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 to plot a scatter plot with error bars indicating standard deviation

I have a set of data Y v/s X (~20k data points) which when plotted are a scatter. I want to plot error bars for Y for a ranges of X(eg. the X axis is of length 100, then I want the errorbars to ...
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7 views

Log transform dependent variable for regression tree

I have a dataset where I find that the dependent (target) variable has a skewed distribution - i.e. there are a few very large values and a long tail. When I run the regression tree, one end-node is ...
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20 views

LIBLINEAR in C\C++

I want to use LIBLINEAR (http://www.csie.ntu.edu.tw/~cjlin/liblinear) directly in my C++ sources. While it seems simple using it in language like MATLAB/JAVA, in C seems very hard; for example, ...
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14 views

Conditional Indicator Coefficients: Multiple Linear Regression in R [migrated]

I'm trying to create a regression model for a set of data that includes time and temperature, among others, for 30 minutes intervals throughout the course of a month. I want to build a model that ...
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26 views

r linear regression model mistakenly giving me r2 value of 1 [migrated]

I'm using R to create a linear regression model from survey data about public sentiment for a new technology. I am encountering a problem where the addition of a new explanatory variable raises the ...
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7 views

Prediction confidence of GradientBoostingRegressor

I am using a GradientBoostingRegressor from scitkit learn for predictive analytics of some dataset. I have used the LinearSVC in the past which offers decision_function() to calculate the confidence ...
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17 views

R simulations and regression in mice()

I am using the mice package in R to do multiple imputation and trying to understand the algorithm behind it. From its documentation http://www.jstatsoft.org/v45/i03/paper, the MICE algorithm is said ...
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14 views

regression with interaction (metric variable) in a figure with R [on hold]

I did a regressionanalysis with the following variables: Predictor = dummy variable, dependent Variable = metric, moderator variable = metric I know wanna show my results in a figure. The interaction ...
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7 views

re: My Regression model does not provide significant on the predictor value?

I am puzzle by why my predictor was not significant so I would like to seek your expertise. My regression model does not provide significant on the predictor value. Would you suggest that because I ...
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0answers
17 views

poisson regression model scala [on hold]

I am currently trying to implement some R Code in Scala. Major problem is that I need to compute a Poisson Regression Model (computed via glm in R) which is not fully available at the moment for Scala ...
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1answer
53 views

Display regression slopes for multiple subsets in ggplot2 (facet_grid)

To my fellow programmers, I have been searching all over the web for an answer to this question and I am completely stumped. Quite simply, I am trying to display a slope (y=mx+b) and an R-squared ...
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13 views

Automatic add interaction term in multiple regression - similar to step() in R

I am looking for an automatic way to add bilinear interaction terms in multiple regression model using R. Similar to Step() or StepAIC() in MASS package, where irrelevant predictors are tested and ...
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9 views

Linear regression with faster decrease in coefficient error/variance

Suppose we have set of variables Y and X, which know are related by a linear relation y_i=a*x_i +b, and important for us is to find b and b and the error in estimating them. I know that the simple ...
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31 views

C++ Implementation - Linear Regression

The below snippet performs gradient descent on a univariate with one feature of the form: H(x) = theta0 + theat1*x. However it does not converge correctly. If any of you fine comrades could have a ...
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2answers
29 views

Fitting a multivariate polynomial of generic degree in R without having to write the explicit formula

I would like to fit a multivariate polynomial of arbitrary degree and in an arbitrary number of variables, to some data. The number of variables can be high (for example 40) and the code should work ...
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30 views

friedman super smoother and confidence interval

I would like to use local regression to smooth my data (I need running line smoother). I found the R function supsmu, which smoothes the data using Friedman's ‘super smoother’. However, I need to plot ...
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28 views

Prediction on multiple regression - Python [migrated]

I have 3 list of value and 1 ground truth data. They all belongs to the same time series. My purpose is with 3 list try to forecast the ground truth data. For example : list1 = ...
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26 views

