Visible to the public Scalable Security Event Aggregation for Situation Analysis

TitleScalable Security Event Aggregation for Situation Analysis
Publication TypeConference Paper
Year of Publication2015
AuthorsKim, J., Moon, I., Lee, K., Suh, S. C., Kim, I.
Conference Name2015 IEEE First International Conference on Big Data Computing Service and Applications
Date PublishedApril 2015
PublisherIEEE
ISBN Number978-1-4799-8128-1
Keywordsadvanced persistent threats, Aggregates, Analytical models, APT, attack methodologies, Big Data, big-data analytics, big-data computing, big-data security analytics, Computer crime, Computers, cyber-attacks, Data analysis, Data processing, Database languages, Hadoop cluster, high-level query languages, large-scale data analysis, large-scale data processing, on-demand aggregation, parallel processing, pattern clustering, performance evaluation, periodic aggregation, pubcrawl170109, query languages, query support, scalable security event aggregation, SEAS-MR, security, security analytics, Security event aggregation, security event aggregation system over MapReduce, Sensors, situation analysis, stealthy hacking processes
Abstract

Cyber-attacks have been evolved in a way to be more sophisticated by employing combinations of attack methodologies with greater impacts. For instance, Advanced Persistent Threats (APTs) employ a set of stealthy hacking processes running over a long period of time, making it much hard to detect. With this trend, the importance of big-data security analytics has taken greater attention since identifying such latest attacks requires large-scale data processing and analysis. In this paper, we present SEAS-MR (Security Event Aggregation System over MapReduce) that facilitates scalable security event aggregation for comprehensive situation analysis. The introduced system provides the following three core functions: (i) periodic aggregation, (ii) on-demand aggregation, and (iii) query support for effective analysis. We describe our design and implementation of the system over MapReduce and high-level query languages, and report our experimental results collected through extensive settings on a Hadoop cluster for performance evaluation and design impacts.

URLhttp://ieeexplore.ieee.org/document/7184860/
DOI10.1109/BigDataService.2015.28
Citation Keykim_scalable_2015