Questions tagged [least-squares]

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. Questions about the theory behind least-squares should utilize the Cross Validated (https://stats.stackexchange.com/questions) Stack Exchange site.

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93 views

ground truth fit is worse than cross validated fit on noisy data?

I am having these weird results when playing around with cross validation that I would greatly appreciate to have any comments. Briefly, I have a lower mean squared error (MSE) when doing regression (...
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computing rotation and translation matrix with 3D and 2D Point correspondences

I have a set of 3D points and the correspondend point in 2D from a diffrent position. The 2D points are on a 360° panorama. So i can convert them to polar -> (r,theta , phi ) with no information ...
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SVD did not converge in Linear Least Squares

I have a problem with polyfit function. My data is: value_to_cycle_slip_x_1 = [0.0, 30.0, 60.0, 90.0, 120.0, 150.0, 180.0, 210.0, 240.0, 270.0] value_to_cycle_slip_y_1 = [1.4108499772846699, 1....
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Minimum total euclidean difference between two list of coordinates

For two lists with equal length, I'm trying to find the minimum total difference between the coordinates of each list. For example two lists are l1 = [(x1,y1),(x2,y2),(x3,y3)] l2 = [(x4,y4),(x5,y5),(...
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Python: Simultaneously fit three (high-order polynomial) functions on scipy leastsq, with constraints for each function

I have the following function I want to fit to a 3x58 array consisting of three functions: def fitfunc(p,x): pol_1 = (p[0]*x**-2.) + (p[1]*x**-1.) + (p[2]) + (p[3]*x) + (p[4]*x**2.) + (p[5]*x**3.) ...
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Use LsqFit for multi-variate output?

I wanted to fit a geometric mapping parameter with some input/output (x,y) points. The model is very simple: xp = x .+ k.*x.*(x.^2+y.^2) yp = y .+ k.*y.*(x.^2+y.^2) k is the only parameter, (x,y) is ...
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27 views

fitting a group of sigmoids with different models with least_squares()?

For a series of experiments measured at different time points, I'm trying to compare fits that fixed parameters for all experiments with fits that have an individual set of parameters per experiment, ...
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31 views

Performing Multivariate Linear Regression in C++

I am looking for a way to perform a (medium-scale*) multivariate linear regression (ordinary least-squares, OLS) in C++. Say C++11 with using std library, and if helpful also boost; if easily ...
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31 views

How to estimate coefficients for a+xb=c?

I am trying to find the right python or R package/function to approximate x in the equation a + xb = c. a, b, and c are tuples/vectors, so if I have: a = (1,2,1) b = (2,3,2) c = (5,8,5) then I ...
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How to use numy linalg lstsq to fit two datasets with same slope but different intercept?

I am trying to do weighted least-square fitting, and came across numpy.linalg.lstsq. I need to fit the weighted least squares. So, the following works: # Generate some synthetic data from the model. ...
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Python least squares fit on data

I am currently working on a scientific paper for my university and got some data on which I would like to do a regression. The data looks like this: Both, P (red) and w(blue) seem to follow a sin-...
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Why am I seeing jumps in the fitting parameter as I increase the number of data points used in the fit?

I have a question regarding non-linear fitting. I am trying fit a functional form, namely, y= (ax)/( 1 - e^(-ax) ) to a set of N data points (x_1,y_1),(x_2,y_2),...,(x_N,y_N) in order to determine a ...
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Least-squares fit multiple data sets in Python

Let's say I have 3 sets of data (data_1, data_2, data_3). I am trying to perform a least squares fit to this data with three corresponding nonlinear functions (func_1, func_2, func_3). However, these ...
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Propagation of error during solving over-determined equations with least squares method

I have some experimental data and their standard derivations. I want to calculate some dependent variables from my experimental data. The equations are over-determined systems (the number of dependent ...
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How to calculate the derivative for the weighted least square

The formula: \underset{\mathbf{W}}{\text{minimize}} \;\sum_{i=1}^{N}\beta_i(\mathbf{W} \cdot \mathbf{S}^i - T_i)^2 Formula here \beta_i is the weight of the corresponding square
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Lmfit minimization with 2 independent variables provides inappropriate result

I am trying to use limit with 2 independent (x1,x2) variables. As an equation employed modified Bass model. The result of minimization func do not represent correct estimation of 'q' parameter (...
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How to change scipy curve_fit/least_squares step size?

