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

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Python IV regression 2sls tsls regression

I can't implement 2sls regression can somebody help ? I use the package "from statsmodels.sandbox.regression.gmm import IV2SLS", however get some errors in the case when the number of instruments is ...
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Stepwise Regression Limitations Explanation

I've recently been working on building a model and have come across a number of different approaches. I'm particularly interested in the limitations of using Stepwise regression as it has a huge ...
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35 views

Why predict function for logistic regression in r doesn't return binary vector?

I try to use logistic regression while the response variable is "Chan". I used predict function but the vector that the function bring back is not boolean, is anyone know what the problem? example ...
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How can I predict the current value of Z with a delayed measurement of Z?

Currently I'm measuring three values: X, Y, Z I'm using a sample time of one second where I get the instantaneous values of X and Y but I measure Z with a time delay of > 30 seconds. So at time ...
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How do i run two regression models between two variables, while referencing two levels of another factor

I am trying to answer the following question: "self-efficacy has a stronger positive relationship to math achievement for males than for females" I have a data set with variables sex, self.efficacy, ...
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R stepwise regression model iteration by column name (data table)

I have a .csv file and input in R used fread() function from librarydata.table. The file which input in R with 8928 obs and 71 variable. Here is data content with 71 columns and 8928 rows called DT ...
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11 views

plm out of sample predictions

Using the plm package for a fixed effects model, I know how to get fitted values, however I am unable to get predicted values. I use the first 150 data points to get coefficeints and try to predict ...
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16 views

Multivariate regression in R Kullback test not working

At the risk of this being a somewhat vague question, I am going ahead and ask it anyways: I am running a multivariate regression in R with two outcome variables and would like to assess the ...
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1answer
24 views

In R, scatterplot and smoother are split by factor (colour = factor), but I want the lines to differ by greyscale or linetype, not colour

I have a scatterplot with a smoother split by a 2-level factor; I need to keep it all on one graph, but cannot use colour. So I'd like the two levels of the factor to differ either (1) by grayscale ...
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1answer
14 views

Using zelig for simulation

I am very confused about the package Zelig and in particular the function sim. What i want to do is estimate a logistic regression using a subset of my data and then estimate the fitted values of the ...
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12 views

Polr command in MASS and clustered standard errors

I use polr command in MASS to estimate an ordinal probit regression. But how do I get robust clustered standard errors? The rms package is useful for this – unfortunately, it does not work for ...
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1answer
6 views

scipy PLS getting the regression equation

I made a regression import numpy as np from sklearn.cross_decomposition import PLSRegression X = [[0., 0., 1.], [1.,0.,0.], [2.,2.,2.], [2.,5.,4.]] Y = [[0.1, -0.2], [0.9, 1.1], [6.2, 5.9], [11.9, ...
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1answer
43 views

plotting separate curves on data in R

I have a plot where the for every x values there are 2 Y values. The data is also non-linear. The plot looks like this: Now my question is I want to fit to regression curves separately to two of ...
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41 views

Log-linear model, Poisson regression, categorical variable with 100 levels

I want to compare the incidence rate(asum) of 100 different cities(cityID) to see if there are significant differences among them. Given that the incidence rate is following Poisson, so it is a ...
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1answer
15 views

Naive Bayes For Regression

I was wondering, if I can apply naive bayes, to a regression problem and how will it be done. I have 4096 image features and 384 text features and, it won't be very bad if I assume independence ...
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22 views

Matlab: mvregress + weights

I have a multivariate linear regression problem. There are 3 responses. Slopes and intercepts are independent. There is only one explanatory variable. I can fit the model just fine. The issue I'm ...
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25 views

How to apply provided replicate weights to a data set? [on hold]

I'm working with a large federal dataset (education longitudinal study of 2002, or els for short) where replicate weights are provided. I need to run a regression and some descriptive summary ...
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(libsvm )Why the mean squared error in CV is smaller than it in normal training?

