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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Predictive model for continuous variable with nonlinear relationship

I want to predict valuation using verbal SAS but there exists a strong nonlinearity between the two variables which makes unfit to use linear regression.below is the scatter plot of the data Can ...
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How do I disable regularization for GLMs (PoissonRegressor) in sklearn?

I am fitting models using the PoissonRegressor function in sklearn. However, the code seems to be imposing a un-asked for regularization my model, even when I have set the regularization parameter to ...
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Nonlinear regression in R with dummy variables

I need to perform three non-linear regression with the following formulas: fire_vertical<-nls(R~0.23-exp(A*lnNt+C)+d*fire,start=list(A=-0.33,C=0.45,d=-0.001),trace=T) fire_lateral<-nls(R~0.23-...
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Random Forests as a Generalized Additive Model

This is a regression problem. I have a dataset of sales of various products overtime. I have three kind of feature sets : Price features, Product features and Seasonality. I want to build a customer ...
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TypeError: can't multiply sequence by non-int of type 'numpy.float64' in Machine learning Non-linear regression

I am trying to perform Machinelearning non-linear regression on two inputs x,y. I am getting the fitting. The problem is with the evalation of the fit for given input. My code: x,y = [0,1,2,3,3.8],[0,...
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Draw restrictive cubic spline diagram of linear regression in r

I am trying to use ols in rms package to fit the restrictive cubic spline of linear regression. But I don't know how to use ggplot to draw the restrictive cubic spline diagram of the regression ...
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How can I use K-fold cross validation for negative binomial regression in sklearn?

I am going to apply a negative binomial regression model on the dataset and examine the model scores and the features' weight and significance using cross-validation (K-Fold). Here is the dataframe ...
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How do I Interpret GBM.Step Model Results in R?

I am new to running boosted regression trees and was wondering how I can interpret these results. I don't have a great understanding of deviance and would try to like to relate this back to more ...
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Iterative reconvolution fitting with measured irf using python and lmfit

I am trying to fit an exponential decay function with convolution to a measured instrument response using python and lmfit. I am new to python and I am trying to follow the code in https://groups....
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How to normalise an [x,y] time series data set?

Problem: I'm currently parsing a time series dataset, of [x,y] coordinates. The data isn't complete - it contains gaps and jitter, and I would like to fill these gaps / normalise the jitter using ...
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How would I build a selfStart with custom formula or insert my formula into nls()?

Please bear with me, as this is my first post in my first month of starting with R. I have some biphasic decay data, an example of which is included below: | N | Time | Signal| | | |----|---...
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How to predict y=1/x values in Python? [closed]

I have a data frame named df: import pandas as pd df = pd.DataFrame({'p': [15-x for x in range(14)] , 'x': [x for x in range(14)]}) df['y'] = 1000 * (10 / df['p']) x is only for ...
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Non-linear trend

Would you please help me to fit the following data? The data is monthly. I have done in R the following but I don't know how to explain /366 xc<-cos(2*pi*mydata$months/366) fit.lm <- lm(mydata$y~...
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Display the prediction for 10 years using polynomial regression on python

I built this code using polynomial regression based on the below table (few part of it), and I'm using regression on sklearn from degree 1 until 4 to be able to predict values until 2020. Countries ...
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Polynomial regression of higher degree of two oe more independent variables in Excel

We have a measuring device and we would like to create calibration curve for it. The device measures value Ymeasured that is influenced by other independent values, e.g. the temperature of the device ...
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How can we compute Clustered Standard errors in case of bife Logit model in R?

I have a dependent variable of a binary class(0|1). I am estimating the model using bife package in R, considering it is more efficient than GLM. I would like to compute clustered standard errors for ...
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10-fold CV on polynomial regression model

I would like to write the 10-fold CV code to determine the optimal degree for a polynomial regression model on wage~age from the Wage data in ISLR library. I would like write the code without using ...
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sklearn Kernel Ridge Regression: custom kernel for complex data

I'm having a problem while trying to use a custom kernel with sklearn KernelRidge. Indeed I'm working on sequence data (proteins) which means that all data does not all have the same length. To solve ...
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1answer
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How do I add a power function (y=a*x^b) line and generate a p-value from a scatterplot?

