PCMIgr: a fast packet classification method based on information gain ratio

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Abstract

To solve the problem of ambiguous attribute selection in existing decision tree classification algorithms, a decision tree construction method based on information entropy, PCMIgr, is proposed. PCMIgr is a heuristic method based on greedy strategy. At each decision tree node, when it is necessary to select classification attributes for division, the attribute with the highest information gain ratio is selected. The main innovation of this method is that the attribute selection in the traditional classification method based on decision tree is optimized, and the classification efficiency of the constructed decision tree is improved compared with that before optimization. At the same time, the decision tree ensures that each leaf node is only associated with one rule, which avoids the common problem of "rule replication" in the process of traditional decision tree construction, and effectively saves memory and calculation time. The experimental results show that the application of this method to the construction of classification decision tree can further improve the efficiency of packet classification method based on decision tree, and can be applied to high-speed real-time packet classification.

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APA

Cheng, Y., & Shi, Q. (2023). PCMIgr: a fast packet classification method based on information gain ratio. Journal of Supercomputing, 79(7), 7414–7437. https://doi.org/10.1007/s11227-022-04951-0

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