I am using libsvm and doing the epsilon-SVR.To find the optimal parameters in a grid(cost = [125.2,125.6,125.8,126,126.2,126.4,126.8],gamma = ...
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0answers
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Meaning and use of tabulate() in R programming

I have gone across much content related to tabulate() function on the net, and it says that it's used to 'count the number of times each integer occurs in it.' There might have been some nuances ...
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1answer
16 views

t-stat for linear regression

I m going a simple linear regression in Matlab using fitlm. My question is more about the interpretation of the result. I have a t-stat for the full time-serie which is higher than t-stat on smaller ...
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1answer
25 views

Including lagged independent variables - R

I would like to run a regression where I use both the current value and lagged values from a specific independent variable. My dataset This is an example extract from my dataset: dt ...
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1answer
27 views

predict.glmnet() gives same predictions for type = “link” and “response” using family = “binomial”

Take this case (classic crab data for logistic regression): > library(glmnet) > X <- read.table("http://www.da.ugent.be/datasets/crab.dat", header=T)[1:10,] > Y <- factor(ifelse(X$Sa ...
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6 views

How to use likelihood functions in a GPML model

I have been using the GPML toolbox in matlab to run a Gaussian process regression model. Would anybody be able to explain how the likelihood function affects the model function in practice? This is ...
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19 views

Kernel Ridge Regression in R (for Drug-Target Interaction)

It's very hard to find any information on implementing KRR, therefore any minor input will be truly highly appreciated. I want to run Kernel Ridge Regression on a set of kernels I have computed, but ...
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1answer
25 views

Simulating thousands of regressions and obtaining p-values

I'm looking to do some basic simulation in R to examine the nature of p-values. My goal is to see whether large sample sizes trend towards small p-values. My thought is to generate random vectors of ...
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24 views

MATLAB: Test difference between regression coefficients with different dependent variables

I am running two regressions using the same independent but different dependent variables, i.e. I do AA = regress(y1, [ones(size(x)) x]); beta1 = AA(2); BB = regress(y2, [ones(size(x)) x]);` beta2 = ...
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Problems with running GPML in Matlab

I'm trying to run the following code: covfunc = @covRQard; likfunc = @likWeibull; meanfunc ={@meanSum {@meanConst,@meanLinear }}; hyp2.cov = [1 ;1;1;1;1;1]; hyp2.lik = 2; hyp2.mean = ...
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2answers
26 views

In R using the pls package, how can I obtain estimates of coefficients by group/factor

I've started looking at the pls package & I am unsure about how to extract separate coefficients by group/factor. I can run separate models per group, or consider the X ~ group interaction term, ...
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2answers
48 views

Rolling multi regression in R data table

Say I have an R data.table DT which has a list of returns: Date Return 2016-01-01 -0.01 2016-01-02 0.022 2016-01-03 0.1111 2016-01-04 -0.006 ... I want to do a rolling multi ...
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1answer
16 views

Weka java : how to change the attributes priorities?

I am new at weka library. I don't know if it's possible to customize the linear regression function. In fact, I want the algorithm to consider a parameter more than the other ones. In my situation, i ...
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33 views

ggplot. Adding regression lines by group

If I plot this dodge <- position_dodge(.35) ggplot(mediat, aes(x=t, y=Value, colour=factor(act),group=id )) + geom_point(position=dodge) + geom_errorbar(aes(ymin=Value-sdt, ymax=Value+sdt), ...
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74 views

Calculate Prediction Intervals of a predicted value using Caret package of R

I used different neural network packages within Caret package for my predictions. Code used with nnet package is library(caret) # training model using nnet method data <- ...
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Solving Regression with Multiple Variables

I am trying to practice regression with multiple variables and I have a 365x10 matrix with 10 different attributes for each day of the year and 365 results that are somehow related to those 10 ...
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4 views

Interpretation for regression coeffecient and T statistics from haplotype association in PLINK

