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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27 views

Loop runs first iteration over and over

My loop runs the first iteration over and over instead of expanding and running the t+1, t+2, t+n estimations. Anyone could point if something is wrong? predictions = list() # loop for t in ...
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10 views

Testing three or more time series for cointegration in r?

I am estimating a VAR-model with three variables. Now I know that coint.test() can be used to test two time series for cointegration, but not three or more (as far as I know). Is this correct? And if ...
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Which error metric should I use to evalute a CNN-based regression model given the output ranging [0,1]

I built a CNN-based regression model, using very-high-resolution remote sensing images to predict the degree of multiple deprivation in Nairobi. My target varaibles are between 0 to 1, generated from ...
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19 views

Feature selection with two targets Python

I have a dataframe with 11 attributes where two of them are the targets. I would like to select the weighted attributes to process with. However, I only can find attribute selection by fixing one ...
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20 views

A simple modification of labels prevents model fitting

I am using a neural network (NN, PyTorch) consisting of several FC layers to solve a regression problem. Along with the MSE for assessing model performance, I also use person correlation (predicted vs ...
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4 views

estimate aleatoric uncertainty deep learning model

I am trying to estimate aleatoric uncertainty for my CNN deep learning model predictions. So I have changed the loss from mse to negative loglikelihood. But results and loss curves have completely ...
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10 views

Use trained non linear regression model to identify variables that maximize the predicted value

I trained a non-linear regression model with 23 features. I tried to make sure the model doesn't overfit with ~0.6 r squared on validation data and with 0.75 correlation coefficient between the actual ...
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16 views

How to assign a specific value of some binary V. as predictors in glm?

I want to fit a glm in R. The predictors I am using are let's say 4 variables: Age, Sex, HIV But I want to fit the glm in a way that it only uses those rows of HIV which are equal to 0 and those rows ...
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13 views

Error in plm.fit(…): empty model" with plm package

I am pretty new to r and have a problem with a fixed effects regression. I always get the error "Error in plm.fit(data, model, effect, random.method, random.models, random.dfcor, : empty ...
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10 views

How do I interpret interaction term coefficients?

eta_hat_ijk=-2.553+1.709*x_i+2.34*g_j+3.138*s_k+10.426*(x*r)_il-5.648*(r*s)_kl I have this regression model and am unsure how to interpret the two interaction terms using their coefficients. Any ...
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Time series forecasting in Python with 2 categorical variables [closed]

What approach is the best for a time series forecasting where you want to include 2 categorical variables in python? Im not finding any useful information that can help guide me with this; mainly ...
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Loop mixed model for several independent variables

I want to calculate a mixed model with several independent variables at the same time and I couldn´t find a similar post which worked for the data. Since I have many variables and x, x2, x3 (continous,...
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33 views

How do I solve this error in a rolling regression?

I am trying to compute a beta for this financial Data. I want to extract the first coefficient of the regression and put that values into a new column. This has to be done for each stock ID ...
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18 views

Loop only append first forecast

I'm having problem with my walk forward validation loop. I'm using an ARMA-GARCH model. I want to store all h+1 forecast on my test set, but my loop is simply overwriting the first forecast n times. ...
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38 views

Error when adjusting a GLM: Error in eval(family$initialize)

I am trying to adjust a generalized linear model defined below: Data: https://drive.google.com/file/d/1iJdZbEVwf0_zFnGUrNmVBCkmpzgI_fr1/view?usp=sharing model = glm(Var1+2 ~ log(Var2+2) + offset(log(...
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1answer
22 views

Turning a proportion of responses into binary response variable for logistic regression in R

So, I have had a question pop up that requires me to generate a response variable (the response needs to be binary with a simple yes or no) in a logistic regression model based off proportional data ...
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1answer
17 views

Forecasting one month data in Google Sheets [closed]

I am trying to forecast % of DAU users based on the adoption rate of the iOS14 operating system. For example, I have 8 days date of both the adoption rate (in table 1) % DAU users for the first 8 days,...
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1answer
10 views

Weight function calculation for dynamic output

I am trying to prepare a weight function whose output should lie in (min_output_value, max_output_value) and the output depends on the difference of actual and target value of y, i.e. (y_actual, ...
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8 views

My neural nerwork regression Model not performing properly because of skewed Target Variable

I am trying to build a ANN with a dataset having 400k samples. The target variable is highly skewed. The target variable contain data (0-7) range where 0-1 range data is very densed and 1-7 very few ...
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13 views

How do I determine the difference in significance between two groups in an interaction plot?

