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https://xyfjason.top/2023/04/25/PRML-Appendix-D-Calculus-of-Variations/
在 PRML 第一章中我们遇到了用变分法(calculus of variations)求解优化问题,那么变分法究竟是什么呢?PRML 在 Appendix D 做了介绍。 泛函众所周知,函数是数到数的映射:输入为数值 $x$,输出为数值 $y(x)$. 将函数的概念进行扩展,我们定义泛函(functional)为函数到数的映射:输入为函数 $y(x)$,输出为数值 $F[y]$. 直观地讲,泛
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https://xyfjason.top/2023/04/25/PRML-Appendix-D-Calculus-of-Variations/
在 PRML 第一章中我们遇到了用变分法(calculus of variations)求解优化问题,那么变分法究竟是什么呢?PRML 在 Appendix D 做了介绍。 泛函众所周知,函数是数到数的映射:输入为数值$x$ ,输出为数值 $y(x)$ . 将函数的概念进行扩展,我们定义泛函(functional)为函数到数的映射:输入为函数 $y(x)$ ,输出为数值 $F[y]$ . 直观地讲,泛
The text was updated successfully, but these errors were encountered: