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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"

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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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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.

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