Abstract:
Terrorism has become an ever increasing menace globally, especially in the Indian-
subcontinent with its diverse terrain and inherent threats. Age old manual scrutiny
of terror attacks by analysts is cumbersome due to the inability of the analyst to
concurrently process large amount of data in a reasonable time frame. Moreover, pe-
culiar and complex relationships between numerous terror attributes can be unnoticed
by human analysts. As “Necessity is the mother of invention”, developing automated
tools for generating intelligence becomes inescapable to speed up the efforts of Security
Forces (SF) in fighting terrorists. Application of data mining techniques to analyze
terrorist attacks, thus, is the need of the hour. The Security Forces (SF) in the Indian-
subcontinent still rely on traditional and manual analysis methods. Data mining in
this field is in its budding stage and if utilised efficiently will greatly facilitate the SF
in preventing any terrorist attacks. SF are constantly searching for latest data mining
techniques to augment terror analytics and improve protection of the local civilians
and self, thereby reducing collateral damage. Predicting terror attacks can push the
potential of SF to the beat of terrorist activities. It is significant to recognise the
spatial and temporal patterns for a better learning of terror incidents and to conceive
their correlation. Clustering and Association rule mining (ARM) thus become strong
contenders for efficient terror strikes’ forecasting. The above techniques can be used
for a systematic profiling of outfits thus leading to the discovery of a unique pattern
of operations i.e. Modus Operandi (MO) of a particular terror outfit. After gaining
knowledge from data mining it is essential to convert it into actionable intelligence in
order to be used by foot soldiers. Therefore, this dissertation provides concrete intel-
ligence about various terror outfits operating in the most active Jammu and Kashmir
(J&K) region of the Indian sub-continent. The equally sensitive and terror hit areas
are the north eastern states of the country which have also been analysed for predicting
the Modus Operandi of the different outfits existing there.
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Past work on terrorism analysis and terror forecasting models for preventing terror
attacks range acrosss all realms of data mining techniques with clustering being the
epicentre of entire research work. Immediate analysis of sensitive locations in terms of
their proximity to other
In data mining, clustering is performed mainly on the historical records which
come from numerous geo-spatial-temporal and demographic information sources and
even rich and swiftly expanding social media applications that surround events of
concern. Though data mining of twitter tweets and facebook posts in the arena of
social networking is the in thing but of limited or no use to SF. As SF operate in
inhospitable terrain and inclement weather conditions where neither there is any mobile
connectivity nor any access to Internet. Thus, providing foot soldiers with accurate
analyzed data in terms of Hard Int is of paramount importance. This will not only
boost their morale but even save their precious lives which is the ultimate aim of this
dissertation.