Special Issue Article: Adaptive management for biodiversity conservation in an uncertain world Which uncertainty? Using expert elicitation and expected value of information to design an adaptive program

Natural resource management is plagued with uncertainty of many kinds, but not all uncertainties are equally important to resolve. The promise of adaptive management is that learning in the short-term will improve management in the long-term; that promise is best kept if the focus of learning is on those uncertainties that most impede achievement of management objectives. In this context, an existing tool of decision analysis, the expected value of perfect information (EVPI), is particularly valuable in identifying the most important uncertainties. Expert elicitation can be used to develop preliminary predictions of management response under a series of hypotheses, as well as prior weights for those hypotheses, and the EVPI can be used to determine how much management could improve if uncertainty was resolved. These methods were applied to management of whooping cranes (Grus americana), an endangered migratory bird that is being reintroduced in several places in North America. The Eastern Migratory Population of whooping cranes had exhibited almost no successful reproduction through 2009. Several dozen hypotheses can be advanced to explain this failure, and many of them lead to very different management responses. An expert panel articulated the hypotheses, provided prior weights for them, developed potential management strategies, and made predictions about the response of the population to each strategy under each hypothesis. Multi-criteria decision analysis identified a preferred strategy in the face of uncertainty, and analysis of the expected value of information identified how informative each strategy could be. These results provide the foundation for design of an adaptive management program.

[1]  Fiona Fidler,et al.  Reducing Overconfidence in the Interval Judgments of Experts , 2010, Risk analysis : an official publication of the Society for Risk Analysis.

[2]  Gordon B. Hazen,et al.  Sensitivity Analysis and the Expected Value of Perfect Information , 1998, Medical decision making : an international journal of the Society for Medical Decision Making.

[3]  Glenn H. Olsen,et al.  MEDICINE AND SURGERY , 1976 .

[4]  G. William Walster,et al.  A comparative study of differences in subjective likelihood estimates made by individuals, interacting groups, Delphi groups, and nominal groups☆ , 1973 .

[5]  B K Williams,et al.  Adaptive optimization and the harvest of biological populations. , 1996, Mathematical biosciences.

[6]  Cindy E. Hauser,et al.  Active adaptive conservation of threatened species in the face of uncertainty. , 2010, Ecological applications : a publication of the Ecological Society of America.

[7]  Carl J. Walters,et al.  Adaptive Management of Renewable Resources , 1986 .

[8]  T. L. Woodburn,et al.  CONTEXT‐DEPENDENT BIOLOGICAL CONTROL OF AN INVASIVE THISTLE , 2005 .

[9]  Max Henrion,et al.  Uncertainty: A Guide to Dealing with Uncertainty in Quantitative Risk and Policy Analysis , 1990 .

[10]  Richard T. Roush,et al.  ACTIVE ADAPTIVE MANAGEMENT IN INSECT PEST AND WEED CONTROL: INTERVENTION WITH A PLAN FOR LEARNING , 2002 .

[11]  Ralph L. Keeney,et al.  Book Reviews : Scientific Opportunities and Public Needs: Improv ing Priority Setting and Public Input at the National Institutes of Health. Institute of Medicine. Washington, DC: National Academy Press, 1998, 136 pages, $26.00 , 1998 .

[12]  John R. Stoll,et al.  Use of Dichotomous Choice Nonmarket Methods to Value the Whooping Crane Resource , 1988 .

[13]  J. Berger Statistical Decision Theory and Bayesian Analysis , 1988 .

[14]  Jeremy E. Oakley,et al.  Uncertain Judgements: Eliciting Experts' Probabilities , 2006 .

[15]  J. Andrew Royle,et al.  Bayesian analysis of multi-state data with individual covariates for estimating genetic effects on demography , 2011, Journal of Ornithology.

[16]  Helen M. Regan,et al.  A TAXONOMY AND TREATMENT OF UNCERTAINTY FOR ECOLOGY AND CONSERVATION BIOLOGY , 2002 .

[17]  H. Raiffa,et al.  Applied Statistical Decision Theory. , 1961 .

[18]  A. Tversky,et al.  Judgment under Uncertainty: Heuristics and Biases , 1974, Science.

[19]  John B. Loomis,et al.  Economic benefits of rare and endangered species: summary and meta-analysis , 1996 .

[20]  David B. Lindenmayer,et al.  Adaptive risk management for certifiably sustainable forestry , 2008 .

[21]  Douglas C. MacMillan,et al.  The Delphi process – an expert‐based approach to ecological modelling in data‐poor environments , 2006 .

[22]  H. Possingham,et al.  Active Adaptive Management for Conservation , 2007, Conservation biology : the journal of the Society for Conservation Biology.

[23]  Gordon B. Hazen,et al.  A Bayesian approach to sensitivity analysis. , 1999, Health economics.

[24]  W. Edwards,et al.  Decision Analysis and Behavioral Research , 1986 .

[25]  Hugh P Possingham,et al.  Optimal adaptive management for the translocation of a threatened species. , 2009, Ecological applications : a publication of the Ecological Society of America.

[26]  Paul Goodwin,et al.  Decision Analysis for Management Judgment , 1998 .

[27]  George F. Gee,et al.  Cranes: Their Biology, Husbandry, and Conservation , 1996 .

[28]  Richard P. Urbanek,et al.  Winter release and management of reintroduced migratory Whooping Cranes Grus americana , 2009, Bird Conservation International.

[29]  A. V. D. Ven,et al.  Group Techniques for Program Planning , 1975 .

[30]  M. Burgman Risks and Decisions for Conservation and Environmental Management: Experts, stakeholders and elicitation , 2005 .

[31]  J Andrew Royle,et al.  Demographic Analysis from Summaries of an Age‐Structured Population , 2003, Biometrics.

[32]  Tara G Martin,et al.  A guide to eliciting and using expert knowledge in Bayesian ecological models. , 2010, Ecology letters.

[33]  Murray Turoff,et al.  The Delphi Method: Techniques and Applications , 1976 .

[34]  James D. Nichols,et al.  Adaptive harvest management of North American waterfowl populations: a brief history and future prospects , 2007, Journal of Ornithology.

[35]  Brendan A Wintle,et al.  Allocating monitoring effort in the face of unknown unknowns. , 2010, Ecology letters.

[36]  Fumie Yokota,et al.  Value of Information Literature Analysis: A Review of Applications in Health Risk Management , 2004, Medical decision making : an international journal of the Society for Medical Decision Making.