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Streaming data anomaly detection method and system based on HTM under sparse coding

A sparse coding and anomaly detection technology, applied in the transmission system, electrical components, etc., can solve the problems of large data correlation, concept drift, and difficult to achieve training time, so as to improve the processing information capacity, reduce the data detection dimension, high information The effect of expressiveness

Inactive Publication Date: 2020-07-24
SOUTHWEST UNIVERSITY +1
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Problems solved by technology

[0005] In order to solve the deficiencies of the current technology, the present invention combines the existing technology and proceeds from practical applications to provide an HTM-based stream data anomaly detection method and system under sparse coding, aiming to solve various methods and traditional methods of existing machine learning. In the method of abnormal detection of real-time streaming data, it is difficult to achieve more accurate results and the training time is long due to the problems of strong real-time data, high data correlation, high repeatability, large dynamic environment changes, and serious concept drift.

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  • Streaming data anomaly detection method and system based on HTM under sparse coding
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  • Streaming data anomaly detection method and system based on HTM under sparse coding

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[0047] The present invention will be further described with reference to the drawings and specific embodiments. It should be understood that these embodiments are only used to illustrate the present invention and not to limit the scope of the present invention. In addition, it should be understood that after reading the teachings of the present invention, those skilled in the art can make various changes or modifications to the present invention, and these equivalent forms also fall within the scope defined by this application.

[0048] figure 1 It shows a flow chart of an HTM algorithm-based stream data anomaly detection method under sparse coding provided by an embodiment of the present invention.

[0049] In step S101, the stream data of various domains and applications generated by the user is collected and preprocessed to obtain the input data I at time t t , For the collected data I at time t t Encode to get its binary vector representation x t .

[0050] In step S102, the pre...

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Abstract

The invention provides a streaming data anomaly detection method and system based on HTM under sparse coding, and the method comprises the steps: obtaining a data source which comprises data of various domains and application programs generated by a user; inputting the acquired real-time data source into an encoder, and converting the data into a binary vector; performing sparse processing on theconverted data to obtain sparse distributed representative elements of the data; inputting the data into a standard HTM network, and obtaining a predicted value of the input data at the current momentaccording to the input data at the previous moment; comparing the actual input value of the current moment with the predicted value generated at the previous moment to obtain an abnormal score; calculating an abnormal likelihood value by using an HTM model and according to the distribution modeling of the abnormal scores; judging whether the abnormal likelihood value is greater than a preset abnormal threshold value or not, and determining whether to declare abnormality or not. According to the method, the problems that streaming transmission data intrinsically shows concept drift and needs to continuously learn for algorithm improvement are solved, and the security of the streaming application program is improved.

Description

Technical field [0001] The present invention mainly relates to the related technical fields of intrusion detection and data processing, in particular to an HTM-based stream data abnormality detection method under sparse coding. Background technique [0002] The anomaly detection of streaming data in the time series can be traced back to the consideration of the outliers of the two models and their influence in the time series. The use of techniques based on traditional analysis, machine learning and prediction-based anomaly detection models are effective means to combat existing and unknown attacks in the current network. The common practice of statistical-based anomaly detection technology is to treat the intrusion detection problem as a hypothesis testing problem. The key is to select a set of statistical metrics from the attributes describing the behavior and state of the system or network, and establish its normality based on historical data. The range of change is mainly re...

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Application Information

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IPC IPC(8): H04L29/06
CPCH04L63/1425
Inventor 高未泽田瑶琳陈善雄莫伯峰赵富佳王定旺
Owner SOUTHWEST UNIVERSITY
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