Creating Gaussian random variable X with MATLAB

By using `randn` function I want to create a Gaussian random variable `X` such that `X ~ N(2,4)` and plot this simulated PDF together with theoretic curve.

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Matlab `randn` generates realisations from a normal distribution with zero mean and a standard deviation of 1. Samples from any other normal distribution can simply be generated via:

``````numSamples = 1000;
mu = 2;
sigma = 4;
samples = mu + sigma.*randn(numSamples, 1);
``````

You can verify this by plotting the histogram:

``````figure;hist(samples(:));
``````

See the matlab help.

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``````N = 1000;
x = [-20:20];
samples = 2 + 4*randn(N, 1);
ySamples = histc(samples,x) / N;
yTheoretical = pdf('norm', x, 2, 4);
plot(x, yTheoretical, x, ySamples)
``````

`randn(N, 1)` creates an `N`-by-1 vector.

`histc` is histogram count by bins given in `x` - you can use `hist` to plot the result immediately, but here we want to divide it by `N`.

`pdf` contains many useful PDFs, normal is just one example.

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remember this: X ~ N(mean, variance)

randn in matlab produces normal distributed random variables W with zero mean and unit variance. To change the mean and variance to be the random variable X (with custom mean and variance), follow this equation: X = mean + standard_deviation*W Please be aware of that standard_deviation is square root of variance.

``````N = 1000;
x = [-20:20];
samples = 2 + sqrt(4)*randn(N, 1);
ySamples = histc(samples,x) / N;
yTheoretical = pdf('norm', x, 2, sqrt(4)); %put std_deviation not variance
plot(x, yTheoretical, x, ySamples)
``````
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