Objetivo
Security and fraud in cross-border trade and supply chains are key priorities for the EU customs administrations due to the increasing risk of transnational crime and terrorism and the e-commerce-driven growth of customs declarations. Hence, EU customs administrations have to rapidly increase their capability to search for more accurate data sources to better assess these risks and increase their inspection hit rate. To address this challenge, PROFILE seeks to accelerate the uptake of state-of-the-art data analytics and incorporation of new data sources for more effective and efficient European customs risk management. The project provides tailored solutions, that build on modern methods in machine learning, graph-based analytics, and natural language processing, to help targeting officers and strategic analysts to collect and organise unstructured data, data-mine large datasets, apply semi-supervised machine learning that utilises feedback of control results, and to visualize complex data sets. PROFILE enables customs-to-customs systematic sharing of Entry Summary Declarations and other risk-relevant information through the EU-wide PROFILE Risk Data Sharing Architecture (RDSA). The project also connects national customs risk management systems to logistics Big Data of INTTRA and the Universal Postal Union (UPU) and provides customs an improved access to online data, especially valuation-relevant data of e-commerce sites. PROFILE also strengthens cooperation and data exchange among customs and other competent authorities. Better access to data, customised state-of-the-art data analytics, and stronger cooperation will provide the customs an enhanced 360º view on cross-border cargo flows. With PROFILE solutions, customs administration can increase substantially the hit rate of inspections and their capacity to cope with transnational crime, terrorism, and the dramatic e-commerce-driven growth of customs declarations.
Ámbito científico
- social sciencespolitical sciencespolitical transitionsterrorism
- social scienceseconomics and businessbusiness and managementcommercee-commerce
- social sciencessociologygovernancecrisis management
- natural sciencescomputer and information sciencesdata sciencedata exchange
- natural sciencescomputer and information sciencesartificial intelligencemachine learning
Palabras clave
Programa(s)
Convocatoria de propuestas
Consulte otros proyectos de esta convocatoriaConvocatoria de subcontratación
H2020-SEC-2016-2017-2
Régimen de financiación
RIA - Research and Innovation actionCoordinador
1066 ECHANDENS
Suiza
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Participantes (14)
1030 Bruxelles / Brussel
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2511CW S-Gravenhage
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0191 Oslo
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112 98 Stockholm
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11415 TALLIN
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2595 DA Den Haag
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2628 CN Delft
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D15 HN66 DUBLIN
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164 90 Stockholm
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2027 Kjeller
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E11 2JN London
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Organización definida por ella misma como pequeña y mediana empresa (pyme) en el momento de la firma del acuerdo de subvención.
La participación finalizó
TW11 8LZ Teddington
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1049 Bruxelles / Brussel
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1015 LAUSANNE
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