Dynamic self-updating network traffic classification method based on topic model

A network traffic and classification method technology, which is applied in the field of dynamic self-updating network traffic classification based on topic models, can solve the problems of reduced classification accuracy, insufficient consideration of network traffic dynamics, and low efficiency, so as to improve accuracy and improve efficiency. Usability and efficiency, the effect of reducing the number of iterations

Active Publication Date: 2019-09-10
SHENZHEN GRADUATE SCHOOL TSINGHUA UNIV
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Problems solved by technology

[0009] The main purpose of the present invention is to propose a dynamic self-updating network traffic classification method based on the topic model in order to address the shortcomings of the existing network traffic classification methods. Through the dynamic clustering topic model, the network traffic of learning and memory nodes changes with time It can automatically adjust and update the

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  • Dynamic self-updating network traffic classification method based on topic model
  • Dynamic self-updating network traffic classification method based on topic model
  • Dynamic self-updating network traffic classification method based on topic model

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Embodiment Construction

[0024] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0025] Network traffic has dynamic characteristics, and the type and quantity distribution of traffic passing by the same node at different times is changing; network applications with complex and diverse functions often generate many data packets with different characteristics, and these data packets are forcibly processed according to the same application. Processing will reduce the accuracy of the traffic classification method; there are unknown categories in the real classification data, if the data of unknown protocol categories cannot be properly processed, the classification model will be affected. In order to solve these problems, the present invention proposes a dynamic self-updating network traffic classification method based on topic models based on the idea of ​​using the distribution characteristics of traffic protocol categories at...

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Abstract

The invention discloses a dynamic self-updating network traffic classification method based on a topic model which comprises the following steps of: at an initial moment, initializing a classificationmodel by using a data packet set marked with a protocol category in advance as an initialization data set so as to obtain a classification model at a moment 1; classifying the data packets: classifying the to-be-classified data packets received at the moment t by utilizing a classification model, and outputting protocol types and protocol distribution information of the to-be-classified data packets at the moment t; training and updating the classification model: forming a training set by using the data packet of the known protocol types output at the moment t, and by using the historical protocol distribution information outputted by L, t-1, ..., t-(L-1) as the subject prior distribution, training the classification model at the moment t+1; t=1, 2, 3,. . . , L=1, 2,. . . ,Delta. The method solves the problems of low efficiency, influence on the accuracy of the classification model due to no consideration of unknown type of traffic, reduction of the classification accuracy due to insufficient consideration of network traffic dynamics and the like.

Description

technical field [0001] The invention relates to the technical field of computer networks, in particular to the fields of traffic detection and network security, in particular to a dynamic self-updating network traffic classification method based on topic models. Background technique [0002] Network protocol refers to the communication specification for communication between different computers, including process control, services provided, and data format. Open System Interconnection Reference Model (OpenSystem Interconnection Reference Model) is a network interconnection model proposed by the International Organization for Standardization in 1978. The model is divided into seven layers, and each layer defines the service provision and protocol specifications of the layer. The identification of application layer protocols can help network providers, network security management agencies, etc. to provide better network services and detect malicious traffic. [0003] Network ...

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Application Information

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IPC IPC(8): H04L29/06G06K9/62
CPCH04L63/1408G06F18/241
Inventor 李睿肖喜夏树涛郑海涛江勇
Owner SHENZHEN GRADUATE SCHOOL TSINGHUA UNIV
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