Публікація: Reducing the dimensionality of the set of predictors for predicting the solubility of impurities in copper-based solid solutions
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National Technical University "Kharkiv Polytechnic Institute"
Анотація
This study investigates the use of dimensionality reduction techniques to improve the accuracy of impurity solubility prediction in copper-based alloys. Principal Component Analysis (PCA) and correlation based distance metrics are combined to identify the most influential predictors and classify solubility behaviour. The proposed approach offers a robust foundation for the development of predictive models in the field of alloy design.
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solid solution, copper alloys, solubility prediction, dimensionality reduction, PCA, impurity behaviour, the correlation metric
Бібліографічний опис
Shyiatyi V. Reducing the dimensionality of the set of predictors for predicting the solubility of impurities in copper-based solid solutions [Electronic resours] / Vladislav Shyiatyi // An Innovative Model of Research Projects Aimed at the Integration of Ukraine into the European Scientific Space : book of abstr. an Annual Intern. PhD Conf., April 24, 2025 / National Technical University "Kharkiv Polytechnic Institute". – Electronic text data. – Kharkiv : NTU "KhPI", 2025. – P. 240-243.
