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

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Perform Iterative Operations on OUTEST or OUTSTAT variables in SAS?

In SAS, how can I assign a variable coming from either the OUTEST or OUTSTAT functions to be used in a loop? For example, say I want to run some sort of iterative analysis until my mean (average) ...
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1answer
18 views

How to create a variable importance plot with bars instead of points in R for random forests?

I've been using the randomForest package on R to fit a bagging model to my data and have also made use of the VarImpPlot(bag) to create a variable importance plot. However, in many textbooks and ...
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19 views

How to run regression with presence of constant and linear time trend in R?

I have 2 time series X and Y. I have already known how to run the regression with presence of constant, represented by the following equation: The regression (equation with constant) shown right ...
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0answers
17 views

Predictive Modelling in R [migrated]

I am new to R and I am trying to do some predictive modelling on data set which has 16 feature variables and the target value is numeric in R. I am not sure if the steps I am following will help me to ...
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23 views

Comparing regression models, same and different response variables [on hold]

My basic question is how to compare regresion models with (1) the same and (2) different response variables. My data include the following variables: x: dosage, 10 levels y_meas: lab measaured ...
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2answers
31 views

Regression function with variable number of arguments in r

I have composed a function to calculate VIF for nls regression models. It looks like this: function (a,b,c,d,e,f,g) { VIFa <- 1/(1- (R2 <- summary(lm(a ~ b + c + d + e + f + g))$r.square)) ...
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0answers
24 views

R package for SVM feature selection for regression pro [on hold]

I have seen the package penalizedSVM that performs feature selection using SVM. For instance by lpsvm function that uses L1 penalty, but it looks like that all these functions only work for ...
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19 views

R - Repeated model fitting with variable deletion

I have random sample containing 1 response variable and 10 explanatory variables (X) and I'm trying to find the best subset applying linear regression No problems with fitting the model, but I need ...
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0answers
18 views

Calculate Incidence Rate Ratios from zero inflated negative binomal model

I am running a (zero inflated) negative binomial model. They both differ a bit but my question applies only to the output. Since the interpretation of the coefficients is a bit difficult, I would like ...
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1answer
12 views

why is there a huge difference existed in model performance score obtained from 10-fold cross validation?

I'm using gradient boosting regression model (GBRT). To evaluate this model, I use 10-fold cross validation, in each of which I set same parameters , thus The only difference btw folds is just the ...
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0answers
23 views

Multiple regression with complicated constants using statsmodels.api

I am trying to create a formula for statsmodels.api and patsy formulas: http://www.datarobot.com/blog/multiple-regression-using-statsmodels/ Y = a * X ^ b whereby a = c + d * Z b = e + f * ...
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22 views

Best approach in R for interpolating and curve fitting a tiny dataset? [migrated]

I have a set of 'activity' values for some enzyme assays I have been doing, that come out of some analysis I've been doing. The problem is, the data is fairly crap, and there aren't many points, but ...
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3answers
27 views

Fitting (multlple) linear models by group in R

I'm trying to (somewhat) elegantly fit 3 models (linear, exponential and quadratic) to a dataset with classes/factors and save p-values and R2 for each model and class/factor. Simple dataset with 3 ...
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1answer
28 views

Linear Regression in R: “Error in eval(expr, envir, enclos) : object not found”

I'm trying to do a simple least-squares regression in R and have been getting errors constantly. This is really frustrating, can anyone point out what I am doing wrong? First I attach the dataset (17 ...
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1answer
41 views

multiple ggplot linear regression lines

I am plotting the occurrence of a species according to numerous variables on the same plot. There are many other variables but I've only kept the important ones for the sake of this post: > ...
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1answer
17 views

Ordering of points in R lines plot

I want to add a fitted line of a quadratic fit to a scatteprlot, but the ordering of the points is somehow messed up. attach(mtcars) plot(hp, mpg) fit <- lm(mpg ~ hp + I(hp^2)) summary(fit) res ...
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0answers
32 views

standard errors of the fitted values of a time series regression [migrated]

I really want to understand how the math is working here. I am trying to get the standard error of the fitted values for a time series regression model.In the non-time series regression,I know I can ...
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0answers
56 views

