Analysis and identification of the composition of ancient glass products based on regression models

Authors

  • Zeyao Li
  • Yanlin Zeng
  • Weiting Zhang

DOI:

https://doi.org/10.54097/hset.v22i.3397

Keywords:

Ridge regression; Logistic regression; Cluster analysis.

Abstract

The Silk Road was an important channel for economic exchanges between China and foreign countries in ancient times, and glass products were an important physical evidence of trade exchanges. Early glass was introduced to China in the form of bead-shaped products, and on this basis, craftsmen improved it to form the unique ancient Chinese glass. Glass products are important physical evidence of the ancient Silken Road, but they are vulnerable to weathering due to the influence of the burial environment. In this paper, we use a batch of ancient glass artifacts as the research object, and build a machine learning classification model and a clustering model based on the different chemical composition content to analyze the classification basis and the relationship between the chemical composition content of the glass artifacts and optimize the research.

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References

Lv Xiaoling, Song Jie. Big data mining and statistical machine learning [M]. People's University of China Press: Big Data Analytics and Statistics Applications Series, 2016, 07:2394.

Zheng JG. Data mining and its application research [M]. Yunnan University Press: West Yunnan Academic Series, 2014, 05.113.

Fei Zhicong. Entropy-Hierarchy Analysis and Gray-Hierarchy Analysis [D]. Tianjin University, 2009.

Joseph M. Hilbe. Logistic Regression Models [M]. Taylor and Francis;CRC Press:2011- 03-23.

Fang Xiangzhong. Cardinality distribution and cardinality test[J]. China Statistics,2022(05):29-31.

Li Hongcheng, Zhang Maojun, Ma Guangbin. SPSS data analysis practical tutorial [M]. People's Post and Telecommunications Publishing House, 2017, 03: 338.

Xiuli He. Research on Multivariate Lineaar Model and Ridge Regression [J]. Huazhong University of Science and Technology, 2006.

Hu Hongxiao, Xie Jia, Han Bing. Comparative Study on Missing Value Processing Methods [J]. School of Statistics, Southwestern University of Finance and Economics, 2007.

Lu Chun. On the Treatment of Data Missing in Building Model with Grey Theory[J]. Journal of Liaoning Provincial College of Communications 2013.

Li Fang, Li Dongping. Combination evaluation model based on entropy weight method [J] Information Technology and Informatization, 2021.

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Published

07-12-2022

How to Cite

Li, Z., Zeng, Y., & Zhang, W. (2022). Analysis and identification of the composition of ancient glass products based on regression models. Highlights in Science, Engineering and Technology, 22, 317-323. https://doi.org/10.54097/hset.v22i.3397