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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27 views

Hermit Spline Tangents estimation

Hermite Spline tangent estimation I'm trying to come up with an algorithm or method that will allow me to estimate the tangent's magnitude (the direction is given) such as the interpolated spline ...
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1answer
32 views

Least square minimization

I hope this is the right place for such a basic question. I found this and this solutions quite articulated, hence they do not help me to get the fundamentals of the procedure. Consider a random ...
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0answers
15 views

Scipy leastsq for estimating fundamental matrix

I'm trying to estimate F using the Algorithm 11.4 in the book Multiple View Geometry (H&Z). I'm able to estimate F and obtain the structure of the scene (up to a projectivity), but I'm not sure ...
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0answers
24 views

Decision Boundary separating 3 classes(of fisher iris data set)

I have written a code where I have created a LS-SVM and a single layer perceptron classifier. What I would like to do, but I do not know how, is to plot a decision boundary that separates my classes. ...
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22 views

Multiple Least Squares-SVM classifier with 5 partitions

I have written a MATLAB code, where I have a LS-SVM classifier on fisher iris data set(that is, multiclass classification). I want the classification to be come out by 5 partitions. However, despite I ...
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59 views

Multiple Least Squares classification

I need some help regarding multiclass classification with least-squares classifier on fisher iris data set. How could it be done? Let as give an initial code(the data set has been previously ...
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1answer
12 views

Confusing use of gradient in Pattern recognition and machine learning

I'm reading PRML and sometimes the gradient notation seems to be very confusing. In chapter 2, page 116, it is a a column vector: And on Appendix E page 707, it is also a column vector: However, in ...
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1answer
17 views

Multiple regression using OLS from stats model

I have looked up similar questions to mine, I cannot find an answer. My aim: I have survival data. I want the residuals for the survival data, after accounting for age and weight. Method: import ...
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1answer
13 views

Multiple Parameter Estimation. Problems with broadcasting

I need to get the parameters(kf, beta1, beta2, gamma) with a nonlinear least squares regression. The error message is: "ValueError: operands could not be broadcast together with shapes (4,7) (0,)" ...
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1answer
40 views

Different scipy versions give different results for curve_fit

My coauthor and I are trying to use nonlinear least squares to estimate parameters. Quite surprisingly, we get different results from the identical code. We use curve_fit in the scipy.optimize ...
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13 views

solve eviews equation using nonlinear least squares

I'm trying to figure out how to solve the next type of equation using eviews: ln(Yt)=a(1-b)+b*ln(Yt-1)+g1t+g2S2t+g3S3t+g4S4t+c(1-b)(1-L)[ln(Xt)+L*Ln(Xt-1)+L^2*ln(Xt-2)+...+L^p*ln(Xt-p)]+ut. I was ...
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1answer
49 views

Least Squares Triangulation in R

Which are the coordinates of an unknown point if they are given observations of the distances of 3 points with known coordinates? eg: x = c(30.0,10.0,50.0) y = c(150.0,120.0,50.0) distance = ...
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0answers
16 views

Are my OLS regression results plausible?

I am using the built-in OLSMultipleLinearRegression provided by Java. I have the following sample values: double[][] x_values = {{0.0}, {1.0}, {2.0}, {3.0}}; double[] y_values = {1., 2., 3., 4.}; ...
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0answers
34 views

GSL routine, weighted least squares fit normalization

So i am writing some code that performs the gsl_multifit_wlinear to approximate a known distribution. It performs increasing numbers of 'events' allocates them to a histogram bin and finds a fit. ...
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0answers
65 views

'Non-conformable arguments' in R code

: ) I previously wrote an R function that will compute a least-squares polynomial of arbitrary order to fit whatever data I put into it. "LeastSquaresDegreeN.R" The code works because I can ...
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1answer
20 views

Least Regression Pattern Recognition Sum Error

I am working on a project that requires a pattern recognition program. I will receive a data file with 50000+ data points, and have to recognize if a certain pattern is present. If the sum of the ...
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1answer
85 views

Fitting SIR model based on least squares

I would like to optimize the fitting of SIR model. If I fit the SIR model with only 60 data points I get a "good" result. "Good" means, the fitted model curve is close to data points till t=40. My ...
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0answers
33 views

