Beyond Linearity: Harnessing Spline Regression Models to Capture Non-linear Relationships

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Abstract

This article explores the effectiveness of spline regression model in capturing non-linear relationships in data. A comparison of spline regression with other techniques, such as linear regression, polynomial regression, generalized additive, and log-transformed models, is conducted using simulated data. The performance metrics, including AIC, BIC, RMSE, MSE, MAE, and R-squared, are used to assess the goodness of fit for each model. The results indicate that the spline regression model outperforms other methods in accurately capturing non-linear relationships. The flexibility and smoothness provided by spline regression, through the incorporation of knots, result in better-fitted lines that closely match the data. This study recommends the use of spline regression for handling non-linear data and highlights its robustness and accuracy.
超越线性:利用样条回归模型捕捉非线性关系
本文探讨了样条回归模型在捕获数据中的非线性关系方面的有效性。样条回归与其他技术,如线性回归,多项式回归,广义加性和对数变换模型,进行了比较,使用模拟数据。性能指标,包括AIC、BIC、RMSE、MSE、MAE和r平方,用于评估每个模型的拟合优度。结果表明,样条回归模型在准确捕捉非线性关系方面优于其他方法。样条回归提供的灵活性和平滑性,通过结合结点,导致更好的拟合线,与数据紧密匹配。本研究建议使用样条回归处理非线性数据,并强调其稳健性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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