Grantee Research Project Results
Using Multilevel Statistical Models to Address Representativeness and Data at Different Spatial and Temporal Scales
EPA Grant Number: R826763Title: Using Multilevel Statistical Models to Address Representativeness and Data at Different Spatial and Temporal Scales
Investigators: Berk, Richard , DeLeeuw, Jan , Ambrose, Richard , Turco, Richard , Gould, Robert
Current Investigators: Berk, Richard , Ambrose, Richard
Institution: University of California - Los Angeles
EPA Project Officer: Hahn, Intaek
Project Period: October 1, 1998 through September 30, 2000
Project Amount: $414,149
RFA: Regional Scale Analysis and Assessment (1998) RFA Text | Recipients Lists
Research Category: Aquatic Ecosystems , Ecological Indicators/Assessment/Restoration
Description:
We will consider "representativeness" when probability sampling cannot be employed. From this examination, we will then extend multilevel statistical models to provide new techniques for working scientists. The extensions include: 1) multiple response variables, 2) nom-linear functional forms, 3) missing data, 4) disturbance covariance matrices allowing for temporal and spatial dependencies, and 5) latent variables. In so doing, we will not only provide better tools to determine "representativeness" but also a convenient means to properly analyze data at different spatial and temporal scales (e.g. satellite data and survey data). We will write software for the extended multilevel statistical models. Finally, we will illustrate the use of these models with three very different data sets, two of which were collected as part of an EPA-funded project to study the Los Angeles basin watershed.Approach:
The proposed research builds on a number of rich traditions in statistics. While we will need to do some original statistical work, we will primarily be assembling and integrating a number of existing techniques into the multilevel statistical framework and then writing the necessary software. The empirical examples will exploit data that are already available in machine readable form.Expected Results:
We expect to provide new statistical procedures working scientists can use to better generalize their results. With better statistical procedures for generalizing, the risk assessment generalizations will be on more sound footing.Publications and Presentations:
Publications have been submitted on this project: View all 1 publications for this projectSupplemental Keywords:
statistical inference, external validity, hierarchical models, RFA, Ecosystem Protection/Environmental Exposure & Risk, Economic, Social, & Behavioral Science Research Program, Environmental Statistics, Regional/Scaling, regional environmental data, non-linear functional forms, survey data, data analysis, satellite data, ecosystem assessment, regional survey data, environmental risks, innovative statistical models, risk assessment, representativeness, disturbance covariance, statistical models, external validity, statistical methods, data synthesis, hierarchical statistical analysis, spatial-temporal methods, remotely sensed data, hierarchical statistical inference, data models, multilevel statistical model, representativeness studies, multiple response variable, modeling, regional scale impacts, spatial and temporal scalesProgress and Final Reports:
The perspectives, information and conclusions conveyed in research project abstracts, progress reports, final reports, journal abstracts and journal publications convey the viewpoints of the principal investigator and may not represent the views and policies of ORD and EPA. Conclusions drawn by the principal investigators have not been reviewed by the Agency.