Psychometric curve fitting using Levenberg–Marquardt algorithm

i'm trying to make (and understand) a psychometric curve fitting (that is used in a scientific paper) using a cumulative gaussian function (which is also called the Error function) between two vectors ...
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64 views

Least-squares minimization within threshold in MATLAB

The cvx suite for MATLAB can solve the (seemingly innocent) optimization problem below, but it is rather slow for the large, full matrices I'm working with. I'm hoping this is because using cvx is ...
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1answer
57 views

Write a program to minimize the sum of squares of recursive exponential function

This is the function that I'd like to code in R, i = 1,2,3,....j-1 a,b,c,f,g are to be determined from nls (with starting value arbitrarily set to 7,30,15,1,2) S and Y are in the dataset The ...
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0answers
12 views

Does the least squares algorithm require unique x values?

In the code here http://dracoblue.net/dev/linear-least-squares-in-javascript/ for the x values input, does anyone know if the function works if the x values array has duplicate values?
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26 views

Multiple regression in scipy [duplicate]

I have the following code: # sigs is a list of numpy Series input_df = pd.DataFrame.from_dict({'0':sigs[0], '1':sigs[1]}) print len(input_df), len(sigs[2]) stats.linregress(x=input_df, ...
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1answer
36 views

Estimate Counting sort equation [closed]

I have four test data sets of different sizes, and I apply a counting sort algorithm written in c to each, giving four runtimes. How can I use these results to estimate the runtime of larger data ...
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1answer
77 views

Normal equation and Numpy 'least-squares', 'solve' methods difference in regression?

I am doing linear regression with multiple variables. I try to get thetas (coefficients) by using normal equation method (that uses matrix inverse), Numpy least-squares numpy.linalg.lstsq tool and ...
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0answers
35 views

scipy.optimize leastsq() dimension error fitting ode

I am trying to fit experimental oscillatory data to an damped oscillator model of the type: u''+cu'+ku=0. First I load in the data and plot it with the following: from scipy.io import loadmat import ...
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1answer
49 views

Non-linear least squares with arbitrary number of fitting parameters in R

I want to fit a model which includes a sum over a variable number of coefficients, such as here Model I would like to write the code so that the number of coefficients can be specified by a ...
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0answers
37 views

Fitting SIR Model by given data

How can i optimize the Infected curve of the SIR model by using scipy.opmtimize? My idea: compare each infected data point of sir model with dataset point at time range t_i check if the difference ...
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0answers
17 views

Apache Commons Math: Relation between optimization, clustering, regression, and fitting packages

I'm trying to understand the organization of the org.apache.commons.math3 component, especially with respect to Machine Learning (Clustering, Regression, Fitting, and Least Squares). Noting that the ...
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48 views

Why least squares doesn't work for high not full-rank matrix?

I have a matrix A with shape (224, 45). It's rank is 44. When I try this code: solution = np.linalg.lstsq(A, rhs)[0] I get solution with very high values, something like 1e14. When I try solution ...
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1answer
37 views

Fsolve with variables,

I have this matlab function, function [f]=ErrorFun(a,b,c) global I global phi f = sum((a+b.*cos(phi)+c.*sin(phi)-I).^2); end length(a)=length(b)=length(phi)=length(c)=length(I)N.I ...
1
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1answer
56 views

lapack dgels_ segmentation fault 11

I am trying to use LAPACK's dgels_ in C to solve a linear least squares problem. I have to read the matrix A (assumed to have full rank and m>=n) and a vector b from 2 text files. I can easily compile ...
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21 views

Generate scatter plot trend line for multiple Y values

I am implementing curve-fit for a scatter plot.And currently, I am implementing linear regression line, As per my research, I have found out that we use least square method to find the linear curve ...
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votes
1answer
29 views

Least Absolute Deviation function

I'm trying to estimate LAD regression, but it gives my the message: "false convergence (8)". What does it mean and why nlminb estimators are equal to lm estimators? Sample generation step ...
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0answers
18 views

find best fit x2_array given y2_array and a similar function y1(x1)

