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An Architecture of Crowdsourced Intrusion Detection System

An Architecture of Crowdsourced Intrusion Detection System Daniel Song, Kyung Hwa Kim, Henning Schulzrinne Dept. of CS, Columbia University in the City of New York. Goal. Collaborative Intrusion Detection. Motivation.

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An Architecture of Crowdsourced Intrusion Detection System

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  1. An Architecture of Crowdsourced Intrusion Detection System Daniel Song, Kyung Hwa Kim, Henning Schulzrinne Dept. of CS, Columbia University in the City of New York Goal Collaborative Intrusion Detection Motivation • Detect suspicious outbound traffic of a host to find out whether the host is compromised. • Use users’ feedbacks as a training set of a supervised anomaly detection. • Differentiate the user using Social Network services like linked-in. • Different user will have different trust factor based on Social Network profile. (e.gnetwork experts will have higher initial tf) • Firewalls focus on intrusion from outside. • What about the malicious attempt from the inside? • It is difficult to detect whether an outgoing traffic is a malicious traffic,so we suggest a system that • asks the user about the traffic. • collects the data and learns from it. • Collaborative method can strengthen the IDS but different people have different knowledge on computer. Trust Factor Rule Engine Supervised Machine Learning • Trust factor (tf) is first determined by social network profile. • tf will change overtime based on the quality of the data. (e.g if the user continuously create noise data, lower the tf) • Data from the network admin has higher tf. Social Network User Rule Engine Gather user Feedbacks Anomaly Detector Alert user for unusual traffic Data from different user have differenttrust factor Alert Future Work DYSWIS (Traffic Capture) • Experiment using simple linux program like nmap. • Experiment using real malware. • Deploy tools and gather real data. Network Traffic Internet Generate rule from the collected data Anomaly Detector

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