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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 [tag:least-squares] should utilize the [Cross Validated](https://stats.stackexchange.com/questions) Stack Exchange site.

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How to find magnitude of the difference between y and the least squares fit?

I need to plot y using errorbar in matlab with error bars whose magnitude is the difference between y and the least squares fit. I have no idea how to find the magnitude. y = 60323 ...
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30 views

Linear algebra with large, sparse matrices

I want to solve the linear equation Ax = b, for the unknown matrix x. A and b are both large and sparse, and have shapes (when converted to dense) of 30,000 x 25 and 30,000 x 100,000, respectively. I ...
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24 views

Prediction with Test dataset incorrect

In the plot below the red crossed line is the actual curve and the crossed blue line is the predicted curve. I am using least squares for linear prediction. I have used 1:79 examples in training and ...
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1answer
12 views

How to fix “TypeError: only length-1 arrays can be converted to Python scalars” in python regression

I tried to use scipy.optimize package for regression. The model of the function is defined in func with parameters named as coeffs. I want to use the data xdata and ydata to learn the parameters using ...
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2answers
30 views

Error using * Inner matrix dimensions must agree in using Least Squares - how to make the regressor array for multiple independent variables

I am trying to learn how to code for linear regression where the data statistics_data represents the yeast growth year in first column, the value of a chemical component in the second column and the ...
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19 views

Plotting a contour plot for three parameters

I have a set of ODE's which have three parameters k1, k2 and k3. I am solving the ode and trying to fit the result to experimental data by calculating the least squares. I want to plot a contour plot ...
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1answer
30 views

Python2: Fitting a multi-parameter sum of functions with scipy.optimize.curve_fit

This is my first post on Stack Overflow so please be patient if any info is missing. I am trying to fit a function through data using Python 2.7.15 (ubuntu 18.04) with scipy.optimize.curve_fit(). ...
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96 views

Optimizing distance between two vectors in C++

I have two vectors with coordinates, stored as a OpenCV's floating points: a) dstpoints is a vector with OpenCV points - std::vector<cv::Point2f> (I have 162 points in my example, they are not ...
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1answer
21 views

Program to fit a hyperbola to linear data using least squares (Levenberg-Marquardt algorithm) not working as expected

I have a 1D array data which I am trying to model as hyperbola using three parameters. I am trying to implement the Levenberg Marquardt algorithm using the leastsq function from scipy.optimize library....
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1answer
38 views

Get the correct ussage of scipy.optimize.leastsq

So based on the answer given to the question [python nonlinear least squares fitting I adapted the answer to estimate the three parameters kd,p0,l0 N = 10 kd_guess = 7.0 # <-- You have ...
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2answers
32 views

Scipy least squares positional argument issue

I am trying to do a robust non-linear fitting of the following data: r_fast: [0.2065 0.2661 0.2026 0.22 0.2065 0.2661 0.264 0.2173 0.2615 0.2682 0.407 0.4085 0.409 0.4045 0.405 0.3985 0.5235 ...
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1answer
140 views

How to to find smallest (optimized) distance between two vectors in C++

I'm translating Python's version of 'page_dewarper' (https://mzucker.github.io/2016/08/15/page-dewarping.html) into C++. I'm going to use dlib, which is a fantastic tool, that helped me in a few ...
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0answers
40 views

Solving compound linear optimization problem

I would like to solve the following compound optimization problem in MATLAB: min (Ax-a), min (Bx-b), min (Cx-c) subject to Dx=d and x>=0, where a,b,c,d are vectors and A,B,C,D are matrices, all ...
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0answers
44 views

Excel: Formula to find the standard error of slope when intercept value is zero by using LINEST function

Excel LINEST function In the above screenshot, what is the formula used to calculate this value 0.06986127735
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1answer
49 views

How do I implement non-linear least squares for multidemnsional data in python?

I have to implement least square fitting algorithm for this model function Y = a_0 * e^(a_1*x_1+a_2*x_2+...+a_n*x_n) The approach I found was to define function to calculate residuals and pass it to ...
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1answer
38 views

Pandas - How to perform OLS Regression of values versus time in each group of a dataframe?

I have hourly readings in a dataframe of the form: Date_Time Temp 2001-01-01 00:00:00 -1.3 2001-01-01 01:00:00 -2.1 2001-01-01 02:00:00 -1.9 2001-01-01 03:00:00 -2.2 2001-...
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66 views

How to avoid error “requires numeric/complex matrix/vector arguments”?

