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

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Creating a Matrix of Floats to do Polynomial Regression

I'm trying to do a polynomial regression of csv file I have (or any other csv file). I am not sure how to build a matrix that contains the data set I have. Here is the current code I have. from ...
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78 views

R: HAC by NeweyWest using dynlm

This is what I would like to do: library("lmtest") library("dynlm") test$Date = as.Date(test$Date, format = "%d.%m.%Y") zooX = zoo(test[, -1], order.by = test$Date) f <- d(Euribor3) ~ d(Ois3) + ...
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33 views

Are these two Sklearn.ensemble methods working with regressors?

How does GradientBoostingRegressor and RandomForestRegressor work? Are these Multiple Linear Regression methods with Decision Trees? I do not really understand how these methods works from the API, ...
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107 views

Difference between regression and performance plot of Artificial neural network in MATLAB

I am having problem understanding regression and performance plots of ANN. My data consists of 13 inputs and 3 outputs. Parameters used for simulation are as follows. The problem I am facing is ...
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26 views

Partition dataset using CART regression by leaf node

I'm currently trying to modify an existing Stata model in R, and I'm running into problems with a specific step in the process. I need to use a CART regression to divide my dataset up into ...
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64 views

Multiple regression predicting using R, predicting a data.frame

I have been given data in a data.frame called petrol which has 125 rows and the following columns: hydrcarb, tanktemp, disptemp, tankpres, disppres, sqrtankpres, sqrdisppres I have been asked to ...
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2answers
37 views

Regression gives error on one of the input variables “contrasts can be applied only to factors with 2 or more levels”

I am running a logit regression in R with a large number of input variables. newlogit <- glm(install. ~ SIZES + GROSSCONSUMPTION.... + NETTCONSUMPTION..... + ...
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7 views

lm(child ~1, galton) vs lm(child ~2, galton) - latter fails, why?

I thought I understood the syntax for using the lm function. lm(formula, data) The formula "variable1 ~ variable2" made sense. When I saw the formula "variable1 ~ 1" that made sense. comparing a ...
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67 views

pandas dataframe conversion for linear regression

I read the CSV file and get a dataframe (name: data) that has a few columns, the first a few are in format numeric long(type:pandas.core.series.Series) and the last column(label) is a binary response ...
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17 views

censReg and Dates

I am having difficulty calculating a variance-covariance matrix when using the censReg function. My example dataset (posted below) does not have any censored data so that i can compare the results ...
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75 views

Linear Regression in Python

I am a brand new to programming and am taking a course in python. I was asked to do linear regression on a data set that my professor gave out. Below is the program I have written (it doesn't work). ...
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Tidy approach to regression models, ideally with dplyr

Reading the documentation for do() in dplyr, I've been impressed by the ability to create regression models for groups of data and was wondering whether it would be possible to replicate it using ...
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3answers
47 views

Matlab to find proper coefficients [duplicate]

I have such x vectors and y vectors described in below : x = [0 5 8 15 18 25 30 38 42 45 50]; y = [81.94 75.94 70.06 60.94 57.00 50.83 46.83 42.83 40.94 39.00 38.06]; with these values how can i ...
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67 views

Removing MULTIPLE outliers in regression model in R

this is in R ok so i've used cook distances to identify the points i would like to remove from a dataset of 506 variables that i have. i am able to remove ONE point (number 369) as follows: ...
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28 views

lm grouping by categorical variables (factors) [duplicate]

I've got the following table and I'd love to get a data frame with the lm slopes for each industry. Years are 1999 - 2012 for each industry and I'm simply looking for the slope of each industry in a ...
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22 views

Are regression models from different packages (strucchange and forecast) the same?

I'm trying to use both forecasting and change point detection on a regression model, i.e. I want to see the forecasts of the regression model (package forecast) and run an "online" change point ...
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1answer
58 views

Matlab multivarible regresison with time dependent variables

I'm trying to develop some code to find the significance of using an auxiliary data source to improve the predictability of a final product. I have the data ready in matlab, which is my preferred ...
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68 views

Poisson regression on gravity model

For a university project, I am trying to fit a regression model for demand to a number of independent variables. I tried to include a small example, but it didn't work as a figure (as I am new to ...
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34 views

Extract best linear regression model between multiple columns in R

This might take a little to explain but here goes. For the sake of this example lets say I have 2 columns that relate to real world observed data (RealX) and 4 columns that relate to predictions ...
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19 views

Maximum and minimum penalty in lasso regression family

I am trying to adjust penalty, lambda, in group lasso regression, but I have no idea about it. I am wondering is there any theory or rule about maximum and minimum value of lambda based on x, input, ...
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28 views

High values Of RMSE Error

I am doing regression on dataset which has values varying from 0-1400. I got the output RMSE error result as 300. I need to know if the error is better for this specified range. Or is the o/p ...
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25 views

Data based estimation of missing values

I have problem at hand where I feel there should be an rather elegant solution to it, but at this point I have problems finding the right search terms or getting the first step towards the right ...
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19 views

Defining time id in quantile regression panel data (rqpd) model in R

I was trying to run a quantile regression panel data model using rqpd package in R. But I was just wondering how to declare time id (year) in panel. Could anybody help me how to declare time id in ...
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1answer
65 views

Prediction - Neural network for regression

I am trying to predict median value of owner-occupied homes, its a worked example which is giving a good result. https://heuristically.wordpress.com/2011/11/17/using-neural-network-for-regression/ ...
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48 views

getting non linear multivariate regression parameter estimates

I'm looking at getting parameter estimates for data that has 3 dimensions. I've plotted it out using the manipulate function in mathematica. However, when I use the constants from mathematica that I ...
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46 views

Input format for functions in package strucchange?

