Normal Equation(正规方程)

Posted 晓语听风

tags:

篇首语:本文由小常识网(cha138.com)小编为大家整理,主要介绍了Normal Equation(正规方程)相关的知识,希望对你有一定的参考价值。

Normal Equation

Note: [8:00 to 8:44 - The design matrix X (in the bottom right side of the slide) given in the example should have elements x with subscript 1 and superscripts varying from 1 to m because for all m training sets there are only 2 features x0 and x1. 12:56 - The X matrix is m by (n+1) and NOT n by n. ]

Gradient descent gives one way of minimizing J. Let’s discuss a second way of doing so, this time performing the minimization explicitly and without resorting to an iterative algorithm. In the "Normal Equation" method, we will minimize J by explicitly taking its derivatives with respect to the θj ’s, and setting them to zero. This allows us to find the optimum theta without iteration. The normal equation formula is given below:

θ=(XTX)?1XTy

技术分享

There is no need to do feature scaling with the normal equation.

The following is a comparison of gradient descent and the normal equation:

Gradient DescentNormal Equation
Need to choose alpha No need to choose alpha
Needs many iterations No need to iterate
O (kn2) O (n3), need to calculate inverse of XTX
Works well when n is large Slow if n is very large

With the normal equation, computing the inversion has complexity O(n3). So if we have a very large number of features, the normal equation will be slow. In practice, when n exceeds 10,000 it might be a good time to go from a normal solution to an iterative process.

 

 

Normal Equation Noninvertibility

When implementing the normal equation in octave we want to use the ‘pinv‘ function rather than ‘inv.‘ The ‘pinv‘ function will give you a value of θ even if XTX is not invertible.

If XTX is noninvertible, the common causes might be having :

  • Redundant features, where two features are very closely related (i.e. they are linearly dependent)
  • Too many features (e.g. m ≤ n). In this case, delete some features or use "regularization" (to be explained in a later lesson).

Solutions to the above problems include deleting a feature that is linearly dependent with another or deleting one or more features when there are too many features.

以上是关于Normal Equation(正规方程)的主要内容,如果未能解决你的问题,请参考以下文章

Normal equations 正规方程组

随机梯度下降(stochastic gradient descent),批梯度下降(batch gradient descent),正规方程组(The normal equations)

Linear regression with multiple variables(多特征的线型回归)算法实例_梯度下降解法(Gradient DesentMulti)以及正规方程解法(Normal

正规方程

正规方程

机器学习之——正规方程法