Questions tagged [regression]

Regression analysis is a collection of statistical techniques for modeling and predicting one or multiple variables based on other data.

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Multiple variable regression by group not working - regression summary is repeating the same results

I'm trying to run a multiple regression per group, using the instructions in the following post: How to apply OLS from statsmodels to groupby. My code snippet is as follows: for coins in df_raw....
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6 views

Bayesian Gamma regression, what is the correct link function?

I'm trying to do a bayesian gamma regression with stan. I know the correct link function is the inverse canonical link, but if i dont use a log link parameters can be negative, and enter in a gamma ...
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11 views

Which regression to choose based on dependent variables for a regression problem predicting waiting time

I'm working on an assignment where a part of it is to predict the waiting times for patients in a hospital based on patient data for a year. Based on the data, I have a lot of different features which ...
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1answer
17 views

lmer multilevel fit with intercept constraint

I regularly have this problem: I want to fit a multilevel regression, with constraint. I don't know how to do that. I usualy end up using lavaan, as it allows to set constraints on the regression ...
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1answer
21 views

Keras Signal Processing Model

Heyo, I have a model problem for some signal processing. Context: I have some signals stored in numpy arrays as floats, they are all of different lengths and I need to extract the offset of the ...
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19 views

Neural network regression with skewed data

I have been trying to build a machine learning model using Keras which predicts the radiation dose based on pre-treatment parameters. My dataset has approximately 2200 samples of which 20% goes into ...
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0answers
14 views

What should be the Variance in X to get a statistically significant relationship with Y? [on hold]

My goal is to understand the effect of a promotion campaign on sales of a product. My hypothesis is that there isn't enough variation in my campaign variable to run regression. I've ~200 geographical ...
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0answers
12 views

Setting priors in MCMCglmm in a multi-response model

I need to create a multiple regression model to estimate the potential 'defense' that a plant would have given their size and genetic family. I tried to use MCMCglmm to adjust this model. I have data ...
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1answer
24 views

gghighlight 2 specific points ggplot2

Trying to highlight 2 specific points from the next set of data: Entry,DWSpk,FE 1,1.335703125,36.075 2,1.0821875,45.79413708 3,1.28984375,36.925 5,0.910625,49.125 6,0.8728125,55.9 7,0.84125,56.925 8,...
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2answers
26 views

Using XGboost_Regressor in Python results in very good training performance but poor in prediction

I have been trying to use XGBregressor in python. It is by far one of the best ML techniques I have used.However, in some data sets I have very high training R-squared, but it performs really poor in ...
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1answer
22 views

How to random search in a specified grid in caret package?

I wonder it is possible to use random search in a predefined grid. For example, my grid has alpha and lambda for glmnet method. alpha is between 0 and 1, and lambda is between -10 to 10. I want to use ...
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1answer
17 views

Collapsing Categorical Feature Levels in Python StatsModels OLS output

I am trying to create a multiple linear regression model to predict the rating a guest gives to a hotel (Reviewer_Score) in Python using statsmodels. Review_Total_Negative_Word_Counts is how long ...
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41 views

Bootcov in rms package not working when cluster variable included in regression as fixed effect

I'm trying to use bootcov to get clustered standard errors for a regression analysis on panel data. In the analysis, I'm including the cluster variable as a fixed effect to address cluster-level ...
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35 views

Negative Binomial regression manually

I want to do a Negative Binomial regression manually and define a function that can be used for estimation of an arbitrary number of coefficients. I have How can I get a matrix of betas and p-values ...
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21 views

import csv to OrderedDict and predict using regression

i build a regression model to predict energy ( 1 columns ) from 5 variables ( 5 columns ) ... i used my exprimental data to train and fit the model and it works with good score ... import numpy as ...
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1answer
47 views

Shape not aligned error in OLS Regression python

I have a dataframe where I am trying to run the statsmodel.api OLS regression. It is printing out the summary. But when I am using the predict() function, it is giving me an error - shapes (75,7) ...
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19 views

Random Forest Regressor

I am trying to use RandomForestRegressor for time series forecasting for sales. If the 7th date of each month is a day off I have to stop summing sales at the previous workday. For example: 7 ...
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2answers
30 views

I am trying to plot a regression in r studio and can not figure it out [on hold]

Does anyone know how to plot a regression in r studio? Does anyone have a template of some sort of the code to plot this?
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28 views

how do i square a variable in r studio? [duplicate]

I want to run a regression with a squared variable. My original regression formula was: lm(formula = ed ~ dist + female + bytest + tuition + black + hispanic + incomehi + ownhome + ...
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20 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
68 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 there a function in R that gives directly such confidence ...
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2answers
36 views

ValueError: endog and exog matrices are different sizes - how to drop data in specific columns only?

I'm trying to run a multi-variable regression and getting the error: "ValueError: endog and exog matrices are different sizes" My code snippet is below: df_raw = pd.DataFrame(data=df_raw) y = (...
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1answer
36 views

What is the difference between the plot at the upper right and the one at the lower left corner when using scatterplotMatrix in the car library?

Why are the regression lines different for the plot at the upper right and the one at the lower left(image attached) corner when using scatterplotMatrix in the car library? Both seem to mark the same ...
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22 views

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

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 ...
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10 views

Add equation and R square in regression graph in R [duplicate]

I want to add the equation and R square to the graph. My code is: VAPModel <- lm(logVAP ~ Means, data = Totalcrime) VAPModel <- summary(VAPModel) formula <- logVAP ~ Means ggplot(data = ...
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37 views

Is it normal that Matlab nntool with defaults parameters outperform tensorflow adam, adadelta with default parameters?

