Market revenue prediction and error analysis of products based on fuzzy logic and artificial intelligence algorithms

被引:0
作者
Zhao Jian
Zhang Qingyuan
Tian Liying
机构
[1] Northeast Agricultural University,College of Economics and Management
来源
Journal of Ambient Intelligence and Humanized Computing | 2020年 / 11卷
关键词
Fuzzy algorithm; Neural network; Revenue prediction; Intelligent system;
D O I
暂无
中图分类号
学科分类号
摘要
Neural networks can approximate the neuron information of all quantitative or qualitative nonlinear relationship, any complex is stored in the potential distribution in the network. It has strong robustness and fault tolerance, using the parallel distribution processing method, making quick lots of computing is possible. The mature prediction method in artificial intelligence, or the neural network method to forecast, this kind of algorithm has theoretical support to mature, reliable predictions of the information. In this paper, the authors analyze the market revenue prediction and error analysis of products based on fuzzy logic and artificial intelligence algorithms. The results of this paper can be concluded that the neural network algorithm has a high accuracy in predicting the future sales of the product, and the prediction error can be controlled within 4%. Through the establishment of the neural network model of future product sales forecast, we can predict the future product sales, can grasp the market direction, and make the enterprise get the maximum profit.
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页码:4011 / 4018
页数:7
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共 42 条
[1]  
Aldhouse F(2014)Anonymisation of personal data—a missed opportunity for the European Commission Comput Law Secur Rev 30 403-418
[2]  
Aytac D(2011)The relationship between electricity consumption, electricity price and economic growth in Turkey: 1984–2007 Argum Oeconomica 27 101-123
[3]  
Guran MC(2015)Behavioral implications of big data’s impact on audit judgment and decision making and future research directions Account Horizons 29 451-468
[4]  
Brown H(2014)Understanding the paradigm shift to computational social science in the presence of big data Decis Support Syst 63 67-80
[5]  
Issa H(2018)Ibuprofen drug management and centralization strategy of pharmaceutical retail enterprises Boletin De Malariologia Y Salud Ambiental 58 81-94
[6]  
Lombardi D(2017)Graph self-representation method for unsupervised feature selection Neurocomputing 220 130-137
[7]  
Chang RM(1994)Solution & discussion of’ autocorrelation equation used in linear predict Shandong Sci 03 7-13
[8]  
Kauffman RJ(2015)Guidelines for conducting systematic mapping studies in software engineering: an update Inf Softw Technol 64 1-18
[9]  
Kwon Y(2016)Internet public opinions forecasting based on wavelet and artifical neural networks Inf Sci 34 40-42
[10]  
Gong Zhanxue(2015)A systematic review on heterogeneous routing protocols for wireless sensor network J Netw Comput Appl 53 39-56