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

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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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1answer
24 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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3 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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19 views

Range estimate with regression model

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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25 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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1answer
17 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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6 views

A regression data set with n<p where one variable is binary and the other continuous

I am working on regression problems using various benchmark data sets. Currently I need a data set where there are more features than observations and only one feature is binary. I searched google a ...
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8 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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10 views

Situations when unbiased regression estimates are preferred over the biased ones, with references

I am interested in comparing biased an unbiased regression estimates. However, I need to know practical situations when unbiased estimates are preferred over the biased ones. Can someone help me in ...
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20 views

predict new data using plm in R [on hold]

I have a perfect panel setup NxT. I wanted to build a fixed effect model using plm. I know there is no direct predict function, so wanted to create one. Is there a way to get the actual intercept ...
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7 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
30 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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20 views

A good Multi-variate Regression solution in R [migrated]

I have a dataframe with one continuous response variable and hundreds of predictor variables (hundreds of additional columns in my dataframe). I'd like to run a regression for the single Response ...
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1answer
21 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 ...
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1answer
30 views

Predicting in Python 3.4 [closed]

I would like to predict in Python 3.4, but I don't know how to start, which method is the best for my dataset. I have Dates-Value pairs, but I want to add more Values later maybe, which make the ...
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21 views

StatsModel OLS on user defined function

I am trying to perform OLS on a function that looks like: I cannot figure out how to do OLS for this type of function. How can I specify that c is a parameter that needs to be estimated? X = ...
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36 views

Plotting a graph of linear model with two conditions on same graph?

I have a set of data that looks like this: > head(mydata) name noise cond rho dpr se type 1 ah pow anim 0.5 1.777938 0.1867230 pla 2 ah pow anim 0.6 2.150651 0.1811027 ...
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10 views

How to set the relative error for x and y in orthogonal distance regression

here I have data X and Y need to fit by ODR. For the independent variable X, 10% relative are associated, and the error of dependent variable Y is its standard deviations. So, how should set the ...
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1answer
22 views

Does adding x and y jitter to a seaborn linear plot change the fit values?

I'm getting into seaborn for python and I have a quick question that I was not able to find an answer to. If I add jitter to a plot, does it actually change the fit values (such as r^2, p-value, etc) ...
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26 views

Determining whether to use one line or two in linear regression [migrated]

Basically I'm attempting to recreate the results of an example from class in R. What I'm trying to do is decide whether it's best to use a single regression line for an entire data set or two lines ...
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18 views

how to interpret x=ac in regression tree plot

I use R to plot the regression tree. Because i have categorical variables in my data so when I plot the regression tree there is x = ac in the graph. x is categorical variables, but I don't know which ...
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23 views

4th and 5th Order Polynomial Regression not Working in Excel

I'm having an odd problem with doing polynomial regression in Excel. As many have before, I'm trying to get the correct coefficients that Excel is using when it creates a polynomial trend line on a ...
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37 views

Which is the best package in R to run Monte Carlo Simulation? [closed]

My objective is to use regression output equation in Monte Carlo Simulation for maximization.
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25 views

How to calculate vif of each term of model in R?

I am beginner in R doing modelling in R, I loaded excel sheet in R, i have chosen x elements and y elements then fitted model for linear and second order regression. Now I have both models. I am bit ...
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9 views

Residualizing out a variable results in odd outliers

I have written a function that returns a residualized version of a data.frame. However, this always results in 2 outlier cases (the first much stronger), in the variable that one residualizes out. ...
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31 views

How to extract the underlying coefficients from fitting a linear b spline regression in R?

Take for instance the following one-knot, degree one, spline: library(splines) library(ISLR) age.grid = seq(range(Wage$age)[1], range(Wage$age)[2]) fit.spline = lm(wage~bs(age, knots=c(30), ...
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12 views

Add regression layer to MatConvNet

I have designed a smile detection system. this system is based on deep learning and has been implemented by MatConvnet. The last layer is the output of the system and has 10 output according to the ...
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30 views

Add regression layer to caffe

I have implemented a smile detection system based on deep learning. The bottom layer is the output of the system and has 10 output according to the amount of the person's smile. I want to convert ...
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7 views

Do as regression with waste another linear relationship?

How can I make a regression with the residues of another relationship? lm2 <- lm(x_lm1$residuals~latitude, data)
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1answer
18 views

sklearn: Regression models on sparse data?

