Tagged Questions

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

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0
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0answers
12 views

sklearn Linear Regression on 2d scatter

I'm having a problem performing the sklearn Linear Regression on a 2d scatter in tuple form. I have my data generated from text from a csv file, i.e., using np.genfromtxt Here is a fully ...
0
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1answer
51 views

Trying to implement linear regression in python

I am implementing linear regression in Python, and I think I am doing something wrong while converting matrix to numpy array, but cannot seem to figure it out. Any help will be appreciated. I am ...
0
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0answers
3 views

Autocorrelation and Heteroskedasticity in Cross-Sectional Regression

I am conducting an analysis on long term persistence. In a simple cross-sectional regression, I am regressing five-year abnormal returns for all funds available during a specific time period on the ...
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0answers
6 views

Java: Apache Regression gives me absolutly wrong regression parameters

I wanted to get regression parameters by using Apache's Commons.Math3 library and the OLSMultipleLinearRegression. The regression should be polynomial with a power of 2. It worked fine with test data ...
0
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0answers
41 views

Can R do nonlinear regression of a surface? [on hold]

Is there a package in R that I can use to evaluate the fit of data to a surface defined by a nonlinear equation? I need to be able to supply the model equation to the routine.
2
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0answers
18 views

RANSAC Multivariate Regression

I am using RANSAC as my robust regression method. I found a neat toolbox here which performs RANSAC by Marco Zuliani. I saw that there are examples for a line and a plane but what if there are many ...
3
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1answer
29 views

Automatically use LRT to assess significance of entire factor variable

R's output for a multivariable regression model including one or more factor variable does not automatically include a likelihood ratio test (LRT) of the significance of the entire factor variable in ...
0
votes
1answer
31 views

How to predict a continuous dependent variable that expresses target class probabilities?

My samples can either belong to class 0 or class 1 but for some of my samples I only have a probability available for them to belong to class 1. So far I've discretized my target variable by applying ...
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3answers
34 views

Exponential regression with nls in R

I'm trying to solve the following problem: x <- ...
1
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1answer
26 views

Robust nonlinear regression using PyMC(2)

This question is similar to Fit a non-linear function to data/observations with pyMCMC/pyMC, in that I'm trying to do nonlinear regression using PyMC. However, I was wondering if anyone knew how to ...
0
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0answers
23 views

SSAS Create “Mining Model” with Sales Price and Sales Volume as inputs

I have a data set that for each month and product has the product price and cases sold. I want to create a "mining model" that will allow me to predict sales for each product based on past sales and ...
0
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1answer
16 views

Transformation to achieve linearity for linear regression

I would like to fit a non linear function through linear regression after applying a transformation to achieve linearity. The function has 3 variables: (a,b,c) and 2 parameters (X,Y). I want to fit ...
0
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1answer
31 views

boxplot with linear fit doesn't use coefficients

I tried a simple boxplot of two categories (transmission type is either 0 or 1) with an added linear fit and expected it to go through the means of the boxplots, but something is wrong here: ...
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0answers
25 views

Multilevel multivariable linear regressions [closed]

I have to do a multilevel multivariable linear regressions with a continuos variable as the dependent variable, a categorial variable as the independent variable of interest (set it up as a dummy ...
0
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0answers
48 views

Predicting values using linear regression [migrated]

I am very new to statistical analysis and R. Recently I worked on a simple linear regression model to predict values. For example: consider the below data set Col A Col B 1 10 2 16 ...
0
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0answers
7 views

Should a BoxCox transformation to normalize the skewness of data be applied to all the predictors?

If there are few predictors that are highly skewed among a larger set of predictors in case of a linear regression problem, should a BoxCox transformation be applied to only these few predictors or ...
-1
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0answers
23 views

which is correct way for regression line? [migrated]

I have a set of data (some Frequencies per month,Var1 is the month): 1 2 3 4 5 6 7 8 9 10 34968 21151 21989 23847 23351 22551 23131 25455 28823 8940 ...
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0answers
8 views

Specifying a Constant in Statsmodels Linear Regression?