I have generated haplotype block of a chromosomal region and used these blocks for haplotype association of quantitative trait in plink. I am ok with R2 and P-val but not with regression coeffecient ...
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14 views

Expanding window regression giving more weight to recent observations

I have a weekly time-series dataset with weekly returns for a security & market. I want to calculate regression betas at fixed intervals of time, but giving more emphasis to more recent data at ...
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34 views

How to generate observations from a function? Stata

I was assigned to generate 500 observations from a two variable function, each variable distributed differently. I don't have any clue which command I should be using, nor how I assign each variable's ...
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1answer
44 views

Linest Polynomial Regression in Excel's VBA

I am having issues finding information on using Linest in Excel's VBA in a subroutine. I need to return the polynomial coefficients (third or fourth order) for a column of x values (Column A beginning ...
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1answer
9 views

R- cannot access dr.fit() function

Lately I have been studying dimension reduction using sliced inverse regression .To implement in R ,im using the dr() function from the dr package. When i checked the function body of dr(), there ...
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57 views

Model has more coefficients than data in R

I am using GAM (generalized additive models) for my dataset. This dataset has 32 observations, with 6 predictor variables and a response variable (namely power). I am using gam() function of the mgcv ...
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2answers
27 views

Using pandas to perform regression, error: cannot concatenate 'str' and 'float' objects

I've been writing a code based on this answer (Reading csv to array, performing linear regression on array and writing to csv in Python depending on gradient) in order to find out which days exhibited ...
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1answer
24 views

Predicting with logarithmic model in R

I have a dataset of a company's costs for inputs over a series of years and have fitted the following logarithmic model on them: lm(formula = log(A) ~ log(C) + log(B) + log(D) + E, data = dataset) ...
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Predicting discrete values in dataframe

I have the following dataframe (ij1): > head (ij1) hour melel_cof melel_madp melel_tami melel_b_refr melel_s_refr 1 13:00 decreasing increasing increasing stable low stable low ...
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1answer
15 views

linear regression in python error

I try to implement the code below but it return an error : 'LinearRegression' object is not. What gets wrong? Thanks ...
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1answer
43 views

Plot logistic regression curve in R

I want to plot a logistic regression curve of my data, but whenever I try to my plot produces multiple curves. Here's a picture of my last attempt: last attempt Here's the relevant code I am using: ...
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NA/NaN/Inf error when fitting LQMM

I'm trying to replicate some results that were published in "Linear Quantile mixed models", Geraci M. and Bottai M. (2013). The data can be downloaded from: ...
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2answers
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R : cannot run partial least square regression on more than one descriptor

I generated a csv table "T.CSV" : "system","response","NIR.a","NIR.b" 1,1,2,3 2,4,5,6 3,7,8,9 for which plsr succeeds for one descriptor but fails for multiple descriptors : > library(pls) ...
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R: Improving on rolling regression by using Time-Varying Coefficient Modeling (Zanin & Marra)

I am able to perform a Rolling Regression library(PerformanceAnalytics) library(quantmod) getSymbols(c('BHP','RIO'), from='01-01-2005') chart.RollingRegression(Cl(BHP),Cl(RIO), width=60, ...
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1answer
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What is a proper method for minimizing st deviation of dependent variable (e.g. clustering?)

I'm stuck with minimizing the st deviation of a dependent variable being time difference in days. The mean is OK, but the deviation is terrible. Tried clustering by independent variables and noticed ...
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1answer
33 views

Identify weakest feature in classification

A basic machine learning exercise is to perform a regression on some data. For instance, estimate the length of a fish as a function of weight and age. This is often done by having a large training ...
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31 views

Perform same linear regression on different factors within same data frame

I am working on a very large dataset and have laid out a simple version below group <- c(rep("A", 3), rep("B", 3), rep("C", 3)) X <- c(0, 1, 2, 0, 1, 2, 0, 1, 2) Y <- c(0, 2, 4, 0, 3, 6, 0, ...