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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20 views

least squares with seasonal component in matlab

I was reading a paper which looked at investigating trends in monthly wind speed data for the past 20 years or so. The paper uses a number of different statistical approaches, which I am trying to ...
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25 views

Determining linear independency among lags of a vector for example between x(n-1) and x(n-2) using least square fitting methods

I need to find the linear independence using x(n-1) to fit x(n-2) using least square method and calculating the error between x(n-2) and the estimated vector. This is my code to find lags of the X(n) ...
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17 views

Using python lmfit to fit a piece-wise function

I'd like to fit data using a double-sided parabola, that is y(x<0) = a*x^2 + s*x + c, and y(x>0) = b*x^2 + s*x + c, and use least squares fitting to solve for c, s, a, and b using lmfit in ...
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1answer
39 views

Least Squares Monte Carlo Simulation in R (Longstaff & Schwartz)

Hi all you smart people! I am doing my Master's Thesis about pricing American options, and I want to follow the Least Squares Monte Carlo approach my Longstaff & Schwartz (2001). I use a set of ...
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1answer
49 views

Linear fit with errors on x and y

Using python, I am trying to find the equation of a line that best fits my data. However, I have errors on the x and y data points. Note that my errors are not symmetric. Here is what my data points ...
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1answer
53 views

least square estimation in python using numpy and scipy

Both scipy and numpy has least square estimation but I got slightly confused after reading the documentation. So, my problem is classical regression where I am trying to find the best matrix ...
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1answer
30 views

Broadcasting issues with numpy.linalg.lstsq

I am working on some image analysis algorithm and am trying to use numpy for doing a least square fitting. To illustrate what I am trying to do, I have generated a very simple test case: A = ...
2
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1answer
56 views

Principal Component Analysis w/ Alternating Least Squares for Missing Data

In MATLAB R2014b there is a new function, pca(), that performs PCA that can handle missing data. In the documentation it says that it performs pca with the "alternating least squares" algorithm in ...
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42 views

Minimization distinction translations in 2 directions

I would like to do a minimization and so determine some parameters and one which represent some translations. But i have translations in X and Y directions. I would like to know if it s possible to ...
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28 views

computed an optimized span parameter for pandas.moments.ewma function using scipy.optimize.leastsqr

i run the following code to find the best span value when running exponentially weighted moving average on my dataset : import scipy as sp import numpy as np import pandas as pd import datetime as dt ...
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12 views

why does plsRglm coeffs results not match with bootYX coefficient?

I am using plsRglm to run PLS model. Below I provide a sample script with reproducible dataset. set.seed(101) x1 <- c(1,2,3,4,5,4,3,2,4,5,1,2,2,3,3,3,3,2,2,3) x2 <- (x1+20)*5 x3 <- runif(20, ...
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22 views

Intel MKL Error with Gaussian Fitting in Python?

I'm doing a Monte Carlo simulation in Python in which I obtain a set of intensities at certain 2D coordinates and then fit a 2D Gaussian to them. I'm using the scipy.optimize.leastsq function and it ...
2
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0answers
47 views

least square fitting to complex numbers in python with errors

Apologies here is the code. I am trying to fit a Bessel function to some 2D data, the Bessel function is complex. However when I fit the data I always end up with an array error, which I cannot sort ( ...
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0answers
59 views

matlab linear least squares of matrices

Given the equation of perspective projection of a set of 3D points in an image: lambda_ij * x_ij = P_i * X_j; how can one estimate the optimal values of lambda matrix using linear least squares ...
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1answer
39 views

Least square optimisation with two non-linear equal constraints

I am looking for a way to solve the optimisation problem with two non-linear equal constraints. My cost function is E = 0 for n in range(1, N): E += (np.linalg.norm((x[:, i] - o - np.dot(x[:, ...
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1answer
47 views

Solving linearised least squares using statsmodels

I'm trying to translate a simple linearised least squares problem to statsmodels, in order to learn how to use it for iterative least squares: The (contrived) data comprise measurements of the time ...
2
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1answer
109 views

MATLAB curve fitting - least squares method - wrong “fit” using high degrees

Anyone here that could help me with the following problem? The following code calculates the best polynomial fit to a given data-set, that is; a polynomial of a specified degree. Unfortunately, ...
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31 views

How can I fit a bounding (semi-)ellipsoid to a cluster of 3D data points?

