Questions tagged [non-linear-regression]

In statistics, nonlinear regression is a form of regression analysis in which observations are modeled by a function which is a nonlinear combination of the model parameters and depends on one or more independent variables.

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Run nonlinear (nls) regression that contains summation in R

I'm trying to run a nonlinear regression of the form y_i = sum_t(x_{it}^b) on the following (simplified) dataset: require(dplyr) set.seed(2019) df <- data.frame(t = rep(1:4, each = 4), ...
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Model fit for a data

Considering the regression model for the data in the following graph: What can we categorize this model? Is it Over-fit, Under-fit or Well-fit model? I appreciate the why part for the answer. ...
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1answer
49 views

R - Pass column names as Variable with names contain I()

I'm performing the polynomial regression and testing the linear combination of the coefficient. But I'm running to some problems that when I tried to test the linear combination of the coefficient. ...
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Fully connected layer vs Multiple parallel dense layers for multivariate nonlinear regression?

I'm trying to tackle a multivariate nonlinear regression problem that takes around 20 inputs and outputs around 200. I have a set of known points and need to come up with a performant neural network ...
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21 views

Put equation for a ggplot2 : stat_smooth

How could you place the equation that fits the points? ggplot(data=iris) + geom_point( aes(x=Sepal.Length, y=Petal.Length,color=Species)) + stat_smooth(aes(x=Sepal.Length, y=Petal.Length),...
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30 views

Asymetrical data fitting function

Please can you help me ? I have non linear data that fit in an asymmetrical sigmoid function. So I've generated a sigmoid function. And I've used that in the curve_fit function to generate a beta1 and ...
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16 views

Polinomial regression on torch

I have a very strange question, I have already done a linear regression with a similar code, but when I change the code to polynomial regression in Torch, the loss goes to NaN, what am I doing wrong? ...
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21 views

Non-linear regression time interval estimation in R - diffusion models

How do you estimate nonlinear regression time intervals in R? We are seeking to run the Generalized Norton Bass diffusion model in which we have three unknown parameters: m, p, and q (potential ...
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29 views

Quantify Diminishing Returns or Linear Regression or Other?

Semi math related question here, but I believe it is still valid since it is something I am working on in Python. Plus, the MathOverflow people would laugh at my feeble mind. Anyways, I have a real ...
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24 views

Differences in ^ and exp() notation in nls models

I' ve like to understand the differences in ^ and exp() notation in nls models. In my example: library(nls2) #Data set x <- c(1 ,10, 20, 30, 40, 50, 60, 70, 80, 90, 100) y <- c(0....
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40 views

What is meant by 20% tolerance based on remaining, in regression analysis? How to calculate this metric in python?

I have a data frame called df with independent and dependent variables.The problem is to predict a continuous value. After predictions I could calculate the regression score. For example ...
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2answers
19 views

How to fit a set of 3D data points using a third or higher degree of polynomial surface regression?

I have input data points (x,y,z), all positive, and need to fit them to a surface. More specifically, I have to create a grid from the x and y data points and evaluate the data points on this grid to ...
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23 views

How to force surface regression to have positive values?

Below is my code to do a quadratic regression. Input to the function is a set of data points, all positive, and with them I create a surface matching the data. The problem is, however, that my ...
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27 views

Write a loop for Backward selection

I am trying to write a code that allows me to do backward selection but I cannot figure out how to do that. The basic idea is the following: I have a knot vector K that is used to construct basis ...
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34 views

How to extend geom_line to continue? Do I alter the predict() function?

I was wondering if anybody could help. I would like to know how I can continue my geom_line to the edges of the graph which would be the data predictions if I had a bigger range of data. In this case,...
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1answer
31 views

How to integrate (AUC) nls model and Monte-Carlo confidence interval in R

I'm trying to integrate (resolve the area under) a non-linear function (from nls()) from x= 0 to infinity in R. However, R's integrate function calls for a function (f). In short, I'd like to do ...
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37 views

How can I determine, in what extent the fit to experimental data is good in Matlab?

