Refers to a general estimation technique that selects the parameter value to minimize the squared difference between two quantities, such as the observed value of a variable, and the expected value of that observation conditioned on the parameter value.

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1answer
13 views

scipy polyfit x, y , weights =error bars

I would like to fit a line that uses the inverse of the error bars as weights. I binned my data x and y, into 10 bins ( ~26 points each ) and took their mean. This is not a matrix of values so ...
-1
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3answers
44 views

Nonlinear least squares curve fitting in R

I am new to R (first time using it). and I am following this tutorial http://www.walkingrandomly.com/?p=5254 to try to plot a curve and discover the function that best fits my data. So far I have ...
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1answer
35 views

R: difference between Generalized Least Square and the Standard Least Squares with Cholesky

According to Wikipedia (source of all truth and knowledge...), http://en.wikipedia.org/wiki/Generalized_least_squares#Properties a weighted least square regression is equivalent to a standard least ...
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0answers
106 views
+50

How to properly stop iteration in minimization in Python?

I am posting this question because, my code is not stopping iteration at the right place. Could anyone make me sure what is wrong? Everything is working properly (as I always think which is mistake ...
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0answers
15 views

Python least squares fit of N-dimension dataset along a single dimension

I wonder if what I ask can get accomplished? I have an N dimensional dataset (in my case 4), but I only care about one of those dimensions. To explain my situation with an example, I want to fit the ...
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1answer
16 views

fit a curve with model equation numpy

I am trying to reproduce a curve with a model equation using non-linearleast square procedure to get out a certain "beta" value. The y and x experimental data are two 1D numpy arrays of the same size, ...
1
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1answer
43 views

How to use the data argument of a formula function?

My code is: gls(fish~data+temp+size, na.action=na.omit, data=???, correlation=corAR1(form=~Date)) I just want to know about the data argument because I have no idea what to put in it. I understand ...
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2answers
26 views

Least squares fit, unknown intercerpt

I have three data points through which I have to fit a straight line of the form Y=m*X+C. I want the line to have pre-determined slope 'm' but the constant'C' can change to get the least error while ...
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1answer
29 views

fsolve returns complex solution — how to limit to real search space only?

Sometimes the fsolve(..) function in Matlab returns a solution with non-zero imaginary part. It's not discussed in its help page how to select whether the search space should be complex-valued or ...
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0answers
18 views

Weibull distribution OLS in StatsModels: wrong values

I read data that have a Weibull(x; kappa, lamdba) distribution, and I need make a fit to know the values of kappa and lamdba (In this case I generate the data). First, I try with SciPy.stats and work, ...
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1answer
47 views

Interactive curve fitting with MATLAB using custom GUI?

I find examples the best way to demonstrate my question. I generate some data, add some random noise, and fit it to get back my chosen "generator" value... x = linspace(0.01,1,50); value = 3.82; y = ...
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1answer
18 views

interpolate.splrep error: 'knots must be given for task =-1'

I'm trying to find a least squared cubic spline fit of data using the following code: from scipy import interpolate plt.subplot(223) l_hits = np.array(l_hits) list1 = np.log(l_hits) knots = ...
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0answers
20 views

R :Errors encountered when trying to find least square estimators of linear combination of exponential distribution

I have recently tried to find the least square estimators of a linear combination of exponential models. I use nls() in R but get several errors. Here is the model Pt = ∑ Ci * exp(-αi *t) i=1,2,3 ...
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0answers
28 views

python method for solving a Weighted Least Squares with non-diagonal weight matrix

I'm using linalg.lstsq(A,y) to solve a least squares problem of the type y=Ax. When I want to solve a WLS problem with a diagonal weight matrix W, I can use the solution suggested in this question ...
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2answers
30 views

Uses for secondary returns of scipy.optimize.leastsq?

I have been using scipy.optimize.leastsq quite a bit lately, but whenever I call it I only use the return "x" (the solution) from this long list of return values. I can't see myself needing any of the ...
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0answers
50 views

Normal vector to plane which is the best fit to set of 3D points

I have two sets of points. The second set of points is calculated by taking all the first points and moving all of them by 0.15 in y-direction. I'm trying to fit a plane to both sets of points and ...
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votes
1answer
39 views

Why is my python lmfit leastsq fitting function being passed too many arguments?

