Questions tagged [linear-regression]

for issues related to linear regression modelling approach

linear-regression
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How to interpret a regression table with logged DVs? [migrated]

I'm writing a research paper and am using R for my quantitative analysis. I'm using OLS regression and have needed to perform a log transformation on my dependent variables for linearity however I don'...
Bella's user avatar
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While printing OLS summery or while printing anything it is not printing in proper layout in google collab

"I want to print the OLS summary in the proper format, but I am unable to do so. I have tried all possible solutions, but it is not working properly. Even when printing pd.info(), it is not ...
Biraj Mishra's user avatar
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numpy Polynomial.fit with degree zero produces unexpected result

import numpy as np f = np.array( [481.62900766, 511.94542042, 647.40216379, 686.10402156, 849.9420538, 888.64398048, 1029.26087049, 1071.18799217, 1210.51481107, 1266.63254274, 1409.54282743]...
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Monte Carlo simulation in R - econometrics [closed]

I have some questions about a Monte Carlo R code simulation. I want to run a multiple linear regression. I simulated the dependant variable using the data in the paper. However, I do not succeed to ...
Roxane Morand's user avatar
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Filling out NAN with linear regression predict value

I try fill NAN value with linear regression prediction. I made linear regression model and fit the data and store the prediction value. By print value, I found the prediction value to replace NAN. ...
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Likelihoods in both linear regression model and naive Bayesian model

The model in linear regression is $y = \omega^T x + e$ , where x, y, e represent the feature, the target and the noise, respecively. p(y|x, omega) is often termed the likelihood function for the ...
Andy's user avatar
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How to determine an unknown breakpoint in a linear regression model

[enter image description here][1]I am trying to figure out how to determine the breakpoint in a linear regression model. I have an example graph of what my series of data looks like and the ...
user24172072's user avatar
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How to reverse engineer a dataset?

My teacher gave me the result of a regression and the exercise is to reverse engineer the data set that lead to that regression. Then we need to do a regression on it and find the exact same results. ...
Naïma Mottes's user avatar
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how to plot multiple linear regression features vs predicted results on individual graphs

I was working on a TV advertisement dataset with 3 features (TV, radio, newspaper) and 1 dependent variable (sales). By using multiple linear regression, I estimated sales and compared them with ...
R47's user avatar
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Hierarchical linear models for continuous outcomes

I aim to investigate the relationship between a single measurement of a continuous outcome and the presence of an intervention. Given that multiple hospitals recruited participants for the study, I ...
Rayan H's user avatar
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R issue: lm() is printing NAs for rows once ncol > nrow [migrated]

I'm running an lm() on lagged variables as part of a network analysis, and have the following dimensions: dim(final) [1] 197 277 dim(final_lag) [1] 197 831 The final dataset contains the non-lagged ...
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How do I get column indices and names from the input data frame in VSURF, instead of indices of the input matrix based on the formula?

I'm running a random forest model for variable selection in VSURF. I'm using the formula-type call because I have some missing values I need to deal with. I am also excluding the dependent variable, ...
kommoder_Waran's user avatar
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Gradient Descent: Reduced Feature Set has a longer runtime than the Original Feature set

This question will be back up in 3 days, its contents may be abused beforehand. I'm saving a copy of the original
H.S's user avatar
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Do we do VIF calculation for multi -colinearity on the raw data or processed data in linear regression?

I am using vif calculator from statemodel. Before I train linear regression model I do simple standard scaling of the data. My question is for checking multi-colinearity using VIF do we calculate VIF ...
Sidharth M's user avatar
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Iteratively calculating the least squares coefficient in Python -- is there anything I can do to speed up my code?

At each time step t, I get a new x_t and y_t. Once there are a total of PERIOD x's and y's, it'll do ordinary least squares and spit out the coefficient. In the code, "benchmark" is the x ...
cmaz's user avatar
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Linear Regression Adjustment Issue: Learning Rate vs. Equation Accuracy (Python)

I'm attempting to adjust the linear regression with a learning rate of 0.01. However, I'm encountering an issue where the line doesn't seem to adjust properly. Instead of following the expected path ...
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Problem with cros_val_score with Linear Regression

I have this code where I don't understand where the error is when I calculate the cross_val_score. You can find the code at the end. When I insert X and Y into cross_val_score I get this output= [-1....
Marco Di Giacomo's user avatar
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How to toggle traces with a button?

