Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I tried this unsuccessfully:

find_fit(data, quadratic_residues)

I am trying to find the best-fit for data about water flow rates: http://dl.getdropbox.com/u/175564/rate.png

---edit after the comment---

The new code:

var('x')
model(x) = x**2
find_fit((xlist, reqlist), model)

The error message:

Traceback (click to the left for traceback)
...
TypeError: data has to be a list of lists, a matrix, or a numpy array

---edit

The error message is now:

Traceback (click to the left for traceback)
...
ValueError: each row of data needs 2 entries, only 5 entries given

The same here as a picture: http://dl.getdropbox.com/u/175564/sage.png

share|improve this question
add comment

3 Answers

up vote 2 down vote accepted
    mydata = [[1,3],[2,7],[3,13],[4,24]]
    var('a,b,c')
    mymodel(x) = a*x^2 + b*x + c 
    myfit = find_fit(mydata,mymodel,solution_dict=True)
    points(mydata,color='purple') + plot(
      mymodel(
        a=myfit[a],
        b=myfit[b],
        c=myfit[c]
        ), 
        (x,0,4,),
        color='red'
      )
share|improve this answer
add comment

I think your problem is that quadratic_residues probably doesn't mean what you think it means. If you are attempting to fit the best quadratic model I think you want to do something like.

var('a, b, c, x')
model(x) = a*x*x + b*x + c
find_fit(data, model)
share|improve this answer
    
Thank you for the correction! I simplified your code. However, I have not get it to work: var('x') model(x) = x**2 find_fit((xlist, reqlist), model) –  Masi Jan 18 '09 at 9:52
    
try putting the free coefficients "a,b,c" back in –  Steven Noble Jan 18 '09 at 18:42
    
The same problem still: dl.getdropbox.com/u/175564/sage.png –  Masi Jan 19 '09 at 0:09
add comment

Trying Steven his example I also ran into the error:

ValueError: each row of data needs 5 entries, only 2 entries given

Here is an more explicit example that I've tested to be working in sage 4.7.

sage: l=[4*i^2+7*i+134+random() for i in xrange(100)]
sage: var('a,b,c,x')
(a, b, c, x)
sage: model=a*x^2+b*x+c
sage: find_fit(zip(xrange(100),l),model,variables=[x])
[a == 4.0000723084513217, b == 6.9904742307159697, c == 134.74698715254667]

Apperently you need the variables=[x] to tell sage which of a,b,c and x corresponds to the variable in your model.

share|improve this answer
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.