I've tried to search for someone making the same mistake as me, but have had no joy! It's also my 1st post, so I apologise if it's badly explained or directed. Advice welcome. The problem I am ...
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1answer
51 views

Exponential least square fitting on Scilab

I have two arrays x and y, and would like to fit an exponential to them with a(1) and a(2) as fitting parameters. I wrote a test code as follows: k=6.63e-34*3e8/1.38e-23 x=[1;2;3;4;5;6;7;8;9;10] ...
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1answer
33 views

getting least squares and residuals by comparing data

I have a set of simulated data (df1) I've generated. I have a second set of data (df2) that I would like to compare and see if df1 can explain the observations of df2. Ideally I'd like to plot the ...
0
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1answer
83 views

Simultaneous data fitting in python with leastsq

I didn't program for a long time and never was good at it, but it is kind of important task I am struggling with. I am trying to fit two sets of data (x – time, y1 and y2 – different columns of values ...
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0answers
19 views

Partial Least Squares Regression for categorical factor

I adjust the Partial Least Squares Regression for one categorical factor (2 levels – be or not to be) with with the pls package in R. I try to use round() function in the predict values for take the ...
0
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1answer
66 views

non linear least squares in 3D space in MATLAB?

For 2D space I have used lsqcurvefit. But for 3D space I haven't found any easy function. the function I'm trying to fit has the form something like this: z = f(x,y) = a+b*x+c*e^(-y/d) I would like ...
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2answers
61 views

How to interpolate 3D points computed from a Kinect to get a ball trajectory? [closed]

I'm getting 3D points from the Kinect via OpenNI. Let's say I have : X = [93.7819,76.8463,208.386,322.069,437.946,669.999] Y = [-260.147,-250.011,-230.717,-211.104,-195.538,-189.851] Z = ...
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1answer
63 views

Least square straight line intersection

I have 2 cluster of points, each of which are derived from a RANSAC line fitting (among several points in the set). Solving the system of equations, I can retrieve the parameters for the two lines ...
2
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2answers
47 views

linalg.lstsq with fixed slope?

Suppose that we have two arrays of data: x = [1,2,3] y = [2,4,6] Obviously a linear fit would return a slope of 2 and an intercept of 0 and, of course, both routines in Numpy linalg.lstsq and polyfit ...
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0answers
39 views

least-square in multidimensional space

Been working on a problem, in which the result is about 800 valid ans. each ans itself is simply an array of 4 real numbers. their range is different, however they've been equalized using powers. ...
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2answers
59 views

Scipy's curve_fit / leastsq become slower when given the Jacobian?

So I wad reading the documentation about curve_fit here. It contains the following example: import numpy as np import scipy.optimize as so def func(x, a,b,c ): return a * np.exp(-b * x) + c ...
1
vote
1answer
72 views

How to solve an overdetermined set of equations using non-linear lest squares in Matlab

A11 = cos(x)*cos(y) (1) A12 = cos(x)*sin(y) (2) A13 = -sin(y) (3) A21 = sin(z)*sin(x)*cos(y) - cos(z)*sin(y) (4) ...
0
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1answer
41 views

ipython non-linear least squares with constraints equations

I am new to iPython, and need to solve a specific curve fitting problem, I have the concept but my programming knowledge is yet too limited. I have experimental data (x, y) to fit to an equation ...
0
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1answer
34 views

I used least square method but matlab return compeletly wrong answer

I must solve an over constrained problem (Equations more than unknowns). So I have to use least square method. First I create coefficient matrix .It is a 225*375 matrix. For inversing, I use pinv() ...
0
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1answer
79 views

Scipy.optimize.leastsq returns the initial guess not optimization parameters

I am trying to use leastsq from the scipy.optimize module to find a best fit line, where there are 3 unknown parameters. I have written out the code however the program runs and returns the initial ...
0
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1answer
64 views

Least square approximation for straight line fit (normal form)

I am doing a straight line best fit for certain data set. I am using the normal form of straight line. Suppose I have a set of points (x_1,y_1), (x_2,y_2), ... , (x_n,y_n). Suppose the normal form of ...
0
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2answers
53 views

Curve Fit 5 points

I am trying to curve fit 5 points in C. I have used this code from a previous post (Can sombody simplify this equation for me?) to do 4 points, but now I need to add another point. // Input data: ...
2
votes
1answer
36 views

How to do weighted curve fitting with constraints under python?

