Project description
Latest technology employed in fight against terrorism
Terrorism is a growing threat to global security, and traditional methods of combating it are proving increasingly ineffective. The challenge for law enforcement agencies is how to gather, process and analyse vast amounts of online data related to terrorist groups quickly and efficiently. But with social media platforms flooded with unstructured data in multiple languages, this task is ever more daunting. In response, the EU-funded RED-Alert project will bring together data mining and predictive analytics tools with cutting-edge technologies such as natural language processing, semantic media analysis, social network analysis, complex event processing and artificial intelligence. Backed by Europol, the project’s aim is to enable law enforcement agencies to collect, process, visualise and store online data related to terrorist groups.
Objective
The RED-Alert project will bring data mining and predictive analytics tools to the next level, developing novel natural language processing (NLP), semantic media analysis (SMA), social network analysis (SNA), Complex Event Processing (CEP) and artificial intelligence (AI) technologies. These technologies will be combined for the first time and validated by 6 law enforcement agencies (LEAs) to collect, process, visualize and store online data related to terrorist groups, allowing them to take coordinated action in real-time while preserving the privacy of citizens.
The RED-Alert solution will outperform state-of-the-art solutions in terms of number of languages supported, privacy-preserving capabilities, usability, detection performance, real-time capabilities and integration capabilities. The RED-Alert approach combines for the first time the CEP methodology with NLP/SMA and SNA applications in the context of social media data analytics, transforming (unstructured) social media data into (structured) events enhanced by semantic attributes. For example, a tweet will be an event consisting of content (expressed as NLP features e.g. concepts, sentiment, entities, etc.) and context (time and the author including SNA features e.g. number of followers, number of links, etc.). Turning unstructured social media data into structured events is key, as it allows the system to use (event) rules (event temporal logic, event logic patterns, even counting, absence of events) to infer insights or create alerts in real-time.
The project impact is supported by the participation of Europol and specific dissemination activities around the World Counter-Terrorism Summit, organized by one of the partners. The total requested EC funding is 5M Euros and the project duration 36 months.
Fields of science
Programme(s)
- H2020-EU.3.7. - Secure societies - Protecting freedom and security of Europe and its citizens Main Programme
- H2020-EU.3.7.6. - Ensure privacy and freedom, including in the Internet and enhance the societal, legal and ethical understanding of all areas of security, risk and management
- H2020-EU.3.7.1. - Fight crime, illegal trafficking and terrorism, including understanding and tackling terrorist ideas and beliefs
Funding Scheme
RIA - Research and Innovation actionCoordinator
013685 Bucuresti
Romania
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Participants (17)
08020 Barcelona
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The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
4673342 Herzliya
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The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
8200 VESZPREM
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The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
SCM 1001 Kalmara
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4610101 Herzliya
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1053 Budapest
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EC1V 0HB London
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B5 5JU Birmingham
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SE1 2AA London
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Participation ended
75800 Paris
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060117 Bucuresti
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72558 RAMLE
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28071 Madrid
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MD - 2004 CHISINAU
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CW8 4EE Northwich Cheshire
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The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
Legal entity other than a subcontractor which is affiliated or legally linked to a participant. The entity carries out work under the conditions laid down in the Grant Agreement, supplies goods or provides services for the action, but did not sign the Grant Agreement. A third party abides by the rules applicable to its related participant under the Grant Agreement with regard to eligibility of costs and control of expenditure.
46800 XATIVA
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The organization defined itself as SME (small and medium-sized enterprise) at the time the Grant Agreement was signed.
Participation ended
013685 BUCURESTI
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