I want to implement a machine learning algorithm in scikit learn, but I don't understand what this parameter random_state does? Why should I use it?

I also could not understand what is a Pseudo-random number.

up vote 103 down vote accepted

train_test_split splits arrays or matrices into random train and test subsets. That means that everytime you run it without specifying random_state, you will get a different result, this is expected behavior. For example:

Run 1:

>>> a, b = np.arange(10).reshape((5, 2)), range(5)
>>> train_test_split(a, b)
[array([[6, 7],
        [8, 9],
        [4, 5]]),
 array([[2, 3],
        [0, 1]]), [3, 4, 2], [1, 0]]

Run 2

>>> train_test_split(a, b)
[array([[8, 9],
        [4, 5],
        [0, 1]]),
 array([[6, 7],
        [2, 3]]), [4, 2, 0], [3, 1]]

It changes. On the other hand if you use random_state=some_number, then you can guarantee that the output of Run 1 will be equal to the output of Run 2, i.e. your split will be always the same. It doesn't matter what the actual random_state number is 42, 0, 21, ... The important thing is that everytime you use 42, you will always get the same output the first time you make the split. This is useful if you want reproducible results, for example in the documentation, so that everybody can consistently see the same numbers when they run the examples. In practice I would say, you should set the random_state to some fixed number while you test stuff, but then remove it in production if you really need a random (and not a fixed) split.

Regarding your second question, a pseudo-random number generator is a number generator that generates almost truly random numbers. Why they are not truly random is out of the scope of this question and probably won't matter in your case, you can take a look here form more details.

  • 4
    so what random state should I set, I commonly see this number 42. – Elizabeth Susan Joseph Jan 22 '15 at 4:58
  • 26
    This probably explains the number 42 being used so often: en.wikipedia.org/wiki/The_Hitchhiker%27s_Guide_to_the_Galaxy – denson Jun 5 '15 at 14:08
  • 2
    Good one, here are more possibilities. – elyase Jun 5 '15 at 15:55
  • 1
    @Herbert That's a tough question. The core PRNG-stuff is based on numpy which is consistent (they introduced many checks for this after some problem in the past). If there are no errors in usage within sklearn it will behave consistent too. I would assume this (especially for the less-complex functions like train-test-split and co) Edit: oops, a bit late :-) – sascha Jan 22 '17 at 13:33
  • 1
    @liang That's a bad idea. Of course you can do this, but be aware of the consequences. If doing this for cross-validation it can mean, that you build partial-splits which all share the same time (if your original data is ordered by time). – sascha Jan 22 '17 at 13:36

If you don't specify the random_state in your code, then every time you run(execute) your code a new random value is generated and the train and test datasets would have different values each time.

However, if a fixed value is assigned like random_state = 42 then no matter how many times you execute your code the result would be the same .i.e, same values in train and test datasets.

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