Questions tagged [linear-regression]

for issues related to linear regression modelling approach

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19 views

Dataset interpretation Continuous vs Categorical for House Prices

I'm working with the UK house price dataset and was wanting to create a ML model to predict the price of a house based on the city (plus some other categories). As a newb to all of this, I am stumped. ...
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12 views

Would state trading partners be considered nested or crossed?

If you have a dataset that describes the volume of trade between one state ( i ) and many others ( j ), would you develop a random effect model where i was nested within j ( i.e. ( 1 | j ) + ( 1 | i : ...
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8 views

Python Linear Regression: What is the difference between .coef_ and .score()?

df x = df[['FirstServe', 'FirstServePointsWon', 'FirstServeReturnPointsWon', 'SecondServePointsWon', 'SecondServeReturnPointsWon', 'Aces', 'BreakPointsConverted', '...
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1answer
20 views

Sklearn RANSAC without intercept

I am trying to fit a linear model without intercept (forcing the intercept to 0) using sklearn's RANSAC: RANdom SAmple Consensus algorithm. In LinearRegression one can easily set fit_intercept=False. ...
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27 views

Appropriate statistical test to analyze differences in slopes of time series data

I have created the following plot based on air quality data over three years of observation, and would like to know if these slopes are different across the two time periods (March-June 2018-2019 ...
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1answer
22 views

Fitting and scoring with training data doesn't get 100% accuracy

I wanted to verify that if I tested my model with the same data that I trained it with it would give me an accuracy close to 100%, but that doesn't seem to be the case. (Or maybe this should just not ...
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16 views

Optimazation on piecewise linear regression

I am trying to create a piecewise linear regression to minimize the MSE(minimum square errors) then using linear regression directly. The method should be using dynamic programming to calculate the ...
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9 views

how to display the results of all the iterations of a for loop in python. Is there an indentation error in my code?

data = o1,o2,o3 for j in data: for i in j: X = j.drop(i,axis=1) y=j[i] #each column in the dataframe as output if i == 'loi_': break sc=StandardScaler() X=sc....
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0answers
21 views

Multiple Source for One Dependent Variable [closed]

My question is about multiple source of OLS Ddependent variable, more related to modelling stuff. Can I use multiple source for one dependent variable in OLS, gravity model? I have a binary Foreign ...
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24 views

multiple indipendent variable for linear regression in Google Sheets

in google sheets i got error when i try to make a linear regression with multiple (2) indipendent variables. A B C field1 field2 field3 33 2 580 33 3 1245 33 ...
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4 views

Suitable regression methods for different sizes of n

So I was chatting with a friend today and he managed to pose a question to me that I thought would be cool. Suppose we have a regression problem where the relationship between the response and the ...
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1answer
18 views

Error “[.data.frame`(data, , all.vars(Terms), drop = FALSE) undefined columns selected” in caret for repeated k-fold regression?

I'm trying to perform a repeated 4-fold cross validated regression on a dataset with 28 samples. I get the following error: > data1 X1 X2 X3 outcome 1 7 0 180 108 2 130 0 ...
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20 views

Creating a function that does best subset selection in R [closed]

I need to make a function that will do best subset selection while using lm() but I cannot figure out a way to properly maneuver through all possible models. Does anyone have any advice or code that ...
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1answer
22 views

Linear Regression fitting

I have first done a train/test split then fitted that data to a LinearRegression model shown below X_train,X_test,y_train,y_test = train_test_split(X,y,test_size = 0.4, random_state = 101) Log_m = ...
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16 views

Confidence intervals in python plotly

Hi is there any method for plotting confidence interval lines in plotly around predicted line in scatterplot in python in plotly.I am not able to find anything relevant to it in docs
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1answer
27 views

Plotting columns in a list of data frames

I have a list of data frames Data_total_split (125 data frames) and I want to plot, in each data frame, the column "Year" in X versus the column "Values" in Y. How can I do ? And ...
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1answer
15 views

Found input variables with inconsistent numbers of samples: [799996, 199999]

I am splitting a single df so why is it giving Inconsistent no of samples in X_train, X_test (if that is what the error means)? X_train, X_test = train_test_split(df[categorical_cols+ numeric_cols], ...
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1answer
12 views

How to perform repeated k-fold cross validation in R with DAAG package?

