A network traffic classification method, system and electronic equipment based on deep learning

A technology of network traffic and deep learning, applied in the field of network traffic classification, can solve problems such as little research and mining of local features of original data of network traffic, unstable classification performance, etc.

Active Publication Date: 2020-10-27
SHENZHEN INST OF ADVANCED TECH
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Problems solved by technology

[0007] To sum up, the existing network traffic classification methods are all based on traditional machine learning technology, and the classification performance is very dependent on the design of traffic characteristics, and how to accurately describe the feature set of traffic characteristics requires a lot of manual design. This is still a difficult point in solving the problem of network traffic classification
At the same time, most of the current network traffic classification methods basically propose various optimization and improvement algorithms for the classification algorithm modules in the training phase, but there is little research and mining on the local features contained in the original data of network traffic. Classification performance is unstable

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  • A network traffic classification method, system and electronic equipment based on deep learning
  • A network traffic classification method, system and electronic equipment based on deep learning
  • A network traffic classification method, system and electronic equipment based on deep learning

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[0045] In order to make the purpose, technical solution and advantages of the present application clearer, the present application will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present application, not to limit the present application.

[0046] Aiming at the technical problems existing in the existing network traffic classification methods, the network traffic classification method based on deep learning in the embodiment of the present application uses the deep learning hidden feature extraction technology to accurately mine a large number of hidden traffic feature sets in network traffic, ensuring that network traffic classification In the process, the traffic feature set in the network traffic is fully and efficiently used to accurately classify and identify the network traffic.

[0047] Specifically, see figure 1 , is...

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Abstract

The present application relates to a network traffic classification method, system and electronic equipment based on deep learning. The method includes: step a: capturing network traffic sample data; step b: extracting the global feature data set of the network traffic sample data through a deep learning classification algorithm; step c: constructing a random forest classification model according to the global feature data set , output the network traffic classification results through the random forest classification model. This application uses the extracted global features to train the random forest classification model. The results show stable classification performance, can handle very high-dimensional traffic data, and do not need to do feature selection. Compared with the prior art, the present application can effectively guarantee the high precision and high performance of network traffic classification, and at the same time, can improve classification efficiency, shorten training time, and reduce computing overhead.

Description

technical field [0001] The present application belongs to the technical field of network traffic classification, and in particular relates to a network traffic classification method, system and electronic equipment based on deep learning. Background technique [0002] With the rapid development of Internet technology, a large number of new applications continue to appear on the network, and each application carries a variety of services and functions, making the network environment extremely large, complex and changeable. For the normal operation of the network and the real-time allocation of services and resources, it is already an essential part to have an effective method of supervising network activities. Network traffic classification plays an important role in network management, resource allocation, on-demand services, and security systems. For example, for enterprise managers, through fine classification and identification of network traffic, network resources can be...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): H04L12/24H04L12/26H04L12/833H04L12/851H04L29/06G06N3/04G06N3/08H04L47/31
CPCH04L41/044H04L41/145H04L43/028H04L47/2441H04L47/31H04L69/161G06N3/08G06N3/045
Inventor 赵世林叶可江须成忠
Owner SHENZHEN INST OF ADVANCED TECH
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