How do I determine if the difference between groups are significant or not in a moderating variable (dummy) across the values of another (x) variable? Can this be determined by looking at overlapping ...
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1answer
13 views

Finding the best bandwidth for kernel smoothing regression in R

I have simulated bivariate data (x,y) where y has mean 1/x and some variance. The data looks something like this: Data I am using kernel smoothing regression to try and find this relationship. ...
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1answer
28 views

Stats Models out of sample prediction of new data where features have been transformed

I'm intrigued on why I'm unable to arrived at the same values the model is predicting. Consider the below model. I'm trying to understand the relations between features insurance charges, age and if a ...
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13 views

Is there a faster way of using Leave-one-out Cross validation for local kernel regression with statsmodels

I am using statsmodels.nonparametric.kernel_regression.KernelReg from https://www.statsmodels.org/stable/generated/statsmodels.nonparametric.kernel_regression.KernelReg.html in Python to perform local ...
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2answers
55 views

Error: Input contains NaN, infinity or a value too large for dtype('float32')

I am solving a random forest regression problem. code is below import pandas as pd dataset =pd.read_csv ('C:/random forest/data.csv', decimal=',') xrf1 = dataset.iloc[:,0:3].values RESULTS_FOLDER='...
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13 views

Model is predicting but with an offset? Regression [closed]

I am using time series data for the prediction task. After the model training when I test it on the unseen data, it does predict the trend and diurnal variations but there is an offset between the ...
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2answers
41 views

How to select columns of a data base to call a linear regression (OLS and lasso) in sklearn

I am not comfortable with Python - much less intimidated and at ease with R. So indulge me on a silly question that is taking me a ton of searches without success. I want to fit in a regression model ...
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8 views

coudl not find the error in this below mentioned , kknn command [closed]

coudl not find the error in this below mentioned , kknn command coudl not find the error in this below mentioned , kknn command
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9 views

Cross validation for a subset using Python K-Fold and Random Forest

I have a dataset with the energy consumption of neighbourhoods in large Dutch cities as the dependent variable and several independent variables. I want make a Random Forest regression model to ...
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26 views

Why do I get abysmal differences in execution time in a Python regression analysis?

When I use Lasso from sklearn.linear_model the computation times are in the vecinity of 5 - 10 seconds (even using alpha = 0, which is equivalent to OLS). However, if I try and use the function ...
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4 views

GPR number of kernel scale

all I just use linear regression app to calculated 5-fold cross validation, (bayesian optimaztion). However, finally only one kernel scale provided. the reviewer's comment: As for the GPR model no-...
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7 views

Mse value for Lasso Regression

I am working on Lasso regression. I have 155 rows and 6 input columns in the dataset, so there is an overfitting problem in my last models(decision tree reg, SVR, rfr..). I tried lasso regression with ...
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9 views

Multi-target ARIMA forecasting Python

I'm trying to forecast a dataset composed for two attributes, being these two also the target. I've followed this example: from statsmodels.tsa.ar_model import AutoReg from random import random # ...
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11 views

Exponentiating coefficients with jtools' export_summs function

I cannot exponentiate the coefficients with the jtools' export_summs function. I wonder if it is possible one way or another? library(mice) library(MASS) library(jtools) # creating a dataset and ...
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21 views

Error in functions to define different structures of variance in a mixed model

I am testing different functions to define different structures of variance in a mixed effects model that is being represented below. Among the tested functions are: varPower, varExp, varConstPower ...
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30 views

How to do a regression using a specific model in R?