I have a dataset of 3D points, which are arranged in clusters resembling a (semi-)ellipsoidal shape. When I try standard ellipsoid fitting as, e.g. implemented in the MATLAB function ...
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37 views

Python Scipy least square function for multi-dimensional data

I am writing to ask a question about using scipy.leastsq with 3D dataset. First, my model is a helix as P_{t} = R*[r*cos(a*t+b), r*sin(a*t+b), m*t+n]+T where R is a rotation matrix, T is a ...
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72 views

SciPy Leastsq implementation issue

I am using the code below to implement a least sqaures fit of my model vs some experimental data. The program just keeps running and it seems there is something wrong with my implementation but I am ...
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56 views

Damped least-square in Clojure

Is there any good post and implementation in Clojure for Marquardt least-squares method, also known as the Levenberg-Marquardt algorithm or damped least-squares?
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12 views

Optimal order and scaling of matrices

I have two tables A1 and A2 (for example A1=[0.4472,-0.8944;-0.8944 0.4472] A2=[-0.5558 0.9101;0.8313 0.41420] ) and i want to check if the columns of A2 are optimally ordered and scalled (its ...
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59 views

Mathematica: Implementation of Partial Least Squares (PLS)?

I'm looking for a PLS implementation for Wolfram Mathematica. I just cant seem to find any implementation for it - do you know one? In general, I'm a bit confused that there exist only so few ...
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1answer
28 views

Get lsmeans from lm model with fix nested effects

I have a model as: model <- lm (Data$Body_wt ~ Area + Owner%in%Area + Breed + Rank + Age + Breed*Area, Data) if I now want lsmean of: lsmeans(model, ~ Breed +Area) I do not get a result ...
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22 views

Fitting data to a square lattice (discrete points by multiple parameters)

I have measured points on a two dimensional square lattice. . How can I fit the data to a square lattice? I guess some methods like curve fitting or least square approximation would work, but I ...
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47 views

Solving overdetermined system of nonlinear conditional equations with MATLAB's lsqnonlin function

My functional model consists of a nonlinear conditional equation of the form a^x + b^x - 1 = 0 a and b are known. Therefore, I can solve this easily using Gauss-Newton iterations or MATLAB's ...
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42 views

In python numpy least squares, why a singular normal matrix does NOT raise LinAlgError?

Solving A.X = B by least squares. Given this : import numpy as np A=[[1,0],[0,0]] B=[1,0] X=np.linalg.lstsq(A, B) # X = 1/(At.A) * (At.B) print X[0] # [ 1. 0.] At.A is A, and det(A)=0 --> ...
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2answers
75 views

How to use least squares with weight matrix in python?

I know how to solve A.X = B by least squares using python: Example: A=[[1,1,1,1],[1,1,1,1],[1,1,1,1],[1,1,1,1],[1,1,0,0]] B=[1,1,1,1,1] X=numpy.linalg.lstsq(A, B) print X[0] # [ 5.00000000e-01 ...
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22 views

Non-linear Least Square Estimation Algorithm Matlab

I am trying to estimate y(t) = c(e^(l1*t)+e^(l2*t)) and data sets are t = [0 0.5 0.75 1.25 1.75 2.25]; y = [0 90 115 85 55 40]; my function is: t = [0 0.5 0.75 1.25 1.75 2.25]; y = [0 90 115 85 ...
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25 views

Python curve fitting polyfit

How should I use numpy.polyfit (or other python realization if polyfit can't do that) to get 2nd degree least square approximation with the free term equal to zero? It's avialable in MS Excel using ...
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1answer
26 views

Trouble with horner function in MATLAB

I have the following homework question: Apply linear least squares with the two models S1(A, B, C) = Ax^2 + Bx + C and S2(A, B, C, D) = Ax^3 + Bx^2 + Cx + D to the data set (0, 4), (1, −1), (2, ...
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10 views

Mathmatica: How do I display the plane of best fit and out put the Residual Sum of Squares?

