Questions tagged [linear-regression]

for issues related to linear regression modelling approach

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What type of regression model should I use in Python?

Project I am trying to learn the basics of regression in real world data with Python. I have Linear regression fairly well understood, I think but now am moving onto something more difficult. I have ...
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1answer
21 views

Raise a column in a multi-dimensional numpy array to 2nd power

I have no idea how to raise a column to the 2nd power, I've done some googling and nothing came up. I've tried: X[:,-1:0] = X[:,-1:0] ** 2, when X is a 47*3 numpy matrix, and I want to raise the last ...
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32 views

Why do these two lines of code give me different outputs in Pytorch and does that explain the weird parameters?

I'm running a linear regression with two inputs and two outputs using Pytorch. I generated a dataset then added noise so I could practice calculating the weights and biases. This is all through an ...
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How do I create force an interaction between multiple variables in a linear regression in R?

This might be more of a statistical procedural question than a programming question. My data contains several dummy variables that need to be interacted together: distance_1 through distance_4 YR_2006 ...
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Pseudo R2 with pglm package in R. (poisson regression with fixed effect model)

I need to calculate the Pseudo R2 from some regressions did with pglm package, with poisson family and model fixed. where is the Pseudo R2 in the summary? or how I can calculate it? pglm(y~x+x1, data=...
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use of function() to generate linear regression for multiple subsets of df

as a novice in R, I am struggling to assign a function and execute it for multiple subsets. (I tried to solve it for three days now and I simply can't grasp it even with the help of threads...) ...
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data partitionning function CreateDataPartition cross validation problem

I am trying to get predictions of a multiple variables model, its eplt, its made of 7 scores and one final exam score moy_exam2, I want to predict the later using the 7 scores, I have 29441 obs,like ...
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20 views

ValueError: setting an array element with a sequence. Fit method

Having trouble understanding how to pass vectorized columns with numerical one's: df_date['category1Vect'] = list(vectorizer.fit_transform(df_date['category1']).toarray()) df_date['sector1Vect'] = ...
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After I drop columns, I run my linear regression and the columns are there

I am very new, like going through school new. I am trying to do multiple linear regression and the columns I am trying to stop are still in the linear regression. df= df.drop('Income','...
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48 views

Linear regression on time series and configuration selection

I have a time series dataset with daily data of dependent variable and independent variables, some of which are impressions in different channels. Dependent variable is dependent var Independent are ...
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1answer
21 views

Inf and Nan in gradient descent

Why the code results in inf and nan after some iterations? I just want to implement linear regression in one variable through mathematical code. My code for gradient descent and the output of the ...
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Trinomial Regression Issues in R

In my work with R, I have previously built a binomial regression model and am now being asked to derive how "intervention2" improves my dependent variable "test". My previous model ...
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1answer
16 views

How to use segmented package when working with data frames with dplyr package to perform piecewise linear regression?

My data frame is separated by groups. I want to perform piecewise linear regression on each group and for that I intend to use the segmented package. First I created the linear models for each group ...
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How to Use Lee (1983) with Heckman (1979) [closed]

I'm doing a replication paper, and I need to use both Lee (1983) and Heckman (1979). Here is the replication paper I'm working with Chiswick (2007). Here is the current output for my model with ...
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5 views

Contemporaneous Regression Analysis

I am having a question regarding Contemporaneous Regression Analysis. I would like to perform such an analysis on a dataset and I am wondering what is the difference between that and the ordinary ...
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13 views

Correlation of best linear regression model vs number of variables of a certain correlation as input

I am evaluating a linear model based on a low number of features (3-4) with low correlation (0.05-0.2) with the target. The predictions are predictably poor, and I am trying to explain in simple terms ...
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1answer
26 views

Linear regression in python (tensorflow)

I am running a code i saw on buitin website on linear regression with tensorflow and it keeps giving me an error, I don't know what is wrong with the code. first i thought it was my ide , then when i ...
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1answer
21 views

How to plot the results of many regressions in a loop?

