Abstract
AbstractIn order to effectively evaluate personnel performance, a distributed data mining algorithm for spatial networks based on BP neural wireless network is proposed. In the cloud computing environment, an excavator is used to construct multiple input multiple output spatial network data, analyze the data structure, and perform redundant data compression of massive data through time-frequency feature extraction. Combined with the adaptive matching filtering method, the characteristics of the data are matched. The spatial frequency feature extraction method is used to locate the features of the multiple-input multiple-output spatial network data. In order to improve the accuracy of data mining, the BP neural network is used to classify and identify the extracted data features to achieve the optimization of data mining. A wireless sensor network is a wireless network composed of a large number of stationary or moving sensors in a self-organizing and multi-hop manner. It cooperatively senses, collects, processes, and transmits the information of the perceived objects in the geographical area covered by the network and finally puts these The information is sent to the owner of the network. This algorithm improves the accuracy of personnel performance evaluation, simultaneously establishes a hierarchical analysis and quantitative evaluation model for the performance of government managers, and adjusts the results of hierarchical statistical analysis on government administrators as needed. The performance evaluation and optimization of government administrators were introduced. The empirical analysis results show that the method has higher accuracy for government managers’ performance evaluation, higher efficiency of big data processing, and better integration.
Publisher
Springer Science and Business Media LLC
Subject
Computer Networks and Communications,Computer Science Applications,Signal Processing
Reference34 articles.
1. J.F. Zheng, J. Zhang, K.Y. Zhu, Gust front statistical characteristics and automatic identification algorithm for CINRAD. Acta Meteorologica Sinica 28(4), 607–623 (2014)
2. Y. Hwang, T.Y. Yu, V. Lakshmanan, Neuro-fuzzy gust front detection algorithm with S-band polarimetric radar. IEEE Transact Geosci Remote Sensing 55(3), 1618–1628 (2017)
3. E. Shi, Q. Li, D.Q. Gu, Z.M. Zhao, Weather radar echo extrapolation method based on convolutional neural networks. J Comput Appl 38(3), 661–665 (2018)
4. T.D. Fletcher, H. Andrieu, P. Hamel, Understanding, management and modelling of urban hydrology and its consequences for receiving waters, a state of the art. Adv Water Resourc 51(1), 261–279 (2013)
5. J.Y. Xue, X.Y. Ni, On the reform of college English teaching under the trend of educational informatization. Integr Inform Technol Teach Pract 45(12), 43–45 (2015)
Cited by
11 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献