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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0answers
7 views

methods for analysis of expenses of future months based on available previous months expenses

i want to analyse the expenses that will be made in a month based on previous data available ( say the previous month expenses). I am actually developing an android project for tracking expenses and ...
1
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3answers
38 views

why is list of tuple failing as an argument for optimize.leasztsq?

I use the function leastsq from scipy.optimize to fit sphere coordinates and radius from 3D coordinates. So my code looks like this : def distance(pc,point): xc,yc,zc,rd = pc x ,y ,z = ...
0
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0answers
32 views

How to calculate least square means (adjusted means) MATLAB

In several papers I read that when analysing a variable (lets say the response to a medication) means across groups should be adjusted for confounding factors like age, gender etc. (if these groups ...
1
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1answer
60 views

Least square minimization of a Cost function

I am aiming to minimize the below cost function over W J = (E)^2 E = A - W .* B Such that W(n+1) = W(n) - (u/2) * delJ delJ = gradient of J = -2 * E .* B u = step_size=0.2 where: - A, B are STFT ...
0
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1answer
25 views

scipy.optimize.leastsq : How to specify non-parameters?

I want to know how to use leastsq from scipy for chi-square fitting. I know the structure is basically - parameters = leastsq(chi(exp_data, exp_err, param), initial_guess, arg = (?,?,?)) where ...
1
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1answer
46 views

Matlab - Least Squares data fitting - Cost function with extra constraint

I am currently working on some MatLab code to fit experimental data to a sum of exponentials following a method described in this paper. According to the paper, the data has to follow the following ...
7
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2answers
166 views

linear regression using lm() - surprised by the result

I used a linear regression on data I have, using the lm function. Everything works (no error message), but I'm somehow surprised by the result: I am under the impression R "misses" a group of points, ...
0
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0answers
54 views

Python Grouping Data

I have a set of data: (1438672131.185164, 377961152) (1438672132.264816, 377961421) ...
0
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0answers
73 views

Least squares in Matlab

A deployment of some (20 or so) sensors has detected a signal arriving from a certain direction. The sensors inter-distance is 50 meters. The signal is observed in sensors' data with a move-out ...
0
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2answers
63 views

How to calculate the smallest sum of squared differences among 5 variables

I would like to calculate in Gnu R the smallest sum of squared differences between w,x,y,z and a and choose which of this four variables fits a best, but I have no clue about how to do it in the most ...
0
votes
1answer
22 views

Failing to solve a simple least squares fit with Ruby GSL

I have the following ruby script, running with rb-gsl (1.16.0.6) under ruby-2.2.1 require("gsl") include GSL m = GSL::Matrix::alloc([0.18, 0.60, 0.57], [0.24, 0.99, 0.58], [0.14, ...
2
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1answer
50 views

Constraining the least squares fitting in python

I want to solve the following in a least-squares sense: H = dot(A, B) + dot(A.conj(), C) where the complex matrices H, B and C are known. The remaining complex matrix A (with its complex conjugate) ...
1
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1answer
21 views

Add parameters constraints to Apache Math3 fitting

I'm developing a fitting application using Apache commons math3. I have successfully created the ParametricUnivariateFunction public class MyFunc implements ParametricUnivariateFunction { @Override ...
1
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0answers
29 views

Python Numpy Poisson regression producing bad numbers

I would like to use Poisson regression to model football matches. I am trying to fit attack and defence ratings to each team based on past results. So say I have a set of results like this: A v B 2 0 ...
0
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1answer
47 views

Least square optimization (of matrices) in R

Yesterday I asked a question about least square optimization in R and it turned out that lm function is the thing that I was looking for. On the other hand, now I have an other least square ...
0
votes
1answer
32 views

Error/warning message related to definition of newdata in predict.lm

While using predict.lm, I am either getting an error message or an incorrect solution, and I am trying to understand what might be causing that. Before posting my problem here, I have read several ...
1
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1answer
47 views

Least square optimization in R

I am wondering how one could solve the following problem in R. We have a v vector (of n elements) and a B matrix (of dimension m x n). E.g: > v [1] 2 4 3 1 5 7 > B [,1] ...
6
votes
1answer
93 views