How to plot the output of a multivariate regression using GGPLOT

I have a regression with fixed effects/other covariates and I want to plot the outcome and the predictor variable of interest after controlling for the fixed effects. So, I want to plot a curve that ...
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1answer
27 views

How to write the SLOBODA trend function in R

What is the R code for the following formula?
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30 views

R Referring to only a subset of the regressor output in R linear model, conditional on a factor being present

I have an output that interacts X and Y (both factors). Call the output, reg. I want reg$coefficients, but I only want the ones with factor X1 in them. Is there a way to select this easily in R?
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1answer
40 views

Simultaneously fitting multiple models that differ only in terms of a multiplicative factor to a single dataset, in R

I have been struggling with this problem for a while and although I think I am close I can't seem to get to the answer. Say I have a dataset that I want to simultaneously fit multiple models to, but I ...
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1answer
25 views

Regression with subsets and baseline specification + differing variables

I want to regress a variable on a baseline specification and seven additional variables subsequently (i.e. 8 regressions). I want to do this for two subsets of the data.frame and for two subsets of ...
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0answers
19 views

R programming: Lapply(split) and Model Generation [closed]

I would like to generate and store for multiple models to subsets of my data, but am having a hard time getting the programming code to produce correct output for more than one model. I have hundreds ...
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1answer
19 views

Scaling of target causes Scikit-learn SVM regression to break down

When training a SVM regression it is usually advisable to scale the input features before training. But how about scaling of the targets? Usually this is not considered necessary, and I do not see a ...
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0answers
21 views

Weighted Least Squares with Standardized Coefficients [migrated]

I want to understand how weighted least squares regressions work to implement it in a more complex context. I think I'm a good step into that process, but I'm still wondering what the correct way to ...
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0answers
11 views

I want to make a regression using libsvm, if I get the label , how can I predict the feature value?

I get a 4160 * 10 trainData, the first column of trainData is label ,the rest column is feature value. Then I use libsvm in matlab to train. This is a row of trainData after scaling: 8 1:0.636364 ...
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3 views

confidence intervlas in rqss function

I have a problem with function rqss from quantreg package. I plot a model for a variable (say "x") with confidence intervals. When I plot a model for a modified variable (x/10000) confidence ...
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0answers
20 views

Cooks distance for NLS Regression with R

I had to rebuilt my standart lm regression into a nls regression as I had to determine a lower bound for one of my variables: NONLinear <- nls (PD04_AL ~ a * Health_Care + b * Utilities + c ...
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1answer
26 views

The R^2 score I get from GridSearchCV is very different from the one I get from cross_val_score, why? (sklearn, python)

I'm using GridSearchCV to pick a regressor. Once it's fitted, I pull out the chosen regressor with predictor = GridSearchCV(Pipeline(...), params={...}, cv=10, scoring='r2') ...
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0answers
20 views

Compare regression slopes of repeated measures linear regression [migrated]

In my design, I have two groups of subjects and every subject is tested in four different conditions. So, I have a within-subject factor ('span_num', which ranges from 0 to 3) and a between-subject ...
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0answers
24 views

numerical recipes c: which function for data-fitting

I worked through a couple of methods in the numerical recipes book (version 2) and am really not sure anymore, which function I need. I have a function like f(x,y)=a(x-x0)^2/(1+b*y)^2 and a couple of ...
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13 views

Weka LIbSVm & Time series forecasting

I'm tryng to use LIBSVM regression for a forecast of 6 months in following data: I would use LIBSVM with RBF kernel and SVMTType-SVR with default data (I'm not expert to modify that) Due the few ...
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0answers
16 views

sklearn LogisticRegression without regularization

Logistic regression class in sklearn comes with L1 and L2 regularization. How can I turn off regularization to get the "raw" logistic fit such as in glmfit in Matlab? I think I can set C = large ...
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2answers
42 views

