Abstract
The analysis and research on the composition of ancient glass is widely used in the reduction and identification of the composition of archaeological relics. In this paper, the relevant data of CUMCM2022 problem C is used to establish a mathematical model, and multiple linear regression, binary logistic regression and K-means clustering algorithms are used to realize the systematic analysis of the chemical composition of cultural relics, and solve the problem of predicting the classification of cultural relics. In the study of ancient glass classification, multiple linear regression and binary logistic regression are used to transform abstract text data into intuitive multiple linear regression equation, and a relatively ideal classification law is obtained. According to the change rate of chemical composition before and after weathering of various kinds of glass, the appropriate chemical composition was selected as the classification index, and the elbow method and K-means clustering were used to obtain the distinctive subclassification results. Finally, the sensitivity of K-means clustering subclassification model is analyzed by numerical perturbation method, and the model shows high stability.
Publisher
Darcy & Roy Press Co. Ltd.
Reference10 articles.
1. J. Henderson,J. An,H. Ma. The Archaeometry and Archaeology of Ancient Chinese Glass: a Review[J]. Archaeometry,2018,60(1).
2. Fuxi Gana,b a Shanghai Institute of Optics and Fine Mechanics, P.O.BOX 800-211, Shanghai, P.R China.b Fudan University, 220 Handan Road, Shanghai,=P.china. Development of Chinese ancient glass and ancient Silk Roads[C]//.2005 International Symposium on Chinese Ancient Glass and Ancient Silk Roads.2005 :329.
3. Wang Chengyu,Tao Ying,Chen Min,Huang Ming. Weathering of Soda-Lime and Lead Glasses[J]. Transactions of the Indian Ceramic Society,2014,50(6).
4. Dimitar Dimitrov,Miroslava Nedyalkova,Sergio Madurga,Ludmila Naneva,Vasil Simeonov. Multivariate analysis for the classification of copper–lead and copper–zinc glasses[J]. Open Chemistry,2020,18(1).
5. Sreenivasa Rao Jammalamadaka. Introduction to Linear Regression Analysis[J]. The American Statistician,2003,57(1).