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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Partial Least Squares Library

There was already a question like this, but it was not answered, so I try to post it again. Does anyone know of an open-source implementation of a partial least squares algorithm in C++ (or C)? Or ...
12
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1answer
1k views

Graphing perpendicular offsets in a least squares regression plot in R

I'm interested in making a plot with a least squares regression line and line segments connecting the datapoints to the regression line as illustrated here in the graphic called perpendicular offsets: ...
11
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4answers
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Non-linear Least Squares Optimization Library for C

I'm looking for a library in C that will do optimization of an objective function (preferrably Levenberg-Marquardt algorithm) and will support box constraints, linear inequality constraints and ...
9
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1answer
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How can I calculate a trend line in PHP?

So I've read the two related questions for calculating a trend line for a graph, but I'm still lost. I have an array of xy coordinates, and I want to come up with another array of xy coordinates ...
8
votes
3answers
5k views

Python: two-curve gaussian fitting with non-linear least-squares

My knowledge of maths is limited which is why I am probably stuck. I have a spectra to which I am trying to fit two Gaussian peaks. I can fit to the largest peak, but I cannot fit to the smallest ...
8
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2answers
10k views

R draw (abline + lm) line-of-best-fit through arbitrary point

I am trying to draw a least squares regression line using abline(lm(...)) that is also forced to pass through a particular point. I see this question is related, but not quite what I want. Here's an ...
7
votes
2answers
3k views

Calculating the null space of a matrix

I'm attempting to solve a set of equations of the form Ax = 0. A is known 6x6 matrix and I've written the below code using SVD to get the vector x which works to a certain extent. The answer is ...
7
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3answers
672 views

Tools for sparse least squares regression

I want to do sparse high dimensional (a few thousand features) least squares regression with a few hundred thousands of examples. I'm happy to use non fancy optimisation - stochastic gradient descent ...
6
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1answer
4k views

How can I perform a least-squares fitting over multiple data sets fast?

I am trying to make a gaussian fit over many data points. E.g. I have a 256 x 262144 array of data. Where the 256 points need to be fitted to a gaussian distribution, and I need 262144 of them. ...
6
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1answer
3k views

Chi square numpy.polyfit (numpy)

Could someone explain how to get Chi^2/doF using numpy.polyfit?
6
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3answers
2k views

Two stage least square in R

I want to run a two stage probit least square regression in R. Does anyone know how to do this? Is there any package out there? I know it's possible to do it using Stata, so I imagine it's possible to ...
6
votes
2answers
2k views

Solving an overdetermined constraint system

I have n real number variables (don't know, don't really care), let's call them X[n]. I also have m >> n relationships between them let's call them R[m], of the form: X[i] = alpha*X[j], alpha ...
6
votes
1answer
352 views

Curvature estimation from image

I have images like this ones: In this images the red line is what I want to get from the image. Original images do not have that red lines, but only that green road. What I want is to estimate ...
5
votes
3answers
10k views

function for weighted least squares estimates

Does R have a function for weighted least squares? Specifically, I am looking for something that computes intercept and slope. Data sets 1 3 5 7 9 11 14 17 19 25 29 17 31 19 27 31 62 58 35 29 21 ...
5
votes
1answer
999 views

Least square method in python [closed]

I have two lists of data, one with x values and the other with corresponding y values. How can I find the best fit? I've tried messing with scipy.optimize.leastsq but I just can't seem to get it ...
5
votes
2answers
3k views

Fitting a line that passes through the origin (0,0) to data

I have a set of points (x,y) and I need to find the line of best-fit that passes through the origin using MATLAB.
5
votes
3answers
2k views

trying to get reasonable values from scipy powerlaw fit

I'm trying to fit some data from a simulation code I've been running in order to figure out a power law dependence. When I plot a linear fit, the data does not fit very well. Here's the python ...
5
votes
3answers
2k views

Orthogonal regression fitting in scipy least squares method

The leastsq method in scipy lib fits a curve to some data. And this method implies that in this data Y values depends on some X argument. And calculates the minimal distance between curve and the data ...
5
votes
1answer
912 views