I have a dataset, which I want to adjust to the following model and get the values of parameters a and b x <- c(31.56750292, 26.91965284, 23.40296193, 15.63530835, 0) y <- c(1.132561597, 1....
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18 views

GaussianProcessRegressor fitting perfectly but poor perfomance on test data?

I am trying to understand GPR, and I am testing it to predict some values. The response is the first component of a PCA, so it has relatively good data without outliers. The predictors also come from ...
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1answer
22 views

The problem with the dimensions of a matrix when computing the least squares method

My previous topic in this area. Problem in solving algorithm polynomial regression,least squares method in Octave I decided not to change the main questions, but to create a new question for each ...
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10 views

Theil-Sen Regression: different results when translating x-axis

I want to fit a Theil-Sen regression (using scikit-learn) on a time series. I tried two things: fitting the regressor directly on the years (X = {2002:2019} fitting the regressor directly on the ...
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4 views

Ensemble regression tree method

I am planning to conduct a meta analysis based on 30 studies. The independent variables consists of both categorical (binary) and continuous data. The outcome variables are continuous. I am thinking ...
2
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1answer
43 views

Regression in data frame in R

Hey I have following test data: test = data.frame(Date = c(as.Date("2010-10-10"), as.Date("2010-10-10"), as.Date("2010-12-10"), as.Date("2010-12-10")), Rate = c(...
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18 views

How to extract an equation behind the trained DNN model using tf.keras

Is it possible to extract an equation behind the trained model using Keras/Tensorflow with multiple hidden layers and 64 neurons. For example I have two input variables x1 and x2 and ine outout ...
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1answer
31 views

tape = tape if tape is not None else backprop.GradientTape()

import numpy as np import matplotlib.pyplot as plt import tensorflow as tf def line(x): return 2*x+4 X = np.arange(0,20) y = [k for k in line(X)] a = tf.Variable(1.0) b = tf.Variable(0.2) y_in = a*...
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12 views

New to Bayesian stats, using ordered categorical data, how to interpret/check model?

I am trying to fit a model to my ordered categorical data of rating (1,2,3) and group (1,2,3). Other predictors are age (18-23, 24-30), continent, and use of medication (y/n). I have been using the ...
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9 views

using predict function for a 2k factorial model

I built this model with 3 factors each with 2 levels to try and predict what circumstances I need to maximize y ExperimentDesign <- expand.grid(A = gl(2, 1, labels = c("-", "+"))...
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4 views

How to get a p-value from a deming regression using R

I'm a relatively new R user. I'm wondering how I can get R to tell me the p-value from a deming regression. My code is: model3d <- deming(MRI~US9, data = UL, na.action=na.exclude) Thank you!
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13 views

set R based nls parameters so 0 is an option for any coefficient

I am trying to perform non linear regression on my data using nls in R and several different models which I am comparing using AIC to determine the best fitting model. As an example, I am fitting ...
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1answer
9 views

regression using Data Analysis toolpack throwing up errors [Excel]

I have a table as follows. I'm trying to use the regression feature to get an equation for the data. Here are my inputs for the regression: But I get the following error when hitting OK: Can anyone ...
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28 views

GLM family = binomial(“logit”) giving unrealistic results for binary features (0 and 1) [closed]

I am trying to build a model for a dataset with binary features to investigate past tenses in Europe. I want to model connections between features: Tense PROG_I PROG_C HAB_I HAB_C ITER_I ITER_C ...
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0answers
14 views

How to normalize unseen inputs for prediction using a model trained on normalized inputs?

I'm working on a problem where I'm using 3 features (3 columns) to predict a price using Elastic Net Regression. Without normalization or scaling and even with only 20 rows of training data, I'm ...
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22 views

Stata table replication

Finding difficulty in replicating the below table. The dataset is provided below Table to be replicated Dataset In the above table Standard errors reported in parentheses; standard deviations in ...

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