An algorithm for rationality estimation of movement trend based on big data analysis

被引:0
作者
Wang W. [1 ]
机构
[1] Department of Information Engineering, Henan Industry and Trade Vocational College, Zhengzhou
关键词
Big data analysis; data; operation trend; reasonableness estimation;
D O I
10.1080/1206212X.2019.1645409
中图分类号
学科分类号
摘要
The traditional reasonable estimation algorithm of data movement trend has some problems, such as easily falling into local optimum, high computational complexity, and poor generality. This paper presents a reasonable estimation algorithm of data movement trend based on big data analysis. The combination of particle swarm optimization (PSO) and mutation operation can prevent the stagnation of particle swarm evolution and improve the estimation ability. While using the PSO algorithm for global search, it combines the characteristics of the movement vector effectively, selects the appropriate particle population, and uses the appropriate termination strategy to reduce the computational complexity and obtain the constraint conditions of the trend trajectory of the data movement. Through the database system center server and the location server, the data access is carried out co processing and querying, and the differential evolution algorithm is used to estimate the original database in the system initialization stage. Experiments show that the proposed algorithm can reasonably estimate the trend of data movement under big data analysis, with low computational complexity and good versatility. © 2019 Informa UK Limited, trading as Taylor & Francis Group.
引用
收藏
页码:868 / 873
页数:5
相关论文
共 14 条
[1]  
Luna J.M., Padillo F., Pechenizkiy M., Et al., Apriori versions based on mapreduce for mining frequent patterns on big data, IEEE Trans Cybern, PP, 99, pp. 1-15, (2017)
[2]  
Zhao L.T., Wang Y., Guo S.Q., Et al., A novel method based on numerical fitting for oil price trend forecasting, Appl Energy, 220, 9, pp. 154-163, (2018)
[3]  
Llados J., Cores F., Guirado F., Optimization of consistency-based multiple sequence alignment using big data technologies, J Supercomput, 8, 2, pp. 1-13, (2018)
[4]  
Cai Y.Y., Cao Z.P., Zhang J.Y., Improved ALM protocol algorithm based on game theory, Comput Technol Dev, 28, 5, pp. 65-68, (2018)
[5]  
Lin H.N., Li Q.P., Geng X.Y., A data mining frequent itemset algorithm based on differential privacy protection, Electron World, 11, 22, pp. 113-115, (2016)
[6]  
Chen J., Hou J.C., Research on cloud storage data security based on game theory, Math Pract Recognit, 47, 18, pp. 133-143, (2017)
[7]  
Ning N., Liu X., He J., Et al., Integrating multi-source big data to infer building functions, Int J Geogr Inf Sci, 31, 9, pp. 1871-1890, (2017)
[8]  
Li J., Liu H., Challenges of feature selection for big data analytics, IEEE Intell Syst, 32, 2, pp. 9-15, (2017)
[9]  
Lee S., Huh J.H., An effective security measures for nuclear power plant using big data analysis approach, J Supercomput, 3, 1, pp. 1-28, (2018)
[10]  
Yu L., Zhao Y., Tang L., Et al., Online big data-driven oil consumption forecasting with Google trends, Int J Forecast, 5, 2, pp. 7-11, (2018)