iarpa

Date: August 1, 2012 – May 15, 2016
Sponsored amount: 20,000,000
Research Areas: Forecasting, Network Science

Many significant societal events are preceded and/or followed by population-level changes in communication, consumption, and movement. Some of these changes may be indirectly observable from publicly available data, such as web search queries, blogs, micro-blogs, internet traffic, financial markets, traffic webcams, Wikipedia edits, and many others. Published research has found that some of these data sources are individually useful in the early detection of events such as disease outbreaks. But few methods have been developed for anticipating or detecting unexpected events by fusing publicly available data of multiple types from multiple sources.

IARPA’s Open Source Indicators (OSI) Program aims to fill this gap by developing methods for continuous, automated analysis of publicly available data in order to anticipate and/or detect significant societal events, such as political crises, humanitarian crises, mass violence, riots, mass migrations, disease outbreaks, economic instability, resource shortages, and responses to natural disasters. Performers will be evaluated on the basis of warnings that they deliver about real-world events.

Required technical innovations include: development of methods that leverage population behavior change in anticipation of, and in response to, events of interest; processing of publicly available data that reflect those population behavior changes; development of data extraction techniques that focus on volume, rather than depth, by identifying shallow features of data that correlate with events; development of multivariate time series models robust to non-stationary, noisy data to reveal patterns that precede events; and innovative use of statistical methods to fuse combinations of time series for generating probabilistic warnings of events. If successful, OSI methods will “beat the news” by fusing early indicators of events from multiple publicly available data sources and types.

For more information about the Open Source Indicators program visit here.

Projects

venezuelan-spring-embers-predicted-actual[4]
EMBERS EMBERS is a system for forecasting societal significant societal events from open source surrogates.
Research Areas:
  • iconForecasting
  • iconNetwork Science
Dates: August 1, 2012July 4, 2016

People

Ramakrishnan-updated

Naren Ramakrishnan


ctlu-updated

Chang-Tien Lu


leman-updated

Scotland C. Leman


Huang-updated

Bert Huang


patrick-updated

Patrick Butler


sathappan-updated

Sathappan Muthiah


parang-updated

Parang Saraf


wei-updated

Wei Wang


Saurav Ghosh-updated

Saurav Ghosh