I have two continuous variables in a scatterplot, which do not behaviour linearly, but rather in a potenz/allometric fashion (y=a*x^b). In my case, I look at size and weight data (typical biological ...
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Gradient descent with polynomial features implementation issue

I am trying to implement gradient descent after transforming some random data using sklearns polynomial transformer. My code works when not using polynomial features, but gives really high ...
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using nlmrt to fit data: could not find function “coef.nlmrt”

I am trying to use the nlmrt package to fit a non-linear equation and extract coefficients, residuals, and fitted curve. I have chosen nlmrt because is seems superior to nlsr in dealing with quasi-...
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1answer
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GEKKO multivariate nonlinear regression

df = pd.read_csv("data.csv") xm1 = np.array(df["T"]) #Dep Var 1 xm2 = np.array(df["t"]) #Dep Var 2 xm3 = np.array(df["L"]) #Dep Var 3 ym = np.array(df["S&...
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Multivariate Nonlinear Regression without using GEKKO

import numpy as np import pandas as pd #import the excel file dataset = pd.read_excel('data.xlsx') #set all the independent variable as 'x', 'y', and 'z' and the dependent variable as 'sy' x = ...
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1answer
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Show R2 and p-value in ggplot for y~log(x) fuction

I want to make a ggplot with a log regression and want to show the R2 and p-value. I tried stat_cor, but it only shows R2 and p-value for a linear regression. I tried to incorporate "formula=y~log(x)" ...
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How to specify all levels for R{stats} predict() function in non linear mixed model after model fit with package medrc

I have 3 trials (trial: e1, e2, e3), 2 products/trial (products: A, B), 5 rates/product (.1,1,10,100,1000), total of 6 curves (curve: c1,...,c6). After fitting a non linear mixed model, I want to plot ...
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how to improve the quality of a nonlinear fit with python GEKKO?

I am working on a biochemical model: there is an enzyme that catalyzes twice a substrate. By naming: * E = the enzyme * S = the original substrate * P = the intermediate product, which is in ...
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How can I plot an exponentially decaying function with a DV that has TWO subsets (Gender)?

I'm trying to: Create an exponential model Plot its' exponentially decaying function in R ... using the following data set (df5): game = x; winning time = y (separated into Time fore Male and Female)...
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I need an Exponential/non-linear model in python

import numpy as np import sklearn from sklearn import linear_model from sklearn.utils import shuffle data = pd.read_csv('student-mat.csv', sep=';') predict = 'Markup' x = np.array(data.drop([...
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Why curve_fit of scipy gives multiple regression lines on gene expression data?

""" I'm trying to fit an exponential deacy function to a large gene expression dataset. I've spent lots of hours on stackoverflow and I found something that I'd like to try Curve fit an exponential ...
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Phase plot in R

I want to make a phase plot like this https://en.wikipedia.org/wiki/Phase_portrait from an non-linear time series in R, Any ideas? Thank you
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Spectroscopy bimodal fitting isn't giving accurate x data(Wavelength) although y fitting is good. In python 3.7

I'm trying to fit some bimodal curve using James Phillips's(https://stackoverflow.com/users/2436862/james-phillips) RamanSpectroscopy (https://bitbucket.org/zunzuncode/ramanspectroscopyfit/src/master/)...
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Why am I seeing jumps in the fitting parameter as I increase the number of data points used in the fit?

I have a question regarding non-linear fitting. I am trying fit a functional form, namely, y= (ax)/( 1 - e^(-ax) ) to a set of N data points (x_1,y_1),(x_2,y_2),...,(x_N,y_N) in order to determine a ...
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1answer
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How to improve Levenberg-Marquardt's method for polynomial curve fitting?

