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@@ -8,9 +8,29 @@ Logistic regression is a statistical analysis method used to predict a data valu |
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The dependent variable of logistics regression can be two-category or multi-category, but the two-category is more common and easier to explain. So the most common use in practice is the logistics of the two classifications. |
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逻辑回归的因变量可以是二分类的,也可以是多分类的,但是二分类的更为常用,也更加容易解释。所以实际中最常用的就是二分类的物流回归。 |
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逻辑回归的因变量可以是二分类的,也可以是多分类的,但是二分类的更为常用,也更加容易解释。 |
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The general steps for regression problems are as follows: |
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Logistics regression corresponds to a hidden status p through the function trumpetp = S(ax+b), then determine the value of the dependent |
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variable according to the size of p and 1-p.The function S here is the Sigmoid function: |
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S(t)=1/(1+e^(-t) |
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By changing t to ax+b, you can get the parameter form of the logistic regression model: |
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P(x;a,b) = 1 / (1 + e^(-ax+b)) |
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logistic回归通过函数S将ax+b对应到一个隐状态p,p = S(ax+b),然后根据p与1-p的大小决定因变量的值。这里的函数S就是Sigmoid函数: |
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S(t)=1/(1+e^(-t) |
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将t换成ax+b,可以得到逻辑回归模型的参数形式: |
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P(x;a,b) = 1 / (1 + e^(-ax+b)) |
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sigmoid函数的图像 |
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By the function of the function S, we can limit the output value to the interval [0, 1], |
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p(x) can then be used to represent the probability p(y=1|x), the probability that y is divided into 1 group when an x occurs. |
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通过函数S的作用,我们可以将输出的值限制在区间[0, 1]上,p(x)则可以用来表示概率p(y=1|x),即当一个x发生时,y被分到1那一组的概率 |
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The full example is [here](https://github.com/SciSharp/TensorFlow.NET/blob/master/test/TensorFlowNET.Examples/LogisticRegression.cs). |