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

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3D linear regression in Python 2.7

3D linear regression Python 2.7: I have two independent variables (x and y) and a single dependent variable (z), where z = f(x,y). I have x, y and z vectors and my data is largely correlated. ...
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10 views

Storing and retrieving bandwidth objects in nonparametric regression

I nonparametrically estimate a conditional density using Rs np package (Racine & Hayfield). It is quite time-consuming (~20 minutes for my actual example, not the reproducible one below) to ...
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1answer
13 views

Unit Testing implementations or wrappers of machine learning algorithms

Let's say, I have an implementation of logistic regression. Are there canned examples (say test and training sets and expected error) that I can leverage to assess that performance of my ...
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1answer
31 views

Extrapolating data from a curve using Python

I am trying to extrapolate future data points from a data set that contains one continuous value per day for almost 600 days. I am currently fitting a 1st order function to the data using ...
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1answer
19 views

Random forest regression severely overfits single variable data

I am trying to use sklearn's random forest regression for a toy example. I generated 500 uniform random numbers between 1 and 100 as the predictor variables, and then took their logs and added ...
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23 views

SVM regression ruined by adding polynomial features

I'm trying to get the feel for SVM regression with a toy example. I generated random numbers between 1 and 100 as the predictors, then took their log and added gaussian noise to create the target ...
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1answer
38 views

Build logistic regression models for each PAIR of 10 classes

I am working on MNIST digit recognizer dataset Here, I have 10 class labels and I am looking to build and compare all the pairs of classes, ie, to run 10c2 logistic regression models and compare ...
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2answers
42 views

r for loop for regression lm(y~x)

Example: df <- data.frame(A=1:5, B=2:6, C=3:7,D=4:8,E=5:9,F=6:10) I want make a regression loop lm(y,x) using like y the col 1 and 2 and like x the rest of the cols. my idea: lmf <- ...
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1answer
26 views

Linear regression in MATLAB and adding new features

I'm using the regress function in MATLAB for multiple linear regression. Below is the sample code given by the regress documentation: load carsmall x1 = Weight; x2 = Horsepower; % Contains NaN ...
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8 views

Bootstrap wind data to account for autocorrelation and obtain new slope

I have a sample dataset (12783x2) containing the time and wind speed values overs 35 years (6 hour intervals). I have noted that there is a large amount of autocorrelation in the wind data and thus I ...
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1answer
20 views

What happens to the coefficients when we switch labels (0/1) - in practice?

I am trying to see in practice what was explained here what happens to the coefficients once labels are switched but I am not getting what is expected. Here is my attempt: I am using the example of ...
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9 views

Regression with change in type of variables

What kind of methods can I use if I have few dependent variables stored as categorical variables for 5 years and then stored as continious variable for recent 2 years. For example, variable Sales ...
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21 views

Gaussian process ordinal regression in R [on hold]

Is there any ordinal regression using gaussian processes implemented in R? I made a research in the Internet, but I didn't find anything.
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1answer
27 views

Stata: combining coefficients/standard errors from several regressions in a single dataset (number of variables may differ)

I have already asked a question about storing coefficients and standard errors of several regressions in a single dataset. Let me just reiterate the objective of my initial question: I would like ...
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3answers
37 views

Draw a logarithmic curve on graph in R

I have the following set of data and when plotted has a curvilinear relationship Fish.species.richness Habitat.Complexity log.habitat 17 0.6376 -0.1954858 13 0.2335 -0.6317131 30 0.2866 ...
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0answers
34 views

Row-wise regression on pandas DataFrame

I want to do row-wise regression on a pandas dataframe and am wondering if there is a better way to do it than what I have stitched together. I have some data in the following form: import numpy as ...
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24 views

Elaborate reading material or tutorial on Random Forest Needed for R Programming [on hold]

I have been trying to find some academic material but whatever i have my hands own isn't explicit as to explain what and how random forest is being used and how can it be used in conjunction with ...
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1answer
43 views

Leaps: Running all possible linear models

I am attempting to use the R package leaps to run all possible combinations of regression models -- of all possible sizes -- on a single dependent variable and greater than 50 possible predictor ...
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28 views

Multinomial logistic regression matlab

I am following the matlab examples at http://nl.mathworks.com/help/stats/mnrfit.html From what is written there I understood that the model [B,dev,stats] = mnrfit(X,Y,'model','ordinal'); and ...
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Coefficients of a Logistic Regression Model [migrated]

How to interpret the coefficients of logistic regression? To be more specific, I have a set of independent variables, and one dependant variable (let it be "rain" or "no rain" expressed as 1 and 0 ...
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15 views

Linear regression with numerous fixed effects: OLS incrementally

I have about 180 million observations stored in a SQLite database. Each observation consists of 30 variables, including a 'datetime' variable and a categorical variable indicating different regions. ...
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1answer
41 views

Can I train two dimensional x,y together or is each coordinate is considered as one output of SVR and trained independently?

