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Time sequence marking method and device, equipment and storage medium

A technology of time series and marking method, applied in the Internet field, can solve the problems of low real-time performance, low reliability and labor cost of linear regression model

Active Publication Date: 2019-05-10
BEIJING CHENGSHI WANGLIN INFORMATION TECH CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

[0003] Most of the abnormal markers in the existing time series are manually detected by engineers, or anomaly detection is performed on the time series through a linear regression model to mark the corresponding abnormal points, but engineers are required to have the corresponding application of the time series The business background of the scene, and the large amount of sequence data that needs to be detected and labeled will consume a lot of labor costs; at the same time, the linear regression model has certain limitations and low real-time performance, and the reliability of the abnormal labeling results of the time series is not strong.

Method used

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  • Time sequence marking method and device, equipment and storage medium
  • Time sequence marking method and device, equipment and storage medium

Examples

Experimental program
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Embodiment 1

[0060] figure 1 This is a flowchart of a method for marking a time series provided in the first embodiment of the present invention. This embodiment can be applied to any device that detects and marks anomalies in a time series. The technical solution of the embodiment of the present invention is applicable to the situation of how to accurately mark abnormal points in the time series. The time series marking method provided in this embodiment can be executed by the time series marking device provided in the embodiment of the present invention, which can be implemented by software and / or hardware, and is integrated in the equipment that executes the method. .

[0061] Specifically, refer to figure 1 , The method may include the following steps:

[0062] S110: Obtain sequence points in the time sequence.

[0063] Among them, the time series refers to a sequence formed by arranging the corresponding values ​​of a certain detection index contained in a certain phenomenon at different t...

Embodiment 2

[0084] Since both the statistical determination method corresponding to the statistical model and the unsupervised learning method corresponding to the unsupervised learning model can include multiple types, in this embodiment, the number of statistical models and unsupervised learning models in this embodiment can be independently set, that is, The combination of statistical model and unsupervised learning model can be selected as appropriate. Figure 2A , Figure 2B , Figure 2C with Figure 2D They are respectively schematic diagrams of the principle of marking sequence points in a time series under different model architectures provided in the second embodiment of the present invention. This embodiment is optimized on the basis of the foregoing embodiment. Specifically, this embodiment explains in detail the abnormal detection process of sequence points in the time series under different combinations of the statistical model and the unsupervised learning model.

[0085] The d...

Embodiment 3

[0147] Figure 3A This is a flowchart of a time series marking method provided in the third embodiment of the present invention, Figure 3B It is a schematic diagram of the principle of the time series detection process provided in the third embodiment of the present invention. This embodiment is optimized on the basis of the foregoing embodiment. Specifically, this embodiment mainly explains the training process of the classification model and the process of detecting each sequence point in the time series according to the trained classification model in detail.

[0148] Optional, such as Figure 3A As shown, the method may specifically include the following steps:

[0149] S310: Acquire sequence points in the time sequence.

[0150] S320: Obtain a first determination result of whether the sequence point is an abnormal point through a pre-built statistical model, and obtain a second determination result of whether the sequence point is an abnormal point through a pre-built unsuperv...

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Abstract

The invention discloses a time sequence detection method and device, equipment and a storage medium. The method comprises the following steps: acquiring sequence points in a time sequence; obtaining afirst determination result of whether the sequence point is an abnormal point or not through a pre-constructed statistical model, and obtaining a second determination result of whether the sequence point is an abnormal point or not through a pre-constructed unsupervised learning model; if the first determination result is consistent with the second determination result, taking the sequence pointdetermined as a normal point as a normal sample, and taking the sequence point determined as an abnormal point as an abnormal sample; and obtaining a detection result of each sequence point in the time sequence through the classification model, and marking abnormal points in the time sequence according to the detection result. According to the technical scheme provided by the embodiment of the invention, the problems of missed detection and false detection when a single statistical model or an unsupervised learning model is adopted to detect the sequence points in the time sequence are avoided, and the accuracy and reliability of marking the abnormal points in the time sequence are improved.

Description

Technical field [0001] The embodiments of the present invention relate to the field of Internet technology, and in particular to a time series marking method, device, equipment, and storage medium. Background technique [0002] Time series refers to the ordered observation data set associated with time sequence obtained for a specific indicator in a certain application scenario. With the rapid development of Internet technology, it is necessary to predict and analyze the time series data corresponding to each indicator. Determine whether there are abnormal indicators in the time series. [0003] Most of the abnormal markers in the existing time series are manually detected by the engineer, or the time series is detected by a linear regression model to mark the corresponding abnormal points, but the engineer is required to have the corresponding application of the time series The business background of the scene and the large amount of sequence data that needs to be detected and la...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F16/2458
Inventor 战泓升龚诚张昕
Owner BEIJING CHENGSHI WANGLIN INFORMATION TECH CO LTD
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