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Social and Behavioral Sciences Commons

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Full-Text Articles in Social and Behavioral Sciences

Understanding And Using Advanced Statistics, Jeremy Foster, Emma Barkus, Christian Yavorsky Dec 2011

Understanding And Using Advanced Statistics, Jeremy Foster, Emma Barkus, Christian Yavorsky

Emma Barkus

The spread of sophisticated computer packages and the machinery on which to run them has meant that procedures which were previously only available to experienced researchers with access to expensive machines and research students can now be carried out in a few seconds by almost every undergraduate. Understanding and Using Advanced Statistics provides the basis for gaining an understanding of what these analytic procedures do, when they should be used, and what the results provided signify. This comprehensive textbook guides students and researchers through the transition from simple statistics to more complex procedures with accessible language and illustration.


Informed Desk Staffing With Quantified Reference Statistics: Using Electronic Data Collection To Re-Envision Reference Services At The Usf Tampa Libraries, Lily Todorinova, Andy Huse, Barbara Lewis, Matt Torrence Jun 2011

Informed Desk Staffing With Quantified Reference Statistics: Using Electronic Data Collection To Re-Envision Reference Services At The Usf Tampa Libraries, Lily Todorinova, Andy Huse, Barbara Lewis, Matt Torrence

Academic Services Faculty and Staff Publications

Andy Huse, Barbara Lewis, Lily Todorinova, and Matt Torrence participated in a panel presentation for RUSA MARS Hot Topics. Their presentation titled "Informed Desk Staffing Through Quantified Reference Statistics” discussed the data collection, data analysis, and decision-making aspects of the Re-envisioning Reference project at the USF Libraries. This project examined the implementation and effectiveness of online data collection tools and the use of their data to inform managerial decisions as to scheduling of desk hours and staffing levels. Interviews with key library administrators were conducted in order to provide an historical perspective as to weaknesses of past data collection and …


Informed Desk Staffing With Quantified Reference Statistics: Using Electronic Data Collection To Re-Envision Reference Services At The Usf Tampa Libraries, Lily Todorinova, Andy Huse, Barbara Lewis, Matt Torrence Jun 2011

Informed Desk Staffing With Quantified Reference Statistics: Using Electronic Data Collection To Re-Envision Reference Services At The Usf Tampa Libraries, Lily Todorinova, Andy Huse, Barbara Lewis, Matt Torrence

Matt Torrence

Andy Huse, Barbara Lewis, Lily Todorinova, and Matt Torrence participated in a panel presentation for RUSA MARS Hot Topics. Their presentation titled "Informed Desk Staffing Through Quantified Reference Statistics” discussed the data collection, data analysis, and decision-making aspects of the Re-envisioning Reference project at the USF Libraries. This project examined the implementation and effectiveness of online data collection tools and the use of their data to inform managerial decisions as to scheduling of desk hours and staffing levels. Interviews with key library administrators were conducted in order to provide an historical perspective as to weaknesses of past data collection and …


Empirical Methods-A Review: With An Introduction To Data Mining And Machine Learning, Matt Bogard May 2011

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.