Tagged Questions

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

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3 views

Regression Analysis, Timer Series

How to perform regression analysis for a time series data set which involves mean temperature as its response? I have a data set which has Temperature as the response and I need to perform regression ...
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3 views

Variable Lengths Differ for logistic regression controls

I'm trying to run a logistic regression, but keep getting an error message that says variable lengths differ for my control variables. I think it has something to do with how the controls were recoded ...
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0answers
24 views

how to display t value in texreg

I'm a beginner in R, and I have got a question on texreg. I have been searching for information online for days but I didn't find much. I want to include the t value in my exported table by using ...
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13 views

R CODE: Rolling Hybrid Genetic Algorthim Levenberg-Marquardt Exponential decay model

Im trying to overcome the singular gradient problem because I want to roll the exponential decay model. This is a subset of a Vuong/Clarke test between exponential decay and power law decay model. I ...
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3 views

Is is possible to perform a multiple piece-wise linear regression model?

I have 7 different piece-wise linear regression models and I want to compare the models different breaking points using a pair-wise comparison test. Basically I want to combine all my models into 1 ...
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1answer
9 views

LIBSVM (nonlinear regression with e-svr using linear kernel)

In what cases is libsvm supposed to returned [nan] as the predicted values of nonlinear regression (with e-svr using linear kernel)? Is there a faq available ? btw. My inputs are not nan, but the ...
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16 views

R geographically weighted regression GWModel

I am exploring the use of GWmodel to run some GWR regressions. I set it up and tried to run some sample regressions using the gwr.basic function, but ran into the following error, Error in t(X * W.i) ...
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1answer
24 views

Using non-linear regression to remedy serial correlation in Stata

I am trying to run a non-linear regression in Stata using the nl command. The reason I am running the regression is that my data exhibits serial correlation - AR(1). I use the following command. nl ...
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8 views

How to perform operations (OLS regerssion) on certain rows in Matlab

I have a time series matrix of observation for which I want to, manually, perform an OLS regression on. However, since they include lagged variables I need to perform the operations on only the from ...
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1answer
25 views

Passing the weights argument to a regression function inside an R function

I am trying to write an R function to run a weighted (optional) regressions, and I am having difficulties getting the weight variable to work. Here is a simplified version of the function. HC <- ...
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1answer
24 views

treating categorical/binary variables in lm

When building the regression function using lm, do we need to explicitly specify which variables should be categorical or binary? If we have to, how to do that? Thanks.
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1answer
13 views

X=sm.add_constant(X, prepend=True) is not working

I am trying to get the beta and the error term from a linear regression(OLS) in python. I am stuck at the statement X=sm.add_constant(X, prepend=True), which is returning an ...
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2answers
35 views

Custom regression equation in R

I have a set of data in R and I want to run a regression to test for correlation using custom coefficients. Example: x = lm(a ~ b + c + d, data=data, weights=weights) That gives me coefficients ...
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1answer
51 views

Plotting equation and r-squared on separate lines within plot using substitute

There are plenty of questions and answers on SO regarding the annotation of a plot to include a linear regression's equation and r-squared. Many are versions of the code from this question, which ...
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1answer
24 views

R regression over columns with fixed deltas

I have a data frame in R , df, where each row, X, is a subject (N= 100) and each column,S, the score for each subject on a task each month over the span of two years. Thus i have a data frame of 100 ...
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0answers
8 views

How can I derive MSE from cross-validation with naive forecast?

I built a linear regression model and now I want to test its forecast accuracy. I want to apply cross-validation and compare the forecast accuracy measured by mean squared errors (mse) with the ...
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1answer
14 views

numpy loglog linear regression

What is the best way to find the linear regression of loglog data using numpy? When I plot the data and try A = np.vstack([np.log10(X), np.ones(len(X))]).T m, c = np.linalg.lstsq(A, np.log10(Y))[0] ...
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0answers
22 views

Regress every row in large dataframe in R, store residuals

I want to adjust all values in dataframe DF_values for variables in dataframe DF_covariates using the bam command, and output the residuals to DF_residuals. DF_values is 27000 rows x 500 columns. ...
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2answers
68 views

ggplot2: How to plot an orthogonal regression line?

