Questions tagged [linear-regression]

for issues related to linear regression modelling approach

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15 views

Stock data linear regression by sklearn

I am using the Sklearn to do the linear regression for a set of stock price data, after I normalized the data, the MSE all becomes 0. Why I get all MSE 0? and please help me, somebody said it's ...
1
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0answers
10 views

Statsmodels OLS function with dummy variable Python

I'm trying to create a regression with categorical variable. I start with get all the dummy variables. And drop everything that I don't need in the x value for d1 = pd.get_dummies(df2015 ["CBSA ...
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1answer
32 views

Calculate 95% confidence interval on the mean

I have an exercise that says Find a confidence interval of 95% on the mean number of games won by a team when x2=2300,x7=56 and x8=2100. Is the a function in R that gives directly such confidence ...
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0answers
9 views

Variable weight calculation

I am looking for algorithms that assign weights to some variables based on an outcome. You have a response variable Y, let's say the sales generated by a customer and some explanatory variables ...
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0answers
16 views

SageMaker linear-learner results not exact?

I have issues with the results i get from the AWS (SageMaker) linear-learner. Namely I was trying to replicate the results I got from R, SAS or Knime (using linear regression) but unfortunately what ...
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0answers
36 views

Calculate confidence intervals in R

I wanted to calculate a confidence interval of 95% for an specific parameter beta using the function intervals(object,level,...) but marks an error that says Error in UseMethod("intervals"): no ...
1
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1answer
20 views

already installed but ModuleNotFoundError: No module named 'sklearn'

I'm pretty sure I have installed scikit learn because I've tried pip install and Conda in terminal and I get the message "# All requested packages already installed." but when I run my code in Python ...
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1answer
20 views

clustering data based on multiple linear regression in Python

I'd like to separate data and put them into 13 different set of variables like each red circle (see the image below). But I have no idea how to cluster the data based on multiple linear regression. ...
0
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1answer
20 views

How do I choose a regression model after using best subsets regression?

I'm using the leaps package in R for an assignment. I was given an outcome variable and 20 independent variables and told to find the model with which the data points were generated. I've narrowed it ...
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1answer
24 views

r - geom_smooth() curve not showing up on plot

Why is the geom_smooth line not showing up in the plot generated by the following code? test <- function() { require(ggplot2) # browser() set.seed(1); df <- data.frame(matrix(NA_real_, ...
1
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1answer
21 views

Test in R whether coefficient estimates of categorical variables are different in linear regression

How do I check in R whether coefficients of different levels of categorical variables are statistically the same. The model that I have is: Y = Intercept + X1 + X2 + X3 + X4 Both X1 and X2 are ...
1
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2answers
34 views

linear fit on log-log plot isn't linear

I'm trying to analyse reproducibility of one experiment. I replaced 0 values with 0.1 and I plotted data from both experiments with log-log axes. So far, so good. Next, I got rows where values in ...
2
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1answer
19 views

Piecewise regression : davies.test returns p-value = NA

My data : require(segmented) cp <- c(0.079, 0.079, 0.079, 0.080, 0.080, 0.081, 0.081, 0.081, 0.081, 0.081, 0.081, 0.082, 0.083, 0.084, 0.086, 0.088, 0.088, 0.088, 0.088, 0.088) dates <- c(...
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0answers
23 views

the missing value trick for regression [sas]

Use the missing Y trick and PROC DATASETS to predict the yield for a certain field that receives 45 pounds of fertilizer and 38 inches of rain. anyone have any idea how to do it? it's my first time ...
1
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1answer
19 views

How to forecast y values using linear regression model on new x values

I have a multivariate linear regression model: model <- lm(y ~ a + b + c, data = df) Lets say the historical period for y, a, b, and c is quarterly data from 2000-2017. Date y a b c ...
1
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1answer
19 views

Regressing a data frame of multiple dependent variables on a data frame of multiple explanatory variables

I have a data frame of multiple dependent variables called dependents and another data frame consisting of explanatory variables called explanatory. I want to regress each variable in dependents on ...
2
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1answer
51 views