I have a for loop in my code that runs regression on each variable of mtcars dataset and gives me r-squared and p-value. How can I plot or visualize these results to compare the variables and see ...
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Tensorflow training loss value is extremely high

I try to follow tutorial on Time series forecasting with my fetched OHLCV data. Everything work fine until I use linear model with model.fit in compile_and_fit function.(Linear model in right menu) ...
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1answer
24 views

How to colour and move R squared equation to next line in ggplot2 facet_grid?

For the graph dimensions I need, I want the R squared to appear on the next line. I also want the colour of the text to correspond to the color of factorz x <- c(1:50) y <- rnorm(50,4,1) z <- ...
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40 views

Roll regression for 4 years of data which moves one month ahead for each new regression and with NA treatment

Some time ago, I made a question here about a code that permit me to estimate rolling regression taking 4 years for each regression which moves one month ahead for each new estimation. The answer was ...
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1answer
41 views

Regression model without predictors using plm in R?

I have an unbalance panel data table with variables ID, year, and outcome. The data for each ID spans from 2005-2020, although each ID won't have all 15 years of data. Here's a sample: ID, year, ...
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Error in rep(X, times = ceiling(length(Y)/length(X))) : attempt to replicate an object of type 'closure' in cross validation for linear regression

I want to predict snp101 for an exercise I have. I don't need to use a good model, just a one that works and gives back a correlation between the closing value I predict to a certain date I was given. ...
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1answer
19 views

How should I fix the code in order to make the linear regression model using train data properly work?

What I should do is to collect height and weight information from 5 people and use it as train data to learn the linear regression model in Colab. There is an example code, so I fixed it, but it doesn’...
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16 views

Prediction of one year with linear regression [closed]

I am trying to predict the values for one year using linear regression. My data looks like this: created_at Sum timestamp int value ... ... The timestamp column covers aprox. 1 year and the Sum ...
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1answer
10 views

How do I create a linear regression model in Weka without training?

Suppose the linear model I want is sales = (0.4 * age) + (0.05 * income). How do I create this linear regression model in Weka without training on any data? I just want to save a model file that ...
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1answer
56 views

How to reshape 'year' from a single feature?

I have a df containing columns 'year' and 'per capita income (US$)'. plt.scatter(df.year, df['per capita income (US$)'], color='red') plt.xlabel('Year') plt.ylabel('Per Capita Income (US$)') plt.show()...
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1answer
26 views

Pipelines in Pandas Python

I'm learning Data Analysis with Python and there is something I can not figure out. I understand that exists three options to develop a model: Linear, Linear Multiple, and Polynomial. However, then I ...
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32 views

Constraints on coefficients in Linear Regression in R

I want to fit a linear regression to fit an independent variable y using the predictors x1,x2 and x3. I specifically want to add a constraint in my regression such that the coefficient of x2 is in ...
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18 views

normality of residuals in a multiple regression hypothesis not met? [migrated]

I am trying a multiple regression on a 25000 observations data base, with 7 independant variables, and one dependant, of course the first thing to do in a regression is to verify the normality of the ...
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1answer
30 views

Calculating R^2 for linear regression: SSreg/SStot vs 1-(SSSres/SStot) leading to different results

I'm trying to calculate R^2 of a regression. Looking at this article it can be calculated either by SSreg/SStot or by 1-(SSSres/SStot). I was under the impression that I would end up with the same ...
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14 views

Index Name in the DataFrame

I want to perform multiple linear regression based on 2 independent variables only but the independent variables will change as I want to try few variables combination. I managed to perform that ...
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1answer
33 views

Multiple linear regression for real estate dataset prediction

I learned linear regression so I've decided to test it to this real estate dataset https://archive.ics.uci.edu/ml/datasets/Real+estate+valuation+data+set I use gradient descend to calculate my weights ...
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26 views

Why does my implementation of gradient descent bahave strangely? (Pure Python)

This is how I generated the training data for my Linear Regression. !pip install grapher, numpy from grapher import Grapher import matplotlib.pyplot as plt import numpy as np # Secret: y = 3x + 4 # ...
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1answer
16 views