I have tested a large sample of participants on two different tests of visual perception – now, I'd like to see to what extent performance on both tests correlates. To visualise the correlation, I ...
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1answer
13 views

regarding making the visreg plot to be colorful

I used visreg to generate the surface plot, testmodel<-lm(y~t1+t2+t3+t4+t5+t6+t7+t1:t7+t2:t3+t5:t6,data=df) visreg2d(testmodel,"t7","t2",plot.type="persp") The generated plot is shown as a ...
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1answer
22 views

Python statsmodels return values missing

I am trying to use Robust Linear Models from statsmodels on a simple test set of x-y data. However, as return values with model.params I only get one single value. How can I get slope and intercept of ...
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1answer
47 views

regarding the I( ) term in linear regression modeling in R using lm

I once saw a linear model fitting written as follows: lm(formula = Ozone ~ Solar.R + Wind + Temp + I(Wind^2) + I(Temp^2) + I(Wind * Temp) + I(Wind * Temp^2) + I(Temp * Wind^2) + I(Temp^2 * Wind^2), ...
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Multilayer perceptron in R-multiple input multiple output regression

I have a data frame, Data, in which first 6 columns are inputs and the next 4 columns are outputs. I want to use multilayer perceptron to predict the output. I am using the following code as an ...
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0answers
8 views

Modelling data over time-Linear regression?

Here is my problem: I basically have 20 or so variables (I have 1000 of these values over an increasing time axis). I want to calculate the weights of these input variables. I am going to try Linear ...
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0answers
39 views

How to interpret output from three-piece linear regression in R

I have a three-piece linear regression model that I’m running in R to model body mass over age in a large population. My dataset is called hdata. Through an iterative procedure that runs through all ...
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0answers
24 views

Productivity calulation using linear regression ? really ? [closed]

I am getting pretty good at generzalized linear modelling (stats, linear regression, multicoll etc have been learned using courses and gauajarati) but i am wondering : when calulating a productivity ...
1
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1answer
41 views

Analyzing non-linear data with R

I have following data in which there seems to be a curvilinear relation between xx and yy: head(ddf) xx yy 1 1 10 2 2 9 3 3 11 4 4 9 5 5 7 6 6 6 ddf = structure(list(xx = 1:23, yy = ...
2
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1answer
32 views

Why is nls (Nonlinear Least Squares) not working in R

I am trying to run nls and get back known parameters using following code: I create a data.frame: xx = 1:100 yy = 0.5*xx^2 dd = data.frame(xx,yy) str(dd) 'data.frame': 100 obs. of 2 variables: ...
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2answers
19 views

regarding building regression models including interaction effects in lm [duplicate]

I have a data set read as follows test<-read.csv("data.csv",sep=",",header=T) There are 10 predictor variables. The first column is response variables x<-test[,-c(1)] y<-test[,1] If I ...
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1answer
28 views

Python scikit regression PCA on faces

I have a dataset with faces showing the emotion happy. Every image has a percentage (integer values) of how happy the face is, ranging from 0-100% (0 being neutral and 100 maximum happy). I would like ...
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0answers
7 views

Markov Regime Switching Regression Models - Time Varying Probabiliites

I am looking into estimating a markov regime switching model with time varying probs. Please help me if you know a simpler way to estimate such model.
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1answer
27 views

Vowpal Wabbit training and testing data formats

I'm trying Vowpal Wabbit and am in the process of figuring out the file formats required for training and testing. I've been following the tutorial from ...
0
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1answer
22 views

Running stepwise regression producing errorn in model

I am trying to run a stepwise regression model. I keep receiving this message: Error in step(cdc.fit, direction = "backward") : number of rows in use has changed: remove missing values? In ...
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1answer
32 views

Ranking algorithm with missing values and bias

The problem is : A set of 5 independent users where asked to rate 50 products given to them. All 50 products would have been used by the users in some point of time. Some users have more bias towards ...
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1answer
16 views

Comparing slopes of multivariate linear regression in R

I am investigating size changes over time. I have five size variables in a multivariate linear model against year. I used the Anova() function in the car package to test whether the slopes are equal ...
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1answer
18 views

Is validation set necessary in neural networks while cross validation alone works well in regression based models?