I have created a 3-fold linear regression model using the HousePrices data set of DAAG package. I have read some of the threads in here and in Cross Validated and it was mentioned multiple times that ...
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0answers
7 views

Step aic function not working in foreach loop

I am trying to run a part of my code using parallel processing. But an error is coming. The code is below: cores = detectCores() c1 <- makeCluster(cores[1]-6) registerDoParallel(c1) ...
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1answer
19 views

How to go from root mean squared error to percentage accuracy in R?

I'm creating a linear regression model. To test the accuracy I have seen tutorials that calculate RMSE, but I don't know how to go from there to reporting a percentage for the accuracy of my model. ...
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1answer
21 views

TensorFlow Question: Linear Regression Equation rewritten to (W^T*x)+b [closed]

As an exercise, I am trying to change my LR y_pred variable in the attached pdf file of a jupyter notebook from y_pred = tf.matmul(w,tf.transpose(x)) + b to y_pred = tf.matmul(tf.transpose(w),x) + b ...
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28 views

Changing to Traditional Equation for Linear Regression

I am trying to change the (w * x^t + b) in this code to the more traditional (w^t * x + b) form. import tensorflow as tf import numpy as np x_data = np.random.rand(2000,3) w_real = [0.3,0.5,0.1] ...
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2answers
32 views

How to calculate slope and intercept for every row in different columns

I am trying to calculate the slope and intercept for every row in different columns in a dataframe. The output (intercept and slope) should be added to the original data frame as new columns. To be as ...
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2answers
36 views

For Loop In Python using sklearn.model_selection.train_test_split

I need to create a FOR loop in Python that will repeat steps 1-2 1,00 times. Split sample randomly into training test using a 632:368 ratio. Build the model using the 63.2% training data and compute ...
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0answers
14 views

Linear regression with small N [migrated]

I was wondering if it makes sense to run a linear regression when my dependent variable only has 20 observations in total (I do have it for 6 years). This is the scenario: 20 observations consists ...
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0answers
18 views

I am not getting learning accuracy in Linear regression model on dataset loaded from sklearn?

I have loaded dataset from sklearn library which is already preprocessed. As I increase the complexity of model the accuracy getting lower. df = pd.DataFrame(data.data, columns=data.feature_names) ...
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11 views

How to interpret interaction in the linear model [migrated]

This will be an absolutely trivial question for most of you and I want to apologise for this but given a linear model that we fit in R, for example x ~ y + z + y:z the summary will give us the ...
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0answers
8 views

Comparing F-Statistics in Multiple Linear Regression [closed]

I am working on Multiple Linear Regression problem (in R), the data is of 1435 by 9 dimension, and while improving the model I came across following results: Case1 - Model considering all independent ...
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0answers
7 views

Why do residuals in Linear Mixed Models (LMM) have to have normal distribution and homoscedasticity? [closed]

Is it possible to accept a LMM as correct if it has either normally distribution (except for GLMM of course) or homoscedasticity?. I haven't got so clear why they're very important. For instance, I ...
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1answer
32 views

Does random_state in train_test_split effect the actual performance of a model?

I get why a model's score is different for each random_state but did expect the difference between the highest and the lowest score (from random_state 0-100) to be 0.37 which is lot. Also tried ten-...
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13 views

test variable with demographic [closed]

I want to test and see if there is any relationship between gender and "I do not know" variable in my database. Is there any way that I can do it with R? Let's say gender is like 1 and 2 or ...
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17 views

Singleton array array(157.01704296) cannot be considered a valid collection

This is the code I have tried to train a linear regression model with ut using libraries (to some extent). sklearn.metric import r2_score works, but when I try to use it prompts an error: Singleton ...
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0answers
59 views

Python: Fastest way to perform millions of simple linear regression with 1 exogenous variable only

