Abstract
In order to solve the problem of high false positive rate of regional economic big data anomaly detection, a regional economic big data anomaly detection method based on time series algorithm is designed. Select regional economicindicators and divide socio-economic statistics and spatial data; Optimize the data space conversion process, select influencing factors and modeling methods; The simultaneous equation model is established by using time seriesalgorithm, and the anomaly detection mode of big data is established to realize the anomaly detection of regional economic big data. Experimental results: the average false positive rates of the regional economic big data anomalydetection method proposed in this paper and the other two regional economic big data anomaly detection methods are2.477%, 4.060% and 3.986% respectively, indicating that the detection method designed in this paper has lowfalsepositive rate and better detection performance.
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