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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10 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. ...
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0answers
7 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 ...
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12 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. ...
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0answers
28 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 ...
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1answer
37 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 ...
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0answers
21 views

Validated libraries to solve linear least squares in parallel?

I have a really large system to solve using linear least squares, Ax = B. The A matrix can have 2-3 million rows and 2000-3000 columns. The B matrix has same row size but with a single column. I have ...
5
votes
1answer
71 views

What is the difference between numpy.linalg.lstsq and scipy.linalg.lstsq?

lstsq tries to solve Ax=b minimizing |b - Ax|. Both scipy and numpy provide a linalg.lstsq function with a very similar interface. The documentation does not mention which kind of algorithm is used, ...
2
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2answers
64 views

scipy.optimize.curve_fit raises a runtime error

This is the first time I'm using curve_fit and I haven't found examples that would match my problem. My question is, am I using curve_fit correctly data-format-wise ? If yes then my problem is ...
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0answers
14 views

Can someone help me in defining RLS function for my code?

I am new to matlab and optimization. For my code, I am trying to optimize the cloud data with the help of RLS method. I use the following code to get cloud data. xdom = ...
-3
votes
1answer
45 views

Recursive least squares in python?

Does anybody know a simple way to implement a recursive least squares function in Python? I want a fast way to regress out a linear drift ([1 2 ... n], where n is the number of time points up until ...
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1answer
53 views

Total Least Squares algorithm in C/C++

Given a set of points P I need to find a line L that best approximates these points. I have tried to use the function gsl_fit_linear from the GNU scientific library. However my data set often contains ...
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0answers
13 views

L1 reweighed minimisation

Good evening to everybody. I have adjusted a script, for L1 reweighed minimisation (of Alexandre Gramfort https://hal.archives-ouvertes.fr/hal-01044748/). My function is the following: import numpy ...
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0answers
6 views

SPAMS. spams.lassoWeighted wrong outpt?

Goodevening to everybody. I can not understand why the function Spams.lassoWeighted give such outputs. If you run the example at their page ...
0
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0answers
32 views

kernel like least squares in matlab

Ok so I have four 2d matrix of 100x100 (lets call them A, B, C and D) and I wish to solve the system of linear equations (Y=Xt) for lets say a kernel of 3x3 (in the code below you can see that iA, ...
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0answers
22 views

Gaussian mixture code python for deblending: Issue separating smallest components

I would like to share this code and ask to improve it. Its application is focused in separating the emission lines in a gas spectrum but its basic working is very simple (The complete code is below ...
0
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1answer
40 views

least square regression model

I am wondering if someone can help me to understand the what is behind Approx and approxfun. I know that these two functions perform a linear interpolation, however I didn't find any reference on how ...
0
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0answers
31 views

Linear Least Square Optimization in Parallel, possible or not?

Hello dear matlab pros! In my program, I run three different and independent linear least squares optimizations (using the matlab function lsqlin): layersR = lsqlin(P, lightFieldVector(:, 1), [], ...
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1answer
18 views

scipy.optimize.leastsq Fitting: minpack.error

I am trying to run a code as shown below, it is a simple least square fit, for which I am hopping to get the inverted vars coefficient. import numpy as np def model(vars, x): model = ...
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0answers
37 views

Linear Algebra, how to compute least squares

The sets L1 = {P(x) = (0, x, x) : x ∈ R} and L2 = {Q(y) = (2y, y, −1) : y ∈ R} are two lines in space. (a) Choose the values of x and y that minimize the squared distance ||P(x) − Q(y)||^2 (b) If a ...
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29 views

(SOLVED) Scipy LSQSphereBivariateSpline : hanging, and how to choose knots?

I'm working on some python code to interpolate irregular data onto a 180° lat x 360° lon spherical grid. The code is currently hanging when I call the following: def ...
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0answers
87 views

UV Mapping / Least squares conformal map / mesh normalization

I have several dozen 3D points of face. I'd like to map them into 2D space. Please look how they did it on this site: http://www.cipa.dcu.ie/face3d/SP_MORPH/mesh_normalization.htm They used Least ...
2
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0answers
73 views

L1-norm regularized least-squares on Python

The L1-norm regularisation problem is defined as the following: minimize || A*x - b ||_2^2 + || x ||_1 but in my case instead of this usual L1 -norm regularised least-square problem i want to ...
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2answers
137 views

NumPy ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() leastsq

from sympy import * from scipy import * from scipy.integrate import quad import scipy.optimize as optimize import numpy as np import collections import math from scipy.optimize import leastsq file= ...
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3answers
96 views

how do I use least square algorithm to match two data sets through a linear equation in Python

I have two one-dimensional vectors. One contains data measured through a measurement system. The other vector contains a sort of calibration data, which are exactly the same in a 'shape' and a time ...
2
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0answers
30 views

Java: Time Series Ordinary Least Squares

I have some problems with the OLS using the The Apache Commons Mathematics Library. I have got a time series y and I would like to fit a least squares trend line to the first 26 observations. This is ...
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44 views

Least squares of parabola in c#

I want to apply Least squares method for a set of 2D points f(x)=Ax^2+Bx+C. I am using C# and not allowed to use 3rd party or any external code. Can you please help me in finding a function that ...
0
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0answers
50 views

C++: Minimization Using Levenberg Marquardt to Solve for Two Variables

I am trying to solve this equation using C++: X and Y are both given sets of data. X = [x1, x2, ... , xn], Y = [y1, y2, ... , yn] a is a given integer. The goal is to find a pair z and k that ...
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1answer
36 views

