management: The Case of Spotted Wing Drosophila," American Journal of Agricultural Economics, John Wiley & Sons, vol. 102(4), pages 1227-1244, August.
    2. K. Aleks Schaefer & Daniel P. Scheitrum & Steven van Winden, 2022. "Returns on investment to the British bovine tuberculosis control programme," Journal of Agricultural Economics, Wiley Blackwell, vol. 73(2), pages 472-489, June.
    3. Kling, David M. & Sanchirico, James N. & Fackler, Paul L., 2017. "Optimal monitoring and control under state uncertainty: Application to lionfish management," Journal of Environmental Economics and Management, Elsevier, vol. 84(C), pages 223-245.
    4. Pablo Garcia, 2024. "Optimal timing of environmental policy under partial information," BCL working papers 180, Central Bank of Luxembourg.
    5. Dai, Bingyan & Gomez, Miguel I. & Fan, Xiaoli & Loeb, Gregory & Shrestha, Binita, 2024. "Cost-effectiveness and Risk Assessment in Integrated Pest Management: The Case of Spotted Wing Drosophila," 2024 Annual Meeting, July 28-30, New Orleans, LA 343531, Agricultural and Applied Economics Association.
    6. MacLachlan, Matthew & Chelius, Carolyn & Short, Gianna, 2022. "Time-Series Methods for Forecasting and Modeling Uncertainty in the Food Price Outlook," USDA Miscellaneous 327370, United States Department of Agriculture.
    7. Ivan Rudik & Derek Lemoine & Maxwell Rosenthal, 2018. "General Bayesian Learning in Dynamic Stochastic Models: Estimating the Value of Science Policy," 2018 Meeting Papers 369, Society for Economic Dynamics.
    8. Sloggy, Matthew R. & Kling, David M. & Plantinga, Andrew J., 2020. "Measure twice, cut once: Optimal inventory and harvest under volume uncertainty and stochastic price dynamics," Journal of Environmental Economics and Management, Elsevier, vol. 103(C).

    More about this item

    Keywords

    Livestock Production/Industries; Resource /Energy Economics and Policy; Risk and Uncertainty;
    All these keywords.

    JEL classification:

    • C61 - Mathematical and Quantitative Methods - - Mathematical Methods; Programming Models; Mathematical and Simulation Modeling - - - Optimization Techniques; Programming Models; Dynamic Analysis
    • Q57 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Environmental Economics - - - Ecological Economics
    • Q18 - Agricultural and Natural Resource Economics; Environmental and Ecological Economics - - Agriculture - - - Agricultural Policy; Food Policy; Animal Welfare Policy
    • H41 - Public Economics - - Publicly Provided Goods - - - Public Goods

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