Friday Forum Presentation: Difference between revisions
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[ | For a variable <latex>\theta</latex> described by multiple models, each | ||
model provides both a PDF across values at a given time <latex>t</latex> | |||
when run in isolation, <latex>p(\theta, \bar{S}^i)</latex>, and a | |||
distribution that includes feedback effects, <latex>p(\theta, | |||
\tilde{S}^i)</latex>. The final distribution is | |||
<latex>\[ | |||
p(\theta | \cdot) \propto p(\theta) \prod_i p(\theta | | |||
\bar{S}^i)^\lambda p(\theta, \tilde{S}^i)^{1-\lambda} | |||
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Revision as of 20:24, 9 October 2012
<slide header="none" center="both">
Open World Project
Friday Forum Oct. 19, 2012 </slide>
<slide title="Talk Plan">
- Other Projects of Interest
- Motivation and Vision
- Core Elements
- Case Study Projects
- Unified Model of Everything
- Next Steps
</slide>
<slide title="Other Projects of Interest">
- Carbon Transition Working Group
- Himalayan Melt and Flooding
- Peruvian Spatial Fisheries
- Web-Weaver
- Slider Extension
</slide>
<slide title="Introduction"> Many of the human behaviors that drive climate change and environmental degradation are deeply embedded in our society, economy, and government, and are mutually reinforcing. Better modeling of human-natural systems can help in many ways:
- Analyzing feedback loops can help identify leverage points, where small policy changes can have pervasive
impacts.
- Allowing models at diverse scales and contexts to
interact can help scientists integrate knowledge.
- Interactive models can facilitate communication
with policymakers and make complex problems intelligible.
The Open Model is a modeling framework aimed at these issues. </slide>
<slide title="Applicability">
- Systemically intractable due over-determined, reinforcing drives, and spatially heterogeneous.
- Environmental and public health issues
- environmental degradation, agricultural practices in poor countries, obesity, substance abuse, groundwater use, and fishery management
- rebound effects and cross-border shifts (e.g., carbon leakage)
</slide>
<slide title="Big Proposals">
- Fisheries Project
- Climate Behaviors
</slide>
<slide title="Amalgamated Modeling"> </slide>
<slide title="Amalgamated Modeling"> Coupling causes feedback, and models are defined at different scales.
Amalgamated modeling allows models to interact, specialize, and "overlap". </slide>
<slide title="Bayesian Coupling"> </slide>
<slide title="Bayesian Coupling">
For a variable <latex>\theta</latex> described by multiple models, each model provides both a PDF across values at a given time <latex>t</latex> when run in isolation, <latex>p(\theta, \bar{S}^i)</latex>, and a distribution that includes feedback effects, <latex>p(\theta, \tilde{S}^i)</latex>. The final distribution is <latex>\[ p(\theta | \cdot) \propto p(\theta) \prod_i p(\theta | \bar{S}^i)^\lambda p(\theta, \tilde{S}^i)^{1-\lambda} \]</latex>
</slide>
<slide title="Multiple Networks"> Models use multiple networks simultaneously
- Different paths on which stocks flow
- Structured disaggregations into classes
- Capturing network properties
</slide>
<slide title="Multiple Networks in Ohio"> </slide>