Python: 'for' loops and iteration in Linear Regression

I'm building a basic Linear regression model using the statsmodel package and here's what I'm trying to do: Build a 'for' loop that checks the probabilities of each of the features, checks if they're ...
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2answers
25 views

loss: nan Keras regression

I am trying to predict a continuous value (using NN for the first time). I have normalised the input data. I can't figure out why I am getting a loos:nan output starting with the first epoch. I read ...
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0answers
45 views

Speeding up linear regression in R with very large p [on hold]

Background: I'm tring to fit a linear regression model to a dataset which includes mostly categorical variables, that have a large number of interactions between them, e.g.: lm(y ~ x1*x2*x3*x4, data) ...
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0answers
14 views

In R, how would you test for the joint significance of a set of parameters? [migrated]

I have performed a simple linear regression which consists of an intercept and 20 variables in R. The variables can be seen as two groups, call the parameters for the first group the alpha group and ...
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0answers
10 views

Standard Deviation Calculation - Multiple Linear Regression

If anyone advise the Standard Deviation formula involving 3 Independent Variables and 1 Dependent variable, that would be great. Calculating the Standard Deviation for simple linear regression is a ...
2
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2answers
40 views

Extract regression results with names of covariates

I would like to run linear regressions using a categorical exposure variable and to output the results to an excel sheet with the names of each covariate included next to their results. The Stata ...
0
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1answer
27 views

Looping Regression Model grouped by two columns in R using lapply

Problem: I have a data frame that looks like this: YEAR Region Illness_Code Illness_description COUNT 2014 A ABC test 222 2015 A ABC ...
2
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1answer
46 views

Run linear model in a powerset of variables

I am trying to get a data frame with different variables and run a linear model for each combination of those variables. A simple example is: names <- c("Var1", "Var2", "Var3") vars <- ggm::...
0
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1answer
16 views

Store ols regression results as a dictionary/dataframe or list

Once we do OLS regression is there a way to store the data as a dictionary/list or dataframe? I got my results for OLS regression and printed them using model.params and this is what I get: ...
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1answer
14 views

predict next values for SVR lib

I am reading this document. https://scikit-learn.org/stable/auto_examples/svm/plot_svm_regression.html Can you tell me how to make predictions for an element from outside the set on which the model ...
1
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1answer
34 views

Increase training MSE in a special case of multiple linear regression

I am doing a special case of multiple linear regression with variables x1, x2, and y. For a fixed degree i, the predictor variables are x1,x1^2,x1^3...x1^i, x2,x2^2,x2^3...x2^i, x1*(x2^(i-1)),(x1^2)...
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0answers
49 views

cost function is continuosly increasing

import matplotlib.pyplot as plt import tensorflow as tf import numpy as np import pandas as pd from sklearn.model_selection import train_test_split df = pd.read_csv("FuelConsumption.csv") df = df[['...
0
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1answer
43 views

Predicting X variables given Y Output in R

Is there a formula in R that allows you to do the following: What would the x values be to achieve with highest probability a given value of Y. For example, assume my Y variable is a score from 4-10 ...
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0answers
13 views

Is it necessary to scale the data after box-cox transformation

I have a problem. When I did regression analysis using SVR with a linear kernel, I found that the dependent(target value) were not normally distributed and had a long tail on the left side. So I used ...
2
votes
1answer
27 views

Python with Pandas--Unable to read a CSV file from a URL

After importing the following libraries, I am trying to read a CSV file from here. `import pandas as pd import numpy as np import matplotlib.pyplot as plt from sklearn....
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3answers
45 views

LinearRegression in Python giving incorrect results?

I have a comma-separated CSV file with two numerical columns - inputs and outputs. They are correlated in a (more or less linear function), see below. The sample I have is very small. Below, is the ...
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0answers
24 views

How do I remove empty graphs?

