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I tried to use the function lsqcurvefit to find p and q parameters for Bass Diffusion Model.

At first I wrote Bass function the following way:

function F = Bass(x, cummulativeAdoptersBefore)
m = 1500000;

F = x(1)*m + (x(2)-x(1))*cummulativeAdoptersBefore + x(2)/m*cummulativeAdoptersBefore.^2;

x(1) = p x(2) = q

and then FitBass:

function [ x, resnorm ] = FitBass(priorCumulativeAdopters, currentAdoptersCount)

    xData = priorCumulativeAdopters;
yData = currentAdoptersCount;
x0 = [0.08; 0.41];
[x, resnorm] = lsqcurvefit(@Bass, x0, xData, yData);

But when compared the results F = Bass(x, cummulativeAdoptersBefore), where x is the vector of matched parameters and yData which is actual data, I noticed that the F (the lower curve - x ~ 1) is not even similar to yData:

Does anayone know what could be wrong here or how to find the parameters x for satisfactory fit in this case (and in general)?

Thank you!

enter image description here

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1 Answer 1

up vote 4 down vote accepted

For gawds sake, why not just use simple linear regression? :) Throwing a nonlinear fit at this is like using a Mack truck to take a pea to Boston. This is a simple quadratic polynomial.

n(t) = pM + (q-p) N(t) -q/M (N(t))^2

Combine terms.

n(t) = p*(M - N(t)) + q*(N(t)-(N(t))^2/M)

See that p and q are linearly estimable coefficients. Assuming that your data falls in a pair of column vectors, solve for p and q like this...

N = priorCumulativeAdopters;
m = 1500000;
pq = [M-N, N - N.^2/M]\currentAdoptersCount;

pq will be a column vector of length 2.

Having said this, expect to see potential numerical problems, as there appears to be a scaling issue.

M is 1.5e6, and the vector of priorCumulativeAdopters appears to be scaled in the interval 0 to 16. See what happens when you subtract N from M. So don't be surprised if there is a problem, and you come running back, telling us there is a problem. I already expect you've got something screwed up. I'll guess this is why you got a poor fit before.

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Thanks for noticing M problem - this actually caused an error. –  Niko Gamulin Aug 24 '12 at 21:07
Yeah, I figured that would be an issue. It looked like a units problem. –  user85109 Aug 24 '12 at 22:17

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