Im trying to display the plane of best fit in the sam box as the points from a spreadsheet, I cant seem to find anything on how to go about this, I imagined it would be as easy as using best fit ...
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0answers
22 views

Plot Convexity of Least Squares Loss Function

I'm trying to plot the convexity of the least squared loss function (as a function of it's slope and intercept) in 3D. I'm generating correlated data via cholesky factorization and trying to plot the ...
1
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1answer
51 views

Fit several connected lines to points

I have an 2d-image and I want to fit several lines to the object that is represented by this image. The lines are connected and can only have angles in certain intervals between each other. I know, ...
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0answers
69 views

Java Apache Commons Math, linear least squares (fitting) with constraints

I'm trying to use Apache Commons Math library in Java (latest version) to solve a linear least squares problem, where there is a constraint on the solution. Specifically, I want the solution to ...
0
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1answer
69 views

SciPy: element-wise non-negative least squares using an array of b vectors

I need to solve the linear problem Ax = b, obtaining x using a least squares approach. All elements of x must be non-negative, so I am using scipy.optimize.nnls (documentation here). The trouble is, ...
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1answer
130 views

SciPy + Numpy: Finding the slope of a sigmoid curve

I have some data that follow a sigmoid distribution as you can see in the following image: After normalizing and scaling my data, I have adjusted the curve at the bottom using ...
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1answer
51 views

Constrained linear least-squares for xA=b in matlab

I want to solve xA=b with constraint 0<=x for x. I found functions like lsqnonneg and lsqlin which solves for Ax=b. However, couldn't find a good way to solve for xA=b. How can I solve xA=b with ...
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1answer
108 views

Matlab: How to fix Least Mean square algorithm code

I am studying about Least Mean Square algorithm and saw this code. Based on the algorithm steps, the calculation of the the error and weight updates looks alright. However, it fails to give the ...
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0answers
50 views

Matlab: Help in fixing parameter estimation algorithm implementation

Jafari, K.; Juillard, J.; Colinet, E., "A recursive system identification method based on binary measurements," Decision and Control (CDC), 2010 49th IEEE Conference on , vol., no., pp.1154,1158, ...
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1answer
23 views

Python: Divide by zero error with leastsq calculations

I am performing a Gaussian fit to some data (from file prplt). I keep getting the following errors: RuntimeWarning: divide by zero encountered in divide return (y1-func(x2,p))/err AND ...
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33 views

Scan Matching Algorithm giving wrong values for translation but right value for rotation

I've already posted it on robotics.stackexchange but I had no relevant answer. I'm currently developing a SLAM software on a robot, and I tried the Scan Matching algorithm to solve the odometry ...
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1answer
50 views

Cannot use SciPy's non-linear least square with function containing sum

So I am trying to use the leastsq function from scipy.optimize for a minimization problem. I keep getting the following error and cannot understand why: ValueError: object too deep for desired array ...
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48 views

LSmeans - unbalanced data with interaction

I wish to analyze an unbalanced data set with 3 variables Tleaf, Tair, and orientation (factor with two levels). Considering the effect of the factor "orientation", I wish to determine if "Tair" has a ...
0
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0answers
40 views

statsmodels in Python supports Nonlinear Generalized Least Square?

I am posing this question, because I have seen that package statsmodels in python can provide generalized least squares (GLS), Weighted Least Squares etc. and might solve my problem which has been ...
0
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2answers
224 views

R: how to estimate a fixed effects model with weights

I would like to run a fixed-effects model using OLS with weighted data. Since there can be some confusion, I mean to say that I used "fixed effects" here in the sense that economists usually imply, ...
1
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0answers
54 views

How to define a trilinear regression model in Python

I am trying to fit a trilinear model to my observation. The observation values look like A: A = array([[ 4.18680470e-01, 2.27554169e+00, 1.88600000e+02, 3.40000000e+00], [ 2.64688814e-01, ...
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1answer
52 views

Why don't these curve fit results match?

I'm attempting to estimate a decay rate using an exponential fit, but I'm puzzled by why the two methods don't give the same result. In the first case, taking the log of the data to linearize the ...
0
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0answers
58 views

R lsfit() and Numpy lstsq()

I'm doing some math in numpy, and in R, and I think it should get the same result, but it does not, could you please explain why? And how can I mimick the result I get from numpy, in R? NUMPY/PYTHON ...
3
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1answer
81 views

Minimize objective function using limfit.minimize in Python

I am having a problem with package lmfit.minimize minimization procedure. Actually, I could not create a correct objective function for my problem. Problem definition My function: yn = a_11*x1**2 + ...