Title: Review of the Growing Modeling Toolkit
1Review of the Growing Modeling Toolkit
- Bruce G. Marcot
- USDA Forest Service
- Portland, Oregon USA
2- Marcot, B. G. 2006. Review of the growing
modeling toolkit special session. Presented 5
December 2006 at Habitat and Habitat Supply
Modeling Practitioner's Workshop, 5-7 December
2006. Ministry of Forests, Research Branch,
British Columbia, Canada. Invited. Chase, B.C.
Canada.
3Models, Models, Models
4Models, Models, Models
5Models, Models, Models
6Models, Models, Models
7Models, Models, Models
8- Lots of models to choose from !
9inference ?
biodiversity parameter
10 11- Influence diagrams
- Concept mapping
- Concept diagrams
- Cognitive Map
- Mental Map, Mind Map
http//intraspec.ca/cogmap.php http//www.cs.joen
suu.fi/marjomaa/Knowledge_Representation/doc/Know
ledge_Representation-56.htm
12Influence diagrams
Source Marcot, B. G., et al. 2001. Forest
Ecology and Management 153(1-3)29-42.
13- Influence diagrams
- Mindjet MindManager Pro
- Inspiration
- Personal Brain
- Netica
14Mindjet MindManager Prohttp//www.mindjet.com
15Inspirationhttp//www.inspiration.com/
16Personal Brianhttp//www.thebrain.com/
17Neticahttp//www.norsys.com
18IHMC CmapToolshttp//cmap.ihmc.us/
19- Building influence diagrams
- empirical data
- expert judgment / opinion
- knowledge engineering
- peer review
- expert paneling (e.g., Delphi)
- combination
20- From influence diagram
- to models galore !
21Path regressionQuality Deer Management (QDM)
Source Woods, G. R., D. C. Guynn, W. E. Hammitt,
and M. E. Patterson. 1996. Determinants of
participant satisfaction with quality deer
management. Wildl. Soc. Bull. 24(2)318-324.
22Source Hudson, R. J. 1995. Paths to
conservation. Pp. 318-322 in J. A. Bissonette
and P. R. Krausman, ed. Integrating people and
wildlife for a sustainable future. The Wildlife
Society, Bethesda, Maryland. 715 pp.
Process model STELLA http//www.iseesystems.com/
23Process model STELLA http//www.iseesystems.com/
24neural network
25Types of Models
- Analytic and numerical population models
- Leslie matrix life tables
- Genetic models of inbreeding, genetic drift
- Simulation models
- GIS-based models
- Spatially explicit, individual-based models
- Knowledge-based (expert) models
- Expert systems
- Other expert-based models
26Types of Models
- Statistical empirical models
- Correlation, multivariate models
- Regression tree, classification tree
27Regression tree 3 viability risk levels
28Types of Models
- Statistical empirical models
- Correlation, multivariate models
- Structural equation models (SEMs) a
modeling procedure
29Structural Equation Models (SEMs)
- A way to formalize and construct relationships
among variables. - Observational data
- A generalization of many statistical techniques
- Regression, discriminant analysis, canonical
correlation, factor analysis - Differentiates among direct relationships,
indirect causal relationships, spurious
relationships, association without causation
30Structural Equation Models (SEMs)
- Create the model structure as an influence
diagram including unexplained variance. - Expand the latent variables into their components
e.g., habitat into measurable veg. variables. - Compute regression weights for each variable.
- Partial correlation analysis
- Bayesian conditional probabilities
- Estimate measurement errors of each component
variable. - This depicts the amount of uncertainty in the
habitat-species relations represented in the
model.
31Structural Equation Models (SEMs)
- The final SEM model depicts
- Specific variable relations
- Degree of uncertainty of those variables
- The relations among the variables
- SEM tests the hypothesized underlying causal
relations among variables by analyzing their
covariance structure. - Goodness-of-fit tests of congruence between the
variance-covariance matrix derived from
observational data to that suggested by the
hypothetical causal structure of the model (the
predicted moment matrix).
32Structural Equation Models (SEMs)
- Methods of estimation for the goodness-of-fit
tests - MLE (maximum likelihood estimation), for
multivariate normal data Ngt200 samples - WLS (weighted least squares asymptotically
distribution free) methods, for continuous but
nonnormal data - Polychoric correlation analysis, for ordinal
variables (computes correlation between
unobserved normal variables then uses WLS
methods) - Software for doing SEM
- LISREL, EQS, AMOS, CALIS, SYSTAT
33- Statistical empirical models
- Post-hoc pattern analysis
- Knowledge discovery
- Rule induction (problems w overfitting data)
- Data mining (association analysis)
- Text mining
34Types of Models
- Statistical empirical models
- Post-hoc pattern analysis
- Knowledge discovery
- Rule induction
- Data mining
- Text mining
35Text Mining
- Biodiversity
- biocomplexity
- ecological complexity
- ecological functions
- disturbance regimes
- ecosystem resilience
- stability, resistance
- ecological integrity
- ecosystem services
- sustainability . etc.
