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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How to apply grid search on polynomial regression in python

I am unable to find out a way as to how to write the code for applying grid search on polynomial regression in python I tried the following but it didn't work model = LinearRegression() params = {'...
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7 views

XGBoost error - Unknown objective function reg:squarederror

I am training a xgboost model for regression task and I passed the following parameters - params = {'eta':0.4, 'max_depth':5, 'colsample_bytree':0.6, 'objective':'reg:squarederror'} num_round = 10 ...
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How to merge multiple fitted LinearRegression models into one model to get predicted value from combined models?

I'm newbie with sklearn library. I want to merge already fitted LinearRegression models to get predicted value from merged models. I'd like to create a function or new estimator class which would ...
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2answers
38 views

Can't figure out how to print the least squares error

I wrote some code to find the best fitting line for a couple of data points using the analytical solution to least squares. Now I would like to print the error between the actual data and my estimated ...
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15 views

Does using transposed Conv (deconv) layer after conv layer without any pooling show nice performance in image regression?

I have some questions about dealing with Transposed convolution, or deconvolution in CNN. I am working on some image regression from non-image feature input. I've seen several researches that ...
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Which types of neural networks are used for classication and regression tasks? [on hold]

Are there any examples of code in python with different types of neural networks used for classification and regression? If so, can anyone send it. If not, recommend a book.
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21 views

Choosing a panel regression model in R (plm)

I am trying to work out how to use panel regression in R and am not sure on whether to use FE, RE, pooling or between models Hello, I am new to panel regression and trying to get my head around it. ...
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15 views

Regression batch size validation set

I want to solve a regression problem with tensorflow using mini batch gradient descent. for the trainingset i use the batch size 30. do i need to choose the same batch size for the validation set? or ...
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1answer
29 views

Curve fitting with gradient descent

I wrote some code that performs gradient descent on a couple of data points. For some reason the curve is not converging correctly, but I have no idea why that is. I always end up with an exploding ...
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18 views

Error with types in repeated k fold with cross validation

I am trying to use repetitive k-fold with cross validation for a dataset, but I receive an error that has to do with types. I tried removing the whitespace from the data values, but the error still ...
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2answers
25 views

'PolynomialFeatures' object has no attribute 'predict'

I want to apply k-fold cross validation on the following regression models: Linear Regression Polynomial Regression Support Vector Regression Decision Tree Regression Random Forest Regression I am ...
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1answer
20 views

How can i evaluate my regression model which has only one test and one predicted value?

So, I have used regression model with multiple training values and i am predicting only one value i.e. test set and predicted has only one value. Now, i want to assess the model. How can i find the ...
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1answer
40 views

Why is the outcome variable appearing as a coefficient in the summary table of the linear regression?

I'm performing a linear regression using recipes to predict salary based on rank (assoc professor, assistant professor, and full professor), sex, discipline (applied or theoretical), years of service, ...
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2answers
34 views

Prediction Error on training and evaluating prediction models

I am trying to train and evaluate prediction models using a dataset I found on Kaggle, but my precision is 0 and I am wondering if I am doing something wrong The code works for the random forest ...
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1answer
23 views

Using two different regression models on one dataset to predict a single label

I wanted to use KNN on features which were textmined while using another type of regression for the rest of my features. Is it possible to somehow combine both regression models to predict a single ...
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1answer
70 views

How to create a loop to run linear regression with multiple independent variables and dependent variables with standardized coefficients in R?

I'm currently trying to run a loop performing linear regression for multiple independent variables (n = 6) with multiple dependent variables (n=1000). Here is some example data, with age, sex, and ...
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11 views

How to save stats in rms bootcov

I'm trying to save the distribution of R2 values as I bootstrap a model, using the ols and bootcov functions in the rms package. library(rms) #Generate data x = seq(1,100) y = 0.2*x + rnorm(100) #...
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1answer
60 views

Fitting a quadratic function in python without numpy polyfit

I am trying to fit a quadratic function to some data, and I'm trying to do this without using numpy's polyfit function. Mathematically I tried to follow this website https://neutrium.net/mathematics/...
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Can I use Restricted Boltzmann Machine for multiple regression output

My question - Can we apply RBM in predicting multiple output regression like predicting course scores for a student, price of several product that a customer buys? So I was dealing with multiple ...
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1answer
35 views

How to convert list of regression outputs into data frames with broom::tidy by using lapply function?

I have a list with multiple data frames. Each data frame contains three columns (ColumnOne, ColumnTwo and ColumnThree). list <- list(df1, df2, df3) I am using lapply to run a regression on each ...
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15 views

Does the weight statement in proc logistic impact the independent variable or dependent variable?

I am running a project which implements a two-step procedure for predicting whether an individual will or will not pay back their loan. This project is designed to teach us about retail credit risk ...
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1answer
47 views

Same vs Different Target Values for each sample for Regression in Machine Learning

I am a newbie in machine learning and learning the basic concepts in regression. The confusion I have can be well explained by placing an example of input samples with the target values. So, For ...
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20 views

Is there a method to check the frequency of variables used in multiple models in R?

I am trying to see what variables are highly used in a stepwise regression by creating 10 stepwise models in R. The full data set I used was Credit in library ISLR. I created sub training data sets ...
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18 views

How to run bootstrap truncated regression using a data that include categorical variables(size=0,1)

I am running bootstrap truncated regression, I realize that adding categorical data gives me error. This is the truncated regression model; note that the "non" is the name of the data , MAL is the ...
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Examples of code in python for classification and regression tasks

I should create different structures of neural network in python train them solving classification and regression tasks. Are there any examples or tutorials for that? I don't have any experience ...
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Kernel keeps dying when running GridSearchCV

I'm trying to find the optimal parameters for my RandomForestRegressor using GridSearchCV, but every time I run the following code the kernel dies in my Jupiter notebook. Is there anything I can do? '...
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1answer
20 views

0 DF in regression in SAS enterprise guide

I created dummies in SAS (part of the codes below) and run regression (threw away M23). It was working fine. But then I tried to group them by age since we don't have enough members. I ran it the same ...
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1answer
23 views

Label and integer as input for neural network

I want to do regression using a neural network. As input I have a real value and I want the neural network to predict a real value as well. So far it works already. Now I also have a independent ...
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0answers
14 views

How can I see the equation underlying GaussianProcessRegressor()?