Determining linear independency among lags of a vector for example between x(n-1) and x(n-2) using least square fitting methods

I need to find the linear independence using x(n-1) to fit x(n-2) using least square method and calculating the error between x(n-2) and the estimated vector. This is my code to find lags of the X(n) ...
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0answers
34 views

Evaluate linear multiple regression model Python

I need to evaluate a linear multiple regression model for forecasting the future values. My data table like : a = 'article view count' sum = 'total count of every article at spesific date' My ...
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28 views

Estimating R^2 when some coefficients are forced (i.e., restricted coefficients) [migrated]

I am running a regression in R, and wanted to find the right way to calculate the R^2. I have an identity that I am empirically testing with data that is y = x1 - x2 + x3 (unfortunately dont have an ...
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2answers
37 views

Multiple NA's for the last variables of linear regression model in R

I am trying to run a linear regression model where I have dummy variables in my data to indicate if a certain predictor variable is not present. I have a total of 15 predictor variables. No matter ...
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1answer
27 views

Plotting three-piece regression lines in r

I have a three-piece regression model that I’m trying to plot. The regression parameters are here: qdata=data.frame(breakpoint1=1.092201, breakpoint2=6.153361, slope1=1707, slope2=114.6, ...
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16 views

Function predict in glm applied to new data [duplicate]

This question could have been discussed before, but I failed to find it. The question is: let's suggest, I'm fitting a logistic regression and I would like to train it on training set and then apply ...
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14 views

Error in model.frame.default … invalid type (list) for variable

I'm fairly new to R and I'm trying to create a model to work on Kaggle's Facial Keypoint Detection sample project. The ultimate issue is that creating any model (I'm trying a neural net using the ...
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9 views

Weka LibSVM (regression), gap between latest value and first timeseries prediction

I want to use Weka with Time Series Forecasting to predict some future values, in my case prices. I want to use LibSVM as the base learner. The data is about mapping from a given time to a known ...
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1answer
21 views

Censored quantile regression in R: getting specific quantiles

I've generated the following data in R: library(quantreg) library(survival) set.seed(789) N <- 2000 u <- runif(N) x1 <- rbinom(N,1,.5) x2 <- rbinom(N,1,.5) x1x2<-x1*x2 lambda <- 1 ...
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21 views

How can I extract the coefficients from a Heckman 2-step (heckit) regression in R (dplyr) within groups

I am running a heckman selection model on a large industry dataset that is grouped on sectors. I want to extract the coefficient value, std.errors, t-stat etc for one independent variables for each ...
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21 views

SQL Server 2008 Simple Forecasting

I'm creating the following output, and I am looking for a simple way to forecast the NULL values, based on previous months results. I want to say something like - If the value is NULL calculate the ...
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16 views

Power of a test

Can someone explain me with details how this is solved? A seed producer claims that at least 90% of the seeds germinate. The producer’s claim is tested with a significance level of 1%. Determine the ...
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1answer
15 views

R segmented regression predict gives error: “subscript out of bounds”

I'm building a segmented regression model using R's Segmented package. I was able to create the model but have trouble using the predict.segmented function. It always throws an error saying "subscript ...
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24 views

How to regress Y on X using matlab?

Given : Y=[81 55 80 24 78 52 88 45 50 69 66 45 24 43 38 72 41 48 52 52 66 89]; X=[124 49 181 4 22 152 75 54 43 41 17 22 16 10 63 170 125 15 222 171 97 254]; I want to regress Y on X ...
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26 views

Interpreting high p value and low correlation value [migrated]

I am trying to run regression on financial data in R. I am new to regression analysis so I am finding it to difficult to interpret certain scenarios. I have the code as follows: #regression analysis ...
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1answer
30 views

Difftime Error using Looping Regressions in R

With the below code I am getting the error Error in Ops.difftime((f - mean(f)), 2) : '^' not defined for "difftime" objects. This error only occurs with the inclusion of r_sq[[counter-lookback]] ...
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10 views

