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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1answer
39 views

Automatically find the scaling factor of the x-axis using LsqFit (or other method)?

I have the following data: a vector B and a vector R. The vector B is the "independent" variable. For this pair, I have two data sets: One is an experimental measurement of Bex, Rex and the other is a ...
0
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0answers
11 views

Fitting a rectangle to a set of data points using least squares method

I've been given a set of data points (2D) and I'm trying to fit the best rectangle that covers as many of these points as possible while minimizing the distance between the points outside the ...
-1
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1answer
38 views

Change number of parameters in a function and in the least square (global fitting)

I would like to make a global fitting of a set of data. the equation has 5 parameter (r1 r2 dw pop kex). If I do a individual fit I will have these parameter to fit for 1 input file and this is ok, I ...
1
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1answer
46 views

Cython/numpy vs pure numpy for least square fitting

A T.A at school showed me this code as an example of a least square fitting algorithm. import numpy as np #return the coefficients (a0,..aN) of the fit y=a0+a1*x+..an*x^n #with associated sigma dy #x,...
6
votes
3answers
27 views

LASSO with $\lambda = 0$ and OLS produce different results in R glmnet

I expect LASSO with no penalization ($\lambda=0$) to yield the same (or very similar) coefficient estimates as an OLS fit. However, I get different coefficient estimates in R putting the same data (x,...
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3answers
45 views

Fit fixed rectangle to set of points

i was wondering if someone every tried to fit a rectangle with a fixed size to a given set of points. Imagine you have a set of points which is unsorted and not always showing a full hull of a ...
1
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1answer
50 views

plane fitting with normalized coefficients

I am Trying to fit 3d-points to a plane in 2.5d/3d using scipy.optimize.leastsq. I am trying to minimize the function: ax + by + c - z When I add noise to the planes I'm generating, I am starting ...
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0answers
26 views

Matlab : Help in applying Least Mean Square learning algorithm in classifying features

I have inputs that were real valued. I then normalized them to a range [0,1] and binarized using the solution given in the earlier Question Proper way to scale feature data The features are from the ...
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0answers
18 views

two dimenstional least squares fitting using scipy.odr

I'm trying to do a least-squares analysis on a complicated surface using scipy.odr, and the script isn't generating any errors, but it's failing to produce anywhere near the correct values. In fact, ...
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0answers
34 views

Python - Levenberg-Marquardt algorithm implementation

I m trying to implement a Levenberg-Marquart on python to identify 2 material parameters via Finite Elements calculations and full-field measurements as called FEMU (Finite Elements Model Updating). ...
1
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1answer
78 views

Arduino: float function returns inf

I have a function (shown below) that I need some advice on. The function returns the slope of a line which is fit (via the least squares method) to n data points. To give you a context, my project is ...
1
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1answer
70 views

Serial vectorial subtraction in Python or “subtractive convolution”?

First of all, I would like to apologize for the unclear title of the question: the reason is I couldn't identify the mathematical process at work. Here is the situation in a nutshell: I have two ...
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0answers
683 views

How to calculate a projection matrix for nonnegative constrained least squares?

Suppose we have a data vector z in R^p and a training data matrix X in R^(p*N), where N (N>p) is the number of samples in the training data matrix. If we'd like to find the projection of z to the ...
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votes
1answer
100 views

How to retrieve outliers from ceres solver result?

I try to compare images using method similar to Features2D + Homography to find a known object but replace findHomography() by self-writed findAffine() function. I use Ceres Solver to obtain ...
1
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2answers
93 views

Least Square for Circle in c++

I should find this çember equation and I wrote a four code for this, but they half code not completed (I cant complete it :() First of all I wrote a code for finding these black points coordinate : ...
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0answers
13 views

Creating an objective function for lsqnonlin to find constants in equation

I am trying to write an objective function in Matlab to find a, b and c in the below equation given k values of t, with n being the number of variables. I want to use the Levenberg-Marquardt method ...
0
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1answer
48 views

Fit a Circle by Least Square Method

Hi I want to find a circle by least square methhod with lots of point I wrote this code, but it isn't work and no error message (My code has a function which FittingCircle I think my function (...
0
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0answers
33 views

how can I embed the least-means-square algorithm in a 5x5x5 tic tac toe field?