Least mean square to equalize optical fiber channel

I used a Matlab code of LMS (least mean square algorithm) to equalize the effect of the channel, it is working for a tapped delay channel generated in MATLAB but for optical fiber channel using ...
0
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0answers
15 views

Set >0 constraint on regress(y,X) -— MATLAB

I am currently performing the following regression and wonder how to set a positive constraint (>=0) on my estimates: X=[ones(size(Epsi)) lagEpsi_al lagResid]; coeff=regress(Epsi_al, X); par(5) = ...
0
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0answers
38 views

Matlab : Channel equalization by Least Square and Bit error rate

A communications channel is modeled by a finite-impulse-response (FIR) filter: y[n] = Hs[n] + w[n] where H is the channel coefficients, s is the binary source and w is AWGN A least Square estimate ...
0
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0answers
9 views

Error term as regressor in MATLAB

in the wake of online researches could suggestions be obtained on the implementation of the below regression: al=1.326; |eps_t|^al=omega + (psi + tau)* |eps_t-1|^al - psi * nu_t-1 + nu_t; ...
0
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1answer
63 views

How to solve for matrix in Matlab?

How can I solve , where and and in the least squares sense in matlab? So I'd like to have the minimizing as output.
0
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1answer
47 views

gnuplot - How to fit a function every N data points

I am using gnuplot and the function fitting facilities to perform least squares fitting to some of my data. I have many data points (sometimes tens of millions) and hence fitting to all data points ...
1
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1answer
56 views

Fitting 2D sum of guassians, scipy.optimise.leastsq (Ans: Use curve_fit!)

I want to fit an 2D sum of guassians to this data: After failing at fitting a sum to this initially I instead sampled each peak separately (image) and returned a fit by find it's moments ...
0
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1answer
77 views

Getting covariance matrix when using Levenberg-Marquardt (lsqcurvefit) in MATLAB

I am using the lsqcurvefit function in Matlab to model some experimental data. The data takes a specific shape and so the algorithm is just adjusting the coefficients of this shape to change its ...
3
votes
1answer
59 views

How to weight station to Order Least Squares in python?

I have 10 climate stations data about precipitation and it's DEM. I had done a linear regression follow: DEM = [200, 300, 400, 500, 600, 300, 200, 100, 50, 200] Prep = [50, 95, 50, 59, 99, 50, 23, ...
0
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0answers
55 views

solving least square for matrix instead of vector

The problem is to find Z such that epsilon(E) (equation 21) is minimized. Z is an MxN matrix which is what we need to find. Zx and Zy are also MxN matrix which are also known already. Dx and Dy are ...
0
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0answers
21 views

rewriting equation for optimization to matrix equation

I need to minimize the equation in the attached picture. Given a function p=f(q). p are integers ranging from 1 to 254, while q is a set of 254 real numbers. f is a monotonic function that maps a ...
2
votes
3answers
53 views

MATLAB polynomial fit selective powers

I have 2 vectors x and y to which I want to fit a polynomial as y = f(x) in MATLAB. I could have used polyfit. However, I want to fit only selective power terms of the polynomial. For example, y = ...
0
votes
3answers
56 views

Calculating 'hat' matrix in R

In calculating the 'hat' matrix in weighted least squares a part of the calculation is X^T*W*X However, I am unsure how one would do this in R See the following example: x <- ...
1
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1answer
38 views

how to solve many overdetermined systems of linear equations using vectorized codes?

I need to solve a system of linear equations Lx=b, where x is always a vector (3x1 array), L is an Nx3 array, and b is an Nx1 vector. N usually ranges from 4 to something like 10. I have no problems ...
0
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0answers
32 views

Error using predict() in R: newdata has fewer rows than variables found [duplicate]

I applied the predict() function in R on the linear model for the test set, but got an error saying the variables found has more rows. In my original dataset, the training set set has 55 variables ...
0
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0answers
58 views

python non-linear least square fitting function of model array

I have a 2d model array and a 2d data array and I'm trying to fit the model to data using scipy.optimize.curve_fit. I'm not exactly sure how I can write a chi square minimization formula as a fitting ...
0
votes
0answers
58 views

Fitting a sum of exponentials in R

Not sure how to phrase this question. Hopefully this is clear, if there are any questions, please feel free to ask in the comments. EDIT: I think it's similar to this question. I'm trying to do a ...
1
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2answers
65 views

least-squares method with a constraint

I have 37 linear equations with 36 variables in the form of matrix: A x = b. (A has 37 rows and 36 columns.) The equations don't have an exact solution so I have used Matlab to find the closest answer ...
1
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3answers
86 views

How to use least squares method in Matlab?