Correlation between each drought variable and yield drought_stress_features_list = ['PREC_STD', 'VP_STD', 'AWC', 'PREC_AVG', 'VP_AVG', 'KSAT', 'SWE_STD', 'SWE_AVG'] ...
0
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0answers
29 views

Build multiple regression model with Y as a Factor in R [migrated]

I have a data set that rates customer satisfaction based on three options: Recommend Neutral Not satisfied I understand those may not be the best options but that's what I have to work with. ...
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0answers
7 views

Multiple Linear Regression - Determining Coefficients for 3 independent variables

I am struggling to find the coefficients for b1, b2 and b3. My model has 3 independent variable x1, x2 and x3 and one dependent variable y. x1,x2,x3,y 89,4,3.84,7 66,1,3.19,5.4 78,3,3.78,6.6 111,6,3....
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1answer
44 views

Linear combination of regression coefficients in R [closed]

I need to run a multiple regression in R, with the variables X1, X2 and X3, where there is a variable θ = β2 + β3. So instead of β2, for the coefficient of X2 I need to use (θ - β3). How could I do ...
2
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1answer
29 views

Dimension mismatch for numpy array

import matplotlib.pyplot as plt import tensorflow as tf import numpy as np import pandas as pd from sklearn.model_selection import train_test_split df = pd.read_csv('FuelConsumption.csv', ...
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0answers
31 views

Find the 2 most important predictors of red wine quality [closed]

I want to analyze and solve a few questions from the very famous project called red wine quality analysis which is freely available in the following link: https://www.kaggle.com/piyushgoyal443/red-...
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0answers
48 views

Improving a regression model in R [migrated]

I have currently taken a sample from here. The regression model I have written is as follows. Regression1<- lm(Total_Users~Season + Hour + Holiday + Day_of_Week + Working_Day + Weather_Type + ...
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0answers
44 views

Error in gls function in R “closure is not subsettable”?

I am attempting to resolve autocorrelation in a multivariate linear regression using the gls function from nlme in R. Here is my code: ols2 <- gls(saleprice ~ ., data = AmesHousing1, na.action=na....
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1answer
29 views

R: step function not writing out complete model in result report

I am running the "step" function in RStudio on this model: inputData.entry = lmer(height ~ ENTRY_NO + REP + (1|SUB.BLOCK), data=inputData); # our model this is what I am running with "step" : ...
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1answer
13 views

Python (ML) Linear Regression using 3 predictors for 1 target (quality)

I have done EDA on this white whine dataset and I am trying to find 3 predictors of quality and conduct linear regression on them. import pandas as pd import numpy as np import matplotlib.pyplot as ...
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2answers
26 views

Efficiently finding the slope of a line

I have a series of (x,y) data points: perhaps the location of an object in a video, or the position of a user's finger on a touch screen. I need to determine whether this object/touch/etc was moving ...
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0answers
12 views

Creating dummy variables in multiple regression in a case where 1 level of the predictor is a subgroup of another level?

I am running mixed effects linear regression in R using lme4::lmer. I want to test whether parent illness severity impacts offspring scores on a measure. I have a sample of related individuals and I ...
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1answer
16 views

Linear singly-celled two-layer ANN with produces constant predictions

Say that we want to fit a straight line in the plane through the origin and the point (1, 2). We can view this as linear regression with a sample of size 1 and no intercept. This, on the other hand, ...
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0answers
19 views

How to find and compare the estimated and actual values in R [duplicate]

I have COCOMO dataset and want to find the predicted values of the Actual effort (ACT_EFFORT variable). The COCOMO dataset have 60 instances , so how can I find and compare the estimated values ...
1
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2answers
23 views

Create time Series Object from Wide Data, group by column value

Below is my dataframe (my_df). I am trying to make it time series object to predict for year 2020 but I am struggling to convert this format of data. I am trying to use below code to convert it into ...
1
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1answer
38 views

PySpark Linear Regression in dataset with more features than data points

I'm using PySpark to develop a simple text mining application. The goal is to classify a specific document as Spam or Not Spam. I have approximately 1000 documents available to train the model (n). ...
2
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0answers
29 views

Manually fitting a function with linear regression

I have a simple function and some randomly generated data and I am trying to fir a quadratic function to it manually, constructing the design matrix myself and doing gradient descent using mean ...
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1answer
30 views

Fitting polynomials of different degrees to function with custom loss function

I am trying to fit polynomial functions of different degrees to some data I generated and I am doing gradient descent without a library. I am also using a custom loss function that I manually ...