Abstract
Network traffic anomaly detection is an important technology in cyberspace security. Combining information entropy theory and a variable ordering heuristic intuitionistic fuzzy time series forecasting model, we present a traffic anomaly detection algorithm based on intuitionistic fuzzy time series graph mining. For multi-dimensional attribute entropy of network traffic data, we establish multiple parallel and independent variable ordering heuristic intuitionistic fuzzy time series forecasting models. At each moment, using the multi-dimensional attribute entropy values as vertices, we construct complete graphs using amplitudes of the change in entropy values and edge weights between vertices defined by similarity, and establish an intuitionistic fuzzy time series graph of the traffic data in the time dimension. We perform frequent subgraph mining on the intuitionistic fuzzy time series graph; build the anomaly vectors based on the mining results, and implement adaptive determination for network traffic anomalies by fitting the anomaly vectors. Comparative experiments on universal datasets verify the superior performance of the algorithm.
Highlights
Network traffic anomaly affects our daily life by decreasing the network speed, causing network congestion or even breaking off the network
This paper proposes a network traffic anomaly detection algorithm based on intuitionistic fuzzy time series (IFTS) graph mining
This paper uses IFTS forecasting theory to solve the typical fuzzy time series problem of network traffic anomaly detection, and proposes a traffic anomaly detection algorithm based on IFTS graph mining
Summary
Network traffic anomaly affects our daily life by decreasing the network speed, causing network congestion or even breaking off the network. This may bring great damage to some kay departments, such as bank, stork market, and military communication. The intuitionistic fuzzy time series (IFTS) forecasting model introduces the intuitionistic fuzzy set theory to the FTS model [9]. Wang et al.: Network Traffic Anomaly Detection Algorithm Based on IFTS Graph Mining. This paper proposes a network traffic anomaly detection algorithm based on IFTS graph mining. Combining the previously proposed heuristic adaptive-order IFTS forecasting model [12] and information entropy theory, intuitionistic fuzzy time series graphs for network traffic data in the time dimension are established. The frequent subgraph mining technique is introduced to mine frequent subgraphs at each moment and to determine whether the network traffic is abnormal based on the results
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