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 can I plot an envelope curve in ggplot?

I am trying to plot an envelope curve. I have plotted a regression line using this equation corr.plot.contour<-function(data,x,y,xl,yl,save){ ggplot(data, aes_string(x=x, y=y)) + ...
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21 views

variance covariance matrix R

I would like to get the matrix of variance-covariance of the residuals. The final aim is to decompose it to do a "hand-by-hand" FGLS. I found the function "vcov" but it only works with parameters, ...
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9 views

viewing “interpretable” beta coefficients from SSAS output

I've been asked whether MSDN's SSAS can produce "interpretable" & "usable" beta coefficients from a regression model, i.e. can a user export the coefficients from the SSAS environment to somewhere ...
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1answer
33 views

Multivariate regression or PCA to reduce response variables?

I hope the title is self-explanatory, but essentially I want to know which method is better: does it make sense to use a PCA to reduce a number of response Y variables and then conduct a univariate ...
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31 views

In R how to compute COOK'S STATISTICS

I have the following data in R x=c(15,26,10,9,15,20,18,11,8,20,7,9,10,11,11,10,12,42,17,11,10) y=c(95,71,83,91,102,87,93,100,104,94,113,96,83,84,102,100,105,57,121,86,100) Now i have to compute ...
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1answer
32 views

Python: Circular regression to determine center and radius

I followed this tutorial to calculate for center and radius given three points (x, y) coordinates. I have written the following python code, but the h and k values I got are still matrices, so I am ...
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1answer
53 views

Predicting tomorrow's temperature based on historical data [on hold]

I have the temperature value for every hour for the past 7 days, each having 24 slots. How can I predict the temperature for each slot tomorrow more precisely with this data? I know this uses FFTs ...
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1answer
42 views

Differences between stepAIC in R and stepwise in SPSS

I am trying to learn R after learning SPSS and using SPSS for my statistics on a couple papers. I have been using my data to help me learn and understand R as well. In my data, i had to find some ...
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6 views

Where to get training data for sentiment regression?

Most (if not all) sentiment analysis is done on polarity datasets. These have 2-4 categories (negative, neutral, positive, not relevant). Obviously these are not fine-grained enough for regression. ...
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1answer
35 views

Fit a non-linear function to data/observations with pyMCMC/pyMC

I am trying to fit some data with a Gaussian (and more complex) function(s). I have created a small example below. My first question is, am I doing it right? My second question is, how do I add an ...
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12 views

Radius Neighbors Regressor (Scikit Learning)

I use the scikit-module package "sklearn.neighbors.RadiusNeighborsRegressor". I want to create prediction intervals for this fit, but how can I do? Any thoughts or advice would be appreciated. ...
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1answer
11 views

sparse partial least square regression

I have two data-sets as follows: http://www.filedropper.com/dataa_1 ## DataA http://www.filedropper.com/datab ## DataB In dataA, we have 42 rows and 8 columns and in DataB 42 rows and 6 ...
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1answer
35 views

Fe and first difference in a regression table

I am doing an analysis in Stata and I have a lot of different panel regressions (within, first-difference and random trend) and to see the results properly, I am using eststo and esttab. My problem ...
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25 views

Why does my polyfit function give me nans?

I'm working with a scatter plot and trying to create a best line of fit with the data. When I plot it, the scatter plots the points, but there is no line of best fit. With a little of digging I ...
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13 views

Seemingly unrelated regression (SUR) in Matlab - finding standard errors

How do I obtain standard errors from the seemingly unrelated regression in matlab? The results that I obtain are: beta = bhat for each equation, result(eq).tstat = tstat for each equation, ...
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32 views

Regression Test in Python

Hey guys so I want to write a program to see if two sets of data generally do not have the same trend (e.g. data set A has a linear trend and data set B doesn't). Is there some package in Python that ...
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1answer
18 views

OLS of statsmodels does not work with inversely proportional data?