I had to create a learning algorithm for a 5x5x5 tic tac toe game. I thought I made it but I'm not very used to this topic. The weights are very weird in the end and the results are very bad. Code: ...
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0answers
20 views

Find Affine Transformation with multipule points

I recently tried writing a matlab code that gives me an affine transformation corresponding to two sets of points. Before i show you my code, just a couple of things to note: 1. There are more than 3 ...
2
votes
1answer
156 views

Difference in Differences in Python + Pandas

I'm trying to perform a Difference in Differences (with panel data and fixed effects) analysis using Python and Pandas. I have no background in Economics and I'm just trying to filter the data and run ...
2
votes
1answer
50 views

How to deal with non-invertible matrix in multi-polynomial regression

I have stumbled upon a problem in cross-sectional regression in R using matrix-multiplication. New to R, with limited experience in statistics, have not been able to solve this myself - so grateful ...
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0answers
27 views

Get Least Square Estimator in R

I have a problem of finding least square estimator. The background is: `v = beta3*(1 - exp(1 - k_star/k))` `k_star = 1/(beta0 + beta1*v + beta2*v^2)` I want to get the least square estimators, see ...
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0answers
16 views

Having trouble using scipy module [duplicate]

Trying to use the scipy module and it wont import to IDLE. Could anyone link a binary distribution of IDLE, i.e. something I won't have to build. I just need to use the optimization package to do a ...
2
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0answers
96 views

How to use the “Least square method” in Python

I need to determine the values of ceofficients in my equation. For that I decided to use the least square method. The equation is presented below: The equation presents a connection between stress ...
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1answer
23 views

Why is SVD applied on Linear Regression

I cannot understand on these slides why is the SVD applied to the Least Square Problem? And then it follows this: And here I don't understand why was the Derivative of the Residuals taken, and is ...
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0answers
22 views

Running multiple OLS regressions with matrix algebra in R

I am having trouble running multiple regressions in R. I have a matrix of returns, which have to be regressed against a vector. To be clear, I have a matrix of 1794 assets, which each, individually, ...
0
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1answer
73 views

“Incompatible Dimensions” using lstsq with Python's numpy

First my code: import numpy as np def square(list): return [i ** 2 for i in list] def multLists(x, y): return x * y def main(): x = np.array([1.02, 0.95, 0.87, 0.77, 0.67, 0.55, 0.44, ...
0
votes
1answer
31 views

solving lower triangular matrix using least square fashion matlab [duplicate]

May I ask about the difference of solving for x in these 2 following ways in Matlab : Way 1: x = A\b Way 2: x = inv((A.').*A)*(A.'*b) (p.s: the inverted matrix is invertible) I think these two ...
1
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1answer
35 views

Scipy's leastsq with complex numbers

I'm trying to use scipy.optimize.leastsq with complex numbers. I know there are some questions about this already but I still can't get my simple example working, which is complaining about casting ...
1
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1answer
45 views

Python: optimize.leastsq. ValueError: The truth value of an array with more than one element is ambiguous

Everything work except for the last line. My goal is to calculate the best fit through the chi-squared test. There is something wrong with the application of leastsq function. z,d and d_err are ...
0
votes
1answer
20 views

Finding the gradient and interception point in Matlab

I have a problem finding the interception point from a log-log plot in Matlab using the "least square method". I have the following in Matlab: a=[69.5;94.5;128.5]; b=[11.12;10.21;9.34]; loglog(a,b) ...
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0answers
35 views

Determine Regression Coefficients with Least Square Means in SAS?

If I have the following table of least square means estimates: can I compute regression coefficients for x1, x2 and x3 as follows: coefficient for x1: b1 = 6.1426 - 8.1241 coefficient for x2: b2 ...
2
votes
2answers
145 views

2D fit of a model to an image in Python

I want to fit a model (here a 2D Gaussian but it could be something else) with an image in Python. Trying to use scipy.optimize.curve_fit I have some questions. See below. Let's start with some ...
0
votes
1answer
27 views

Implementing a Least Squares Kernel classifier

I am trying to find the equation I would need to use in order to implement a Least Squares Kernel classifier for a dataset with N samples of feature length d. I have the kernel equation k(x_i, x_j) ...
0
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0answers
27 views

