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Showing 1 results for ‎lasso Regression‎

Mr Arta Roohi, Ms Fatemeh Jahadi, Dr Mahdi Roozbeh, Dr Saeed Zalzadeh,
Volume 17, Issue 1 (9-2023)
Abstract

‎The high-dimensional data analysis using classical regression approaches is not applicable, and the consequences may need to be more accurate.
This study tried to analyze such data by introducing new and powerful approaches such as support vector regression, functional regression, LASSO and ridge regression. On this subject, by investigating two high-dimensional data sets  (riboflavin and simulated data sets) using the suggested approaches, it is progressed to derive the most efficient model based on three criteria (correlation squared, mean squared error and mean absolute error percentage deviation) according to the type of data.



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مجله علوم آماری – نشریه علمی پژوهشی انجمن آمار ایران Journal of Statistical Sciences

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