Assuming I have two 1D arrays of floats x1 and y1 and use eg. scipy.interpolate.UnivariateSpline to make some fit to this data. If I then have another array y2 which is very similar to a subset of ...
0
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1answer
51 views

matlab least squares random sample generation

I am looking for some help in generating a noisy random data set with 600 samples. Currently I am using following code: weight = randn(size,1); noise = randn(size,1); X = randn(size); y = ...
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0answers
69 views

Linear regression function in R with conditions for the coefficients

I've searched and searched without finding an answer, although I think it's not that hard what I want R to do... I'm sorry for spelling mistakes, I'm not a native speaker ;) I have a few (x,y)-data ...
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0answers
21 views

Gradient Descent With Smoothness constarints

I have a noisy image Y and known kernel H. I need to estimate a denoised image X such that it gradient of X is also minimised. J= ||Y-HX||^2+ Alpha* Smoothness constraint(X); Smoothness constraint= ...
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votes
1answer
32 views

How do I combine transforms in the ceres solver?

I have two parameters transformations as input to my Ceres cost function. They are both transforms that are to be combined, in order to reproject my points. Both transforms are given in the form of a ...
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0answers
35 views

Exponentially Modified Gaussian_fitting_python

I've been trying to fit an EMG function to some data, which I know beforehand that they behave in such a way. Here is the data http://www.filedropper.com/data_12 My script so far is this: import ...
1
vote
1answer
39 views

Transformation matrix from 2 groups of point pairs

I have tried using the command estimateGeometricTransform or fitgeotrans but it returns an object of class affine2d, and what I need is to generate a transformation matrix that can plot. Is there any ...
1
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3answers
50 views

why is list of tuple failing as an argument for optimize.leasztsq?

I use the function leastsq from scipy.optimize to fit sphere coordinates and radius from 3D coordinates. So my code looks like this : def distance(pc,point): xc,yc,zc,rd = pc x ,y ,z = ...
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0answers
80 views

How to calculate least square means (adjusted means) MATLAB

In several papers I read that when analysing a variable (lets say the response to a medication) means across groups should be adjusted for confounding factors like age, gender etc. (if these groups ...
1
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1answer
181 views

Least square minimization of a Cost function

I am aiming to minimize the below cost function over W J = (E)^2 E = A - W .* B Such that W(n+1) = W(n) - (u/2) * delJ delJ = gradient of J = -2 * E .* B u = step_size=0.2 where: - A, B are STFT ...
0
votes
1answer
40 views

scipy.optimize.leastsq : How to specify non-parameters?

I want to know how to use leastsq from scipy for chi-square fitting. I know the structure is basically - parameters = leastsq(chi(exp_data, exp_err, param), initial_guess, arg = (?,?,?)) where ...
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1answer
142 views

Matlab - Least Squares data fitting - Cost function with extra constraint

I am currently working on some MatLab code to fit experimental data to a sum of exponentials following a method described in this paper. According to the paper, the data has to follow the following ...
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2answers
207 views

linear regression using lm() - surprised by the result

I used a linear regression on data I have, using the lm function. Everything works (no error message), but I'm somehow surprised by the result: I am under the impression R "misses" a group of points, ...
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0answers
59 views

Python Grouping Data

I have a set of data: (1438672131.185164, 377961152) (1438672132.264816, 377961421) ...
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0answers
105 views

Least squares in Matlab

A deployment of some (20 or so) sensors has detected a signal arriving from a certain direction. The sensors inter-distance is 50 meters. The signal is observed in sensors' data with a move-out ...
0
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2answers
63 views

How to calculate the smallest sum of squared differences among 5 variables

I would like to calculate in Gnu R the smallest sum of squared differences between w,x,y,z and a and choose which of this four variables fits a best, but I have no clue about how to do it in the most ...
0
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1answer
49 views

Failing to solve a simple least squares fit with Ruby GSL

I have the following ruby script, running with rb-gsl (1.16.0.6) under ruby-2.2.1 require("gsl") include GSL m = GSL::Matrix::alloc([0.18, 0.60, 0.57], [0.24, 0.99, 0.58], [0.14, ...