Print and export loop from simple linear regression

I did a loop to perform a numerous simple linear regression in a dataset. But then, I only want to print the result that meet the certain threshold (ie: R-squared > 30% and p-value < 5%). Then I ...
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17 views

Do I have to use a pointer to call 'popt' variable using 'curve_fit' Scipy function? [duplicate]

I'm working with non-linear regression with python and obtained 'popt' and 'pcov' from 'curve_fit' but when I call 'popt' from a function, I receive an error that there is a missing argument. I don't ...
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1answer
16 views

95% CI of R^2 in a linear mixed weighted regression

I am trying to calculate the R^2 and its 95%CI in linear mixed weighted regression. Since the summary of lme() doesn't provide R^2, I am using the r.squaredGLMM() from MuMIn package, and boot() from ...
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24 views

How to apply linear regression model only when a certain condition of a input column is met?

My train data set has following attributes: cost, clicks, impressions, conversions, adgroup I created a linear regression model to predict 'revenue' Now, I want to modify my model so that I get output ...
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17 views

How to use a nested loop to apply linear regression to 2d array in matlab

I am trying to apply a linear regression to a 2d array in matlab. The code I am trying to get to work is Reg=zeros(11200,8); for j=(1:8) for i = (1:11200) Reg(i,j)=NormEofs(:,j)\air2d(i,:)'...
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1answer
31 views

How do I use the linear regression coefficients to come up with a value of a used car?

Goal: I want to predict car prices using linear regression on the following used car prices data: My Procedure: I one hot encoded 'Make' and 'Type', and added those columns back in: I then used ...
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12 views

Scala- Databricks- Linear Regression

Can someone please explain me the meaning of below line of code (in scala-databricks) val categoricalIndexers = categoricalVariables .map(i => new StringIndexer().setHandleInvalid("skip"...
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2answers
32 views

How do I normalise dates in Tensorflow.js?

I've been building some simple linear regression models in Tensorflow.js with various types of data sets. However, I would now like to see what the relationship is between dates and price in my ...
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42 views

bayesian linear regression with given distributions X, y instead of pairs {(X1, y1),..(X100, y100)}

I'm wondering if is it possible to model data by knowing only distribution of features (X) and targets (y). Thus, instead of paired variables {(X1, y1), (X2, y2), .., (Xn, yn)} I know only mean value ...
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26 views

How to set linear regression lines of different series of data's intercepts to be zero

I'm working with a dataset with different series, and I need to do linear regressions for all the series. The thing is that I want to set the intercepts to be zero for all the linear regression lines. ...
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0answers
9 views

ValueError: X has 1 features, but DecisionTreeRegressor is expecting 62 features as input

I'm not able to display graph (scatter plot). I'm getting value error: X has 1 features, but DecisionTreeRegressor is expecting 62 features as input. Can anyone please help. Thanks in Advance. X_pred,...
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1answer
34 views

Iterative pairwise comparisons across columns in R

I have a very large matrix 200 x 1500, where the rows are samples and the columns are data. I want to do pairwise comparisons of all 1500 columns (~1.1M tests), so combn would take too long. I'm ...
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1answer
26 views

manually build a linear regression in sklearn without using fit?

Is it possible to build a LinearRegression in sklearn by passing in the intercept and coefficents instead of using .fit?
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1answer
42 views

How to make x*y with simple deep learning(linear regression)

For my future use,I wanted to test multivariate multilayer perceptron. In order to test it, I made a simple python program. Here's the code. import tensorflow as tf import pandas as pd import numpy as ...
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1answer
27 views

Tensorflow.js returns “NaN” Value when running Linear Regression Model

I'm trying to run this linear regression model which would essentially give me an output based on const prediction = model.predict((tf.tensor2d([20], [1,1]))); I'm however unfortunately getting NaN ...
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1answer
32 views

Difficult to plot linear regression line on scatter plot with log scale

I have a example dataframe like this: import pandas as pd import numpy as np import matplotlib.pyplot as plt df = pd.DataFrame({'a':[0.05, 0.11, 0.18, 0.20, 0.22, 0.27], 'b':[3.14, ...

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