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Academic Journal of Engineering and Technology Science, 2021, 4(4); doi: 10.25236/AJETS.2021.040409.

Big data analysis of chicken market based on multiple evaluation scales

Author(s)

Shuqi Chen, Ran Zhao, Shuwen Ren

Corresponding Author:
Shuqi Chen
Affiliation(s)

Qufu Normal University, Jining, Shandong, 273100, China

Abstract

Focusing on the chicken market, this paper makes a big data analysis on the chicken sales parameters of ZhengDa Group. First of all, python software is used for data preprocessing, and the sales situation of ZhengDa chicken food is analyzed by descriptive statistics. In terms of sales, the commodity price and distribution of ZhengDa chicken products are analyzed in turn. Then use the comments of ZhengDa fried chicken chops to analyze the emotion, and establish a theme model to understand the overall feeling of users on food, so as to solve the problem of product shortage and improve customer satisfaction. Finally, time series analysis is used to predict the final data.

Keywords

chicken, big data, Sentiment analysis, time series prediction

Cite This Paper

Shuqi Chen, Ran Zhao, Shuwen Ren. Big data analysis of chicken market based on multiple evaluation scales. Academic Journal of Engineering and Technology Science (2021) Vol. 4, Issue 4: 49-53. https://doi.org/10.25236/AJETS.2021.040409.

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