I'm trying to do change point detection with ´monitor´ from the strucchange package, but I have trouble getting a useful output. My input is a time stamped dataframe, and I would like the breaks to ...
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22 views

What's the effect of the smoothing parameter on GRNN?

What's the effect of the smoothing parameter on GRNN? Is there any procedure to guest a good interval for searching for the best value, i.e. it can vary between which values?
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24 views

Plotting a independent variable under a parameter of another variable in R

I have a function predictshrine<-0*rain-399.8993+5*crops+50.4296*log(citysize)+ 4.5071*wonders*chief+.02301*children*deaths+1.806*children+ ...
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35 views

How do I accomodate for Structural Break in R?

I have time series data for hot dog sales, and I have a quadratic regression that includes monthly seasonal dummy variables. sales.ts = ts(data=hotdog, start=c(1987,1), frequency=12) mond ...
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54 views

Apache Spark MLlib LinearRegressionWithSGD error

I have asked a similar question but didn't get an answer. I am trying to run Spark MLlib packages in pyspark with a test machine learning data set. I am splitting the data sets into half training ...
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1answer
34 views

WEKA Regression Model

I'm trying to build a test a regression model in WEKA. Problem is I don't know enough about WEKA to accomplish what I'm trying to do. The data set I'm using is a sample set from a WEKA repository. ...
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2answers
45 views

Discrepancies between lmerTest and lme4 results

I have a certain value as the DV (dependent variable), and I am interested in the effect of BMI on the DV. I have multiple observations for the DV (i.e., every subject responds five times), so I ...
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74 views

Extract R^2 (R-squared) value for each regression grouped by a factor

I'm wondering if there is a way to extract R2 for each regression equation. d <- data.frame( state = rep(c('NY', 'CA'), 10), year = rep(1:10, 2), response= rnorm(20) ) library(plyr) models ...
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32 views

Saving regression coefficients after SEM command in Stata

I have built a simple SEM, which is basically a multigroup simple regression model which takes into advantage the tweaks available for the sem command in Stata, particularly the FIML estimation. ...
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51 views

How do I correct heteroskedasticity using gls and the weights command in R?

I have a model of income that looks like this: income.ols <-lm(INCOME~EDUC+EXPER+EXPER2+EDUC:EXPER+FEMALE+UNION+NONWHITE) and using White's test, I have found evidence of heteroskedasticity. How ...
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40 views

Multistep out of sample forecasts with dyn$lm

Is there a simple way to obtain multistep out of sample forecasts with the dyn$lm function similar to the n.ahead argument of the predict.Arima function in R. I have found this post for one-step-ahead ...
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13 views

Incremental OLS initial configuration

As pointed out here, new data points can be incorporated into OLS learning without needing to invert the X'X from scratch. I wanted to use this idea for online incremental instance-based regression. I ...
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45 views

Difference between statsmodel OLS vs scikit linear regression

I have a question about two different methods from different libraries which seems doing same job. I am trying to make linear regression model. Here is the code which I using statsmodel library with ...
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1answer
58 views

^ symbol in lm() in R

I asked this question in Stack Overflow: http://stackoverflow.com/questions/29710525/symbol-in-r-lm I feel like here would be a better place to get an answer. What exactly does the ^ symbol do to the ...
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10 views

Large weighted least squares systems

I have a large weighted least squares system with millions of observations. I can't store the least squares matrix in memory, so I only store the normal equations matrix: A^T W A where A is n-by-p ...
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37 views

R: Formula with multiple Conditions and Categorized Surface Plot

I want to make 3D plots for linear Regression Models in R: I wish to display surface of the regression plane of a linear model. I have 2 continuous variables (say AGE, HEIGHT) and 2 factors (SEX, ...
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7 views

Reproducing the results of a column in a table, but restricting a sample, and using an OLS regression within this window

I need to replicate a column (column 2) in a table for an RDD. The dependent variable is lnrealgross, the treatment variable is labelled treatment, and I need to restrict the sample size for a ...
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58 views

Forecast with regression model with scenarios

I am running AR on this data. Date Price YOY Quarter 2000-01-15 2.385368 -312362 Q1 2000-02-15 2.614250 -442117 Q1 2000-03-15 2.828261 -252596 Q1 ...
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36 views

Difference between meta-regression and linear regression in Stata?

I have a question about meta regression. I'm performing a metareg with the variable: 'sumvariable' which can have a value of (0-6). I want to see what this variable does to the mortality rate, ...
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65 views

Polynomial Regression over multiple predictors in R

How can I fit a Polynomial Regression over all the dataframe's variables? It it were a linear regression, I would do: lm.fit = lm(response~., data=dataset, subset=train) but if I want a 2-nd (or ...
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35 views

How to get the sum of least squares/error from polyfit in one dimension Python

I want to do a linear regression for a scatter plot using polyfit, and I also want the residual to see how good the linear regression is. But I am unsure how I get this as it isn't possible to get the ...
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39 views

Assessing the Model Weight/Contribution/Variable Importance of Reference Category (Left Out Dummy Variable)

When building a regression model, we sometimes want to look at the weight or contribution of each variable in the model to the model's final output. The way I'm used to doing this is by looking at the ...
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51 views

Matlab GPML Super Resolution Using Gaussian Process Regression

I was doing image super-resolution using a learning based approach using GPR. But I was having problems implementing gpr in my case. Basically, I am doing a patch based regression in which I have k ...
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1answer
37 views

R: Hide dummies output

I'm new to running regressions with R. Learning by doing and looking at different online tutorials, here's what I'm doing atm to regress y onto x1 and have dummies for x2 and x3 (but no interacted ...
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34 views

Inverse gaussian regression using scikit

I am trying to train data using sci kit, I want to use inverse gaussian as a regressor but I do not see that in the package, but I do see a section in the docs that mentions about ...