I first upload the table. The table contains 9 rows, 6 of them are factors and the 3 left are discrete measures of growth rate of 152 individuals (n01,n02,n03). Then I specify the factors: `r$feed &...
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82 views

How can I implement this L1 norm Robust PCA equation in a more efficient way?

I recently learned in class the Principle Component Analysis method aims to approximate a matrix X to a multiplication of two matrices Z*W. If X is a n x d matrix, Z is a n x k matrix and W is a k x d ...
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2answers
53 views

Convert Pandas best fit function into pyspark

I have been using this function for time series feature creation in Pandas that returns the (OLS?) best-fit slope of a given range of points: def best_fit(X, Y): xbar = sum(X)/len(X) ybar = ...
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0answers
16 views

Scores and weights on R PLS package

I would like to use the pls package for a plsr analysis. I have to admit that I am a total beginner with this package and with R in general. So my first goal was just to retrieve results from ...
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47 views

please explain about $samples and $target

If I have some data example Year: | 2015 | 2016 | 2017 | 2018 ---------------------------------- Price:|1,500 |2,100 |1,700 |1,400 I want to forecast price in 2019 with my code My code use with ...
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2answers
164 views

Find the nearest point to a group of 3D lines

This problem has had me stumped for days. I have a group of lines formed from some data that produces 3D lines of the form: P = a + dt Where a is a position vector and d is the unit direction ...
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1answer
45 views

“only size-1 arrays can be converted to Python scalars” or “`x0` must have at most 1 dimension”

I am doing an exercise to familiarize with Python least_squares from scipy.optimize. The exercise try to fit an ellipse to a list of 2D points minimizing the sum of the square distances between the ...
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11 views

Can I apprixomite mesh or part of a mesh with a sphere?

I'm using meshlab and I have a scanned bone. I would like to select a part of the bone (the contact area with the next bone basically), and I would like for the software to approximate a sphere from ...
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1answer
45 views

Understanding numpy's lstsq

I understand the idea of the sum of least square solutions. The parameters of the solution reflect the coefficients that minimize the squared error. But I am having trouble understanding the lstsq ...
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0answers
19 views

GLS: Weights from external object not evaluated properly in loop (invalid type (list) for variable)

I guess the answer to this question is obvious but I cannot find it. I would like to run gls models (nlme package) for each element of a list while supplying the weights argument from another list ...
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2answers
33 views

TypeError when fitting curve

I'm trying to fit a curve to some data that I have but for some reason I just get the error "'numpy.float64' object cannot be interpreted as an integer" and I don't understand why or how to fix it. ...
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0answers
88 views

Singular matrix C in LSQ subproblem - What does it mean?

I am trying to solve an Inverse Kinematics (IK) task as an optimisation problem using Python and SciPy. There exists a robot arm in a 2D environment, and I want to reach for a specific target in the ...
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0answers
46 views

Matlab multiple linear least squares using vectorization

I regularly have upwards of 10^8 sets of linear least squares to solve (heaps of Ax = B) coming out of monte-carlo simulations. Until now I have been using a simple loop, but obviously this is slow. ...
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2answers
50 views

How to divide dataset by conditions in R

I'd like to get some general rule how to deal with this approach. I've got big data but below is representative example of it: set.seed(2019) myFun <- function(n = 50) { a <- do.call(paste0, ...
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8 views

number of elementary reflectors in LAPACKE_?ormqr

I look for the least square solution. I have the formula . I know the vector y and . The unknown is vector . First I calculate the QR-decomposition with LAPACKE: LAPACKE_dgeqrf(LAPACK_ROW_MAJOR, ...
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1answer
64 views

Solve `A` `B` in matrix multiplication `AB=Y` for arbitrary `Y` using least square

I'm sorry if this is a duplicate of some thread. I know there are lots of decompositions to decompose a matrix (like LU or SVD), but now I have an arbitrary non-square matrix and I want to decompose ...
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0answers
27 views

Linear regression with High Dimensional dataset is slow

I am looking for a regression model that's very efficient with a large number of features. Well, basically I am using OLS model with a dataset that has around 600 features. And I noticed that it's ...
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0answers
11 views

