Research on the Detection of Distributed Denial of Service Attacks Based on the Characteristics of IP Flow
نویسندگان
چکیده
IP Flow is classified into the Micro-flow and the Macro-flow, which provides a way of selecting proper features used to detect DDoS. Five abstracted features’ capabilities of recognizing DDoS are analyzed through experiments. With these features as inputs, a neural network classifier is used to detect DDoS. Experiments’ results show that these IP Flow based features can be very helpful to DDoS detection if they are put together.
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