Polynomial regression with two variables with R

I am trying to do something pretty simple with R but I am not sure I am doing it well. I have a dataset containing three columns V1,V4,V5 and I want to do a regression to get the coefficients Ci,j of ...
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29 views

c++ nonlinear least square data fit using mnewt

I seem to misunderstand the use of mnewt from numerical recipes. I have a function like f(x,y)=a(x-x0)/(y-y0) and would like to get optimal values for a, x0 and y0 using a number of (x,y,f) sets. ...
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0answers
10 views

Interpretation of polynomial regression output in R [migrated]

I performed a polynomial regression using the following formula: lm(deviance ~ poly(myDF$distance,3,raw=T)) However, the summary output states that only the third term is significant: ...
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0answers
23 views

SPSS: Comparing regression coefficient from mutiple models

Hope you guys could help me with a question I've been stuck on for a while. Assuming I have price of houses as the dependent variable and the following as the independent variable: 1. Age 2. Area 3. ...
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1answer
22 views

Viewing/retrieveing the values for goodness of fit, using the fitlm function

I am using the fitlm function within Matlab for some simple linear regressions. Context: I have three sets of data for my observed 'X' values, into which my intercepts are already baked, and so I am ...
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0answers
18 views

How to use hidden confint.multinom function to get confidence intervals for multinomial logistic regression in R

I am using multinomial logistic regression to analyse data in R. However, I cannot seem to get the confidence intervals for the AICc models I have selected. The atomic vectors are "raw" which means ...
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0answers
53 views

Mixing categorial and continuous data in Naive Bayes Regression using scikit-learn

I'm using scikit-learn in Python and I want to use BayesianRidge regression for prediction of a continuous valued target from my continuous inputs. My problem is that I also have a series of ...
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50 views

Regress categorical variables in Matlab

I have a cell type variable with 12 columns and 20000 rows. I call it Atotal: Atotal= [ATY1;ATY2;ATY3;ATY4;ATY5;ATY6;ATY7;ATY8;ATY9;ATY10;ATY11;ATY12;ATY13;ATY14;ATY15;ATY16;ATY17]; Atotal={ 972 ...
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1answer
35 views

Recording marginal effects in Stata instead of coefficients in a regression table

I need to save the marginal effects of the below models in a table using estout or outreg. The commands i use below only save the coefficients in the table and not the marginal effect. I have been ...
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0answers
37 views

R regression with categorical response variable [migrated]

I have four variables, two are categorical and two are numeric: a<-c("yes","yes","no","no","no",NA,"yes","no") b<-c("high","low","medium","medium","medium","low",NA,NA) ...
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57 views

Regression with several dummy variables in Matlab

I have a cell type variable with 20000 rows and 700 columns. I present here an example of the first 9 columns: C1 C2 C3 C4 C5 C6 C7 C8 C9 A={ 0 0 0 13 16 11 17 26 12 ...
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1answer
32 views

Structure an xreg parameter with three dynamic regressors in Arima

Thanks for viewing my question..... I am working with the following file: https://www.dropbox.com/s/i1a6y2ak4qkcix0/xregs1.csv This code reads in the csv file ads1 <- read.table(csvfile, ...
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1answer
59 views

Interaction terms and random effects in tobit regression model in R

Can anyone tell me if it is possible to incorporate: a)an interaction term b)a random effect in a Tobit regression model in R? For the interaction term I have been working on the ...
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0answers
17 views

Zelig R Cluster Standard Errors Function No Effect

Zelig does not appear to be doing anything when provided information on clusters. Am I doing something wrong? I really appreciate the ease with which this package generates predicted values for ...
3
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2answers
38 views

Using lapply to fit multiple model — how to keep the model formula self-contained in lm object

The following code fits 4 different model formulas to the mtcars dataset, using either for loop or lapply. In both cases, the formula stored in the result is referred to as formulas[[1]], ...
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0answers
18 views

Good MSE doesnt imply good prediction in logistic regression?

I am writing some code for regularized logistic regression. I observe this interesting phenomena and wonder if it is a normal thing or just my code is wrong. For loss function, I am using the ...
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2answers
37 views

Matplotlib regression scattered plot using Python?

My Question I tried regression using curve_fit function from scipy module, and now I am getting a scattered kind of plot, I can't figure it out, Why I am getting a scattered plot here ? My Code ...