I'm trying to perform a Ordinary Least Squares Regression with some inversely proportional data, but seems like the fitting result is wrong? import statsmodels.formula.api as sm import numpy as np ...
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28 views

linear regression using heteroskedasticity robust standard errors in R [migrated]

I want to perform an OLS regression on time series data using heteroskedasticity robust standard erros. So far i can come up with this: model <- lm(I(y[2:T] - y[1:T-1]) ~ y[1:T-1]) regress <- ...
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1answer
166 views

Binary classification of dated documents with seasonal class variation

I have a collection of training documents with publication dates, where each document is labeled as belonging (or not) to some topic T. I want to train a model that will predict for a new document ...
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26 views

Batch gradient descent for polynomial regression

I am trying to move on from simple linear single-variable gradient descent into something more advanced: best polynomial fit for a set of points. I created a simple octave test script which allows me ...
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1answer
45 views

how can i make a loop using matlab?

i have a regression model with 3 variables x1 x2 x3 and all possible regression models are 2^3=8 models. x1 , x2 ,x3, x1x2, x1x3, x2x3 ,no variables and x1x2x3 i want to apply a method called AIC ...
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23 views

Can't score test set using zero inflated Poisson regression model in SAS

I've run a zero-inflated Poisson model using proc genmod and I'm trying to score my test data set using Proc PLM but it's giving me this error: proc genmod data = train2; class region / param=glm; ...
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1answer
51 views

Linear regression of time series over multiple columns

I have the following problem. I want to compute the regression of an annual time series in matrix form. In total, I have 56 time series I extracted from gridpoints of an area I want to examine, so ...
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1answer
39 views

How to plot several regression lines in same scatter plot in R?

I have a dataframe with data of body temperature (Tb), substrate temperature (Ts) for several individuals of both sexes and comming from three different populations like this: (I made up this table ...
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1answer
23 views

Can I create conditions for regression coefficients in something like nls() or nnls()?

I have recently been playing around with R's regression functions/packages. I'm wondering, is there a way that I could force my regression coefficients to sum to a particular value? I understand that ...
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1answer
58 views

Convert odds ratio of unit change to whole range

I try to do a logistic regression in R and then calculate an odds ratio. I have two groups of people, the first one more strongly exposed to a pollutant than the second one, and the first one ...
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26 views

How can I estimate a weighted linear regression with fixed effects and many groups in R? [migrated]

I have a data set derived from administrative registers covering the population of a small European country, containing a large number of defined groups (15 000+). For each of these groups I have ...
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39 views

Linear Regression Using RHadoop (Mapreduce)

I'm new to RHadoop and also to RMR... I had an requirement to write a Mapreduce job in R Mapreduce. I have tried writing, but while executing this, it gives an error. I'm trying to read the file from ...
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16 views

Bayesglm ambiguous error message

Actually, the error message is pretty clear, but I have difficulty interpreting why I'm getting this error, and how I should fix it. Here's the code: library(arm) PriorMean <- c(0.07141, 0.1484, ...
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14 views

Kernel regression in VBA

I am implementing a kernel regression in VBA. If I use columns of 4 rows for Strikes, stockprices and sigma and tries to estimate one point using the kernel regression function, I get #VALUE. I am not ...
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14 views

Fitting multiple sequential curves to one time series

Trend of data in some of time series are different for different parts of it. Conventional data fitting methods just fits one type of curves to a time series for the whole points(linear OR ...
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26 views

Linear Regression with explicit intercept in R — using lmodel2 for major axis regression

I want to calculate a linear regression using the lmodel2() function in R using the MA (major axis) method (using the lmodel2 package). Additionally, I want to get the slope of a regression, where I ...
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2answers
34 views

Write Regression summary to the csv file in R

I have data on revenue of a company from sales of various products (csv files), one of which looks like the following: > abc Order.Week..BV. Product.Number Quantity Net.ASP Net.Price 1 ...
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1answer
34 views

How do I merge 3 files to create a panel data?