Reducing data width for machine learning

I am new to machine learning and I was looking to reduce my data's width as I've got too many attributes and too few instances with some missing/empty values on x (mostly) and some on y. The data I'm ...
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2answers
59 views

Find p-value (significance) in scikit-learn LinearRegression

How can I find the p-value (significance) of each coefficient? lm = sklearn.linear_model.LinearRegression() lm.fit(x,y)
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21 views

How to cluster errors in a bivariate probit model with selection

Does anyone know how to cluster errors (by zip code, for instance) in a bivariate probit model with selection in R (or have example R code)? I use the selection function in the sampleSelection package ...
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1answer
47 views

How to plot multiple logistic regression curves on one plot in Ggplot 2

A sample of my data frame is below: ent corp smb fit se.fit UL LL PredictedProb 1 0 0 -2.54 0.10 0.087 0.06 0.072 0 0 1 -3.71 0.05 0.026 0.02 0.023 ...
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1answer
14 views

Regression residuals and fitted values raster outputs in R

I am calculating a regression using 10 raster files. I am able to obtain a raster output for the slope and Rsquared but I have some troubles for producing the residuals and the fitted values. Here ...
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1answer
46 views

Differences when tuning neural network with two output variables using caret and neuralnet packages

I'm using caret package and 'neuralnet' model so as to find the best tuning parameters for a neural network based on a data set which contains several predictors transformed by PCA. This data set also ...
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2answers
30 views

R Variable Intialization Trouble: “number of items to replace is not a multiple of replacement length”

I am trying to regress slices of two financial time series against each other, and store the results of each regression in a single object. When run this code, I get 50+ of the same error 50: In ...
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23 views

Theano code not achieving sufficient GPU speedup

I recently started learning how to use the python library theano and using various examples provided in the documentation and this blog post(http://underflow.fr/ai/lets-play-with-theano-547) I wrote ...
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7 views

Logarithmic transformation -0.5?

This may be a very basic question but I am both new to R and stats. I am doing linear regression. I want to a logarithmic transformation. The Symbox function tells me -0.5 is the best one. I have the ...
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25 views

Determine if a Model is reasonable through correlation analysis? [migrated]

I am looking to build a regression model with x as the dependent variable and several independent variables. Can correlation analysis be used as the first step to determine if a reasonable model can ...
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1answer
33 views

Feature importance calculation for gradient boosted regression tree versus random forest

On data with a few features I train a random forest for regression purposes and also gradient boosted regression trees. For both I calculate the feature importance, I see that these are rather ...
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1answer
35 views

R: Error in using coefplot() (“operator is invalid for atomic vectors”)

I got the results from systemfit(), and tried to visualize the coefficients for each equation. I used coefplot() and to avoid using "$", I wrote coefplot(summary(fitsur)[["eq"]][1]). However, I still ...
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11 views

How to create a random, representative sub sample of a panel in R? [migrated]

I am trying to run a nonparametric regression on a data set that has 1,000,000 observations and 8 covariates. It is clear I do not have the computing power to run this. I wanted to create a ...
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1answer
29 views

ridge regression: test error goes up then down as the training sample increases (from underdetermined to overdetermined)

I am looking into the effect of the training sample size when doing a ridge (regularised) regression. I get this very strange graph when I plot the test error versus the train set size: ...
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5answers
76 views

How would I create an index to be used in regression?

I have 2 continuous variables, each having values in the range [0, 1]. Each can be categorized as Low ($\le 0.25$), Medium ($0.25 - 0.70$) and High ($\ge 0.7$). I need to create an index using both ...
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2answers
40 views

How to best incorporate “regression periods” withint SCRUM agile approach?

We are using Scrum framework in our project. However, the context is such that we cannot afford to release the product without massive regression testing. I know think what would be the best way to ...
0
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1answer
26 views

How can I output the node making a prediction using sklearn.tree?

I would like to obtain all information of a node making a prediction using sklearn.tree. For example: from sklearn.datasets import load_iris nfrom sklearn.tree import DecisionTreeClassifier clf = ...