If a regression model is developed using the scikit learn GaussianProcessRegressor, how can the model be reconstructed manually in a different programming language? How is the equation structured and ...
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1answer
42 views

How you can make a list from a date frame and then a regression?

I have a DF with 4 columns. In the first column are stations and in the other 3 columns are time, weekday and number of people. My goal is to make a regression(glm) for every single station. I think ...
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13 views

ZINB error code in winbugs: order of negative binomial y[1] must be an integer

I have a problem while running ZINB regression using Winbugs, it keeps showing "order of negative binomial y[1] must be an integer" when I click "gen inits" in the Specification Tool tab. This is my ...
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11 views

How to choose training instances from unlimited theoretical data for multi-target regression?

I have a dataset of images consisting of multiple continuous outputs. It is inexpensive to find a training example for any collection of outputs, but what I'd like to do is choose the most informative ...
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1answer
18 views

Extracting Variables from Elastic Net in R

How do I extract variables from elastic net for modeling purposes? (if this is a stupid question and the answer can be found someplace please let me know and I'll look) I have already done cross ...
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1answer
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In a regression surface Z, how to find maximum X value where Z is less than a predefined value?

I have created a meshgrid of X, Y with dimensions I x I and corresponding surface Z from a regression model. How can I pull out the coordinates of maximum of X, where Z is less than a given threshold ...
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1answer
20 views

Rolling Window Forecast

I want to predict exchange rates with macroeconomic fundamentals doing an out of sample forecast with time series data in Python. To assess the forecast accuracy I want to apply a rolling window ...
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1answer
18 views

which settings to use in last layer of CNN for regression

I try to use a CNN for a regression task. My feature data has shape (6097, 30, 32, 9): 6097 records 30 timesteps 32 histogram bins 9 channels (image bands) the target data has shape (6097, 1) ...
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Need help in understanding Linear Regression applications

Is it possible to find the optimal selling price using Linear regression method if i only have a months worth of Quantity sold, Revenue and Selling price data ?
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Image Input Image Output regression

For example 1: If I have a data set with input as well as output being images. Like image of a person who is 15 years old as input and 40 years old as an output. Example 2: Image (plot) of a white ...
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29 views

Running multiple logistic regression with same dependent variable in Rmarkdown

I am creating binary dependent variables using a threshold rule # here a simple dataset such as x <- rnorm(n = 50, mean = 1, sd = 3) names1 <- c(rep("gold", 10), rep("silver", 20), rep("...
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1answer
21 views

Regression with chainer

How can I do regression with Chainer? Just replacing the usual L.Classifier with a loss function like F.mean_squared_error does not work, e.g. from chainer import iterators, optimizers, training ...
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48 views

Error in rep(1, N) : invalid 'times' argument while attempting a ridge regression using cv.glmnet

I'm trying to perform a ridge regression on a large dataset with 11 predictor variables. I've pulled all the relevant variables from my CSV dataset and set them as matrices so that the glmnet library ...
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34 views

How to run a Hausman test on python with statsmodels or linearmodels?

I am running a GLS regression analysis using statsmodels on python. I have a panel data of about 20 years of observations. I have difficulties running a Hausman test to identify dummy variables that ...
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Why regression model built using torch wont work well?

I like torch because it is very easy to monitor and debug parameters but I have always issue with torchs regression class Net(torch.nn.Module): def __init__(self, n_feature, n_hidden, n_output): ...
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19 views

Small sample size for a regression marketing model

I have sales, advertising spend and price data for 10 brands of same industry from 2013-2018. I want to develop an equation to predict 2019 sales. The variables I have are (price & ad spend by ...
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0answers
20 views

Formula for dynamic number of nonlinear transformations in R

Have a dataset with many predictor variables and want to take nonlinear of transformation of all the variables WITHOUT manually coding all of them. This answer (short formula call for many variables ...
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3answers
67 views

R Storing regression coefficients in data frame column by group

I have a data frame with results from a survey. The results are stored in a verticalized format. The data frame looks like this - set.seed(1000) df = data.frame(RESP_ID=c(rep(1,6),rep(2,8),rep(3,9),...
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11 views

CNN for regression with large MSE

My goal is to replicate the CNN approach (not CNN+GP, just CNN) used in the following paper to estimate crop yields based on satellite imagery. The target data is annual soybean yield per county in ...
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1answer
93 views

Validation loss not moving with MLP in Regression

Given input features as such, just raw numbers: tensor([0.2153, 0.2190, 0.0685, 0.2127, 0.2145, 0.1260, 0.1480, 0.1483, 0.1489, 0.1400, 0.1906, 0.1876, 0.1900, 0.1925, 0.0149, 0.1857, 0.1871, ...
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3answers
66 views

Tensorflow model performing significantly worse than Keras model

I was having an issue with my Tensorflow model and decided to try Keras. It appears to me at least that I am creating the same model with the same parameters, but the Tensorflow model just outputs the ...
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1answer
21 views

I want to use a fixed effects model on a regression with one variable being the group variable

I am using felm() and the code is running on all the model… but I need it to run on state only… the problem asks "Estimate the model using fixed effects (FE) at the state level". Using felm() is not ...