机器学习-入门-线性模型(1)

3.1 线性回归

f ( x i ) = w x i + b 使得 f ( x i ) ≃ y i f(x_i) = wx_i + b \quad \text{使得} \quad f(x_i) \simeq y_i f(xi)=wxi+b使得f(xi)yi

离散属性的处理:若有"序"(order),则连续化;否则,转化为 k k k 维向量

令均方误差最小化,有:

( w ∗ , b ∗ ) = arg ⁡ min ⁡ ( w , b ) ∑ i = 1 m ( f ( x i ) − y i ) 2 = arg ⁡ min ⁡ ( w , b ) ∑ i = 1 m ( y i − w x i − b ) 2 (w^*, b^*) = \arg\min_{(w, b)} \sum_{i=1}^m (f(x_i) - y_i)^2 = \arg\min_{(w, b)} \sum_{i=1}^m (y_i - wx_i - b)^2 (w,b)=arg(w,b)mini=1m(f(xi)yi)2=arg(w,b)mini=1m(yiwxib)2

E ( w , b ) = ∑ i = 1 m ( y i − w x i − b ) 2 E(w, b) = \sum_{i=1}^m (y_i - wx_i - b)^2 E(w,b)=i=1m(yiwxib)2 进行最小二乘参数估计

3.2 最小二乘解

E ( w , b ) = ∑ i = 1 m ( y i − w x i − b ) 2 E_{(w,b)} = \sum_{i=1}^m (y_i - wx_i - b)^2 E(w,b)=i=1m(yiwxib)2

分别对 w w w b b b 求导:

∂ E ( w , b ) ∂ w = 2 ( w ∑ i = 1 m x i 2 − ∑ i = 1 m ( y i − b ) x i ) \frac{\partial E_{(w,b)}}{\partial w} = 2 \left( w \sum_{i=1}^m x_i^2 - \sum_{i=1}^m (y_i - b)x_i \right) wE(w,b)=2(wi=1mxi2i=1m(yib)xi)

∂ E ( w , b ) ∂ b = 2 ( m b − ∑ i = 1 m ( y i − w x i ) ) \frac{\partial E_{(w,b)}}{\partial b} = 2 \left( mb - \sum_{i=1}^m (y_i - wx_i) \right) bE(w,b)=2(mbi=1m(yiwxi))

令导数为 0,得到闭式(closed-form)解:

w = ∑ i = 1 m y i ( x i − x ˉ ) ∑ i = 1 m x i 2 − 1 m ( ∑ i = 1 m x i ) 2 b = 1 m ∑ i = 1 m ( y i − w x i ) w = \frac{\sum_{i=1}^m y_i (x_i - \bar{x})}{\sum_{i=1}^m x_i^2 - \frac{1}{m} \left( \sum_{i=1}^m x_i \right)^2} \quad b = \frac{1}{m} \sum_{i=1}^m (y_i - wx_i) w=i=1mxi2m1(i=1mxi)2i=1myi(xixˉ)b=m1i=1m(yiwxi)

3.3 多元线性回归

同样采用最小二乘法求解,有

w ∗ = arg ⁡ min ⁡ w ( y − X w ) T ( y − X w ) w^* = \arg\min_{w} (y - Xw)^T (y - Xw) w=argwmin(yXw)T(yXw)

E w = ( y − X w ) T ( y − X w ) E_w = (y - Xw)^T (y - Xw) Ew=(yXw)T(yXw),对 w w w 求导:

∂ E w ∂ w = 2 X T ( X w − y ) \frac{\partial E_w}{\partial w} = 2X^T (Xw - y) wEw=2XT(Xwy)

令其为零可得 w w w

然而,麻烦来了:涉及矩阵求逆!

  • X T X X^T X XTX 满秩或正定,则 w ∗ = ( X T X ) − 1 X T y w^* = (X^T X)^{-1} X^T y w=(XTX)1XTy
  • X T X X^T X XTX 不满秩,则可解出多个 w w w

若可解出多个解,可以引入正则化得到唯一解

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