Questions tagged [linear-regression]

for issues related to linear regression modelling approach

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Finding lines from points in raster file (python)

I have a binary raster file and want to find straight lines connecting several points in python. The lines should be straight connecting points but are able to vary in the angle of the line. Here is ...
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-1 votes
1 answer
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How can I predict values for the upcoming year based on previous year's trend and a few other variables?

I am trying to predict values for future (2023) based on the trend I have for past few years based on category, month, and size. Essentially I'm trying to fill in the NA values based on past years' ...
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DeterministicProcess give me "'NoneType' object has no attribute 'rule_code'"

so I tried to run this code: from statsmodels.tsa.deterministic import CalendarFourier y1 = close.copy() y1.index = pd.to_datetime(y1.index) fourier = CalendarFourier(freq='M',order=4) dp1 = ...
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-4 votes
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Very low train and test accuracy with housing price prediction modeling

I have been trying to create a project to predict housing prices in New York State. I ran linear regression on my data set but I am only getting around 20% accuracy on both the training and test data. ...
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13 views

How does h2o handles a column containing string values in a linear regression model?

I am trying to userstand how linear regression works in h2o when having both categorical and numerical values. For this purpose, I've created a toy example to work on and see a "weird" ...
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Compare multiple groups

I'd like to predict discussion group performance based on members' social network centralities and knowledge contribution. Hierarchical linear regression in SPSS doesn't seem to distinguish groups (...
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3 votes
1 answer
28 views

Measurement error in the dependent variable of an OLS regression?

I am calculating a Monte-Carlo regression to analyse the effects of a measurement error in the dependent variable on an OLS estimation. The theory on this is clear. The estimation of the constant and ...
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15 views

OLS to solve high dimensional linear model

I am trying to understanding a common knowledge about using OLS to solve high dimensional linear model. I understand when p>n, OLS will fail. I also have the impression that when p is large, OLS ...
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Logistic regression using Python statsmodels.formula.api getting a PerfectSeparationError

I am using the statsmodels.formula.api package in python to perform a multiple logistic regression on a dataset and I am required to use 6 variables as predictors. however, i keep getting this error - ...
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Convert multiple columns to catogorical variable on PySpark MLLib

I have a dataframe like this: data = [ (1,'a',"BS", 20, "M"), (2,'b',"MS", 20, "F"), (3,'c',"PHD", 21, "F"), (4,'d',"BS&...
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-1 votes
1 answer
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In segmented regression, how to choose so the second line cant have a negative slope?

I am using the R package segmented to detrend my data and to obtain the residuals. I want to fit 2 linear lines with one breakpoint, for each of the groups of cyl, but I don't want the second line to ...
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How do I append regressors to a multi-output time series forecast?

I'm developing a time series linear regression model that produces a multi-output prediction of 12 steps. This takes in 10 lags as an input. I would like to test other predictive variable now that I ...
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error when creating glm for gtsummary table

I am trying to build a logistic regression using the code below, but I encounter the error that I am unable to identify the cause of! I have compared the contents of my df to the example used in a ...
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50 views

Is there a way in SAS to evaluate model accuracy using a test set?

I built a regression model using proc reg on a training set (70%) and I would like to evaluate the model accuracy (MAPE, R2, adjusted R2, RMSE, etc) using the test set (remaining 30%). Is there a way ...
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10 views

Linear regression output interpretation [migrated]

I ran a linear model using 2 variables which I "log+1" transformed prior to analysis. I included a fixed effect of month of sample collection (factor with 3 levels - September, October and ...
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how to drive final blending model equation after blending of 3 regression models in pycaret?

