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Articles 1 - 4 of 4
Full-Text Articles in Physical Sciences and Mathematics
Fast And Free: Apps And Websites You Can Use Today, Amanda Hartman
Fast And Free: Apps And Websites You Can Use Today, Amanda Hartman
Amanda Hartman McLellan
This workshop will cover some websites and mobile apps that are free and easy to use for a variety of purposes, from organization to just plain fun. If you've got a laptop, iPad or other mobile device, please bring it so you can play along!
Institutional Support For Computing Faculty Research Productivity: Does Gender Matter?, Monica M. Mcgill, Amber Settle
Institutional Support For Computing Faculty Research Productivity: Does Gender Matter?, Monica M. Mcgill, Amber Settle
Amber Settle
Empirical Methods-A Review: With An Introduction To Data Mining And Machine Learning, Matt Bogard
Empirical Methods-A Review: With An Introduction To Data Mining And Machine Learning, Matt Bogard
Economics Faculty Publications
This presentation was part of a staff workshop focused on empirical methods and applied research. This includes a basic overview of regression with matrix algebra, maximum likelihood, inference, and model assumptions. Distinctions are made between paradigms related to classical statistical methods and algorithmic approaches. The presentation concludes with a brief discussion of generalization error, data partitioning, decision trees, and neural networks.
A Fine Mapping Theorem To Refine Results From Association Genetics Studies, Steven J. Schrodi
A Fine Mapping Theorem To Refine Results From Association Genetics Studies, Steven J. Schrodi
Steven J Schrodi
No abstract provided.