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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17 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 ...
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18 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 ...
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1answer
32 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 ...
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1answer
29 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 ...
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0answers
26 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 ...
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2answers
41 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 ...
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1answer
43 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?
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1answer
53 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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1answer
36 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. ...
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28 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
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1answer
78 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 ...
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0answers
20 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 ...
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50 views

Optimal fit of a function using least squares method

I am Trying to obtain optimal fit of a function. To achieve the optimal fit the use R2 criteria is used as a controlling mechanism to determine when a window of data has achieved a suitable fit. The ...
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1answer
55 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 ...
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2answers
77 views

Nonlinear fitting function using matlab

I need to fit the curve that you can see in the image, that comes out from a lot of Monte Carlo simulations. I've also uploaded the data to fit in a txt file. I've tryied to fit the curve with a ...
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1answer
53 views

piece-wise linear curve fitting with MATLAB

In my experiment, I need to approximate or fitting a measurement y = f_m(x) with n linear segments. Value of n can be selected to be 1, 2, 3, 4, 5... and probably less than 10. For clarity, it's good ...
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0answers
69 views

Unnormalization of ellipse coefficients after direct ellipse fitting

I am trying to understand the normalization and "unnormalization" steps in the direct least squares ellipse fitting algorithm developed by Fitzgibbon, Pilu and Fisher (improved by Halir and Flusser). ...
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3answers
86 views

Sine wave least squares curve fitting possible (using GSL)?

Is it possible to fit an A*sin(B*t+C) function with GSL or a similar library? i want to get the A and C parameter of a sine wave present in 4096 samples (8bit) and can provide an good approximation ...
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1answer
55 views

IBM ILOG CPLEX 12 with matlab, specify custom objective function

I am very new to using IBM CPLEX , and am using CPLEX with Matlab. I was wondering how to compile a custom objective function in CPLEX using Matlab. The objective function is as follows: Here aj is ...
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2answers
129 views

linear equation system, least squares with constraints

i try to describe the preconditions first i have a number of images/matrices that can be imagined to be layers in an image manipulation program. these layers be will be added to form the final ...
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1answer
76 views

least squares curve fitting

I have a set of distances x=c*r/rs array([ 0.09317335, 0.1863467 , 0.27952006, 0.37269341, 0.46586676, 0.55904011, 0.65221346, 0.74538682, 0.83856017, 0.93173352, 1.02490687, ...
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1answer
37 views

Optimize Function - use array as input

I am playing with SciPy today and I wanted to test least square fitting. The function malo(time) works perfectly in returning me calculated concentrations if I put it in a loop which iterates over an ...
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2answers
74 views

Scipy leastsq: fitting a square grid to experimental points in 2D

I'm trying to use Scipy leastsq to find the best fit of a "square" grid for a set of measured points coordinates in 2-D (the experimental points are approximately on a square grid). The parameters of ...
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1answer
37 views

'args not defined' error from leastsq function

I tried fitting a function to data from a matrix synthData in the form of arrays synthData[0,:], synthData[1,:], and the y-values synthData[2,:]. But the following snippet returns "name 'args' not ...
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1answer
155 views

How to do linear regression, taking errorbars into account?

I am doing a computer simulation for some physical system of finite size, and after this I am doing extrapolation to the infinity (Thermodynamic limit). Some theory says that data should scale ...
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2answers
79 views

Ceres Solver: unable to disable logging (google glog)

I'm using ceres solver for a project, and when I call the ceres::Solve function, the library starts to output lines such as this one: iterative_schur_complement_solver.cc:88 No parameter blocks left ...
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1answer
83 views

least squares minimisation fortran 77

Trying to get a one-parameter least squares minimisation working in fortran77. Here's the code; it compiles and seems to work except....it gets caught in an infinite loop between values of h1= 1.8E-2 ...
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69 views

confidence intervals or SE of gls {nlme} predicted values

I'm running a multivariate gls model: m <- gls(y ~ x + factor1 + factor2, cor = corPagel(1,phylogeny), weight= ~1/log(n)) I want to plot the results and I could get predicted values like this: ...
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2answers
83 views

Least Squares Algorithm doesn't work

:) I'm trying to code a Least Squares algorithm and I've come up with this: function [y] = ex1_Least_Squares(xValues,yValues,x) % a + b*x + c*x^2 = y points = size(xValues,1); A = ones(points,3); ...
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1answer
108 views

Find approximation of sine using least squares

I am doing a project where i find an approximation of the Sine function, using the Least Squares method. Also i can use 12 values of my own choice.Since i couldn't figure out how to solve it i thought ...
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votes
1answer
120 views

MATLAB: Approximate tomorrow's temperature with 2nd, 3rd and 4th polynomial using the Least Squares method

