Fitting parameters of a function to explain given data

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30 views

Changing gmdistribution.fit bin size

I am currently using the gaussian mixture model to fit some data I have in matlab. I am using the gmdistribution.fit function, and have a question regarding the fit. The following code is used to ...
-1
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0answers
23 views

Fit model to data (find best parameters of the model)

I have data from an experiment and a model of it. The idea is to compare the model and the data to try to find the parameters that best describe the data. For this purpose the model has the missing ...
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0answers
7 views

Produce output table containing ARIMA model parameter estimates in Matlab

Using the below code, I'm fitting an ARIMA/GJR model to my data. The model fitting works well and I can view all the parameters when clicking on the model in my workspace. However, I do not know how ...
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1answer
38 views

Create a graph to display observed and fitted values

I am trying to plot the observed and fitted values from a data set and its linear regression against a common time period variable using ggplot. My data frame is called balances. gdp.model <- ...
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0answers
49 views

Cycle for best fitting GARCH (data.table)

I have a datatable with the following structure: ID MONTH MONRES 1: 10001 198602 0.043213562 2: 10001 198603 0.031285064 3: 10001 198604 0.010859820 4: 10001 198605 0.009341687 ...
3
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0answers
454 views

Fitting complex model using Python and lmfit?

I would like to fit ellipsometric data to complex model using lmfit. Two measured parameters, psi and delta, are variables in a complex function rho. I could try with separating problem to real and ...
0
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1answer
30 views

How to extract values fitted to a gaussian distribution in R?

I have a data frame X with 2 columns a and b, a is of class character and b is of class numeric. I fitted a gaussian distribution using the fitdist (fitdistrplus package) function on b. data.fit ...
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1answer
54 views

Model fitting with nls.lm in R, “Error: unused argument”

I'm trying to use the nls.lm function in the minpack.lm to fit a non-linear model to some data from a psychophysics experiment. I've had a search around and can't find a lot of information about the ...
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1answer
38 views

How fitting two different lines in one single model in R?

We have two data set (X1,Y1) and (X2,Y2). If they seem to have different intercepts and different slopes, how can I use a single linear model to draw two fitted lines? At the same time, what's the ...
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3answers
2k views

uniform distribution fitting in matlab

I have a data set and would like to fit them to uniform distribution and calculate goodness of fit with Matlab. However, I found that uniform is not included in function 'fitdist'. Is there any method ...
0
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1answer
64 views

How to create dataset for fitting a function in scipy stats?

I want to fit some data to a Pareto distribution using the scipy.stats library. I am not sure if the issue might be numerical, so just to be safe; I have values measured for the dependent variable ...
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1answer
40 views

Is it possible to combine multiple partially fit estimators in sklearn?

I have a lot of data and I want to parallelize estimator fitting by splitting up my data and fitting multiple estimators running in multiple threads, or multiple machines. Some estimators provide a ...
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1answer
33 views

How to do a simple 'model fitting' in python?

Suppose I have three data sets x, y, z. I want to fit a simple model: A*x + B*y + C = z (A, B, C are constant.) How can I do that in Python? I've found scipy.optimize.curve_fit. However, it seems ...
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0answers
38 views

R: Creating set of all possible ARIMA models

I am trying to create a set of all possible models for 1 variable using 10 predictors. I know how to to this for the LM model, but is there a way how to create it for ARIMA models? Or would it be OK ...
3
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1answer
129 views

Difference between Proc univarite and Proc severity for fitting continuous (positive support) distribution

My goal is to fit a data to any distribution which has positive support. (weibull(2p), gamma(2p), pareto(2p), lognormal (2p),exponential(1P)). First attempt,i used proc univariate.This is my code ...
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0answers
99 views

Another “Error: $ operator is invalid for atomic vectors”

I have tried to fit multiple model using same dataset and almost same formula, and save the model, its formula and the dataset it has used in a nested list. Everything is going fine until I want to ...
0
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0answers
12 views