Why does least-squares GAN objective function have 1/2 factor

I'm reading an article about voice enhancement with GAN:《SEGAN: Speech Enhancement Generative Adversarial Network》. In this paper, the objective function of SEGAN is improved by using least squares ...
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1answer
31 views

Discete least sqauare approximation on rectangle [a,b]x[c,d].Use functions 1,x,y,sin(x) and sin(y) as the basis

I need to calculate coffecent matrix b but, no matter which function i try, the matrix A that is created has no inverse, and because of that A\H cannot be obtained. I've checked few times but i ...
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49 views

Solving a system of constrained linear equations

I need to solve a large system of linear equations using a least squares method. So far I have found the answers whilst unconstrained but would like to limit my answers to be non-negative. The code I ...
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4answers
110 views

Least square on linear N-way-equal problem

Suppose I want to find the "intersection point" of 2 arbitrary high-dimensional lines. The two lines won't actually intersect, but I still want to find the most intersect point (i.e. a point that is ...
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0answers
43 views

ValueError while fitting a double-peak log-normal distribution to data

Given the following set of data: x=[1.99526231e+08, 7.94328235e+08, 3.16227766e+09, 1.25892541e+10, 5.01187234e+10, 1.99526231e+11, 7.94328235e+11] y=[0, 0, 0.01, 0.19, 0.09, 0, 0.71] yerr=[0, 0, 0....
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2answers
156 views

Solve overdetermined system with QR decomposition in Python

I'm trying to solve an overdetermined system with QR decomposition and linalg.solve but the error I get is LinAlgError: Last 2 dimensions of the array must be square. This happens when the R array ...
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1answer
27 views

How to denoise an image using least square and regularization?

f = u+n: f is noisy image, u is an desired reconstruction and n is noise. The reconstruction error is ||u-f||_2^2 + lambda * ||gradient(u)||_2^2 Solve ||Ax-b||_2^2 where x is a vector that is ...
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1answer
63 views

Fitting data with a complex function in python

I have some data that I am trying to fit with a model Here's the relevant part of my code path='D:/ParPhy/2-BESIII15_new.dat' data = pd.read_table(path,header=None) y=np.array(data[1]) x=np.array(...
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324 views

Memory Leak using numpy linalg in parallel

I have the below code to run least square on each row of a matrix U. import numpy as np from numpy.linalg import norm,lstsq from sklearn.externals.joblib import Parallel,delayed k = 25 max_iter = 50 ...
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2answers
75 views

Least Squares Method to fit parameters

I am asked to use the least squares method to fit the parameters α and β in y = α*exp(-β*x), given the points: x = [1 2 3 4 5 6 7] y = [9 6 4 2 4 6 9] I am having trouble determining what my matrix ...
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1answer
124 views

Plane fit of 3D points with Singular Value Decomposition

Dear fellow stackoverflow users, I am trying to calculate the normal vectors over an arbitrary (but smooth) surface defined by a set of 3D points. For this, I am using a plane fitting algorithm that ...
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0answers
23 views

QR factorization of rectangular matrix and application for linear last squares

I want to write code for "QR factorization of rectangular matrix and application for linear last squares" I tried this code import numpy as np import scipy.linalg as linalg A = np.matrix(...
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1answer
80 views

Running Least Mean Squares Function in Julia

I am new to Julia, so please forgive me if this is too basic. I am trying to run the following script. using Pkg Pkg.add("DataFrames") using DataFrames function LS(x,y,a) T = size(x,1) N = ...
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1answer
16 views

Linear singly-celled two-layer ANN with produces constant predictions

Say that we want to fit a straight line in the plane through the origin and the point (1, 2). We can view this as linear regression with a sample of size 1 and no intercept. This, on the other hand, ...
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1answer
85 views

Formulate residual for Levenberg-Marquart

I want to minimize a cost function with the form, with the Levenberg-Marquart method with the scipy.optimize.least_squares function. But I do not see how to formulate it in terms of residuals, so ...
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1answer
55 views

Least Squares Method for a sum of functions

I would like to use the curve_fit function from the scipy.optimize module to determine amplitudes, frequencies, phases of sum of sine functions (and one y0). It's easy to do when I know a number of ...
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2answers
45 views

C Program forLeast Square Regression Line and Errors

I wanted to create a program to calculate the regression line of some given data, along with the errors, so I can use in my university assignments. This is the following program: #include <stdio.h&...