The following is Exercise 3 of a Numerical Analysis task I have to do as part of my university course on the subject. Find an approximation of tomorrow's temperature based on the last 23 values ...
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42 views

Weka 3.6.10 PLS Beta Matrix

I am using Weka 3.6.10 (in the Explorer) to run a partial least squares model on a time series data set (specifically I am using the PLSClassifier, PLS1 algorithm). When I run the classifier I see ...
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1answer
83 views

Numpy Leastsq fitting returning unchanged inital guess in all cases

I am attempting to fit a function using Leastsq to fit to a few relevant points in an fft. The issue at hand is that, no matter how good or bad the fit is, there is absolutely no change in the ...
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1answer
167 views

How to implement regularized least squares in matlab

I am trying to implement in Matlab the paper Reducing boundary artifacts in image deconvolution available here. The problem I am running into is that I don't know how to implement in matlab the ...
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1answer
227 views

How can I do a least squares fit in python, using data that is only an upper limit?

I am trying to perform a least squares fit in python to a known function with three variables. I am able to complete this task for randomly generated data with errors, but the actual data that I need ...
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1answer
39 views

Can someone explain why the error and filtered signals are switching alternatively with Least mean square adaptive filtering

I have been working out from a longtime on adaptive filtering with leastmean square method but was unable to get the right way for the LMS implementation. I implemented the following considering each ...
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0answers
85 views

Need suggestions for removing motion artifacts using adaptive filtering algorithm of least mean square in Matlab

I am working with acquirng pulse signals into matlab and each pulse signal contians 500 samples and each pulse signals coming into matlab through serial termianl is sampled at 500Hz at the ...
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0answers
231 views

adaptive filtering of Recursive least mean square

I am working with the pusleMeter project to measure the pulse signals. So,I am using the adaptive filtering of Recursive least mean square for removing the noise(motion artifacts similar to motion ...
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1answer
63 views

Lasso on sklearn does not converge

When I run something like import numpy from sklearn import linear_model A= #something b= #something clf=linear_model.Lasso(alpha=0.015, fit_intercept=False, tol=0.00000000000001, ...
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1answer
65 views

How to solve this linear equation with constraint?

I have a1,a2,a3,b1,b2,b3 as known value, so I can list two equations as below. However, this is not enough to get H solved. So, there is additional constraint || H || = 1. matrix H = [x y z]^T [a1, ...
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0answers
12 views

Getting standard errors from Gaussian fits using scipy leastsq [duplicate]

I have multiple sets of data of wavelength vs flux for fitting multiple Gaussians from spectra using the residuals and least square method. I am wondering how to get standard errors for my fitted ...
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0answers
26 views

Example of a linear squares with structured matrix

I'm looking for an idea for a non-theoretical application which is based on (or reduces to) solving a linear least squares problem (minimize ||Ax-b||), where A is a structured matrix, for example a ...
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1answer
538 views

How to use Matlab for non linear least squares Michaelis–Menten parameters estimation

I have a set of measurements and I started making a linear approximation (as in this plot). A linear least squares estimation of the parameters V_{max} and K_{m} from this code in Matlab: ...
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1answer
83 views

It Matlab, how do you mathematically get a quadratic line of best fit?

I'm having trouble getting a quadratic line of best fit in Matlab. We aren't aloud to use the built in line of best fit functions, but instead have to calculate it. This is what I have: dat = ...
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1answer
541 views

MATLAB: Piecewise function in curve fitting toolbox using fittype

Ignore the red fitted curve first. I'd like to get a curve to the blue datapoints. I know the first part (up to y~200 in this case) is linear, then a different curve (combination of two logarithmic ...
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0answers
80 views

least square minimisation in MATLAB

I'm trying to fit a curve in MATLAB to a data set I have and am trying to get a least squares minimisation. The curve is a convolution of a Gaussian and an exponential function so I've used a for ...
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1answer
159 views

Assertion failure multiplying Eigen matrices

I am writing a c++ program for least square leaner regression problem in interpolation. I use Eigen for matrix operations. The problem I am getting is when I run the program it shows an error ...
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2answers
132 views

Polynomial Fit force first degree to zero

i found good code to do some polynomial least squares fitting based on GSL. i am using it with 3 degrees: y = Cx² + Bx + A. In my application i know that A must be zero. Is it possible to change the ...
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1answer
48 views

Least-square fit with Google Script

I would like to solve a least-square optimization problem using Google Script. Is there a way to solve such mathematical optimization problems with Google Apps Script? Are there APIs or services to ...
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1k views

How to use leastsq function from scipy.optimize in python to fit both a straight line and a quadratic line to data sets x and y

How would i fit a straight line and a quadratic to the data set below using the leastsq function from scipy.optimize? I know how to use polyfit to do it. But i need to use leastsq function. Here are ...