Fitting a model: point-by-point fitting versus entire data set fitting

I have a left field question regarding fitting models to data. Say I have a deterministic model that predicts a variable f based on a variable x and has a fitting parameter z. I also have a data set ...
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0answers
49 views

FindFit “gradient that is effectively zero”

I am using Mathematica's FindFit function to fit a parametric solution to my data and I am getting the error "FindFit::fmgz : Encountered a gradient that is effectively zero". I am giving the initial ...
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1answer
76 views

Resolving symmetry in gnls model

I'm trying to fit a logistic growth model in R, using gnls in the nlme package. I have previously successfully fit a model: mod1 <- gnls(Weight ~ I(A/(1+exp(b + v0*Age + v1*Sum.T))), ...
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0answers
139 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 ...
9
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2answers
983 views

Vector autoregressive model fitting with scikit-learn

I am trying to fit vector autoregressive (VAR) models using the generalized linear model fitting methods included in scikit-learn. The linear model has the form y = X w, but the system matrix X has a ...
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1answer
66 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
38 views

non-linear search for parameter values in python

I have this function, dn =fp(xn)+an =Asin(2π k xn +φ)+an an is gaussian distributed random noise with σ2 = 1 and p denotes the particular choice of values of free parameters, p = [A,k,φ] I need to ...
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1answer
413 views

Fitting a power law: “NaN computed by model function”

I try to fit a power law function with matlab (y=ax^b) Here are my x and y matrices I simply compute the fitting with fit(x,y,'power1') I get this error: Error using fit>iFit (line 415) ...
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1answer
172 views

Pymc 2d gaussian fitting

I am trying to fit a predefined 2d gaussian function to some observed data with pymc. I keep running into errors and the last one I got was ValueError: setting an array element with a sequence. I ...
2
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3answers
159 views

Gnuplot fit of a nested function

What is the proper way in gnuplot to fit a function f(x) having the next form? f(x) = A*exp(x - B*f(x)) I tried to fit it as any other function using: fit f(x) "data.txt" via A,B and the output ...
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0answers
58 views

How to use an input with high current amplitude while the lookup tables in model are based on small amplitude values?

I am trying to fit a model to some measurements to model a battery. Input of my model is current and the output is voltage of battery terminal. I am using some 3D lookup tables in my model. The ...
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0answers
93 views

Sequentialfs getting stuck while using stepwiselm with a quadratic model

So I am trying to implement an exhaustive forward feature selection using sequentialfs on a relatively small dataset in matlab (26 observations). I am using a stepwiselm quadratic model in my ...
11
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1answer
2k views

trying to display original and fitted data (nls + dnorm) with ggplot2's geom_smooth()

I am exploring some data, so the first thing I wanted to do was try to fit a normal (Gaussian) distribution to it. This is my first time trying this in R, so I'm taking it one step at a time. First I ...
0
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0answers
124 views

Evaluation of LDA - Dealing with small values for held-out Likelihood

I am trying to implement some model evaluation tools for LDA (in the R language), which depend on the likelihood of a held out document set. I am using importance sampling [1] to calculate the ...
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0answers
38 views

How I know what are the initial values of parameters of the “start” argument in fitdist function of fitdistrplus package?

I'm learning how a fit distributions to my data,I'm using the fitdist function of the fitdistrplus package, but for chi-squared distribution I need to give a named list with the initial values of ...
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0answers
68 views

solve a non-linear least squares optimization

I want to fit data with my custom function to calculate parameters of the model. Data of x and y are attached at the end. The custom function is: ...
2
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1answer
304 views

Fit gaussian integral function to data

I have a problem with finding a least-square-fit for a set of given data. I know the data follows a function witch is a convolution of a gaussian and a rectangle (x-ray through a broad slit). What I ...
3
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0answers
190 views

