3:53 AM
That is for logistic regression
I don't know if you have covered that yet, but logistic regression is a CLASSIFIER.
logistic regression is actually a poor choice in terminology.
logistic regression == CLASSIFICATION
logistic regression is used when you want to predict either YES or NO as the answer
like when you're classifying spam, or deciding if someone has cancer.
now the sigmoid function goes between 0-1.
the reason why log
is used is because it maps [0,1]
to [-inf,0]
.
because log(0) --> -inf
and log(1) --> 0
.
we want it to go from 0
to inf
, and that's why there's a negative slapped in front of it.
Now how does this factor in?
Consider the hypothesis to be the PROBABILITY of predicting the value YES.
If the probability of the output being YES is high, this means that the sigmoid should be close to 1, and hence log(1) == 0
, meaning that it should cost very small to make that decision, because we have a high chance that choosing YES is the right answer.
If the probability of selecting YES is low, this means that the sigmoid should be close to 0, and hence -log(0) --> Inf
.
This means that choosing this decision will cost you dearly, which is why the cost is very large.
I won't get into it, but the reason why the log
is used is because originates from what is known as the MAP --> Maximum a posteriori selection rule.
Basically, the probabilities are modelled using the exponential function, which is e^{-...}
. To minimize the cost, you want to minimize e^{-...}
, so you need to minimize the exponent.
to minimize e^{-...}
, you need to make sure the exponent is as LARGE as possible... so you take the logarithm of base e
to this to get rid of the e
, then work on the exponent itself.
that's where the log
comes from, because of the log
applied to e
.