多项式logistic回归
中国
聚类分析
波动性(金融)
经济
计量经济模型
计量经济学
计算机科学
机器学习
地理
考古
作者
Liu Chang,Lin Zhou,Lisa Höschle,Xiaohua Yu
出处
期刊:China Agricultural Economic Review
[Emerald (MCB UP)]
日期:2022-09-06
卷期号:15 (2): 416-432
被引量:5
标识
DOI:10.1108/caer-01-2022-0003
摘要
Purpose The study uses machine learning techniques to cluster regional retail egg prices after 2000 in China. Furthermore, it combines machine learning results with econometric models to study determinants of cluster affiliation. Eggs are an inexpensiv, nutritious and sustainable animal food. Contextually, China is the largest country in the world in terms of both egg production and consumption. Regional clustering can help governments to imporve the precision of price policies and help producers make better investment decisions. The results are purely driven by data. Design/methodology/approach The study introduces dynamic time warping (DTW) algorithm which takes into account time series properties to analyze provincial egg prices in China. The results are compared with several other algorithms, such as TADPole. DTW is superior, though it is computationally expensive. After the clustering, a multinomial logit model is run to study the determinants of cluster affiliation. Findings The study identified three clusters. The first cluster including 12 provinces and the second cluster including 2 provinces are the main egg production provinces and their neighboring provinces in China. The third cluster is mainly egg importing regions. Clusters 1 and 2 have higher price volatility. The authors confirm that due to transaction costs, the importing areas may have less price volatility. Practical implications The machine learning techniques could help governments make more precise policies and help producers make better investment decisions. Originality/value This is the first paper to use machine learning techniques to cluster food prices. It also combines machine learning and econometric models to better study price dynamics.
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