Least Squares Solution and Distance in Matlab

Find the least squares solutions of the systems Ax=b and Ax=c. If x is the least squares solution of Ax=b, find the L2 distance of Ax from b. Similarly, if x is the least squares solution of Ax=c, ...
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1answer
75 views

Trouble with least squares in Python

I am working on a project analyzing data and am trying to use a least squares method (built-in) to do so. I found a tutorial that provided code as an example and it works fine: x = arange(0, 6e-2, ...
0
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1answer
34 views

Best work allocation (least square method) in Ruby

I have a list of tasks. Each of them has a name and the time required to complete. Example: [TaskA, 4 hours], [TaskB, 8 hours], [TaskC, 10 hours] I would like to assign these tasks to specific ...
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88 views

least squares linear classifier - three classes matlab example

I am trying to understand how to implement a least square linear classifier for my dataset. The issue is that I have 3 classes and I am not sure how to get this done... Here is a try. This works for ...
0
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2answers
94 views

Rotated Paraboloid Surface Fitting

I have a set of experimentally determined (x, y, z) points which correspond to a parabola. Unfortunately, the data is not aligned along any particular axis, and hence corresponds to a rotated ...
2
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1answer
52 views

least squares with seasonal component in matlab

I was reading a paper which looked at investigating trends in monthly wind speed data for the past 20 years or so. The paper uses a number of different statistical approaches, which I am trying to ...
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0answers
33 views

Determining linear independency among lags of a vector for example between x(n-1) and x(n-2) using least square fitting methods

I need to find the linear independence using x(n-1) to fit x(n-2) using least square method and calculating the error between x(n-2) and the estimated vector. This is my code to find lags of the X(n) ...
0
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1answer
89 views

Linear fit with errors on x and y

Using python, I am trying to find the equation of a line that best fits my data. However, I have errors on the x and y data points. Note that my errors are not symmetric. Here is what my data points ...
2
votes
1answer
72 views

least square estimation in python using numpy and scipy

Both scipy and numpy has least square estimation but I got slightly confused after reading the documentation. So, my problem is classical regression where I am trying to find the best matrix ...
1
vote
1answer
65 views

Broadcasting issues with numpy.linalg.lstsq

I am working on some image analysis algorithm and am trying to use numpy for doing a least square fitting. To illustrate what I am trying to do, I have generated a very simple test case: A = ...
2
votes
1answer
105 views

Principal Component Analysis w/ Alternating Least Squares for Missing Data

In MATLAB R2014b there is a new function, pca(), that performs PCA that can handle missing data. In the documentation it says that it performs pca with the "alternating least squares" algorithm in ...
0
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0answers
43 views

Minimization distinction translations in 2 directions

I would like to do a minimization and so determine some parameters and one which represent some translations. But i have translations in X and Y directions. I would like to know if it s possible to ...
0
votes
0answers
74 views

computed an optimized span parameter for pandas.moments.ewma function using scipy.optimize.leastsqr

i run the following code to find the best span value when running exponentially weighted moving average on my dataset : import scipy as sp import numpy as np import pandas as pd import datetime as dt ...
0
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0answers
37 views

why does plsRglm coeffs results not match with bootYX coefficient?

I am using plsRglm to run PLS model. Below I provide a sample script with reproducible dataset. set.seed(101) x1 <- c(1,2,3,4,5,4,3,2,4,5,1,2,2,3,3,3,3,2,2,3) x2 <- (x1+20)*5 x3 <- runif(20, ...
2
votes
0answers
58 views

Intel MKL Error with Gaussian Fitting in Python?

I'm doing a Monte Carlo simulation in Python in which I obtain a set of intensities at certain 2D coordinates and then fit a 2D Gaussian to them. I'm using the scipy.optimize.leastsq function and it ...
2
votes
0answers
74 views

least square fitting to complex numbers in python with errors

Apologies here is the code. I am trying to fit a Bessel function to some 2D data, the Bessel function is complex. However when I fit the data I always end up with an array error, which I cannot sort ( ...
0
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0answers
78 views

matlab linear least squares of matrices

Given the equation of perspective projection of a set of 3D points in an image: lambda_ij * x_ij = P_i * X_j; how can one estimate the optimal values of lambda matrix using linear least squares ...
1
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1answer
47 views

Least square optimisation with two non-linear equal constraints

I am looking for a way to solve the optimisation problem with two non-linear equal constraints. My cost function is E = 0 for n in range(1, N): E += (np.linalg.norm((x[:, i] - o - np.dot(x[:, ...
0
votes
1answer
56 views

Solving linearised least squares using statsmodels

I'm trying to translate a simple linearised least squares problem to statsmodels, in order to learn how to use it for iterative least squares: The (contrived) data comprise measurements of the time ...
2
votes
1answer
202 views

MATLAB curve fitting - least squares method - wrong “fit” using high degrees

Anyone here that could help me with the following problem? The following code calculates the best polynomial fit to a given data-set, that is; a polynomial of a specified degree. Unfortunately, ...
0
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0answers
87 views

How can I fit a bounding (semi-)ellipsoid to a cluster of 3D data points?

I have a dataset of 3D points, which are arranged in clusters resembling a (semi-)ellipsoidal shape. When I try standard ellipsoid fitting as, e.g. implemented in the MATLAB function ...
0
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0answers
72 views

Python Scipy least square function for multi-dimensional data

I am writing to ask a question about using scipy.leastsq with 3D dataset. First, my model is a helix as P_{t} = R*[r*cos(a*t+b), r*sin(a*t+b), m*t+n]+T where R is a rotation matrix, T is a ...
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78 views

SciPy Leastsq implementation issue

I am using the code below to implement a least sqaures fit of my model vs some experimental data. The program just keeps running and it seems there is something wrong with my implementation but I am ...