I have a python function that takes a bunch (1 or 2) of arguments and returns a 2D array. I have been trying to use scipy curve_fit and least_squares to optimize the input arguments so that the ...
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Why does my step-size calculation based on Wolfe&Powell return 1e-16 for least-squares function?

I am supposed to solve the least-squares problem (e.g. curve fitting) for f(t, x_1, x_2) = x_1 + e^(x_2 + t) with the dataset: [(0, 2.0),(1, 0.7),(2, 0.3),(3, 0.1)] I use a Gauss-Newton-...
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In MATLAB, How can I use 'Least Squares Solver and Jacobian' instead of 'fminunc'?

I want to use Least Squares Solver and Jacobian instead of fminunc, but I don't know what is the required changes must be done in the attached code. Can anyone help me? % System paramters: N = 2; K ...
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Fitting A sine wave without stretching it

I want to fit a sine wave without stretching it - that is I want its frequency and amplitude to remain relatively the same. So all the transformations I can make to the sine wave to fit it to my data ...
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Why does my optimization (scipy.optimize.minimize) not work and return the initial values instead?

I have a set of data; each column corresponds to a spectrum at a certain time. I want to fit the spectrum at a generic time (t_i) as a linear combination of the spectrum at time 0 (in the first column)...
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Approximation of the surface by a plane GLS

There is a surface defined by points in the form of a two-dimensional array. That is, the array indices are the x and y coordinates, and the values of the array elements are the z coordinate values of ...
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60 views

Weighted Least Squares vs Monte Carlo comparison

I have an experimental dataset of the following values (y, x1, x2, w), where y is the measured quantity, x1 and x2 are the two independet variables and w is the error of each measurement. The function ...
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113 views

Speed up Least_square scipy

How can I speed up the function least_square? We have six variables (3 orientation angles and 3 axis translation) that need to be optimized. We apply two sets of 3D points, two sets of points on the ...
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43 views

Computing least squares in python

I have the following dataframe import pandas as pd df = pd.DataFrame({ 'date': [1988, 1989, 1990, 1991], 'value1': [55, 13, 95, 80], 'value2': [155, 552, 958, 280], '...
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Broadcast error on querying the test points using coefficients obtained from lstsq

I am trying to work with numpy's lstsq. I have a trainX data set t of the shape: 400,8 and a trainY data set ty of shape: 400,1 The following statement: coff = np.linalg.lstsq(np.vstack([t,np....
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20 views

Why do we slap ones in the lstsq function of numpy?

I am trying to understand the use of lstsq function with numpy in finding the slope and intercept given the values of x and y. Going through an example in the documentation linked above with the given ...
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How to fit a model using least squares minimisation in matplotlib (python)

I am trying to fit a model to a spectrum (see below) using the least squares minimisation in matplotlib. The spectrum contains features characterised by the following curves: Since the spectrum ...
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How to solve the problem of the ValueError “expected square matrix” in a constrained minimization problem with the 'trust-constr' method in Python?

I would like to determine the coefficients of a least squares problem with the constraints that the coefficients sum up to 1 and that the coefficients are between 0 and 1. The function which is ...
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Merging 2 uncorrelated 3d point clouds (rotation, translation, scale) in Java

Problem: given two 3d point clouds (representing depth scans) with ~50k points per cloud, and a small camera offset between the two, how can I align the point clouds? I read through Finding ...
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25 views

Why doesn't Scipy's curve_fit give the correct result for the following problem(s)?

Code: from scipy.optimize import curve_fit import numpy as np from numpy import * def func(x, a, b): return ff(x,a,b) ff= lambda x,a,b: eval("1/(a*x+b)") xdata = [1 ,2, 4, 6, 8, 10] ydata = [...
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Least squares minimization for multiple variables matlab

I need to find the value of tree variables: a, b and c, by finding a global minimum for least squares method. My function is as follows: f = (1/a)*(asinh((Z(i)/b)^(1/c))^(-1) where i is the index of ...
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1answer
56 views

Numpy: Find the value needed in one equation which minimizes the error

the title is not clear, i hope to explain better here: i have the two following arrays, ep and sp with the same dimension: ep = [0.00000000e+00, 4.29973987e-05, 1.77977219e-04, 3.08940223e-04, 4....
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Finding best fit parameters for a set of equations with known uncertainties

As a follow up to another question: solve linear equations given variables and uncertainties: scipy-optimize?solve linear equations given variables and uncertainties: scipy-optimize? It appears to ...
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Relationship between correlation and coefficient?