In my project indoor location I use SVR Regression. I need to train SVR offline using x,y location and received signal strength WiFi (to build fingerprint database) for training in my location, and ...
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1answer
40 views

interpret Wilkinson Notation linear regression model matlab

I fitted the following model to my data. Linear regression model: NNSB ~ 1 + Gender + Age*MMRC Estimated Coefficients: Estimate SE tStat pValue ...
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14 views

unable to find an inherited method for function ‘vif’ for signature ‘“integer”’

I am unable to run the vif command mData = read.csv(file.choose()) attach(mData) head(mData) reg1= lm(MPG~Weight) plot(reg1) summary(reg1) vif(Weight) It throws an error like: Error in ...
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19 views

Non-linear classification vs regression with FFANN

I am trying to differentiate between two classes of data for forecasting. Basically the dependent variables are features of a signal that I want to forecast. I want to predict whether the signal will ...
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0answers
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Errors in R with Elastic Net [duplicate]

I'm running into some issues with code I have written. I'm getting a few errors and thus, not able to conclude with accurate results. Here's the code: contdepdata <- ...
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1answer
62 views

Numerous errors in R

I have numerous errors popping up throughout. I'm still getting values, but I'm not sure how accurate they are. In fixing these errors, I tried starting from the top and playing with the variable ...
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How to use reduction factor in R [closed]

My question revolves around reduction factor. How to use reduction factor in R to evaluate a linear regression model? since I searched how to do it, but I didn't find a useful information Thank you
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20 views

Caffe regression wrong no. of outputs in final layer

I am doing regression using a fine-tuned net, on the lines of caffe flickr-style example, I have changed the num outputs in the last layer to 1, but when testing it on an image using the matlab ...
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38 views

Stepwise regression is not working in R

I am trying to run a stepwise regression in R for penetration driver analysis. But it shows an error: I am running a command: x <- step(lm(No.Of.Buyers_52.Weeks ~.,data=data1),direction = "both") ...
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19 views

Interpretation of Elastic Net Model [migrated]

I have a code for an elastic net model which is predicting the best lambda to use. With this, it provides coefficients for those values. I wanted to see how accurate those coefficients are that it ...
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0answers
25 views

Comparing logit and regression: error in `[.default`(xj, i) : invalid subscript type 'list'

I'm trying to define some variables in my data and am trying to compare a logit function with a regression function. Here's an example with a simulated data set: set.seed(1) train <- sample ...
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1answer
29 views

implementation of R random forest feature importance score in scikit-learn

I'm trying to implement R's feature importance score method for random forest regression models in sklearn; according to R's the documentation: The first measure is computed from permuting OOB ...
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11 views

Apache Commons Math SimpleRegression: get prediction stderr

Apache commons math SimpleRegression has a very handy predict method for predicting a y value for a given x value. What it doesn't have, however, is an out of the box means for getting the standard ...
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1answer
25 views

How to calculate the intercept using numpy.linalg.lstsq

After running a multiple linear regression using numpy.linalg.lstsq I get 4 arrays as described in the documentation, however it is not clear to me how do I get the intercept value. Does anyone know ...
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17 views

python pandas split to testing and training data [duplicate]

When performing regression analysis, it is best to generate your coefficients using a training dataset, and then test the accuracy of the regression using a testing dataset. I'm currently using the ...
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2answers
21 views

FF Neural network and binary classification

Whenever I train a FeedForward neural network on a binary classification problem, the net returns float values. What's the theory behind this? Can this be interpreted as a probability? For instance, ...
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1answer
51 views

feature importance results differ in R and sklearn random forest regression

I'm working on a regression problem, and have been using both the R randomForest package as well as the python sklearn random forest regression estimator. The R package can calculate the feature ...
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3answers
50 views

How to loop set of commands with different variable each time in R?

I am quite a newbie in R coding, thus I really need your help to run a looping command in R. I have a big table ("variable_table.txt") with columns as below: sample BMI var1_LRR var1_BAF ...
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1answer
23 views

Wald Testing Bootstrapped Estimates in R

I've performed multiple regression (specifically quantile regression with multiple predictors using quantreg in R). I have estimated the standard error and confidence intervals based on bootstrapping ...
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2answers
53 views

Performing Anova on Bootstrapped Estimates from Quantile Regression

So I'm using the quantreg package in R to conduct quantile regression analyses to test how the effects of my predictors vary across the distribution of my outcome. FML <- as.formula(outcome ~ VAR ...
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1answer
25 views

Is there a way to verify a Python interpreter built from source is correct?

For my embedded project I'm using BusyBox which builds Python 2.7 from source for the ARMHF architecture. Is there any existing set of regression tests I can run on the target to ensure the built ...
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2answers
60 views

Regression (logistic) in R: Finding x value (predictor) for a particular y value (outcome)

I've fitted a logistic regression model that predicts the a binary outcome vs from mpg (mtcars dataset). The plot is shown below. How can I determine the mpg value for any particular vs value? For ...
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2answers
29 views

How to Use input or Raw_input to create OLS program

Dear More advanced Python users, I want to create a little program that will allow me to use the raw_input (now just input) function in Python to input a group of numbers into a OLS function ...
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How can I use this Node.js library to calculate a polynomial regression?

I need an algorithm to calculate a polynomial regression given an input vector. I found this Node.js library which seems to provide what I need. Looking at the documentation, I see I need to pass a ...
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0answers
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How to build a predictive model that uses only a subset of training factors , for testing? [migrated]

Generally, all the predictive algorithms work as follows : input factors : x1,x2,x3,x4...xn<br> responses: y1,y2..ym <br> and the model (say M) built gives the predicted output as ...
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37 views

Regression analysis using R

After building the regression model we can build a prediction using predict function in R. And what if I have already known the desired (predicted) value but I want to know the necessary value for one ...
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python stats models - quadratic term in regression

I have the following linear regression: import statsmodels.formula.api as sm model = sm.ols(formula = 'a ~ b + c', data = data).fit() I want to add a quadratic term for b in this model. Is there ...
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24 views

CART with Ordinal Response Variable using rpartScore Stuck

I'm trying to fit a decision tree over some data which has ~40K rows and ~200 features. The response variable, y, is ordinal and takes values {1,2,3} or {1,2,3,4} depending on the problem definition. ...
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Quantile regression for Sales forecast in R [migrated]

Issue: Cannot forecast sales accurately using quantile regression in R. I am using rq function from "quantreg" package which is giving me warning "Result might have Non unique solutions" Aim: I am ...