Composition analysis and identification of ancient glass objects based on AdaBoost and CART classification tree
DOI:
https://doi.org/10.54097/hset.v66i.11695Keywords:
AdaBoost and CART Classification Trees; Ancient Glass; Classification and Identification.Abstract
Ancient glass is highly susceptible to weathering by the burial environment, and a series of chemical reactions will occur in the process, which leads to changes in the chemical composition of glass artifacts. In order to identify and classify the composition types of glass artifacts, this paper uses high potassium glass and lead-barium glass as target training models to derive CART stump (CART tree with only 2 layers) combinations as a way to analyze the classification laws. Then, we analyzed the sub-classification results of weathering, color, and ornamentation, and analyzed the classification rules according to their chemical composition, and came up with the classification method based on CART stumps. In order to identify the type of unknown types of glass, this paper uses an integrated learning algorithm model based on CART classification tree and AdaBoost to train a prediction model using all the samples, with the objective of artifact type, and then performs type prediction on the data. This study is important for the correct classification of glass types.
Downloads
References
Yin Weijie, Yang Lijun, Gu Yunlou, Mei Zhifan. Analysis of the composition of ancient glass based on cluster analysis method to identify the type to which it belongs [J]. Journal of Beijing Printing Institute, 2023, 31(06):64-67.
Zhai Sixun. Composition analysis and identification of glass products based on decision tree [J]. Heilongjiang Science, 2023, 14(08):47-49.
Xiong TW, Chu ZG, Lv FJ. Current status and progress of research on the natural derivation pattern of pulmonary ground glass nodules and CT differential diagnosis [J]. Chinese Journal of Lung Diseases (Electronic Version), 2023, 16(02):290-292.
Zhang Xingliang, Xu Ke, Chen Junfang, Wu Hong. Quality of life classification tree analysis of heterosexual HIV-infected and AIDS patients in Hangzhou [J]. Chinese Journal of Preventive Medicine, 2023, 24(05):406-413.
Tian Hao, Lu Bo, Yang Yandong, Bu Jianchong, Deng Jianxin, Li Dongchang. Analysis and prediction of substation construction safety accidents based on CART regression tree model [J/OL]. Journal of Xiangtan University (Natural Science Edition):1-8 [2023-06-30].
Lv Fei,Fu Hangwei, Liu Chenglin. Composition analysis and identification of ancient glass products based on machine learning [J]. Information and Computer (Theory Edition), 2023, 35(04): 98-102.
Kong, H.P., Ruan, David. Random forest-based traction motor fault feature selection method for rolling stock [J]. Railway Vehicles, 2023, 61(01):110-115.
Y. J. Xu, J. H. Liang. Construction of student performance evaluation model based on K-means fusion decision tree classification algorithm [J]. Wireless Connected Technology, 2022, 19(22):134-137.
Zhang X. F., Yusuf Jiang-Rusuli, Qiu Zongli, Yashar Esker, Abdulgehman Guzman. Research on remote sensing classification and accuracy evaluation of agricultural crops based on different machine learning--Fukang City, Xinjiang Uygur Autonomous Region as an example [J]. Journal of Xinjiang Normal University (Natural Science Edition), 2022, 41(03):17-28.
Lin Shengcheng, Liu Haihua, Huang Yonglin, Chen Lin, Gong Xiang. An analysis of the identification method of sapphire glass for watches [J]. Science and technology innovation and application, 2017(02):88.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.