My R Shiny app currently generates dynamic plots and organizes them into categories. When input$regression is true, all output$continuous_plots are rerendered to include a regression line. These plots ...
Chris Trivino's user avatar
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Heteroskedasticity Robust Standard Errors Interpretation Problem

I am performing a multiple linear regression analysis for my thesis. I have heteroskedasticity problem in my dataset. I performed white test and it shows heteroscedasticity. To remove ...
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How to clear GPU in training loop using Keras?

I've been exploring methods to train multiple models within a single codebase. The aim is to generate various models using different seeds to assess diverse architectures and training data. The data ...
Agenor Maradiaga's user avatar
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Batch Gradient Descent algorithm in python is returning huge values

I'm trying to implement a Batch Gradient Descent algorithm in python that takes in the training set, the learning rate, and the number of iterations as input arguments, and returns the weights. ...
Ramiz's user avatar
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How can I improve R2 score in my regression model? Predicting House Prices

I have trained some data on a House Pricing dataset. and I'm getting a not-so-bad R-2 score of nearly 0.5 as you can see below: I wanted to ask how can I improve this R-2 Score and get more precise ...
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GMMAT model fit and AIC

I have fitted a model using the GMMAT package in R. This model includes several variables and a Genetic Relatedness Matrix to control for the relatedness of the sample. See this example: require(GMMAT)...
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Fitting a curve using Linear regression - CLS and NMF

I am trying to fit FTIR spectra with other reference spectra. I have FTIR spectra of tissue and reference spectra of various components such as DNA, RNA and others. I want to fit the reference spectra ...
Rahul Suresh's user avatar
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Error with WLS estimation in R: missing or negative weights not allowed

I am new to this platform. I am trying to account for the heteroscedasticity in my multiple linear regression model using weighted least squares estimation in R. To do this, I am taking the residuals ...
maria_fe's user avatar
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Fitted surface does not resemble the heatmap produced from the same data

I have some z values spanning over a grid of, say, 8 x and 10 z values. The z values can be depicted as a heatmap over the x-y plane (left subplot). Now I want to fit a surface to the same data that ...
PingPong's user avatar
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Beta coefficient of direct effect increases after controlling for mediator

I have a dataset which has independent variable, dependent variable and Mediator. I am trying to measure the direct effect and indirect effect. I am using mediation package in R for doing this. My ...
Rhea Bedi's user avatar
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How to exclude abnormal data points and smooth the data before linear fitting

I want to calculate the modulus by linear fitting of the strain-stress curve. However, since the pressure data obtained scatters a lot, sometimes the fitting results are not good. I think two things ...
FreeAir's user avatar
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Performing a simple ridge regression

Im trying to find the minimizing w \in \mathbb{R}^n in: \min{w} |Aw-y|^2 + \lambda |w|^2 For A \in \mathbb{R}^{m \times n} and y \in \mathbb{R}^{m} According to Wikipedia the explicit solution is ...
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Why TukeyHSD test keeps returning NA for a linear model in R?

I have a dataframe with four columns: BMI, AGE, SEX and Geno. Geno is a factor variable has 4 levels(A|A,A|G,G|A,ref:G|G). I would like to fit a linear regression model use BMI~AGE + SEX + Geno, and ...
Timon's user avatar
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Inquiry regarding a linear regression model using Python and pandas

I have a dataset with nfl historical data from 2003-2023. I wanted to use linear regression to predict the number of wins for the upcoming nfl season. X = nfl.drop('wins', axis=1).values y = nfl['wins'...
Tee's user avatar
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How to find the x-intercept of Weibull distribution

I am trying to write a code to plot Weibull probability. I want to find the scale parameter which is the x-intercept where the fitted line intersects with probability = 63.2%. Also the slope is very ...
ARINDAM DAS's user avatar
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PyTorch matrix multiplication shape error: "RuntimeError: mat1 and mat2 shapes cannot be multiplied"

I'm new to PyTorch and creating a multi-output linear regression model to color words based on their letters. (This will help people with grapheme-color synesthesia have an easier time reading.) It ...
A T's user avatar
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Why is learning rate optimization to pure NumPy implementation of Linear Regression so ineffective? [migrated]