I need to do a curve fitting with constraints and weights. reading around, mostly here, I created a function def residuals_ga(self,p,h,n,err,kkind=None): # checking if to use the minimum ...
0
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1answer
59 views

Python LeastSquares plot

I have to draw plot using least squares method in Python 3. I have list of x and y values: y = [186,273,308,484] x = [2.25,2.34,2.47,2.56] There are many more values for x and for y, there is ...
0
votes
2answers
124 views

how to do a multi dimensional function fitting using python

I am doing some least square fitting things. and it's two dimensional which means (x1i,x2i)-->(yi).So far i checked a lot online documents which are designed for 1 dimensional (xi)->(yi). 1 So ...
0
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0answers
72 views

Using QR decomposition to solve least squares in Matlab

I am using Matlab to estimate a regression model with ordinary least squares (OLS). The model is y = xB, where x is a very sparse matrix with dimension 500000 x 2500. I'm using a QR decomposition: ...
0
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1answer
35 views

least square approximation: how this matrix calculation equation is deducted?

I am reading a book "kernel methods for pattern analysis". For the least square approximation, it is to minimise the sum of the square of the discrepancies: e=y-Xw Therefore it is to minimize ...
1
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0answers
60 views

GSL multifit solver doesn't update parameters then complains it isn't converging

I'm trying to use the GSL multifit routine to do a fit to some data. The fitting function is a complex numerically-evaluated routine. A simpler version using a Gaussian function works OK, but for my ...
1
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1answer
82 views

Ordinary least squares regression in R: no intercepts

I'd like to use the ols() (ordinary least squares) function from the rms package to do a multivariate linear regression, but I would not like it to calculate the intercept. Using lm() the syntax would ...
0
votes
1answer
530 views

estimateRigidTransform in OpenCV

I am using estimateRigidTransform in OpenCV to get the rigid transform matrix but i do not know how estimateRigidTransform get the rigid transform matrix Does estimateRigidTransform use the Least ...
2
votes
0answers
83 views

3D plot of the residual sum of squares in linear regression

I'm trying to reproduce Figure 3.2 from the book Introduction to Statistical Learning. Figure describes 3D plot of the residual sum of squares (RSS) on the Advertising data, using Sales as the ...
1
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2answers
126 views

Fitting data in least square sense to nonlinear equation

I need help fitting data in a least square sense to a nonlinear function. Given data, how do I proceed when I have following equation? f(x) = 20 + ax + b*e^(c*2x) So I want to find a,b and c. If it ...
0
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1answer
65 views

How to get the error on the parameter using least squares fit in scipy

I have used the least squares fit in the scipy.optimize package and was wondering what the second argument that is returned is?
0
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1answer
119 views

Parameters estimation on Lotka Volterra model with Scilab

I'm trying to make a parameters estimation on Lotka-Volterra model with Scilab (I am a total neophyte). When I try to run the script, Scilab warns about incoherent subtraction. I guess my problem is ...
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votes
1answer
105 views

Non negative least squares, strange results

I wanted to implement nonnegative least squares in matlab and observe kinda odd results, i.e. I have difficulties to interpret them. Here is what i got using matlabs' \ and lsqnonneg operators. ...
0
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0answers
69 views

EJML least squares

I am trying to have the least squares computed for an over determined system. DenseMatrix64F D_dense = RandomMatrices.createRandom(dimension, 3 * dimension, -1, 1, r); D1 = ...
3
votes
1answer
308 views

Least squares linear classifier in matlab

I'm struggling to understand how to implement a least square linear classifier for my data in matlab. My data has N rows, each row is 10 columns wide. Each row represents a data point with 10 ...
0
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0answers
39 views

NNLS with Weighting

I'm conducting some research, and as part of a problem I'm facing, I need to solve a basic least squares system with both a non-negativity constraint & with weighting. I tried both linlsq and ...
0
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1answer
115 views

lmfit -py using arrays for parameter optimization

Situation: I'm trying to optimise parameters for a natural creek where gases degas or ingas at a certain rate according to reasonably well established equations. We have the measured concentrations at ...