You should normalize the data before doing PCA. For example, consider the following situation. I create a data set `X`

with a known correlation matrix `C`

:

```
>> C = [1 0.5; 0.5 1];
>> A = chol(rho);
>> X = randn(100,2) * A;
```

If I now perform PCA, I correctly find that the principal components (the rows of the weights vector) are oriented at an angle to the coordinate axes:

```
>> wts=pca(X)
wts =
0.6659 0.7461
-0.7461 0.6659
```

If I now scale the first feature of the data set by 100, intuitively we think that the principal components shouldn't change:

```
>> Y = X;
>> Y(:,1) = 100 * Y(:,1);
```

However, we now find that the principal components are aligned with the coordinate axes:

```
>> wts=pca(Y)
wts =
1.0000 0.0056
-0.0056 1.0000
```

To resolve this, there are two options. First, I could rescale the data:

```
>> Ynorm = bsxfun(@rdivide,Y,std(Y))
```

(The weird `bsxfun`

notation is used to do vector-matrix arithmetic in Matlab - all I'm doing is subtracting the mean and dividing by the standard deviation of each feature).

We now get sensible results from PCA:

```
>> wts = pca(Ynorm)
wts =
-0.7125 -0.7016
0.7016 -0.7125
```

They're slightly different to the PCA on the original data because we've now guaranteed that our features have unit standard deviation, which wasn't the case originally.

The other option is to perform PCA using the correlation matrix of the data, instead of the outer product:

```
>> wts = pca(Y,'corr')
wts =
0.7071 0.7071
-0.7071 0.7071
```

In fact this is completely equivalent to standardizing the data by subtracting the mean and then dividing by the standard deviation. It's just more convenient. In my opinion you should *always* do this unless you have a good reason not to (e.g. if you *want* to pick up differences in the variation of each feature).