for issues related to linear regression modelling approach

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62 views

Sklearn Chi2 return NaN results

I attempting evaluate my feature results by performing a chi-squared test using sklearns chi2 library http://scikit-learn.org/stable/modules/generated/sklearn.feature_selection.chi2.html. I used the ...
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106 views

Running an OLS regression with AR(1) and MA(12) variables in python

All, I'm trying to convert my forecasting process away from E-Views to Python. I do want to make sure I still have the same regression. For example, I have the dependent variable, load and my ...
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87 views

Selectively regressing out variables in r

My sample data is at https://www.dropbox.com/s/ij39w2wm1bed8cr/sample_data.csv?dl=0 TIV_SPM, TIV_FSL and TIV_FS are the dependent variables At first I fit a linear model each for TIV_SPM, TIV_FSL ...
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166 views

Trying to get confidence/prediction intervals with `predict.lm` in R, but I keep getting an error regarding my dichotomous variable

I have a dataset that looks like this: time size type 1 22 151 0 2 31 92 0 3 26 175 0 4 35 31 0 5 27 104 0 6 5 277 0 7 17 210 0 8 24 120 ...
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67 views

Linear Regression analysis on selected features - JAVA, WEKA

I want to perform linear regression analysis on selected features, which were obtained by using Feature selection process in java. I know how to perform it in weka but want to do it in java. Can ...
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53 views

Machine learning : learn feature value range for a classification

Which domain the problem belongs to? Given a set of products some are classified as cheap and some not. The task is to determine the price range (probablistic) for cheap products ? Supervised ...
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92 views

Circular-circular regression with CircStats package

I would like to fit a circular-circular regression on two angular variables. I am an R user, so I looked on the literature and found 'circular' and 'CircStats' packages have both a function to fit ...
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57 views

how to transform variables to have constant variance in residual plots

I checked for assumption of normal distribution, constant variance, linear relationship, and not having outliers before adding variables into multiple regression model. After transforming data and ...
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63 views

Forecasting out of linear model in R

I have this model: log(housg) ~ popg + time and 28 known values. I need to forecast it 15 periods ahead. I tried using "predict" function, however, I noticed that it changes the known values as well. ...
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32 views

postgresql to find correlation and regr_slope of %_growth of table values

I have a postgres table that for simplicity looks like this: (measurements are recorded every 15 minutes but not continuously and possibly not for every culture at an assigned time). culture | ...
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70 views

Splitting and iterative simple regression in r

I am pretty much new to r and I have a dummy example of a bigger table underneath. I want to split the table based on id (a,b,c,d) and do iterative simple linear regression for every subset: x is my x ...
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32 views

How to read parameters estimate in R

I am working on the file wm1.txt belonging to the package alr3 in R. I have to find the parameters estimate for this function: E(log(Y)|X=x) = beta_0 + beta_1 log(x) + beta_2 log(x)^2 where Y is CSdp ...
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168 views

R, Linear regression (lm() and plot() function incl.weighting 1/x^2, 1/x or none weight

I start to program in R. Therefore apologize for the maybe not well written code. I have two questions: 1) I tried the lm function and I need to type first yvalues and then the xvalues ...
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60 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 ...
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19 views

No association due to limited variation in predictor?

I am running a linear regression model to test the association between a dosage variable (predictor of interest) and an outcome variable. The regression coefficient is statistically insignificant. I ...
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135 views

LSmeans - unbalanced data with interaction

I wish to analyze an unbalanced data set with 3 variables Tleaf, Tair, and orientation (factor with two levels). Considering the effect of the factor "orientation", I wish to determine if "Tair" has a ...
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61 views

Drop1() and Summary() on lm object

I need to analyse unbalanced data through linear regression: modJuin=lm(TleafMax~TairMax*orientation, na.action="na.exclude", data=aJuin) "TairMax" is a continuous numerical variable and ...
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30 views

Models for continous dependent variables in large(wrt predictors) datasets in R

I have a data set with 4000 variables and 10 000 rows. I would like to use lm() to predict but its taking extremely long to build a model. I don't want to use rpart because it gives me fixed values ...
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337 views

Identification of an ARX model with both linear equality constraints and stability

From input and output data I have to identify with least squares an ARX model y(n) = -a1 y(n-1) -....- aN y(n-N) + b1 x(n-1)+...+bM x(n-M) that has to be stable (all its poles are inside the ...
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52 views

what is the value residues_ in sklearn LinearRegression

The function LinearRegression from sklearn report the value residues_. This value does not seem to be reported in the documentation doc. According to github it seems to come from scipy lsqrt but ...
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292 views

least squares regression Math.Net

I am looking for some information on how to use Math.Net. I don't see any documentation on how to create a matrix using 36 Independent variables and 1 dependent variable. I would assume that if this ...
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128 views

Quadratic programming with linear equality constraints in Matlab

I have to identify an ARX under some linear constraints, this means that I have a quadratic programming with linear equality constraints problem. One way is to use the following equations in the ...
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191 views

Reading data into linear regression C program

Below is the code I've modified from Numerical Recipes. My x will represent voltage in and my y will represent the digital code out. I am still pretty new to programming and this is also my first time ...
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221 views

R stepwise regression with non-negative coefficients

I'm new to the R community, and I wonder if there is a way to restrict the coefficients to be non-negative in a stepwise regression? I tried to use nnls for non-negative linear regression, and step ...
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349 views

Error while using stastmodels' WLS: SVD did not converge

I've written an algorithm for a cascaded boosting classifier using WLS (weighted least squares regression) in statsmodels, and have been able to successfully run it a few times. I used it with a few ...
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153 views

