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Home > ADRF Network > ADRF Network Research Conference Presentations > 2017 Presentations

2017 ADRF Network Research Conference Presentations

2017 ADRF Network Research Conference Presentations

 

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Presentations from 2017 2017

PDF

2017 Conference Program, ADRF Network

PDF

Predicting Family Homelessness Using Machine Learning, Robert Collinson

PDF

Administrative Data in Foster Care: An Aggregate Approach, John T. Halloran

PDF

Managing Police Patrols with HunchLab: Humility in ML-based Systems, Jeremy Heffner

PDF

Fostering Trust for Community Benefit Infrastructure for Privacy-Assured Computation, John Killeen

PDF

Better Together: Three Models for Combining Public and Private Data to Create New Research Data Sets, Eddie Tzu-Yun Lin

PDF

Democratizing Data with the Charlotte-Mecklenburg Quality of Life Explorer, Laura Simmons

PDF

Machine Learning from Health Insurance Administrative Data: Opioids, Obamacare, and Other Applications, Kush R. Varshney

PDF

The Black/White Placement Gap, Fred Wulczyn

PDF

Administrative Data Research Facility Linked HMDA and ACS Database, Jun Zhu

 
 
 

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