I have three different Stata files (each for three different years) and I want to estimate a fixed effects regression. My guess is that I need to merge those files in order to test my regression, but ...
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42 views

Time series forecasting with support vector regression

I'm trying to perform a simple time series prediction using support vector regression. I am trying to understand the answer provided here. I adapted Tom's code to reflect the answer provided: ...
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22 views

Non Linear regression: Converting from nlinfit in Matlab to C++

So I am trying to write a C++ function which is equivalent to nlinfit in Matlab. My Matlab implementation is as follows: I = max(round(SelectedIndeces),1); I = min(I,length(mean)); P = length(I); % ...
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16 views

Using LibSVM regression to predict dependent variable

My intention is to use SVR with 1-10 independent variables to best predict a dependent variable. After separating the data into scaled training and testing files containing the independent variables ...
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2answers
50 views

R-squared value in Excel with the 'addtrendline' function?

I have been struggling a while on that; In short, I can't find the equations Excel uses for R2. Here are my data : x: 1 2 3 4 5 6 7 8 9 10 y: 4 9 1 2 1 1 8 5 5 1 I plot the data, fit a power law ...
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1answer
58 views

Many linear regressions

As part of my data analysis (on time series), I am checking for correlation between log-returns and realized volatility. My data consists of time series spanning several years for around hundred ...
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28 views

Implementing Gradient Boosted Regression Trees in production - Mathemtically describing the learnt model

I have been using Logistic regression(LR with start_params as that of the params obtained by the previous (train) data-set & L1 regularization) to model our use case (with some sophisticated ...
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27 views

Outliers with robust regression in R

I am using the lmrob function in R using the robustbase library for robust regression. I would use it as, rob_reg<-lmrob(y~0+.,dat,method="MM",control=a1). When i want to return the summary i use ...
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13 views

PLM in R with time invariant variable

I am trying to analyze a panel data which includes observations for each US state collected across 45 years. I have two predictor variables that vary across time (A,B) and one that does not vary (C). ...
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18 views

Hierachical Linear Regression in Python

I'm doing some data analysis in python and have two variables (let's call them groupsize and groupsatisfaction) and both of them are significantly and positively correlated with the outcome metric ...
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1answer
48 views

Regression in pandas

I have two separate databases - a temperature db with hourly data and a house db with minute by minute data for hvac usage. I'm trying to plot the hvac data as a temperature series over a week, a ...
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9 views

Distribution used in gbm

My question is a little more generic and not specific to a technique per se. First- What is the difference between GBM & Random forest and which 1 is better? Second- When i try to run GBM using ...
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44 views

Ordinal independent variables for logistic regression in R using ordered() function

I'm doing binary logistic regression in R, and some of the independent variables represent ordinal data. I just want to make sure I'm doing it correctly. In the example below, I created sample data ...
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1answer
13 views

Microsoft Excel. Piece-wise Least-Squares Fit with Solver. My excel sheet produces right answers sometimes, wrong answers other times

I am trying to do a non-linear regression with data I have for my research. Since it is nonlinear, I can't use Simplex LP. Instead I was doing GRG Nonlinear with upper and lower bounds on all ...
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24 views

ivreg syntax for interacting one endogenous variable with two (or more) instrumental variables in R

I am trying to do a two-stage least squares estimation with an interaction term between an endogenous variable and exogenous instruments. But since I have two instrumental variables, I don't know how ...
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10 views

Marginal Effects for Hurdle (Two-part) models in R

I am very new to R. I am using R package "pscl" for hurdle regression (Binary with "cloglog" link and Poisson with "log" link). My problem is to model road crash frequencies at given locations as a ...
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2answers
38 views

SAS to R transition; Annual dummies, variable naming, numbered range lists in regression

I am transitioning certain regression tasks from SAS to R. These are garden variety hedonic price regressions run against time-series cross-section sales datasets. As a typical example, consider a ...