Lorentzian scipy.optimize.leastsq fit to data fails

since I took a lecture on Python I wanted to use it to fit my data. Although I have been trying for a while now, I still have no idea why this is not working. What I would like to do: take one ...
5
votes
2answers
2k views

Exponential decay curve fitting in numpy and scipy

I'm having a bit of trouble with fitting a curve to some data, but can't work out where I am going wrong. In the past I have done this with numpy.linalg.lstsq for exponential functions and ...
5
votes
2answers
1k views

Linear Least Squares Fit of Sphere to Points

I'm looking for an algorithm to find the best fit between a cloud of points and a sphere. That is, I want to minimise where C is the centre of the sphere, r its radius, and each P a point in my ...
4
votes
2answers
593 views

Splines inside nonlinear least squares in R

Consider a nonlinear least squares model in R, for example of the following form): y ~ theta / ( 1 + exp( -( alpha + beta * x) ) ) (my real problem has several variables and the outer function is ...
4
votes
2answers
4k views

Need to fit polynomial using chebyshev polynomial basis

I have been fitting linear least-squares polynomials to data using the polyfit function in matlab. From what I read, this uses standard polynomial basis (monomial basis). I have read that using ...
4
votes
2answers
158 views

how do I find out how many arguments a lambda function needs

I'm trying to create a function that will do a least squares fit based on a passed in lambda function. I want to create an array of zeroes of length equal to that of the number of arguments taken by ...
4
votes
7answers
6k views

Fitting an ellipsoid to 3D data points

I have a large set of 3D data points to which I want to fit to an ellipsoid. My maths is pretty poor, so I'm having trouble implementing the least squares method without any math libraries. Does ...
4
votes
3answers
1k views

Ruby Library for doing Linear or NonLinear Least Squares Approximation?

Is there a Ruby library that allows me to do either linear or non-linear least squares approximation of a set of data. What I would like to do is the following: Given a series of [x,y] data points ...
4
votes
2answers
2k views

Fit points to a plane algorithms, how to iterpret results?

Update: I have modified the Optimize and Eigen and Solve methods to reflect changes. All now return the "same" vector allowing for machine precision. I am still stumped on the Eigen method. ...
4
votes
2answers
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Use of curve_fit to fit data

I'm new to scipy and matplotlib, and I've been trying to fit functions to data. The first example in the Scipy Cookbook works fantastically, but when I am trying it with points read from a file, the ...
4
votes
1answer
3k views

Least squares circle fitting using MATLAB Optimization Toolbox

I am trying to implement least squares circle fitting following this paper (sorry I can't publish it). The paper states, that we could fit a circle, by calculating the geometric error as the euclidean ...
4
votes
2answers
540 views

R script - NLS not working

I have 5 (x,y) data points and I'm trying to find a best fit solution consisting of two lines which intersect at a point (x0,y0), and which follow these equations: y1 = (m1)(x1 - x0) + y0 y2 = ...
4
votes
2answers
791 views

MATLAB: Running a function from a previous version

EDIT: Thank you @yoda and @morispaa. You are both right and @morispaa's solution works, i.e. my processing of the transformed coefficients, which is based on assumptions about the space spanned by Z, ...
4
votes
2answers
611 views

Algorithm for calculating the sum-of-squares distance of a rolling window from a given line function

Given a line function y = a*x + b (a and b are previously known constants), it is easy to calculate the sum-of-squares distance between the line and a window of samples (1, Y1), (2, Y2), ..., (n, Yn) ...
4
votes
2answers
2k views

C# Algebra Linear Library

I'm looking for a C# linear algebra library. I wan't to solve a homogeneous linear system with least squares minimization. I've been trying to use some librarys but I was just able to find the ...
4
votes
1answer
312 views

