مشخصات پژوهش

خانه /Improving Penalized Estimator ...
عنوان
Improving Penalized Estimator for Semi-Parametric Regression with SVR
نوع پژوهش مقالات در همایش ها
کلیدواژه‌ها
Non-parametric regression, Penalized regression, Semi-parametric regression, Support vector regression.
چکیده
This paper introduces a new penalized parametric regression estimator designed to reduce the mean squared error in the presence of multicollinearity. The proposed method incorporates a preliminary estimator and a structured penalty term, yielding a closed-form solution that improves stability while preserving interpretability. Building on this estimator, a semi-parametric regression framework is developed by combining the new parametric model with support vector regression (SVR) to capture residual nonlinear patterns. The resulting two-stage approach effectively integrates linear structure and nonlinear flexibility. The proposed models are evaluated using simulated data and the concrete compressive strength dataset. Experimental results demonstrate that the semi-parametric approach substantially outperforms purely parametric methods in terms of prediction accuracy, highlighting the effectiveness of the proposed penalization strategy and its integration with SVR.
پژوهشگران فاطمه فقیه (نفر اول)، محمد بزرگمهر (نفر دوم)، حمید کرمی کبیر (نفر سوم)
تاریخ انجام 1404-11-08