Do we need the validation in neural networks because neural networks do not always converge to the same answer? I have never heard of a validation set in models such as regression or ensemble ...
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0answers
9 views

testing interaction terms in regression model [migrated]

Based on domain knowledge and preliminary variable selection, we have decided a set of 10 variables as predictor variables for building regression models. What are the general approaches to identify ...
0
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2answers
47 views

Splitting and iterative simple regression in r

I am pretty much new to r and I have a dummy example of a bigger table underneath. I want to split the table based on id variable (a,b,c,d) and do iterative simple linear regression for every subset: ...
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1answer
23 views

rolling polynomial regression in pandas

I'm quite new to pandas here, searched but couldn't find an answer if yes or not it's feasible. so far I'm able to calculate rolling coefficients of a simple regression (Y= coef1 * A + coef2 * B) ...
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2answers
29 views

Output each factor level as dummy variable in stargazer summary statistics table

I'm using the R package stargazer to create high-quality regression tables, and I would like to use it to create a summary statistics table. I have a factor variable in my data, and I would like the ...
1
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1answer
27 views

How to train existing GRNN in MATLAB?

I have created a GRNN using command: net = newgrnn(inputs, output); How do I train existing GRNN on new inputs in MATLAB? In other words, how to train net on other inputs?
0
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1answer
31 views

Classification algorithm used as Regression algorithm

There is a continuous data sampled at a given frequency. I wanted to know that is it possible to use a classification algorithm, and use this along with some other functions so as to make it behave as ...
0
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0answers
26 views

Standardized summary index creation

I'm attempting to create a summary index of several variables (X1, X2, X3). My supervisor has advised me to employ a standardized summary index of standardized values. This process is computed by ...
2
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1answer
38 views

How to export coefficients of the regression analysis from RStudio to a spreadsheet or csv file?

I am new to RStudio and I guess my question is pretty easy to solve but a lot of searching did not help me. I am running a regression and summary(regression1) shows me all the coefficients and so ...
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1answer
55 views

R Logistic regression on ffdf objects

I have built a logistic regression model using the glm function from the stats package. I now would like to predict the outcome of this model on a large number of values, stored in a "ffdf" object ...
1
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1answer
42 views

Abline won't appear in R

I have run regression in R, when trying to fit an abline to the plot nothing happens, no error message appears. I've had to log transform the data so I'm wondering if this is the issue? The data is ...
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1answer
100 views

randomForest using R for regression, make sense?

I want to exam which variable impacts most on the outcome, in my data, which is the stock yield. My data is like below. And my code is also attached. library(randomForest) require(data.table) ...
0
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1answer
32 views

Gibbs sampling scheme on Ozone35 data set

I'm attempting to run a Gibbs sampling scheme on the data set Ozone35 from the BayesVarSel package in R. Here is the info on the data set Ozone35: A data frame with 178 observations on the following ...
0
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1answer
28 views

Who did write R code for Lasso regression using Beta distribution [closed]

glmnet can be used for lasso regression using Gaussian/Binomial/Poisson, while is not used for Beta. I tried to find some libraries for my need while nothing was found. Who did R code for this ...
0
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1answer
29 views

regarding the failure of stepwise variable selection in lm

I built a regression model using all the variables at first. full.model<-lm(y~as.matrix(x)) Then I tried to use step-wise variable selection ...