Robeson County
End-to-End Optimization and Learning of Fair Court Schedules
Dinh, My H, Kotary, James, Gouldin, Lauryn P., Yeoh, William, Fioretto, Ferdinando
Criminal courts across the United States handle millions of cases every year, and the scheduling of those cases must accommodate a diverse set of constraints, including the preferences and availability of courts, prosecutors, and defense teams. When criminal court schedules are formed, defendants' scheduling preferences often take the least priority, although defendants may face significant consequences (including arrest or detention) for missed court dates. Additionally, studies indicate that defendants' nonappearances impose costs on the courts and other system stakeholders. To address these issues, courts and commentators have begun to recognize that pretrial outcomes for defendants and for the system would be improved with greater attention to court processes, including \emph{court scheduling practices}. There is thus a need for fair criminal court pretrial scheduling systems that account for defendants' preferences and availability, but the collection of such data poses logistical challenges. Furthermore, optimizing schedules fairly across various parties' preferences is a complex optimization problem, even when such data is available. In an effort to construct such a fair scheduling system under data uncertainty, this paper proposes a joint optimization and learning framework that combines machine learning models trained end-to-end with efficient matching algorithms. This framework aims to produce court scheduling schedules that optimize a principled measure of fairness, balancing the availability and preferences of all parties.
- North America > United States > Virginia > Albemarle County > Charlottesville (0.04)
- North America > United States > Pennsylvania (0.04)
- North America > United States > North Carolina > Robeson County (0.04)
- (3 more...)
- Government > Regional Government > North America Government > United States Government (0.93)
- Law > Criminal Law (0.88)
- Law > Litigation (0.74)
Media Slant is Contagious
Widmer, Philine, Galletta, Sergio, Ash, Elliott
This paper examines the diffusion of media slant, specifically how partisan content from national cable news affects local newspapers in the U.S., 2005-2008. We use a text-based measure of cable news slant trained on content from Fox News Channel (FNC), CNN, and MSNBC to analyze how local newspapers adopt FNC's slant over CNN/MSNBC's. Our findings show that local news becomes more similar to FNC content in response to an exogenous increase in local FNC viewership. This shift is not limited to borrowing from cable news, but rather, local newspapers' own content changes. Further, cable TV slant polarizes local news content.
- Africa (0.28)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Asia > Russia (0.14)
- (42 more...)
- Media > Television (1.00)
- Media > News (1.00)
- Leisure & Entertainment (1.00)
- (3 more...)
Improving Community Resiliency and Emergency Response With Artificial Intelligence
Ortiz, Ben, Kahn, Laura, Bosch, Marc, Bogden, Philip, Pavon-Harr, Viveca, Savas, Onur, McCulloh, Ian
New crisis response and management approaches that incorporate the latest information technologies are essential in all phases of emergency preparedness and response, including the planning, response, recovery, and assessment phases. Accurate and timely information is as crucial as is rapid and coherent coordination among the responding organizations. We are working towards a multi-pronged emergency response tool that provide stakeholders timely access to comprehensive, relevant, and reliable information. The faster emergency personnel are able to analyze, disseminate and act on key information, the more effective and timelier their response will be and the greater the benefit to affected populations. Our tool consists of encoding multiple layers of open source geospatial data including flood risk location, road network strength, inundation maps that proxy inland flooding and computer vision semantic segmentation for estimating flooded areas and damaged infrastructure. These data layers are combined and used as input data for machine learning algorithms such as finding the best evacuation routes before, during and after an emergency or providing a list of available lodging for first responders in an impacted area for first. Even though our system could be used in a number of use cases where people are forced from one location to another, we demonstrate the feasibility of our system for the use case of Hurricane Florence in Lumberton, a town of 21,000 inhabitants that is 79 miles northwest of Wilmington, North Carolina.
- North America > United States > North Carolina > New Hanover County > Wilmington (0.24)
- North America > United States > Virginia > Montgomery County > Blacksburg (0.06)
- North America > United States > North Carolina > Robeson County > Lumberton (0.05)
- North America > Dominica (0.04)