Unsupervised Clustering of Web Sessions to Detect Malicious and Non-malicious Website Users
نویسندگان
چکیده
● Security is built on top of three operational aspects of computer systems: confidentiality, integrity and availability ● (Distributed) Denial of Service (DoS) is an attack on the availability of data ● The denial-of-service effect is achieved by sending messages to the target that interfere with its operation, and make it crash, reboot, freeze or do useless work ● Motivation can be both political and economical
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تاریخ انتشار 2011