Scipy leastsq() function overhead

I am working on an image analysis program and I have narrowed down my bottleneck to attempts to fit a 2D gaussian to a small window (20x20) pixels many times. 90% of the execution time is spent in ...
4
votes
4answers
716 views

Plotting data and doing a least squares regression with cosines in java

I have data I would like to plot, and more importantly, do a least squares regression on using cosines (instead of using polynomials): Any recommendations? Thanks.
4
votes
1answer
515 views

User defined Jacobian pattern in MATLAB's lsqnonlin being ignored

I am using MATLAB's lsqnonlin function, and I am attempting to set a user-defined Jacboian pattern via the option JacobPattern. I set a preference for the trust-region-reflective algorithm to be used, ...
3
votes
4answers
373 views

Optimizing repetitive estimation (currently a loop) in MATLAB

I've found myself needing to do a least-squares (or similar matrix-based operation) for every pixel in an image. Every pixel has a set of numbers associated with it, and so it can be arranged as a ...
3
votes
4answers
1k views

Fit simulated and experimental data points with Python

I have written some code which performs a Monte Carlo simulation and produces curves of signal intensity versus time. The shape of such a curve depends on various parameters, two of which my ...
3
votes
2answers
1k views

Problem with scipy.optimize.fmin_slsqp when using very large or very small numbers

Has anybody ever encountered problems with fmin_slsqp (or anything else in scipy.optimize) only when using very large or very small numbers? I am working on some python code to take a grayscale image ...
3
votes
2answers
2k views

How to compute minimal but fast linear regressions on each column of a response matrix?

I want to compute ordinary least square (OLS) estimates in R without using "lm", and this for several reasons. First, "lm" also computes lots of stuff I don't need (such as the fitted values) ...
3
votes
2answers
3k views

Constrained least-squares estimation in Python

I'm trying to perform a constrained least-squares estimation using Scipy such that all of the coefficients are in the range (0,1) and sum to 1 (this functionality is implemented in Matlab's LSQLIN ...
3
votes
2answers
3k views

k-means return value in R

I am using the kmeans() function in R and I was curious what is the difference between the totss and tot.withinss attributes of the returned object. From the documentation they seem to be returning ...
3
votes
2answers
2k views

pseudo inverse of sparse matrix in python

I am working with data from neuroimaging and because of the large amount of data, I would like to use sparse matrices for my code (scipy.sparse.lil_matrix or csr_matrix). In particular, I will need ...
3
votes
5answers
568 views

Rating the straightness of a line

I have a data set that defines a set of points on a 2-dimensional Cartesian plane. Theoretically, those points should form a line, but that line may be perfectly horizontal, perfectly vertical, and ...
3
votes
5answers
863 views

numpy: code to update least squares with more observations

I am looking for a numpy-based implementation of ordinary least squares that would allow the fit to be updated with more observations. Something along the lines of Applied Statistics algorithm AS 274 ...
3
votes
3answers
7k views

fast & efficient least squares fit algorithm in C?

I am trying to implement a linear least squares fit onto 2 arrays of data: time vs amplitude. The only technique I know so far is to test all of the possible m and b points in (y = m*x+b) and then ...
3
votes
2answers
13k views

How do I use the least squares approximation in MATLAB?

For a homework assignment in linear algebra, I have solved the following equation using MATLAB's \ operator (which is the recommended way of doing it): A = [0.2 0.25; 0.4 0.5; 0.4 0.25]; y = [0.9 ...
3
votes
1answer
1k views

Weighted linear least squares in OpenCV

OpenCV's cvSolve can solve a linear least-squares problem like this: // model: y = a1*x1 + a2*x2 + a3 CvMat *y = cvCreateMat(N, 1, CV_64FC1); CvMat *X = cvCreateMat(N, 3, CV_64FC1); CvMat *coeff = ...
3
votes
2answers
2k views

matlab - two variables least squares function approximation

I have a function of two variables of the type: y = f(x1,x2) to be approximated and I would like to use least squares method to do it. Polyval and Polyfit work with two-dimensional function, here I ...
3
votes
1answer
192 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 ...