线性回归

Notation:

  m = Number of training examples

  x's = "input" variable / features

  y's = "output" variable / "target" variable

  (x, y) - one training example

  (x(i), yii)) - i th training example

符号

  m = 训练样本的数量

  x's = “输入”变量/特征

  y's = “输出”变量/“目标”变量

  (x, y) - 一个训练样本

  (x(i), yii)) - 第 i 个训练样本


Training set of housing prices

房价预测的数据集

Size in feet2(x) Price in 1000's(y)
2104 460
1416 232
1534 315
852 178

x(1) = 2104; x(2) = 1416; y(1) = 460


How supervised learning work?

监督学习是如何工作的

h 叫 hypothesis 是历史原因

How do we represent h?

如何表示h

[{h_ heta }left( x ight) = { heta _0} + heta_1 {x_1}]

hθ(x) shorthand: h(x)

hθ(x) 简写 h(x)

Linear regression with one variable

一个变量的线性回归

Univariate linear regression

单变量线性回归

原文地址:https://www.cnblogs.com/qkloveslife/p/9823445.html