Yes, we can limit the problem to computing with "a 4x4 matrix". The least squares fit of a cubic, even for M data points, only requires the solution of four linear equations in four unknowns. Assuming all the x-coordinates are distinct the coefficient matrix is invertible, so in principle the system can be solved by inverting the coefficient matrix. We assume that M is more than 4, as would typically be the case for least squares fits.

Here's a write-up for Maple, Fitting a cubic to data, that hides almost completely the details of what is being solved. The first-order minimum criteria (first derivatives with respect to coefficients as parameters of sum of squares error) gets us the four linear equations, often called the normal equations.

You can "assemble" these four equations in code, then apply your matrix inverse or a more sophisticated solution strategy. Obviously you need to have the data points stored in some form. One possibility is two linear arrays, one for the x-coordinates and one for the y-coordinates, both of length M the number of data points.

**NB:** I'm going to discuss this matrix assembly in terms of 1-based array subscripts. The polynomial coefficients are actually one application where 0-based array subscripts make things cleaner and simpler, but rewriting it in C or any other language that favors 0-based subscripts is left as an exercise for the reader.

The linear system of normal equations is most easily expressed in matrix form by referring to an Mx4 array A whose entries are powers of x-coordinate data:

A(i,j) = x-coordinate of ith data point raised to power j-1

Let A' denote the transpose of A, so that A'A is a 4x4 matrix.

If we let d be a column of length M containing the y-coordinates of data points (in the given order), then the system of normal equations is just this:

A'A u = A' d

where u = [p0,p1,p2,p3]' is the column of coefficients for the cubic polynomial with least squares fit:

P(x) = p0 + p1*x + p2*x^2 + p3*x^3

Your objections seem to center on a difficulty in storing and/or manipulating the Mx4 array A or its transpose. Therefore my answer will focus on how to assemble matrix A'A and column A'd without explicitly storing all of A at one time. In other words we will be doing the indicated matrix-matrix and matrix-vector multiplications implicitly to get a 4x4 system that you can solve:

C u = f

If you think about the entry C(i,j) being the product of the ith row of A' with the jth column of A, plus the fact that the ith row of A' is really just the transpose of the ith column of A, it should be clear that:

C(i,j) = SUM x^(i+j-2) over all data points

This is certainly one place where the exposition would be simplified by using 0-based subscripts!

It might make sense to accumulate the entries for matrix C, which depend only on the value of i+j, i.e. a so-called Hankel matrix, in a linear array of length 7 such that:

W(k) = SUM x^k over all data points

where k = 0,..,6. The 4x4 matrix C has a "striped" structure that means only these seven values appear. Looping over the list of x-coordinates of data points, you can accumulate the appropriate contributions of each power of each data point in the appropriate entry of W.

A similar strategy can be used to assemble the column f = A' d, namely to loop over the data points and accumulate the following four summations:

f(k) = SUM (x^k)*y over all data points

where k = 0,1,2,3. [Of course in the above sums the values x,y are the coordinates for a common data point.]

**Caveats:** This satisfies the goal of working only with a 4x4 matrix. However one typically tries to avoid the explicit formation of the matrix of coefficients for the normal equations because these matrices are often what in numerical analysis is called ill-conditioned. In particular the cases where x-coordinates are closely spaced can cause difficulty when one tries to solve the system by inverting the matrix of coefficients.

A more sophisticated approach to solving these normal equations would be the conjugate gradient method on the normal equations, which can be done with code that computes the matrix-vector products A u and A' v one entry at a time (using what we say above about entries of A).

The accuracy of the conjugate gradient method is often satisfactory because of its natural iterative approach, esp. when one can compute the required dot-products with a little extra precision.