36Text Mining
- Biodiversity
- biocomplexity
- ecological complexity
- ecological functions
- disturbance regimes
- ecosystem resilience
- stability, resistance
- ecological integrity
- ecosystem services
- sustainability . etc.
- gt13,000 references
- EndNote biblio. database
- concept proximity analysis
37Marcot, B. G. In revision. Biodiversity and the
lexicon zoo. Forest Ecology and Management
38http//www.kartoo.com
39http//www.kartoo.com
40Data mining Information mapping - topographical
maps - closeness maps - interactive trees -
concept clustering - (many others)
41Decision-Support Models
42Decision-Support Models
- Many tools
- Bayesian statistics, Bayesian belief networks
- Data and text mining
- Decision tree analysis
- Expert systems
- Fuzzy logic, fuzzy set theory
- Genetic algorithms
- Rule and network induction
- Neural networks
- Reliability analyses
- Landscape simulators
43Bayesian Belief Network Model
44Influence Diagrams as Bayesian Belief Network
Model
45Influence Diagrams as Bayesian Belief Network
Model
46- sensitivity analysis
- identifies most influential factors
- identifies degree of influence
47Influence Diagrams as Bayesian Belief Network
Model
48Influence Diagrams as Bayesian Belief Network
Model
Node Mutual Variance of
---- Info Beliefs
Caves or mines 0.02902 0.0069284
Lg snags or trees 0.00953 0.0023053
Cliffs 0.00599 0.0014514
Forest edges 0.00599 0.0014514
Bridges, buildings 0.00063 0.0001543
Boulders 0.00002 0.0000038
49Fuzzy logic model NetWeaverPenn St. Univ.
fuzzy logic (NetWeaver, Penn St. Univ.)
50fzcalc.exe http//www.vspdecision.uni-hannover.de/
Fuzzy arithmetic
51fzcalc.exe http//www.vspdecision.uni-hannover.de/
Fuzzy arithmetic
52EMDS Ecosystem Management Decision
Supporthttp//www.institute.redlands.edu/emds/
53EMDS Ecosystem Management Decision
Supporthttp//www.institute.redlands.edu/emds/
Stream condition depends on reach
condition riparian vegetation bank
stability w/d ratio pool frequency large
wood spawning fines water temperature
54Decision-Support Models
- inputs expressed as management activities ...
or environmental variables potentially affected
by management - outcomes expressed as probabilities ... risk
management - explicitly show management decisions and values
of outcomes
55decision tree (DecisionPro, Vanguard Software
Corp.)
56Influence Diagrams as Bayesian Belief Network
Model
57Influence Diagrams as Bayesian Belief Network
Model
58Decision-Support Models
- Many decision-analysis techniques are available
- Value of perfect information
- Value of additional or sample information
- Credibility of information
- Quantitative measures of the state of knowledge
59Decision-Support Models
- Many analysis methods
- MAUT (Multi-Attribute Utility Theory)
- Goal Hierarchy
- AHP (Analytic Hierarchy Process)
- MCDM (Multiple Criteria Decision Making)
- EPAs Quantitative Risk Analysis
60Decision-Support Models --Useful Model Attributes
- probability-based
- accounts for missing data
- provides for sensitivity testing
- provides management hypothesis (adaptive
management) - incorporates new data to update model functions,
probabilities, structure - allows rapid prototyping
- combines expert judgment w/ empirical data
multiple experts
61Population Models
62Population Models
- Populus general popn dynamics(www.cbs.umn.edu/p
opulus/) - Vortex (www.vortex9.org/vortex.html), Nemesis
PVA, viability - RAMAS (www.ramas.com)
- RAMAS Red List, RAMAS GIS, RAMAS MetapopRAMAS
Landscape, RAMAS Multispecies AssessmentRAMAS
Ecotoxicology, RAMAS Ecosystem, RAMAS Stage - Outbreak disease (www.vortex9.org/outbreak.html)
- SELES spatially explicit landscape event
simulator (http//www.ncgia.ucsb.edu/conf/SANTA_F
E_CD-ROM/sf_papers/fall_andrew/fall.html) - Biomapper habitat suitability mapping, GIS
(www2.unil.ch/biomapper/) - PATCH individual, spatially-explicit
simulator(Nathan Schumaker, U.S. EPA)
63Models of Vegetation Processes
- Vegetation growth, ecological succession,
ecosystem disturbance, other processes - Techniques
- Markov chain
- Transition matrix analysis
- Loop analysis, graph theory
- Models
- VDDT, ESSA, MARXAN, ECOSIM ECOPATH, PATH
64Models of Optimizing Land Allocations
- Many techniques
- e.g., genetic algorithms, neural networks,
adaptive kernel - Multi-objective integer programming (MOIP)
- Nonlinear integer programming
- Models SITES, BioMapper
- Approaches reserve complementarity, redundancy,
representativeness
65Managing Under Uncertainty
- many tools in the toolkit
- make explicit the inference from habitat to
biodiversity parameter - display uncertainty of parameters and
relationships - useful for risk management
- clearly show risk attitude
- clearly articulate decision criteria
- very helpful for monitoring, adaptive research