“ML”的版本间的差异
来自个人维基
小 |
小 |
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第14行: | 第14行: | ||
<math>θ_j:=θ_j+α\frac{∂}{∂θ_j}J(θ)</math> | <math>θ_j:=θ_j+α\frac{∂}{∂θ_j}J(θ)</math> | ||
对于线性模型,其损失函数为均方误差,故有: | 对于线性模型,其损失函数为均方误差,故有: | ||
− | + | <math>\frac{∂}{∂θ_j}J(θ)= \frac{∂}{∂θ_j}(\frac{1}{2m}\sum_{i=1}^m(h_θ(x^{(i)})-y^{(i)})^2)</math> | |
− | <math>\frac{∂}{∂θ_j}J(θ)= \frac{∂}{∂θ_j}(\frac{1}{2m}\sum_{i=1}^m(h_θ( | + | :<math>= \frac{1}{2m}\frac{∂}{∂θ_j}(\sum_{i=1}^m(h_θ(x^{(i)})-y^{(i)})^2)</math> |
− | :<math>= \frac{1}{2m}\frac{∂}{∂θ_j}(\sum_{i=1}^m(h_θ( | + | :<math>= \frac{1}{2m}\sum_{i=1}^m( \frac{∂}{∂θ_j}(h_θ(x^{(i)})-y^{(i)})^2 )</math> |
− | :<math>= \frac{1}{2m}\sum_{i=1}^m( \frac{∂}{∂θ_j}(h_θ( | + | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ(x^{(i)})-y^{(i)}) \frac{∂}{∂θ_j}h_θ(x^{(i)}) ) //链式求导法式</math> |
− | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ( | + | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ(x^{(i)})-y^{(i)}) \frac{∂}{∂θ_j}x^{(i)}θ ) </math> |
− | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ( | + | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ(x^{(i)})-y^{(i)}) \frac{∂}{∂θ_j}\sum_{k=0}^{n}x_k^{(i)}θ_k ) </math> |
− | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ( | + | |
对于j>=1: | 对于j>=1: | ||
− | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ( | + | :<math>= \frac{1}{m}\sum_{i=1}^m( (h_θ(x^{(i)})-y^{(i)}) x_j^{(i)} ) </math> |
:<math>= \frac{1}{m} (h_θ(x)-y) x_{j} </math> | :<math>= \frac{1}{m} (h_θ(x)-y) x_{j} </math> | ||
2018年12月21日 (五) 20:39的版本
目录[隐藏] |
定义
- 约定:
- x(i)j:训练数据中的第i列中的第j个特征值 value of feature j in the ith training example
- x(i):训练数据中第i列 the input (features) of the ith training example
- m:训练数据集条数 the number of training examples
- n:特征数量 the number of features
Week1
Cost Function损失函数
Squared error function/Mean squared function均方误差: J(θ)=12mm∑i=1(hθ(x(i))−y(i))2
Cross entropy交叉熵: J(θ)=−1mm∑i=1[y(i)∗loghθ(x(i))+(1−y(i))∗log(1−hθ(x(i)))]
Gradient Descent梯度下降
θj:=θj+α∂∂θjJ(θ)
对于线性模型,其损失函数为均方误差,故有:
∂∂θjJ(θ)=∂∂θj(12mm∑i=1(hθ(x(i))−y(i))2)
- =12m∂∂θj(m∑i=1(hθ(x(i))−y(i))2)
- =12mm∑i=1(∂∂θj(hθ(x(i))−y(i))2)
- =1mm∑i=1((hθ(x(i))−y(i))∂∂θjhθ(x(i)))//链式求导法式
- =1mm∑i=1((hθ(x(i))−y(i))∂∂θjx(i)θ)
- =1mm∑i=1((hθ(x(i))−y(i))∂∂θjn∑k=0x(i)kθk)
对于j>=1:
- =1mm∑i=1((hθ(x(i))−y(i))x(i)j)
- =1m(hθ(x)−y)xj
Week2
Multivariate Linear Regression
hθ(x)=θ0x0+θ1x1+θ2x2+...+θnxn
- =[θ0x(1)0,θ0x(2)0,...,θ0x(m)0]+[θ1x(1)1,θ1x(2)1,...,θ1x(m)1]+...+[θnx(1)n,θnx(2)n,...,θnx(m)n]
- =[θ0x(1)0+θ1x(1)1+...+θnx(1)n, θ0x(2)0+θ1x(2)1+...+θnx(2)n, θ0x(m)0+θ1x(m)1+...+θnx(m)n]
- =θTx
其中,
x=|x0x1x2...xn|=|x(1)0x(2)0...x(m)0x(1)1x(2)1...x(m)1x(1)2x(2)2...x(m)2............x(1)nx(2)n...x(m)n|,θ=|θ0θ1θ2...θn|
- m为训练数据组数,n为特征个数(通常,为了方便处理,会令x(i)0=1,i=1,2,...,m)。
Feature Scaling & Standard Normalization
xi:=xi−μisi
其中,μi是第i个特征数据x_i的均值,而 si则要视情况而定:
- Feature Scaling:si为xi中最大值与最小值的差(max-min);
- Standard Normalization:si为xi中数据标准差(standard deviation)。