Does python's scikit-learn have any regression models that work well with sparse data? I was poking around and found this "sparse linear regression" module, but it seems outdated. (It's so old that ...
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1answer
23 views

How to output several variables in the same row using stargazer in R

The title says it all, I would like to output the interaction terms from several regressions in the same row and call it "Interaction". So far what I have is that the interaction terms show up in two ...
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2answers
27 views

poly() and orthogonal polynomials

I searched about poly() in R and I think it should produce orthogonal polynomials so when we use it in regression model like lm(y~poly(x,2)) the predictors are uncorrelated. However: poly(1:3,2)= ...
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20 views

Poisson regression in matlab

I want to use Poisson regression on a model that looks like following: y = a * b^X1 * X2^c Where a, b and c are constants. I assume that I need to use glmfit and make use of a link function, but I ...
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21 views

plotting adjusted data points in ggplot2

I am interested in plotting a 2-way interaction in ggplot where X is a continuous variable and M is a categorical moderator. However, I am also including covariates. I would like to plot two ...
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3answers
95 views

Fit function to experimental data

I have exponential function ( gauss distribution ) f(time)=exp(-((time-A)^2)/B) and i have a experimental data that forms matrix [time, value]. What i want to do is perform some kind of tuning of ...
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27 views

Expanding the range of data for a prediction in r

In R, I have a set of data that measures temperature and spaceship crashes; crash can equal 0 if there was no crash or 1 if there was. In my data (link here), my data ranges from 50 to 85 with ...
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1answer
33 views

Predicting new data in a binomial GLM

Here is my data. The question I had first asked me to fit the GLM, which I did with no problems. I got this equation of which I am very sure is correct. logit(Damage)= 5.08498-0.11560(TempF) ...
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14 views

Test for Non linearity

I am doing a regression, returns of stocks(cross section of stock returns at a given time) against some fundamental factors. And look at the residuals to get a normalized view when trying to rank the ...
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14 views

sklearn.linear_model.RandomizedLogisticRegression : Handle Categorical Value

I want to use RandomizedLogisticRegression for selecting variable for my data set. But the problem is that, One of the feature in my data set is Gender. So it's values are 'F' or 'M' instead of ...
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9 views

How to use the bootstat function to bootstrp without replacement?

I have a simple MATLAB code to perform a bootstrap, but I need to do this without replacement. How do I write the bootstat function such that there is NO REPLACEMENT when sampling? ...
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1answer
23 views

cross validation on my different models in R

I have a dataset of bike-rent data including the number of rentals, temperature, windspeed, humditity, etc. I have used multiple regression models in R, using all different kind of packages. The ...
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16 views

parallel process growth model (lavaan)

I am trying to create a parallel process growth model with lavaan. I want to regress the growth curves of my IVs on the growth curve of my DV since I am trying to test if there is a link between the ...
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1answer
17 views

Leaf Indices Off for scinkit-learn Random Forest Regression

I am trying to use scinkit-learn's apply function for the RandomForestTreeRegressor to obtain the leaf indices for each learned tree for some data. I have specified a max_depth of 3, which should ...
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39 views

iterative OLS model runs very slow using Python Pandas and statsmodels ? ( improper use of dataframe - probably!)

I use Stats-model and Pandas to automate an iterative process of running linear regressions for various combinations of variables. In total the combinations of variables reaches to 697,343. This is a ...
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1answer
36 views

how can I do a maximum likelihood regression using scipy.optimize.minimize

How can I do a maximum likelihood regression using scipy.optimize.minimize? I specifically want to use the minimize function here, because I have a complex model and need to add some constraints. I am ...
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1answer
28 views

drawing confidence interval graphs (especially in minitab or e-view)

I've made regression model with 4 variables. And I have gotten the following regression equation $$ Y= 0.0761 - 0687X_1 - 3.46X_2 - 1.937 X_3$$ I calculated Confidence intervals for these four beta ...
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1answer
34 views

How to use dplyr to make several simple regressions using always the same independent variable but changing the dependent one?

I hope this is not the simplest question. I need to make a simple regression (yes, a simple one: Y = a + bX + epsilon). My data frame is such that each column has one variable (and each column has 20 ...
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1answer
64 views

How do I create a fitted value with a subset of regression coefficients in place of all coefficients?

I run a simple regression and find the fitted value like this: sysuse auto, clear reg price mpg c.mpg#foreign i.rep78 headroom trunk predict fitted_price, xb This gives me these coefficients: ...
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1answer
18 views

Leaps package in R returns “variable lengths differ” error

I'm using the leaps package in R to run regsubsets: a <- regsubsets(in_var~paste(predictors,collapse="+"),data=x,nbest=10,matrix=T) And get an error message: Error in model.frame.default(data = ...
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43 views

Recursive least squares in python?

Does anybody know a simple way to implement a recursive least squares function in Python? I want a fast way to regress out a linear drift ([1 2 ... n], where n is the number of time points up until ...