## What about Matrices?

As Karthik V suggests,

```
mean(x(~isnan(x)))
```

will work for vectors. However in case you have an n-by-m matrix and wish to compute the row-/column-wise mean discarding occasional NaN's you will have to run a for loop.

## Sample Scenario

Imagine a data matrix of the form:

```
A = [1 0 NaN; 0 3 4; 0 NaN 2]
A =
1 0 NaN
0 3 4
0 NaN 2
```

Running `mean(A(~isnan(A)))`

yields:

```
ans =
1.4286
```

This is because the logical indexing effectively "flattens" the matrix into a vector.

## Looping Solution (Column-wise Mean)

Assuming you want to compute the column-wise mean, the looping solution then becomes:

```
% Preallocate resulting mean vector
nCols = size(A, 2);
mu = zeros(1, nCols);
% Compute means
for col = 1:nCols
mu(col) = mean(A(~isnan(A(:, col)), col));
end
```

Resulting in:

```
mu =
0.3333 1.5000 3.0000
```

## Looping Solution (Row-wise Mean)

Assuming you want to compute the row-wise mean, the looping solution then becomes:

```
% Preallocate resulting mean vector
nRows = size(A, 1);
mu = zeros(nRows, 1);
% Compute means
for row = 1:nRows
mu(row) = mean(A(row, ~isnan(A(row, :))));
end
```

Resulting in:

```
mu =
0.5000
2.3333
1.0000
```