Insert regression line equation automatically for multiple groups

I would like to insert automatically regression line equation into graph produced either by proc sgplot or directly by proc reg by groups. For example, I am running regression for each group ...
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44 views

How to implement linear classification for given image

I have a image that stored at here. I want to use linear classification for the given image.That mean I must find the w and b of linear function y=wx+b. But I don't know which is y value. Could you ...
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86 views

Interpreting the R Polynomial Regression output

I have the following linear regression output with two quadratic terms and I am unsure how you make the general equation from this for predicting values for Y outside of R software. Any suggestions ...
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174 views

getting usable values from statsmodels WLS

I'm using statsmodels' weighted least squares regression, but getting some really huge values. Here's my code: X = ...
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80 views

How to find a linear regression of a ccdf graph in R

I have plotted a ccdf graph of some of my simulated power-law tail data and would like to find a best fit line from my ccdf graph. I used the code from the link ...
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41 views

Fitting a linear model where all coefficients are postive in R

How do I fit a linear model in R where all of the coefficients (not including the intercept) are positive?
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127 views

Obtain coefficients of row wise linear regression

I have a large number of biological measurements (rows) for two treatments. I have identified some measurements with a similar and strong trend for increasing variance although they are not ...
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287 views

R Model Selection based on prediction accuracy

I am trying to decide which explanatory variables to use in my linear regression. My questioin is is there a package/function on R that: Takes as inputs: 1) all the variables I think may ...
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45 views

SAS reading a file in long format

I have a file in long format, like so: name weight month cal bob 80 01 5000 ben 70 01 4989 mary 60 01 3000 bob 81 02 4999 ben 68 02 6000 mary 57 02 2800 ... I would like to create N linear ...
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48 views

Cateogrical variables and regression

I am trying to do regression with a categorical variable V with many (>200) levels. The only way to describe this variable is through the target vector T. I would like to train my model to predict ...
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265 views

Extending the limits of multiple linear regression in ggplot2 and extrapolating the corresponding intersecting point

I have some data here in a .txt file from which I plot the graph below using the following lines of code, library(scales) library(ggplot2) library(reshape2) # read data from .txt file into a ...
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487 views

Example R source code for multiple linear regression with looping through geographies & products?

pardon the newbie question, as I just started learning R a couple weeks ago (but intend to use it actively from now on). However, I could use some help if you already have a working example. In ...
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160 views

No performance improvement when multithreading linear regression using boost c++ libraries

I am performing calls on a method using multiple threads via boost libraries. I received quite a performance enhancement doing so. I've recently introduced linear regression calculations into the ...
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49 views

Checking unbiased parameter

I'm doing linear regression with R right now and I was wondering if there's a R function to test whether a parameter is unbiased or biased. summary(regression model) anova(regression model) These ...
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0answers
1k views

predict.lm is not giving the desired output

nrow(d2) [1] 64 length(d2$Num_Total_Claim_Paid) [1] 64 library(Hmisc) x1 = d2$Num_Total_Claim_Paid y1 = Lag(x1, 1) model = lm(x1~y1) d12 -- is the testing data, d2 -- training data Why does the ...
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0answers
318 views

Issues with using neural network

I am having an issue with using neural networks. I started with something simple. I just used nntool with one hidden layer(with one neuron) with linear activation function. For the output also, I used ...
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0answers
1k views

Regression on Time Series or ARIMA

I have lots of time series (commodity prices on a weekly basis), I'm trying to Find their relationships between each other forecast their prices in the future My questions are For forecasting ...
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176 views

Linear Regression in R

I have been following the write up on this blog http://www.advancednflstats.com/2009/01/how-model-works-detailed-example.html for about 15 hours now and I am ready to pull my hair out. Basically, I ...
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94 views

How to specify the scale parameter in robust regression using R?

I am using the book "Classical and Modern Regression with Applications" written by RAYMOND H.MYERS, in which the author shows an illustration of robust regression using SAS(page 354, chapter 7.7), ...
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369 views

Linear Regression Curve in R

I am trying to implement the linear Regression curve mentioned at this link in R and need help. Link: Linear Regression Curve I found the following ThinkScript code that implements what I am looking ...
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116 views

Estimating dependent variable as sum of functions of independent variables

I have a training data of 5 columns, where c1 is the dependent variable and columns c2, c3, c4, c5 are independent variables. I want to estimate c1 as sum of functions of ci (where i = 2, 3, 4, 5) in ...
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88 views

R BAS package, error no positive roots

I'm learning R and generalized linear models, I found BAS which I think is simple to use to get one, but running it I got this mistake and as I said just begining to learn. Any help: No positive ...
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644 views

rcs generates bad prediction in lm() models

I'm trying to reproduce this blog post on overfitting. I want to explore how a spline compares to the tested polynomials. My problem: Using the rcs() - restricted cubic splines - from the rms package ...
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0answers
507 views

Linear Regression (Gradient descent update) - training set err is more than testing [SOLVED]

My algorithm is like: data is stored as: data = [record1, record2, ... ] where record1 is [1, x1, x2 ..., x_m] m feature values for that record theta is parameter of linear regression function, ...
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151 views

Creating simple rules of classification based on linear SVM coeficients

Gretings. I'm trying to translate SVM findings in a linear combination of predictors. Here is an example of R code : ## Data example test = structure(list(y_bin = c(1, 0, 0, 0, 0, 1, 1, 1, 0, ...