I'm doing some projects and I'm having problem understanding correlation and coefficient correctly. I read multiple articles and I do understand what they mean but I don't understand when it comes to ...
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1answer
24 views

How to add a new column of numbers when performing least square analysis?

I am trying to perform least square analysis on some values and wanted to know how I can create a new column of squared numbers. For example, I currently have this: 1 2 1 4 1 3 1 4 1 5 1 6 I want to ...
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Covariance numbers from Jacobian Matrix in scipy.optimize.least_squares

I wanted to fit a logistic curve to some data. I used the general equation of the logistic curve to fit to my data. Find it here. def generate_data(t, A, K, C, Q, B, v): y = A+ (K-A)*((C+Q*np....
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Computing p-value from numpy.linalg.lstsq output

I am using numpy.linalg.lstsq for a very large array, and would like to compute the slope and the significance value (p-value) of the fit. Note, using scipy.stats.linregress() or pearsonr() is not an ...
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1answer
50 views

Alternating Least Square parameters tuning

Context: I am working an building a recommender system using implicit feedback (orders) using the implicit library in python. Issue: when trying to tune the parameters in order to know the best ...
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1answer
30 views

LMFIT Curve Fitting Module Sometimes doesn't show Errors

I have various spectrograms that I am trying to fit a function to. LMFIT has a composite model feature that I am using, my model is essentially a sum of Voigt or gaussian peaks against a constant ...
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1answer
27 views

Finding best weight value for smooth constrained least squares with Python?

I have a least squares problem to solve without any known estimates of a parameter. I impose the constraint that my desired solution be smooth (the model parameters vary slowly), so I minimize the ...
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43 views

Piecewise linear fit

I am trying to automate the fitting of power-spectral densities. A typical plot look like this (loglog scale) : in red is one of my attempt at fitting it. I would like to have a way to fit up to 3 ...
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how to get an array as output using scipy.leastsq?

i really need help on a code. i'm trying to translate a matlab code into python. i used lsqonlin (matlab) and got an array as an output, i tried the same with scipy.leastsq but the output was a single ...
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3answers
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Nonlinear least squares regression of skewed normal distribution in R (or any language)

First time poster. Apologize in advance if I use improper etiquette or vocabulary. I've time series data of chemical concentration (y) vs time (x) from a USGS river survey. It exhibits a skew normal ...
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1answer
24 views

Using least square to fit a parametric curve

I have a curve represented as a parametric function, z(t)=(x(t), y(t)), x=f(t), y=g(t). If I wanna find a approximate curve using least square(using polynomial funtions), am I supposed to get one for ...
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26 views

The estimators of curve_fit and ODR functions

I am trying to fit a function to a set of variables using the ODR function. The task at hand doesn’t seem to be that difficult, but the whole idea of an estimator really confuses me. I read the ...
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1answer
26 views

Determining the corresponding columns in V of singular values in Numpy SVD

I'm trying to use SVD to estimate the solution for non-square matrix of linear equations. My matrix is of the 8 x 6 shape. I calculated the following parameters using: U, sigma, VT = np.linalg....
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30 views

Low P value and Low R square

I am developing a model which can predict the amount of funding which a research institute can get from the Government. I have used Linear Regression for it. Response variable is the amount of ...
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1answer
38 views

plot least-square regression line in the log-log scale plot

I want to plot the least-square regression line for the X and Y in the log-log scale plot and find coefficients. The line function is log(Y) = a.log(X) + b equivalently, Y = 10^b . X^a. What are the ...
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1answer
80 views

Matlab fit NonlinearLeastSquares for Python

I rewrite code written in Matlab for Python and I can´t resolve correctly the fit function in Python. Code in Matlab: y = *Array 361x1*; x = *Array 361x1*; y1 = *Single value 1x1*; x1 = *Single value ...

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