Some weeks ago I started coding the Levenberg-Marquardt algorithm from scratch in Matlab. I'm interested in the polynomial fitting of the data but I haven't been able to achieve the level of accuracy ...
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1answer
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Cannot install tsDyn package in RStudio, 'mnormt' doesn't exist

I am trying to install the tsDyn package on my Macbook Pro running MacOSX Catalina version 10.15.2. in RStudio (v.1.3.959), running R (v.4.0.1). I get the following error: ERROR: compilation failed ...
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Sobol analysis with Netlogo HIV model (in R)

I would like to perform a sensitivity analysis with a NetLogo output of the HIV model. I would like to examine the influence of the 4 independent variables( coupling, testfrq, condomuse, commitment) ...
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1answer
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Resurrecting coefficients from simulated data in Poisson regression

I am trying to understand how to resurrect model estimates from simulated data in a poisson regressions. There are other similar posts on interpreting coefficients on StackExchange/CrossValidated (...
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1answer
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Negative binomial regression in R using brm causing error when using multiple cores

I am calculating a negative binomial regression using the brm function from the brms package. As this takes quite some time, I would like to use multiple cores as suggested in the documentation. ...
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How to adjust different shape of arrays, Multivariable non-linear equation (curve_fit)

I would be grateful if you spend some time to check my code. There are two issues. First, I want to predict 'y' (len= 52) through the non-linear equation with two independent variables (x,x1) of the ...
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1answer
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Combining two polynomial equations with different degrees in r

I have two polynomial regression lines v=lm(game_rating~poly(votes,2),data=board_games) t=lm(game_rating~poly(timeplay,4),data=board_games) Now the question is how to combine these two lines into ...
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Is there a Python package for monotonic splines?

I am trying to find a procedure to fit data monotonically in Python. The data won’t be necessarily monotonic but the fit must be because of theoretical assumptions: so the signal must be monotonic ...
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1answer
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How do I pre-process few of my independent and the dependent variables while building an ML model in Flask?

It is a regression problem at hand to predict the Customer Lifetime value given the demographic data. I have a total of 14 X variables which are a mix of categorical & numerical data. X = ['...
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1answer
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How to apply a nonlinear regression within a data subset from a long data frame?

I have a data frame with several results from different experiments. I'd like to fit the data from each experiment separately to an specific function, however, my R knowledge is very shallow. Any help?...
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How do I fit a known equation to my data in R?

Using the Sigmaplot software, I estimated the best regression for my data, which is an exponential growth to maximum function, being: f(x) = 14.518*(1-0.996^x) Hence, I wanted to fit this function ...
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Limitations of Regression in Machine Learning?

I've been learning some of the core concepts of ML lately and writing code using the Sklearn library. After some basic practice, I tried my hand at the AirBnb NYC dataset from kaggle (which has around ...
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Polynomial regression with different coefficients from poly() and I() [duplicate]

In the example below, I replicate a polynomial regression using two approaches: 1. Using the poly() function 2. Using the I() function The beta coefficients and t-stats in approach 1 are different ...
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Quantile regression in python

I have a data set in python (python 2.7). I want to find the Quantile regression for this data set. Can anybody help me to how to solve it? Thank you. Here is my code: import numpy as np import ...
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1answer
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Linear and non-linear regression concerns

I'm trying to do this polynomial regression using the scatter plot, and I have two concerns: The red line, which is the polynomial regression appears wrong to me when compared with the plots by the ...
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1answer
38 views

Error only with try() or trycatch() when using Weighting function (minpack.lm::wfct()) for non linear regression

I have a data.frame df as follows. y <- c(9263, 8317, 7639, 6906, 6219, 5648, 5171, 5189, 4955, 4777, 4697, 4533, 4356, 4173, 3991, 3868, 3642, 3394, 3270, 3109, 2888, 2837, 2864, 2781, 2719, ...
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1answer
206 views

Early stopping for lightgbm not working when RMSLE is the eval metric

I am trying to train a lightgbm ML model in Python using rmsle as the eval metric, but am encountering an issue when I try to include early stopping. Here is my code: import numpy as np import ...
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1answer
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Julia using LsqFit for Lorentzian curve fitting

The following code in Julia plots a Lorenztian curve and then uses the curve_fit function to determine the parameters. using LsqFit model(x,p)=p[1] ./(p[1]^2 .+(x .-p[2]).^2) #Test values p0=[10,50]...

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