I have experimental spectrum in which y-axis is intensity values, and x-axis is frequency values. Int - array of experimental intensities (y-axis). w - array of frequencies (x-axis). I know the view ...
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2answers
38 views

Run a polynomial regression without combinations of the features

I am running a polynomial regression for order p. To make it simple, we use order p = 2 in this question. Suppose we have X with two feature x1, x2 and y. And I am trying to run a polynomial ...
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59 views

Does Gradient Boosting detect non-linear relationships?

I wish to train some data using the Gradient Boosting Regressor of Scikit-Learn. My questions are: 1) Is the algorithm able to capture non-linear relationships? For example, in the case of y=x^2, y ...
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10 views

How to get constant in NonLinear Regression

I have some problem about nonlinear regression. I'm very appreciated your help. So there is the formula that I got from this Price = B0 + B1 (day – mean (day)) + B2 (day – mean (day))^2 Where: B0, ...
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1answer
81 views

Python: optimization solvers return initial guess for a nonlinear regression problem

Below is a code for the least-square fitting of parameters for an ODE. Python "minimize" as well as "least-square" functions have been used. Different methods and ODE solvers/steps have been tried (...
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1answer
43 views

Piecewise Function lmfit

I am trying to define a piecewise function to be fitted by lmfit library in Python. The issue I am having is a parameter I have defined for the function will not evaluate alongside the data I am ...
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29 views

Error in getGroupsFormula.default(correlation) : 'form' argument must be a formula

I need help with the R codes. I want to use gnls function to fit nonlinear regression with ARMA(1,1) I post the codes with the error. Could you please help me to fix the error message? library(...
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1answer
27 views

How to find the best fitting function for a y-x non-linear relationship

I have two variables, y being the number of targets achieved and x the number of individuals involved in the operation. The relationship is positive and non-linear (there are only so many individuals ...
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49 views

After training the neural network how to predict next value in next hour using tensorflow python

I designed a neural network model to predict values. After training it I want to predict next future value in next hour and it should happened continuously after one hour one hour. Data import from ...
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1answer
38 views

How to override an aes color (controlled by a variable) based on a condition?

I'm trying to graph multiple nonlinear least squares regression in r in different colors based on the value of a variable. However, I also display the equation of the last one, and I would like the ...
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242 views

Is deep learning bad at fitting simple non linear functions outside training scope?

I am trying to create a simple deep-learning based model to predict y=x**2 But looks like deep learning is not able to learn the general function outside the scope of its training set. Intuitively I ...
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1answer
33 views

Python nonlinear regression error using curve_fit

I'm trying to obtain 3 unknown parameters of a function using scipy.optimize.curve_fit. I took the example code from the Scipy documentation found here : https://docs.scipy.org/doc/scipy/reference/...
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2answers
72 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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31 views

Outliers in Kernel ridge regression model in scikit learn

I am recently trying to train a kernel ridge regression model with around 1700 data points. I select the model parameter with GridsearchCV: param_grid = {"alpha": [1e0, 1e-1, 1e-2, 1e-3, 1e-4], ...
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2answers
48 views

How to fit a regression of information (negative entropy) ~ size in R?

I would like to fit a regression to negative entropy ~ size data in order to estimate the optimum size (pointed with the arrow). The range of entropy data is between 0 and 1, while the range of size ...
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35 views

R calculate nonlinear least squares with using specific bins

I would really appreciate help with a problem I have in R that I am unable understand. I am trying to fit data using the nonlinear least squares algorithm, after creating a histogram of that data. I ...
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47 views

How to fix Error in glim.fit 'fit'not found in GAMLSS regression

I am trying to execute gamlss's zero-inflated beta regression model as below> It works fine with variable V255 but through an error for simialr variable V256 as Error in glim.fit(f = nu.object, X = ...
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1answer
172 views

Resolving minFactor error when using nls in R

I am running nls models in R on several different datasets, using the self-starting Weibull Growth Curve function, e.g. MOD <- nls(Response ~ SSweibull(Time, Asym, Drop, lrc, pwr), data = DATA) ...
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1answer
61 views