I have 37 linear equations and 36 variables in the form of a matrix equation; A*X=B . The equations don't have an exact answer. I want to use Matlab least square method to find the answers with the ...
-2
votes
1answer
76 views

Finding parameters of model using Levenberg-Marquardt algorithm leastsq

I am trying to find parameters A,B,C to data x,y using model y= Ax^2 sin(x)/cos(x)^C + B I want to use leastsq from scipy.optimize but I've got error. Here is my attempt: x=n.array(x) y=n.array(y) ...
0
votes
1answer
84 views

get the R^2 value from scipy.linalg.lstsq

I have a fitted 3D data-set using scipy.linalg.lstsq function. I was using: # best-fit quadratic curve A = np.c_[np.ones(data.shape[0]), data[:,:2], np.prod(data[:,:2], axis=1), data[:,:2]**2] ...
4
votes
1answer
140 views

print surface fit equation in python

I'm trying to fit a surface model to a 3D data-set (x,y,z) using matplotlib. Where z = f(x,y). So, I'm going for the quadratic fitting with equation: f(x,y) = ax^2+by^2+cxy+dx+ey+f So far, I ...
0
votes
0answers
10 views

Tikhonov's equivalent to Least square proof

I was given the Tikhonov problem of estimating x from y as the unconstrained minimization. Now I need to proof the equivalency of this problem to the 2 least square problems. Try to solve by myself ...
0
votes
0answers
47 views

Least mean square optimization with a constraint in Matlab

I have a piece of code in matlab: deg = 0:57; theta = deg*pi/180; N = 16; lambda = 0.1; dxy = 0.4*lambda; nn = 1:N; y = (nn - 0.5*(N+1))*dxy; BB = [0.00 0.00 0.00 0.00 0.00 0.00 0.00 ...
0
votes
1answer
72 views

Python optimize leastsq error Result from function call is not a proper array of floats

I have array d with my data: --> d array([[ 60.41202301, 58.39997156, 55.3667636 , ..., -84.87512796, -86.79190447, -86.19353546], [ 60.10975935, 58.05402795, ...
1
vote
0answers
35 views

how to use lsqcurvefit in MatLab to solve integer constrained nonlinear inversion?

I am trying to use lsqcurvefit in MatLab to solve a problem like this: x=lsqcurvefit(@myfun,x0,xdata,ydata) where x can only be integer. It seems that the default setting makes x change in a way that ...
1
vote
3answers
106 views

Least squares for circle detection

I'm trying to perform a circle detection from a laser scan using least squares optimization over a subset of data points. Since the measurements are only obtained for a part of a circle, the least ...
1
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0answers
24 views

leastsq run but the parameters are unchanged python

I don't managed to make leastsq run with The programme etude is run 5 times but there is no change of the parameters p[0] and p[1]. I launch the etude file witch produce a file of data witch I read by ...
1
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0answers
36 views

Error in enpls.en call

I am trying to perform the enpls.en function from the enpls package in R, and I am having a hard time understanding why the function will not commence. ...
1
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0answers
30 views

MATLAB: bounding the parameter values in nonlinear modelfitting and AICc scores

I am trying to fit a number of nonlinear models to a dataset, and I need to bound the model parameter values to all be positive. I tried lsqcurvefit function and it works. However, I also need AICc ...
0
votes
1answer
44 views

How to apply the least squares method to built-in models of Levenberg-Marquardt algorithm

I am trying to apply the least squares to my data using the built-in Voigt model from lmfit. But I have to call the Minimizer class to apply the least squares method, which requires a function. ...
0
votes
0answers
41 views

How to fit straight line, when both X & Y have known errors (Java)

I'm simply trying to make a line of best fit using four data points, each with a known error in both X and Y. (In Java, using a 2D cartesian coordinate system.) I've come accross PCA and TLS several ...
0
votes
1answer
74 views

Non-Linear Fit Using GSL

So I'm trying to modify some code I found here to fit a different function, but my slightly modified version fails to converge and I don't understand why. The function I'm trying to find the least ...