After creating a simple linear regression model in numpy, I found that changing step size / learning rate was not effective in improving the accuracy of the model, or the speed of convergence. Notice ...
Jawad's user avatar
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find the optimal model for dataset

dataset Hi everyone, i need to find the model to answer the question that young people are going to theater less than before. Could you guy help me to find which model fits the best to this dataset in ...
Thang Ho's user avatar
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Using pretrained model with sample features

I am new to machine learning, and I have trained a linear regression model. I have loaded the pretrained model, but I don`t know how to put my features into the model and get the prediction. I have ...
Mohammad Hosein Mohaghegh's user avatar
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28 views

Adding a factor to a Bayesian Regression

) Hi everyone, I'm interested in conducting a Bayesian regression analysis. I have various continuous predictors, which I can add as "Covariates". However, I would also like to add Gender, ...
Imbar Mizrahi's user avatar
1 vote
1 answer
34 views

How to train a linear regression for each pandas dataframe row and generate the slope

I have created the following pandas dataframe: import numpy as np import pandas as pd ds = {'col1' : [11,22,33,24,15,6,7,68,79,10,161,12,113,147,115]} df = pd.DataFrame(data=ds) predFeature = [] ...
Giampaolo Levorato's user avatar
1 vote
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31 views

MinMaxScaler caused much worse result (R2 is lower) in linear regression

I was trying to apply linear regression for an automobile dataset where some of variables are categorical and the target is the price. I wanted to scale the variables, but using scaler makes the ...
Yuno's user avatar
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how to generate linear X Y data to regression practice in Python

Que: how can i get linear relation between each features/independent variables (X) and target (Y). Both X and Y must be real-values. But my plot shows only 1/10 features is linearly associated with my ...
sahuno's user avatar
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Putting my regression results (3 regression results) into one table using R

Here are the packages I have installed and loaded: knitr::opts_chunk$set(echo = TRUE) setwd("/Users/Anon/Desktop/Anon") install.packages("modelsummary") install.packages("...
Russer's user avatar
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How do I extract specific values from a dataset in order to predict the growth?

I'm trying to extract the values from the columns Y1993 to Y2013 for each row, and using linear regression in order to predict the growth in the amount of crop output. Column one is the area (country),...
Sujit Bonthala's user avatar
2 votes
2 answers
37 views

One predicted regression relationship between multiple simulated series

I have simulated 1000 realizations of two independent random walks of length 100 N <- 1000 n <- 100 set.seed(1) M.x <- sapply(1:N, \(k) cumsum(rnorm(n))) M.y <- sapply(1:N, \(k) cumsum(...
chromanna's user avatar
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Regressions performed by hand

Does anyone know where I can find linear regression (simple & multiple) examples performed by hand, polynomial and logistic regressions and where it shows how to perform them by hand? I want to ...
ra111's user avatar
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-1 votes
1 answer
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Linear Trend of NDVI time series

I want to extract the linear trend of my NDVI time series. When I use the linear regression in Python using this code: from sklearn.linear_model import LinearRegression import pandas as pd data_orig =...
FF123456's user avatar
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1 answer
41 views

How to force lm() and glm() functions not to refactor weights for linear regression?

I just want to run lm() and glm() for linear regression without refactoring weights, i.e., to utilize the weights just as they are specified. How can I do that? It is known, but not documented, that ...
Viktor's user avatar
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How to change color of line and confidence interval in ggplot?

I am working on plotting linear mixed effects results and would like to make some adjustments in how it is presented. Here is the current code for the plot. lme_plotp %>% ggplot(aes(x = x, y = ...
anonymous's user avatar
1 vote
1 answer
29 views

Display trendline equations for facet wrapped date

I am working with a lot of data looking for variation in spider behavior. Here, multiple behaviors were recorded for multiple spiders in an experiment simulating rain. I have the amount of time each ...
Katie Van Havel's user avatar
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1 answer
150 views

R forcing computation of interaction term estimates for reference level when it shouldn't

I am trying to run different sets of regression models with fixed effects uisng feols from the fixest package in R. I run into issues where R forces me to compute the interaction of the reference ...
flâneur's user avatar
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specifying group-level effects in brms

I'm trying to model the effects of one continuous variable (mass) and three categorical variables (site, sex, and method) on another continuous variable with brms. The explanatory variables are to ...
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