DocumentCode
3570881
Title
Extending automated intelligence systems via graph database: A case study of the "Meth Hunter"
Author
Blair, Mark ; Yunkai Liu ; Vitolo, Theresa M.
Author_Institution
CEO & CIO, DAGIR Co., Erie, CO, USA
fYear
2014
Firstpage
261
Lastpage
268
Abstract
Automated intelligence analysis was born into a skeptical community dealing with high stakes dilemmas, where often outcomes are measured in loss of human life. The massive amount of data require analysts to be masters of identifying "indicators" intuitively foreshadowing intelligence targets and masters of modeling the indicators in analysis systems. The paper explores the application of graph theory through graph databases to determine how the index-free adjacency of graph databases can be exploited to improve processing time. The study utilized the Meth Hunter, an analytic machine designed to identify methamphetamine conspirators by analyzing pseudoephedrine purchase records as a case study. The graph database (Neo4j) was compared to a SQL relational database (WAMP). Neo4j demonstrated superior performance in identifying and retrieving relationships between data points. Neo4j successfully demonstrated the ability to implement such a strategy and extend the horizons of traditional data mining systems.
Keywords
SQL; data mining; graph theory; knowledge based systems; relational databases; Meth Hunter; Neo4j; SQL relational database; WAMP; analytic machine; automated intelligence analysis; automated intelligence systems; data mining systems; data points; graph databases; graph theory; index-free adjacency; methamphetamine conspirators; pseudoephedrine purchase records; Analytical models; Ciphers; Computers; Databases; Graph theory; Java; Law enforcement; Automated intelligence; SQL database; big data; graph database;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Reuse and Integration (IRI), 2014 IEEE 15th International Conference on
Type
conf
DOI
10.1109/IRI.2014.7051898
Filename
7051898
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