# Selecting a random number with some probability

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Hello Everyone, I am using this one line of code to generate a single value either to be 1 or 2 with equal probability but my question is that how can i select the value to be 1 with 60% probability and the value to be 2 with 40% probability ? Thank you.

select=randi(2,1,1);

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pankaj singh
on 10 Mar 2018

The simplest technique is to use inbuilt Matlab function 'randscr'.

Suppose you want to generate M by N matrix of W, X, Y, and Z with probabilities i,j,k, and l. Then use

out = randsrc(M,N,[W,X,Y,Z;i,j,k,l]); % i+j+k+l = 1;

In your case, as you want a single value to be generated, your M x N = 1 x 1 matrix; the values are 1 with 60% probability (i.e. 0.6) and 2 with 40% (i.e. 0.4) probability, therefore use this;

out = randsrc(1,1,[1,2;0.6,0.4]);

Note that the above is just an example. You can create any matrix size with any number of values. The sum of probabilities must be equal to 1.

##### 3 Comments

Jonathan Ford
on 11 Jul 2021

I'm not sure what is causing your error, but you could try writing your own randsrc function, something like this:

function X = myrandsrc(M, N, A)

X = reshape(A(1,sum(A(2,:) < rand(M*N,1)*ones(1,size(A,2)),2)+1),M,N);

end

Then:

X = myrandsrc(4,5,[1 2 3 4; 0.4 0.7 0.9 1])

will return something like:

X =

1 2 3 2 2

2 1 4 3 2

3 2 2 3 2

2 2 2 3 2

Note that for this implementation, you need to use the cumulative probability distribution in the second row of A, so with the above call you will get ~40% of 1, 30% of 2, 20% of 3 and 10% of 4.

Below is the function separated out into multiple lines, to better explain how it works:

function X = myrandsrc(M, N, A)

% the number of elements to chose from

sz = size(A,2);

% generate some random numbers

r = rand(M*N,1)*ones(1,sz);

% determine the correct elements

r = sum(A(2,:) < r,2)+1;

% select the correct elements

X = A(1,r);

% Reshape into M x N matrix

X = reshape(X,M,N);

end

Daniel
on 25 Feb 2015

You can use rand, which gives uniform distribution and look if the number is below or above 0.6.

if(0.6 <= rand()){

select = 1;

} else {

select = 2;

}

That should give 60/40 chances. There are more elegant ways to do that though.

##### 2 Comments

Trung Khoa Le
on 17 Jan 2019

Luciano Anastassiou
on 22 May 2019

Hi Trung Khoa Le,

The intuition is simply that "rand" generates a random number between 0 and 1. Then when you apply the "if" constraint, you are telling the system to only give out the result "select = 1" when that random number is below 0.6. Otherwise it will give out "select = 2".

If you repeated this 1000s of times, it would give out "select = 1" 60% of the time, because 60% of those random numbers between 0 and 1 will be below 0.6, and the other 40% of the time it will give out "select = 2".

Jos (10584)
on 25 Feb 2015

Edited: Jos (10584)
on 25 Feb 2015

For two values it is simple

VAL = [10 20] % 2 values

P = .8 % probabbility of selecting first value

Ndraw = 20 % number of draws

R = rand(Ndraw,1) < P

SEL = VAL(2 - R) % use as index into VAL

For more complicated cases you might be interested inTake a look at my RANDP function, which picks random values with relative probabilities.

##### 1 Comment

Steven Lord
on 16 Jun 2022

Another approach is to use the discretize function to discretize a uniform random number between 0 and 1 as generated by the rand function. Because edges is [0, 0.6, 1] any values in uniform that are in the range [0, 0.6) will be mapped to 1 in oneOrTwo and any values in uniform in the range [0.6, 1] will be mapped to 2.

probabilities = [0.6 0.4];

edges = cumsum([0 probabilities])

uniform = rand(1, 1e4);

oneOrTwo = discretize(uniform, edges);

We can check using histogram that the generated numbers have the right distribution (or close to it.)

histogram(oneOrTwo, 'Normalization', 'probability')

% Draw lines at the desired probabilities

yline(probabilities, 'r:')

Those look to be in pretty good agreement with the desired probabilities to me.

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