I want to use the statsmodels.regression.linear_model.OLS package to do a prediction, but with a specified constant. Currently, I can specify the presence of a constant with an argument: (from ...
-3
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0answers
25 views

Multiple Linear Regression with Shared X-Intercept in R

I have a data set (below) where I need to plot three lines with the same x-intercept. I would like to model rate~temp with separate lines for each prob (5, 50, 95), that cross the x-axis at temp=14.3. ...
0
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1answer
18 views

Using combinations of principal components in a regression model

I have a group of 51 variables into which I have applied Principal Component Analysis and selected six factors based on the Kaiser-Guttman criterion. I'm using R for my analysis and did this with the ...
0
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0answers
15 views

Is it possible to have similar standard errors for marginal effects under a probit regression for all estimates?

Data: Data Code: ## Regression probit_enae = glm(emploi ~ genre + filiere + satisfaction + competence + anglais, family=binomial(link="probit"), data=ENAE_Probit.df) ...
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0answers
35 views

Extract coefficients from penalized regression

I am using the sparse group lasso, which is a penalized regression. The package I am using is SGL. I tried to run the examples in my R, and the code is given as below set.seed(1) n = 50; p = 100; ...
0
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0answers
15 views

Statistical Formula to find out the Maximum Value

I have data of around 100,000 rows, out of which I have to set the threshold frequency at the certain intervals to find out the peak value at some instants in the data. How can I proceed with the ...
-1
votes
2answers
38 views

Exponential regression in R

I have some points that look like a logarithmic curve. The curve that I'm trying to obtain look like: y = a * exp(-b*x) + c My code: x <- ...
3
votes
1answer
42 views

sklearn, LassoCV() and ElasticCV() broken?

sklearn provides LASSO method for regression estimation. However, when I try to fit LassoCV(X,y) with y a matrix, it throws an error. See screenshot below, and the link for their documentation. The ...
0
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1answer
85 views

Logistic regression: Drop Insignificant prediction Variables

I am using R to perform logistic regression on my data set. My data set has more than 50 variables. The challenge is to write code in R that can assess the statistical validity of certain records ...
0
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0answers
33 views

GAM and ordered probit regression in R

I want to check the fit of the ordinal probit regression model with the help of GAM (generalized additive models). There are plenty of examples how to construct GAM for dichotomous responses in R. ...
-1
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0answers
39 views

How to fit regression to custom model in R [migrated]

I have edited the question after the first two comments. This is for my honors thesis. I have a large data set, of which I'm sharing only what I call the "Low phosphorus" series: > P0 R N P ...
0
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0answers
44 views

algorithm to predict cost function [migrated]

The goal of problem is to predict the weight for missing data . I have a dataset of categorical type as shown below ...
0
votes
1answer
46 views

Stochastic Gradient Descent for Logistic Regression always returns a cost of Inf and weight vector never gets any closer

I am trying to implement a logistic regression solver in MATLAB and i am finding the weights by stochastic gradient descent. I am running into a problem where my data seems to produce an infinite ...
-2
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0answers
18 views

Regression using indicator variables and time t. (R code) [migrated]

I'm having difficulties setting regression R code.... This is the data that I need to use: www <- "http://elena.aut.ac.nz/~pcowpert/ts/Fontdsdt.dat" Fontdsdt.dat <- read.table(www, header=T) ...
0
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0answers
7 views

what is the testing dataset for dantzig selector

Excuse me, what is the common test dataset to test DS? Is there any standard benchmark dataset? And what is the property? I assume that 1 The X matrix can be a fat matrix. 2 There can be missing ...
1
vote
1answer
25 views

bestglm R package error using Poisson regression

I'm trying to use the bestglm package in R to fit a Poisson regression model. Here is my code: bestmodel <- bestglm(Xy, family = poisson, IC ="BIC") and the output is Morgan-Tatar search since ...
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0answers
17 views

Issue with bestglm function and poisson regression

I'm trying to use this to find best models based on AIC values library(bestglm) out <- bestglm(Xy, family = poisson) but R is executing this for more than 2 hours and then it down. out <- ...
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0answers
16 views

Weka SMOreg and LIBSVM with linear kernel problems

I want to test a dataset in weka using either LIBSVM with an e-SVR or SMOreg for regression. I also choose a linear kernel in both (in SMOreg i use an exponent=1 in a non normalized polykernel). ...
1
vote
2answers
41 views

How to perform Lm ridge summary in R?

