Mining for Causal Relationships: A Data-Driven Study of the Islamic State

08/05/2015
by   Andrew Stanton, et al.
0

The Islamic State of Iraq and al-Sham (ISIS) is a dominant insurgent group operating in Iraq and Syria that rose to prominence when it took over Mosul in June, 2014. In this paper, we present a data-driven approach to analyzing this group using a dataset consisting of 2200 incidents of military activity surrounding ISIS and the forces that oppose it (including Iraqi, Syrian, and the American-led coalition). We combine ideas from logic programming and causal reasoning to mine for association rules for which we present evidence of causality. We present relationships that link ISIS vehicle-bourne improvised explosive device (VBIED) activity in Syria with military operations in Iraq, coalition air strikes, and ISIS IED activity, as well as rules that may serve as indicators of spikes in indirect fire, suicide attacks, and arrests.

READ FULL TEXT
research
10/30/2018

Finding Cryptocurrency Attack Indicators Using Temporal Logic and Darkweb Data

With the recent prevalence of darkweb/deepweb (D2web) sites specializing...
research
11/09/2017

Exfiltration of Data from Air-gapped Networks via Unmodulated LED Status Indicators

The light-emitting diode(LED) is widely used as an indicator on the info...
research
09/18/2023

Continuous Integration and Software Quality: A Causal Explanatory Study

Continuous Integration (CI) is a software engineering practice that aims...
research
11/19/2019

Towards a computer-interpretable actionable formal model to encode data governance rules

With the needs of science and business, data sharing and re-use has beco...
research
06/25/2014

Causality Networks

While correlation measures are used to discern statistical relationships...
research
10/07/2015

Augmenting Bag-of-Words: Data-Driven Discovery of Temporal and Structural Information for Activity Recognition

We present data-driven techniques to augment Bag of Words (BoW) models, ...

Please sign up or login with your details

Forgot password? Click here to reset