The Best Practices Of Linear Regression For Machine Learning
محل انتشار: سیزدهمین کنفرانس بین المللی راهکارهای نوین در مهندسی، علوم اطلاعات و فناوری در قرن پیش رو
سال انتشار: 1401
نوع سند: مقاله کنفرانسی
زبان: انگلیسی
مشاهده: 212
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شناسه ملی سند علمی:
EISTC13_006
تاریخ نمایه سازی: 9 بهمن 1401
چکیده مقاله:
A linear regression model assumes that the regression function E (Y |X) is linear in the inputs X۱,.…, XP . Linear models were largely developed in the precomputer age of statistics, but even in today’s computer era there are still good reasons to study and use them. linear regression is still a useful and widely applied statistical learning method. Moreover, it serves as a good starting point for more advanced approaches; They are simple and often provide an adequate and interpretable description of how the inputs affect the output. For prediction purposes they can sometimes outperform fancier nonlinear models, especially in situations with small numbers of training cases, low signal-to-noise ratio or sparse data. Finally, linear methods can be applied to transformations of the inputs and this considerably expands their scope. These generalizations are sometimes called basis-function methods. In this paper some important linear methods will be discussed.
کلیدواژه ها:
نویسندگان
Pardis Ghazavi
Computer Engineering, Islamic Azad University, Mobarakeh Iran
Rouzbeh Eynikakroodi
Mechanical Engineering, Shahid Beheshti University, Tehran, Iran
Ali Yazdani
Industrial Engineering, Islamic Azad University, Karaj, Iran