I'm working on a regression problem and I tried it via tensorflow and keras with various Neural Network optimizers such as SGD, Adam and Adadelta and also matlab nntool with its default parameters ...
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1answer
22 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 ...
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0answers
35 views

How can I export a regression summary as is from R into Excel? [on hold]

what is the easiest method to export the summary of a linear regression into Excel? I want to export it as is, but it would be better if I can get the sample size too. At the moment, I am getting what ...
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0answers
13 views

Prediction results for two response variable from random forest

Instead of modeling the function as an ARIMA process, I am trying to use random forests and gradient boosting as regression techniques. In the problem setup, the predictors are t_2, and t_1 and the ...
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0answers
8 views

Table Visualizations not appearing in Tensorflow-PyCharm IDE

I am using PyCharm Community Edition and Python 3.7. Via Anaconda, I have installed the Tensorflow machine learning package. I am following the Google Tensorflow Regression tutorial here, but I am ...
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0answers
7 views

Optimization with Gridseach MAE or with independent MAE based on prediction

While performing a regression with a MLPRegressor using a GridsearchCV I found that the scores from the GridSearchCV (using neg_mean_absolute_error) and the score from a prediction (...
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7 views

Do I need to perform variable selection before running a ridge regression? [migrated]

I am currently constructing a model that uses last year's departmental information to predict employee churn for the current year. I have 55 features and 318 departments in my data set. A good ...
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1answer
43 views

Logistic regression per species/group (iris data set)

I have a similar dataframe to the iris dataset: library(datasets) df <- iris head(df) I'm trying to see which column/variable best predicts each species. I have tried logistic regression: model ...
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2answers
37 views

Fitting polynomials with additional functions

Suppose I have an array called Y and another array called X. I know how to fit a polynomial using numpy.polyfit() and as output I will get an array with coefficients. But what if I want to add some ...
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1answer
14 views

Logistic regression with categorial independent variabele

I have two question regarding logistic regression. I am doing a logistic regression on a binary dependent variabele and a independent variabele that consist of more than 100 categories. Is a logistic ...
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0answers
33 views

Does scikit-learn fit() modify original data?

In scikit-learn, does fit() modify the original data? I think I saw some code attaching a copy() call to the original data: regressor.fit(x.copy(), y.copy()) This is important to me as I wish to ...
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6 views

locpol error [r] “Error: length(xeval) < .maxEvalPts is not TRUE”

I am try to use function locpol in the homonym package in the following way, as depicted in the instructions (but skipping the xeval line): N <- 250 # xeval <- 0:100/100 d <- data.frame(x = ...
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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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1answer
15 views

R Generalized Method Of Moments Regression Estimation With Instruments

I'm trying to train a regression model using the generalized method of moments in R. I have 3 endogenous regressors that are correlated with 6 things I know to be exogenous. My outcome variable is y ...
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1answer
26 views

ValueError: Input 0 is incompatible with layer conv2_1: expected ndim=4, found ndim=3

I'm new to Deep Learning. I have randomly generated datasets with following shape (5,4,4). It's something like [[[1 2 3 4] [4 5 6 7] [7 8 9 10]]] I don't know why is it giving problem ...
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9 views

Adjusting time series data based on seasonality of another time series

So I have two cost data sets we will call: (1) Cost (2) Actualized Costs (1) is in terms of daily frequency and (2) is in terms of monthly. I would like to project (2) into a daily figure by taking ...
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34 views

Solving a logarithmic function using Accord.net

I have a set of data (X,Y) and I want to make a custom regression model from those data. My custom regression model is Y=a(X-b)^c. Can I use Accord.net to solve it? My goal is finding the values of a,...
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0answers
23 views

How can I improve MAE and MSE in My model

I'm new to Python and Data science. I'm working on a model to forecast hourly electric load.I'm using SVR for forecasting. Following is My code from sklearn.metrics import mean_absolute_error ...
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0answers
20 views

How to set error score for learning curve(sklearn) for regression?

My learning curve looks strange. Because error score is increasing. I used RandomForestRegressor() as a model, and set rmse_error as cross_val_score() scoring method. I think that score(error) is ...
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2answers
31 views

Equivalent of predict_proba for DecisionTreeRegressor

scikit-learn's DecisionTreeClassifier supports predicting probabilities of each class via the predict_proba() function. This is absent from DecisionTreeRegressor: AttributeError: '...
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9 views

LAD regression with lasso penalty term in sklearn

I want to minimise subject to a least absolute deviation (LAD) loss function with a lasso penalty too. There doesn't seem to be the functionality in the sklearn lasso function to specify LAD as ...
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1answer
39 views

Visualizations not appearing in Tensorflow-PyCharm IDE

I am using PyCharm Community Edition and Python 3.7. Via Anaconda, I have installed the Tensorflow machine learning package. I am following the regression tutorial here, but I am getting limited ...
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0answers
31 views

Too high values with matplotlib polynomial regression (polyfit)

First, I'm sorry for my english. Second, but the object of my post is I don't understand the result of the polyfit method applied to my data. I'm trying to get a graph of my download speed for a day,...
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0answers
24 views

Regression Predict: Cannot cast array data from dtype('<M8[D]') to dtype('float64') according to the rule 'safe'

My CSV file looks like this: I am trying to predict a linear regression model. But I get TypeError: Cannot cast array data from dtype('<M8[D]') to dtype('float64') according to the rule 'safe' ...
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0answers
32 views

Multiple regression with groups - pandas

I'm trying to run a multiple regression and want to run this per individual ticker (e.g. share symbol) in my dataframe, rather than on everything. I've been trying to follow the approach described in ...