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The big data analysis and mining of people's livelihood appeal based on time series modeling and algorithm

机译:基于时间序列建模和算法的大数据分析与民生诉求挖掘

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In order to analyze the big data of people's livelihood appeal, this paper proposes a time series modeling and algorithm to decompose the time series {x(t)} of data into long-term change trend L(t), short-term change trend S(t) and occasional change e(t). Then use this method to break down the data of six types of people's livelihood appeal such as unlicensed vendor, industrial noise, sewer cover, academic qualification, out-of-store operation and public transportation, combine other data for correlation analysis, find out the cause of the appeal event and make predictions. The experimental results verify the effectiveness of time series analysis in big data analysis and mining of people's livelihood appeal, and it is an useful attempt in the analysis of e-government big data.
机译:为了分析民生诉求的大数据,提出了一种时间序列建模和算法,将数据的时间序列{x(t)}分解为长期变化趋势L(t),短期变化趋势S(t)和偶然变化e(t)。然后使用这种方法分解无证供应商,工业噪声,下水道覆盖,学历,店外运营和公共交通等六种民生诉求的数据,结合其他数据进行相关分析,找出引起上诉事件的原因并做出预测。实验结果证明了时间序列分析在大数据分析和民生吸引力挖掘中的有效性,是电子政务大数据分析的有益尝试。

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