I am trying to do a PCA on some volatility data, and let's just say I can propose a model as the following:
volatility = bata0 + beta1*x + beta2* x^2
where x are some observations, say for example, moneyness and so on.
So in Matlab, what I did was to say
Y=[ones x x^2] and then do
and for some reason, my first row in my coefficient matrix is always something like 0 0 1, i.e., 0 everywhere else except the last column, and output of atent always shows the highest value in the first row as well, no matter how I change the model.
Obviously, this can't be the case where the last term in every single model is explained well by the last term in the equation. And if I remove the constant term in Y (i.e., Y= [x x^2] then the first row of coefficient matrix becomes something more normal (i.e., non-zero value everywhere).
So my questions are:
- is my way of doing PCA right?
- Does PCA automatically rearrange the principal component and hence the first row in the coefficient matrix with all zeros except 1 at the last column may not necessarily represent the last term in the equation and
- if it is wrong, what is the correct way of doing it?