Matlab: finding optimal value with 3 constraints

The model I am using relies on a function, f(r), in which A and p are constants. My task is to find the values of A and p that allow accurate reproduction of experimental data. Using a nested loop ...
1
vote
1answer
80 views

Multivariate Optimization - scipy.optimize input parsing error

I have the above rgb image saved as tux.jpg. Now I want to get the closest approximation to this image that is an outer product of two vectors I.e of the form A·BT. Here is my code - #load ...
1
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3answers
153 views

My example shows SVD is less numerically stable than QR decomposition

I asked this question in Math Stackexchange, but it seems it didn't get enough attention there so I am asking it here. http://math.stackexchange.com/questions/1729946/why-do-we-say-svd-can-handle-...
0
votes
1answer
52 views

Least square methods: normal equation vs svd

I tried to write my own code for linear regression, following the normal equation that beta = inv(X'X)X'Y. However, the square error is much bigger than the lstsq function in numpy.linalg. Could ...
0
votes
0answers
23 views

Quantify general quality of custom fit with Scipy.optimize.leastsq

I stumbled upon a fit function in this answer using scipy.optimize.leastsq combined with a montecarlo simulation to fit a nonlinear model to some data. The reason for this approach is, that the ...
0
votes
0answers
27 views

Multiple Regression Code

I initially asked this question as a follow up to a previous question that I asked here:Linear Regression Residuals - Should I "standardise" the results and how to do this I wasn't sure ...
0
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0answers
96 views

How to solve Ax=b with OpenCV cv::SparseMat

As written in title, i want to solve Ax=b. When creating A with cv::Mat and my needed dimensions of (10 million x 5 million entries) the allocation of this storage will (obviously) fail :-D. Instead ...
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0answers
77 views

How to fix .predict() function in statsmodels?

I'm trying to predict temperature at 12 UTC tomorrow in 1 location. To forecast, I use a basic linear regression model with the statmodels module. My code is hereafter: x = ds_main X = sm....
0
votes
1answer
81 views

Python- doing least square fitting on time series data?

I have a time series dataset pr11 (shape is (151,)) which looks like the graph below when plotted. Note the very small numbers. I want to find the average slope of the data by doing a least square fit ...
0
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1answer
69 views

Fitting of a sphere using SVD/LMS

I would like to fit a MR binary data of 281*398*104 matrix which is not a perfect sphere, and find out the center and radius of sphere and error also. I know LMS or SVD is a good choice to fit for ...
0
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1answer
59 views

Failed to use cs_qrsol from CXSparse to solve x=A\b in C++ when A matrix is large

I am trying to solve a linear equation system x = A\b, using CXSparse library by Tim Davis (http://faculty.cse.tamu.edu/davis/suitesparse.html). I develop my C++ program (with OpenCV) using MS Visual ...
2
votes
0answers
35 views

Lsqr first iteration with no initial guess

I am trying to solve argmin||W_vector*FT^-1(Ax)-W_vector*B|| using lsqr with a function handle and without any initial guess (W_vector is a weighting vector). I thought that lsqr would have ...
0
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1answer
45 views

lsqr result strongly depends on weights

I need to solve argmin||W*FT^-1(Ax)-W*p|| using lsqr. p is image, x is k-space matrix, A is a matrix and W is a weighting matrix. In order to pass them to matlab lsqr, I vectorized p, x and W. This ...
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0answers
27 views

How to solve least squares using matlab to get a mapping matrix?

I have two image patch sets X = {xi}, Y = {yi}, where xi and yi are 5*5 image pair-patches. I want to find a mapping matrix U, which satisfy the function of Min_U Sum_i{||xi-Uyi||^2} As all of xi, ...
0
votes
1answer
64 views

Least squares Levenburg Marquardt with Apache commons

I'm using the non linear least squares Levenburg Marquardt algorithm in java to fit a number of exponential curves (A+Bexp(Cx)). Although the data is quite clean and has a good approximation to the ...
0
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0answers
67 views

R missing value error when using partial least squares path analysis (plspm)

I am attempting to run Partial Least Squares Path Model using 'plspm'. I simply need a regression which tests the impact of 2 control variables (Size_FTE + Industry) on 1 dependent latent variable (...