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Edmund Seto

Researcher at University of Washington

Publications -  205
Citations -  7626

Edmund Seto is an academic researcher from University of Washington. The author has contributed to research in topics: Population & Air quality index. The author has an hindex of 43, co-authored 190 publications receiving 6136 citations. Previous affiliations of Edmund Seto include University of California, Berkeley & Washington Department of Ecology.

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Disease transmission models for public health decision making: toward an approach for designing intervention strategies for Schistosomiasis japonica.

TL;DR: An approach to parameter estimation that uses a recently developed statistical procedure called Bayesian melding to sequentially reduce parametric uncertainty as field data are accumulated over several seasons is described.
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The Imperial County Community Air Monitoring Network: A Model for Community-based Environmental Monitoring for Public Health Action

TL;DR: The Imperial County Community Air Monitoring Network is a collaborative group of community, academic, nongovernmental, and government partners designed to fill the need for more detailed data on particulate matter in an area that often exceeds air quality standards.
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Stress, Anxiety, and Change in Alcohol Use During the COVID-19 Pandemic: Findings Among Adult Twin Pairs

TL;DR: The findings suggest that individuals’ mental health may be associated with changes in alcohol use during the COVID-19 pandemic, where twins with higher levels of stress and anxiety were more likely to report an increase in alcohol consumption.
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Comparison of gray-level reduction and different texture spectrum encoding methods for land-use classification using a panchromatic Ikonos image

TL;DR: The potential of a frequencybased contextual classifier (FBC) for land-use classification with a panchromatic Ikonos image is evaluated and it is found that the GLR methods resulted in accuracies similar to that of the original image, while there was little difference in classification accuracy.