I am performing component wise regression on a time series data. This is basically where instead of regressing y against x1, x2, ..., xN, we would regress y against x1 only, y against x2 only, ..., ...
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1answer
50 views

Loop Regression and Store Intercepts, Slopes, etc

I need to use a loop to regress each company’s returns onto the index return: The company return is: AAPL AXP BA CAT CSCO CVX DD DIS ...
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0answers
12 views

Is there any reason why traditional algorithms (LR, Ridge regression) perform better than machine learning algorithms? [closed]

I'm working on a data set and applying a number of algorithms to compare results but I always keep getting lower errors for linear and ridge regression than ML algorithms such as XGBoost and SVM ...
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0answers
14 views

linear regression scaling dependent variable when constant creates multicollinearity warning

I'm running a linear regression with just one IV. When I run the regression with a constant using statsmodels I get a Multi-Collinearity warning. After searching on here I can see it could be a ...
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0answers
16 views

How to set the intercept when doing a linear regression with R? [duplicate]

I'm trying to do a linear regression on a data-frame, where I know which intercept I should expect. For a simple linear regression, I proceed like this: > lm(log(mydf$y) ~ mydf$x) Call: lm(log(...
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0answers
10 views

stepwise regression output shows insignificant varibles

I am getting below output after using "stepAIC()" in R. I want to reduce the factors more. any idea how i can achieve that? is there any specific process or its okay to directly remove ...
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1answer
19 views

Getting error when using the .fit (linear Regression)

import pandas as pd from sklearn.linear_model import LinearRegression from sklearn.model_selection import train_test_split dataset = pd.read_csv('C:/Users/seemarahul/Downloads/adult-1.csv') X = ...
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0answers
12 views

Does it make sense to always use bootstrapping with regression models? [migrated]

I was wondering if there is any reason to not always use bootstrapping when estimating regression coefficients? If I use the full sample, I only get one estimate which might be driven by specific ...
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0answers
32 views

Linear regresion on each raster pixel to predict future month (in R language)

I have successfull run this code. I have read it from: Can't Calculate pixel-wise regression in R on raster stack with fun library(raster) # Example data r <- raster(nrow=15, ncol=10) set.seed(...
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1answer
28 views

Validation Accuracy stuck at .5073

I am trying to create a regression model but my validation accuracy stays at .5073. I am trying to train on images and have the network find the position of an object and the rough area it covers. I ...
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0answers
13 views

LinAlgError due to QtWidget

I am currently working on a GUI that helps the user load data and fit it with linear regression for further analysis. But the linear regression fails if I include a plotting widget in the GUI. On ...
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1answer
27 views

R Regression with different null hypothesis

I have a series of regressions where I would like to execute different null hypotheses in the same regression. This means that I would like to test whether one independent variable is equal to 1 and ...
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0answers
15 views

mcglm matrix linear predictor - Error in base::tcrossprod(x, y) : non-conformable arguments

I'm trying to fit a multivariate multiple regression model using the mcglm package (version 0.6.0) and have faced problems when specifying components of the matrix linear predictor. I am attempting to ...
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1answer
39 views

How to get value of group = 0 in linear mixed model

I have a very simple stat question probably. So, I am fitting linear mixed models like this: lme(dependent ~ Group + Sex + Age + npgs, data=boookclub, random = ~ 1| subject) Group is a factor variable ...
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0answers
22 views

How to plot 1:1 line on graph in Rioja

I am trying to plot an abline on a regression graph. In Rioja this plots automatically, however, when I add error bars the abline disappears. I have tried using the command: add.ref #add 1:1 line on ...
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1answer
16 views

Error in eval(predvars, data, env): object 'V1' not found

I'm new with R and I'm trying to use the linear regression's tools: data=read.table("http://users.stat.ufl.edu/~winner/data/pgalpga2008.dat", check.names=FALSE) Then I have to select only ...
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1answer
18 views

How to keep 'Time' and 'Group' in this mixed linear regression analysis

I have following study results: Two groups of mice were taken: group A (which received drug A) and group B (which received drug B). Weight was tested at baseline and after 1 month. Hence, data is ...

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