# Beginners issue in polynomial curve fitting [Part 1]

I have just started understanding modeling techniques based on regression models and was going through MATLAB curve fitting toolbox and the SO. I have fundamental doubts and unable to proceed further. I have a single vector set with k=100 data points which I want to fit into an AR model,MA model,ARMA model successively to see which is better suited.Starting with an AR(p) model of the form `y(k+1)=a*y(k)+ b*y(k-1)`The command

``````coeff = polyfit(x,y,d)
``````

will fit a polynomial of degree say `d`=1 with `p` number of coefficients indicating the order of the model (AR(p)). But I just have 1 set of data which is the recording of the angular moment.So,what will go as the first parameter (x) of the function signature i.e what will be x,y?Then, what if the linear models are not good enough so I may have to select the nonlinear models.Can somebody please guide with code snippets what are the steps in fitting,checking for overfitting,residual calculation etc.

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`x` is likely to be `k` (index of y). And the whole code:

`c =polyfit(1:length(y), y, d)`.

Matlab has a `curve fitting toolbox`. You could use it to check different nonlinear fitting in GUI to get some intuition.

If you want steps there's a great Coursera Machine Learning course. The beginning of this course is related to linear regression and I recommend you to spend some hours at least on that beginning.

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Could you kindly give some examples here with nonlinear fitting so that I have somehting too begin with.Also,thank you for the course link but it begins very late around April :( –  Ria George Mar 11 '13 at 8:13
The videos and pdf should be avaliable now. Click `preview` on the site. –  Dmitry Galchinsky Mar 11 '13 at 8:24
As for nonlinear fitting examples, check `nlinfit` in documentation. I'd play with `curve fitting tool` first –  Dmitry Galchinsky Mar 11 '13 at 8:28