I wonder is there a way to output summary for ridge regression in R? It is a result of lm.ridge{MASS} function. For standard linear model it just work summary( lm_model) but what about ridge ...
0
votes
1answer
35 views

lm() for regression in R using for loop

I'm using lm() to do linear regression using two matrices (one data and one weights) where I'm looping through the columns and doing the regression using one column at a time. My data (e) is a 102 x ...
0
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1answer
53 views

Fitting a linear regression model in R

I have a question regarding linear regression analysis in R: I have several independent variables (about 20-30) and one dependent variable. To reach the best model, I try "all" relevant combinations ...
-3
votes
0answers
41 views

using a local macro for a variable list in xtreg command in Stata

I am trying to use a list of variables using xtreg. I proceed the following way: local myregressors llh r fd lin lout xtreg lus `myregressors', fe I know this works for the reg command but it does ...
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0answers
14 views

manova for binary variables

I need to analyse my experimental data with 3 independent variables (factors). Every individual treatment contained many animals, and the single dependent variable is thus expressed as two numbers ...
0
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0answers
6 views

Interpreting regression coefficient where variable is less than one

How to interpret regression coefficient when the variable is a ratio(lies between 0 and 1).General interpretation is that one unit increase in variable leads to x percent increase in output ...
0
votes
1answer
36 views

adjusted R2 of training dataset is not constant

I split my entire dataset into two parts: one for training and the other for testint. The training dataset contains 70 observations and the test dataset contains 14 observations. My model has 1 ...
3
votes
2answers
26 views

How do I calculate p values of a linear regression given the covariance matrix and fit coefficients

I have performed a linear regression in C using the GSL library. I've performed the same regression in R. I can access the p values for this regression in R using the "summary" command. In C, I have ...
0
votes
1answer
60 views

calculation gives me NaN

I am trying to implement multinomial logistic regression using gradient descent, but my cost function starts assigning NaN values to the weights. Can somebody plz tell what am I doing wrong? function ...
0
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1answer
30 views

calculating y_pred in least square regression (R)?

I'm having trouble calculating the y_pred in the least square regression. The idea is something like: mydata <- read.csv("G:\\sample.csv",header=T) x<-rep(mydata$wavelength,each=119) ...
0
votes
1answer
42 views

Make a prediction using SAS proc reg

I am trying to create a prediction interval based on a linear model in SAS. My SAS code is proc reg data=datain.aswells alpha=0.01; model arsenic = latitude longitude depth_ft / clb; run; I wish to ...
0
votes
0answers
36 views

the R programming of Roll Regression

I have to do roll regression based on the Daily data. I use the past three weeks of daily returns as the estimation window and the regression is estimated rolling forward one week at a time generating ...
-1
votes
1answer
33 views

obtaining regression coefficients in R

I have plotted the scatter plot below using the following scripts but still need to obtain the regression coefficient. Any help would be very much appreciated. lm.irt12 <- lm(prtemp ~ ...
0
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0answers
26 views

create logistic regression model from ceofficients with categorical variable

I refer to the answer http://stackoverflow.com/a/19276787/373908 that a regression model is built reversely from estimates found in other sources. fit1 <- glm( I(Species=='versicolor') ~ ...
2
votes
3answers
51 views

Storing coefficient estimates for models with different coefficients

I am trying to store the coefficient estimates for different models. To illustrate my problem, Here is an Example below. library(fpp) creditlog <- data.frame(score=credit$score, ...