Please help in driving the final blending regression (model) equation after using the Pycaret library for blending of the top 3 regression models. # Blending models blender = blend_models(...
-2 votes
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Trying to split user input and use that as data for Linear Regression

Doing this for a school assignment, I want to ask the user for a list of inputs, outputs, then a value that the code will use to predict an output. My problem is I cannot find a way to split the ...
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MultiCollinearity when VIF is 0

What does it mean when VIF(Variance Inflation Factor) is 0? Does it indicate No MultiCollinearity?
1 vote
1 answer
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Repeated columns of a single variable when using statsmodels.formula.api package ols function in python

I am trying to perform multiple linear regression using the statsmodels.formula.api package in python and have listed the code that i have used to perform this regression below. auto_1= pd.read_csv(&...
0 votes
1 answer
15 views

Fit the data to multivariable linear regression in Python

I have the following data: x1=[100, 100, 110, 110, 120, 120, 120, 130, 130, 130] x2=[1, 2, 1, 2, 1, 2, 3, 1, 2, 3] y=[113, 118, 127, 132, 136, 144, 138, 146, 156, 149] And I want to fit a function ...
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"IndexError: list index out of range." Need help fixing this error

I am trying to modify the code so that if the change in loss is less than 1%, it exits the iterations. class MyLinReg(object): def __init__(self, activation_function): self....
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10 views

Pure effect of an independent variable on the dependent variable

I have a statistics course assignment regarding the "pure" effect of the mileage on second hand cars' sales price. The dataset contains several factors which may affect the sales price of ...
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1 answer
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Loop graphs ggplot y for x for different categories with linear regression, How to consequetively plot categories?

EDITED: I have a large data base trying to reapeatedly assess energy expenditue over time with the aim to compare multiple different variables (0/1, e.g. presence of severe head trauma vs. no such). ...
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Checking for multicollinearity and adjust the data

I would appreciate help interpreting the following pairwise scatterplots of predictor variables to check for multicollinearity and then fit the data to the results to avoid this occurring. Background:...
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0 votes
1 answer
25 views

What is wrong with my lm function using lapply()?

I'm having a dataset and want to create a linear regression model for each state (column called fylke). However, when using lapply together with a function, it does say: unexpected '}' I created first ...
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What is the difference between lm() function and caret::train() function when it comes to creating linear regression models : RSTUDIO [migrated]

When applying the lm function as follows (the assumptions were not considered. The purpose of this example is just to make my question clear) : library(carData) model1 = lm(data = carData::Salaries,...
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How to calculate Linear Regression from the given data [closed]

Use the reading, writing, math, and science scores to predict a student's score in social studies. Train your model using LinearRegression in sklearn. Add the model's predictions to the data as a new ...
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1 answer
24 views

How to predict the values of a variable of an existing dataframe using line of best fit using python?

I don't know how to go about using line of best fit to predict the values of 2 variables in an existing dataframe. For example, let's say column 'Year' in a dataframe stopped at 2013 butI want my ...
-1 votes
0 answers
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glmer summary dropped one of factors

I am doing linear mixed regression in R, but it keeps happening that one of factors that I wanna test is lost in summary my original code is: m1 <- glmer(RT ~ 1 + estimation* reciprocity * stimu + ...
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1 answer
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Data type already in int but receiving error: cannot convert float infinity to integer

I have a column: "Rented Bike Count" in my data frame, which is the dependent variable of my linear regression project. I found that its distribution is highly skewed, so I wanted to ...
1 vote
0 answers
18 views

Why do I have two different values for lambda?

I am trying to do a Yeo-Johnson on my response variable. However, the boxcox lambda value and the Yeo-Johnson lambda value are not close to equal. In theory, they should be very close because I have ...
1 vote
1 answer
15 views

Why is it important to transform the data into normal / Gaussian distribution when creating a linear regression model

I'm currently building my first regression model, and as we know that, owing to the limitations of the algorithm, we need to remove outliers and transform the distribution into a normal one. I know ...
2 votes
2 answers
53 views

Task: Finding lowest possible MSE using linear regression

I've seen this same question on here which has helped me get this far but i'm not getting the correct results. I have a linear regression with the datapoints x and y, as well as the model ypred = a*x+...
-1 votes
1 answer
27 views

train_test_data_split function is showing problem

I was trying to make a program to predict the runs made by a cricketer. I used a csv file for data made by me. The code is: import pandas as pd from sklearn.linear_model import LinearRegression import ...
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31 views