Warning Mathematica FittedModel: The precision of the argument function (MachinePrecision) is less than WorkingPrecision (MachinePrecision)

Fellows, I couldn't figure why I am having the warning message from the following code in Mathematica: data = {{0, 1}, {1, 0.02307044673005989`}, {2, 0.00784879347316981`}, {3, 0....
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67 views

Sine wave frequency estimation with scipy.least_squares on Python

I am trying to estimate the sine wave frequency using scipy.least_squares with Python. I cannot understand why it does not work. My code is: import numpy as np import matplotlib.pyplot as plt from ...
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55 views

R nonlinear regression of cumulative X and Y data

I'm trying to figure how to make a nonlinear regression of some cumulative data of X and Y values. The dataset is based on cumulative items and their respective cumulated demand. I have a plot that ...
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31 views

Evaluating the significance of a GAM

Can someone please help me interpret GAM p-values and significance? In a linear regression analysis a predictive variable may have an insignificant p-value, and yet still, be used for predictive ...
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1answer
43 views

Please identify this curve fitting formula

I have some non-linear data that I am trying to fit to an equation and have very little experience with this. I have found this formula, which best fits my data: y0 + a/(x-x0) x being my data, y0, ...
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1answer
104 views

ML Model not predicting properly

I am trying to create an ML model (regression) using various techniques like SMR, Logistic Regression, and others. With all the techniques, I'm not able to get efficiency more than 35%. Here's what I'...
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31 views

Cannot find the degree that fits my polynomial regression model in sklearn

I have a polynomial features function that I want to give a degree of (1/2) or 0.5, because the data set used is a downward plateau with a degree of at most (1/2), however the predictions produced are ...
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14 views

Solving 3 unknowns from 50 Nonlinear equation in Matlab/Python

I have a set of three unknowns which I need to resolve from 50 different non linear equation. Which method should I use in matlab? I found out that fsolve can do that, but then I faced another issue. ...
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80 views

Non linear regression: Outlier sensitive loss function

I'm trying to come up with a non-linear regression deep learning model to predict the far field of a given nanostructure. The far-field spectrum is highly non-linear and it could have several ...
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1answer
86 views

How to calculate 95% prediction interval from nls

Borrowing the example data from this question, if I have the following data and I fit the following non linear model to it, how can I calculate the 95% prediction interval for my curve? library(broom)...
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1answer
260 views

how to do exponential nonlinear regression in python

I am trying to do non-linear regression using the equation y=ae^(-bT) where T is temp with the data: ([26.67, 93.33, 148.89, 222.01, 315.56]) and y is the viscosity with the data: ([1.35, .085, ....
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1answer
242 views

How to get a robust nonlinear regression fit using scipy.optimize.least_squares?

My specific issue is that I cannot seem to get my data to converted to floating points. I have data and simply want to fit a robust curve using my model equation: y = a * e^(-b*z) This cookbook is ...
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1answer
77 views

Complex Regression Model in Python

For a project I am working on, I need to find a model for the data graphed below that includes a sine or cosine component (hard to tell from the image but the data does follow a trig-like function for ...
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1answer
251 views

Calculate the predicted model accuracy in python for regression problem

I want to calculate my model accuracy for rainfall forecasting. I already calculated MAE, RMSE, MAPE for rainfall forecasting. But want to know the total model accuracy, for instance, my model is ...
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1answer
71 views

Curve fitting for non-linear data

I am trying to fit some data using lsqcurvefit in MATLAB but I am fairly new to this area. xdata1 = [0 60 660 1250]; ydata1 = [0 18 23 31]; In the image below, the red line is the fit I want to ...
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1answer
58 views

NLS Function - Number of Iterations Exceeds max

I have a dataset that looks like this: dput(testing1) structure(list(x = c(0, 426.263081392053, 852.526162784105, 1278.78924417616, 1705.05232556821, 2131.31540696026, 2557.57848835232, 2983....