Fitting a non-homogeneous poisson-process with PyMC

I'm new to PyMC and trying to fit my non-homogeneous poisson-process with a piecewise-constant rate function using the maximum a posteriori estimate. My process describes some events during a day. ...
1
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0answers
238 views

inclusion of interaction terms in bestglm in R

I would like to use the delete-d cross-validation technique available in the R package bestglm. I have a binomial response variable (species presence/absence) and 11 predictor variables that are ...
10
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5answers
6k views

finding the best trade-off point on a curve

Say I had some data, for which I want to fit a parametrized model over it. My goal is to find the best value for this model parameter. I'm doing model selection using a AIC/BIC/MDL type of criterion ...
5
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1answer
6k views

Fitting a 3 parameter Weibull distribution in R

I have been doing some data analysis in R and I am trying to figure out how to fit my data to a 3 parameter Weibull distribution. I found how to do it with a 2 parameter Weibull but have come up short ...
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1answer
324 views

Active Shape Models' fitting procedure doesn't converge with Statistical Model fitting function

I followed the Active Shape Models approach described by Tim Cootes in textbook and original paper. So far everything went well (Procrustes Analysis, Principal Component Analysis, preprocessing of ...
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1answer
1k views

Interpretation auto.arima results in R

As a beginner, I am trying to understand the auto.arima function in the R forecasting package. Particularly, I am interested in the selection based on the information criteria. For instance, I set ...
1
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2answers
450 views

Numpy Polyfit or any fitting to X and Y multidimensional arrays

I have two large multidimensional arrays: Y carries three measurements of half a million objects (e.g. shape=(500000,3)) and X has same shape, but contains position of Y measurements. At first, I ...
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0answers
57 views

Function of parameter

I have written the codes below: def model(axis, p): a1, t1, a2, t2, a3, t3, a4, t4 = p return a1*np.exp(-axis/t1) + a2*np.exp(-axis/t2) + a3*np.exp(-axis/t3) + a4*np.exp(- axis/t4) This ...
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1answer
245 views

Does 'statsmodels' or another Python package offer an equivalent to R's 'step' function?

Is there a statsmodels or other Python equivalent for R's step functionality for selecting a formula-based model using AIC?
2
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0answers
61 views

Python scipy.optimize fitting by x-deviation

I have a simple fitting problem in Python - I have some data and a fit function, and all I want is to find the optimal parameters. Thing is, my x data is my dependent variable, and my y data is my ...
1
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2answers
217 views

How to retrieve a list of the original variable names from a GLM call in R?

When using the glm function in R one can use functions like addNA or log inside the formula argument. Let's say we have a dataframe Data with 4 columns: Class, var1 which are factors and var2, var3 ...
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1answer
3k views

How can I do a least squares fit in python, using data that is only an upper limit?

I am trying to perform a least squares fit in python to a known function with three variables. I am able to complete this task for randomly generated data with errors, but the actual data that I need ...
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1answer
126 views

Fitting discrete (negative binomial) distribution for early data values

I'm having some difficulties with fitting a discrete distribution function (I'm specifically using the negative binomial distribution). Here's my setting: I have a source of incoming items, each with ...
0
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1answer
315 views

R: Error in function “nls” for my datset

I have data with climatological pressure values and the heights of the stations where the pressure was measured. I would like to fit an exponential model to them. The data look like this: x [1] 539 ...
0
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1answer
7k views

R Nonlinear Least Squares (nls) Model Fitting

I'm trying to fit the information from the G function of my data to the following mathematical mode: y = A / ((1 + (B^2)*(x^2))^((C+1)/2)) . The shape of this graph can be seen here: ...
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1answer
340 views

matlab: linear regression and different error weight

I have a model y = a1 * x1 + a2 * x2 + ... + a20 * x20 y is in range [-100000, 100000]. It is important for me to get regression where I get minimum in relative errors. Absolute errors are less ...
2
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2answers
674 views

Fitting model to data in matlab

i have some experimental data and a theoretical model which i would like to try and fit. i have made a function file with the model - the code is shown below function [ Q,P ] = RodFit(k,C ) % ...