Analyzing frequency data in R

I have data on fire incidences: structure(list(Season = c("Winter", "Winter", "Winter", "Winter", "Winter", "Winter", "Winter", &...
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OLS regression with lags and year dummies

for my econometrics class we had to investigate the relationship between co2 emission and GDP for a specific country. The project was in GRETL, but i am personally trying to convert it in python. The ...
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21 views

Hill climb on linear regression

HI I am required to fill the linear regression line on to below graph the required thing is we need to find the optimal a. Can anybody help how this can be done import numpy as np import pandas as pd ...
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0 answers
44 views

Getting a Key Error while plotting a column in Python using Pandas

I have a data set with two columns called sale price and property taxes and i want to perform linear regression on them I have imported numpy and pandas and I call my csv file: data=pd.read_csv('HW2....
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31 views

prediction interval for multiple linear regression in r. Why results show multiple rows?

I am running a multi-linear regression in R. And I want to add 3 to all the rows for column named "educ", then find out the 99% confidence interval for this predicted change. here are my ...
-1 votes
0 answers
20 views

Regression infinite loss

I am working on linear regression with SGD and have to predict the future price of cars. I have x=[2017,2018,2019,2020,2021,2022] and y=[22455,23570,23720,24270,24970,26520]. I am getting infinite ...
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2 answers
21 views

Predicting when an output might happen in time in R

I have a dataset of peoples blood results in R: ID Result date A1 80 01/01/2006 A1 70 01/01/2009 A1 61 01/01/2010 A1 30 01/01/2018 ...
1 vote
1 answer
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confint vs intervals for gls (nlme package) models

There are two methods available to estimate confidence intervals for a gls model in R: using function confint and function intervals. The results are not the same and I want to know what are the ...
1 vote
1 answer
27 views

Linear Regression Model with a variable that zeroes the result

For my class we have to create a model to predict the credit balance of each individuals. Based on observations, many results are zero where the lm tries to calculate them. To overcome this I created ...
-1 votes
0 answers
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I was doing machine learning basics playlist and this error kept showing KeyError: "None of [Index(['area'], dtype='object')] are in the [columns]"

this is my code which keeps showing error model = linear_model.LinearRegression() model.fit(df[['area']],df.price) I have tried using df.columns = df.columns.str.replace(' ', '') but it made no ...
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37 views

Python sm.OLS results summary with scientific notation

I'm running an OLS analysis using sm.OLS. My code is: regression = sm.OLS(y,x3).fit() regression.summary() And the results: OLS Results My problem is that some values appears with scientific notation....
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How to return a single global optimum regression model in R when running an Exhaustive Regression via the regsubsets function where id = 3:15

I am comparing the results of a novel procedure which is a new proposed optimal model selection technique in machine/statistical learning which is a modified version of Exhaustive Regression aka All ...
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1 answer
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What is ref in fixest's feols used for fixed-effect estimation?

I am going through an R example of using interaction terms in a fixed effect model. The example can be found here. The example uses the fixest package and uses the syntax var::fe(ref). I don't ...
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3 votes
0 answers
53 views

Function to compute R^2 value for Generalized Linear Model in Julia

I have a dataset df and I need to calculate it's glm summary. I got everything working properly using jlm=glm(@formula(y~x1+x2),df,Normal()) This gets me the Beta Values and Standard-Error, but I need ...
2 votes
1 answer
17 views

Clustering different sets of points with different linear relationships to each other in Python

I need to cluster groups of points with the same linear relationship, as per the code and figure below. import numpy as np import matplotlib.pyplot as plt x = np.linspace(0, 30, 100) y1 = 3*x -50 + ...
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35 views

Plotly Express (OLS) trendline not working properly?

I have traffic dataset (number of accidents) that is obviously seasonal (weekly). When i try to use plotly trendline (OLS) using: fig = px.scatter(df, x='Open date', y='Total Cases', trendline="...
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