for issues related to linear regression modelling approach

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0
votes
1answer
87 views

Using Apache Library for OLS Regression : Matrix is singular exception

I am using the Apache Math Library for Java to find the OLS regression for a set of data. However, I will occasionally get the following error : ...
1
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3answers
125 views

Are a majority of machine learning techniques derived from linear regression and kNN?

While reading Elements of Statistical Learning, I came across this quote: A large subset of the most popular techniques in use today are variants of these two simple procedures. In fact ...
4
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1answer
69 views

estimate in lm function in R doesn't match correlation (data with NA)

I'm fitting lm model x <- c(0.1, 0.3, 0.2, 0.5, NA, 0.1, 0.8, 0.4) y <- c(0.3, 0.2, 0.5, NA, 0.4, 0.5, 0.2, 0.4) fit1<-lm(scale(y) ~ scale(x), na.action=na.omit) summary(fit1) This gives ...
0
votes
1answer
604 views

How to do linear regression, taking errorbars into account?

I am doing a computer simulation for some physical system of finite size, and after this I am doing extrapolation to the infinity (Thermodynamic limit). Some theory says that data should scale ...
1
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1answer
47 views

How to use lm function for large number of attributes

i have a dataset with 1 label attribute and 784 pixel attributes with 42000 rows like below label pixel0 pixel1 pixel2 ........... pixel783 0 1 0 0 16 . ...
1
vote
1answer
134 views

Which model is suitable for predicting percentages? [closed]

I came across this problem to predict loss on a loan-default, based on various input attributes. You not only have to predict loss/no-loss but also predict what percentage of loan will be lost ...
0
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1answer
1k views

Leave one out cross validation with lm function in R

I have a dataset of 506 rows on which I am performing Leave-one-out Cross Validation, once I get the mean squared errors , I am computing the mean of the mean squared errors I found. This is changing ...
2
votes
1answer
976 views

Performing linear regression on a log-log (base 10) plot Matlab

I have two sets of data: Peak Velocity and Amplitude. The relation between the two parameters is not linear and I used a logarithmic (base10) plot before performing linear regressions (this process is ...
2
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1answer
446 views

Getting the y-axis intercept and slope from a linear regression of multiple data and passing the intercept and slope values to a data frame

I have a data frame x1, which was generated with the following piece of code, x <- c(1:10) y <- x^3 z <- y-20 s <- z/3 t <- s*6 q <- s*y x1 <- cbind(x,y,z,s,t,q) x1 <- ...
0
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0answers
184 views

p-values for model parameters from matlab's lasso regression

I'm using matlab's lasso function from the statistics toolbox to tune the lasso regularization for my multiple regression. It is a linear regression in 7 independent variables. I used the default ...
0
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1answer
49 views

To have a look at subset of linear regression in R

I use R-Studio. I've run this linear regression model: gn<- lm(NA.~ I(PC^0.25) + I(((PI)^2)),data=DSET) Then, I ommited the first 11 elements of the model with the following command: ...
0
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1answer
160 views

Extract Formula From lm with Coefficients (R)

I have an lm object and want to get the formula extracted with coefficients. I know how to extract the formula without coefficients, and how to get the coefficients without the formula, but not how to ...
0
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1answer
513 views

Creating interaction effect plot, ggplot or other

I have found an interaction effect between the predictors age and education level in a multiple regression model assessing the effects of various predictors on alcohol consumption. I wish to graph ...
0
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0answers
409 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 ...
0
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0answers
1k views

Error 'invalid model formula in ExtractVars' from lm when used in a user-defined function

I built a function, called regcomp (to compare regressions) and the code is giving me an error when I call the function. the exact same lm code works when it's not in the function. Does anyone know ...
0
votes
1answer
99 views

How do I recode missing data so that my variable lengths are the same in R

So I have two variables which are SAT scores in Verbal(SATV) and Quantitative(SATQ). There are 500 rows. There are 7 NA's in the SATQ. My goal is to run lm() and gvlma() with SATV and SATQ as IVs. But ...
1
vote
1answer
392 views

Rescaling after feature scaling, linear regression

Seems like a basic question, but I need to use feature scaling (take each feature value, subtract the mean then divide by the standard deviation) in my implementation of linear regression with ...
0
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0answers
212 views

Weka LinearRegression - is there any complete example?

I am searcing for some nice example code how to use LinearRegression from Weka lib and I still have not find it. I can finde some examples for desition tree but not for liner regression. I need some ...
2
votes
1answer
59 views

Inverse of a predictor in a linear model - R

I have this linear model in r: a<-lm(NA. ~ PC +SPCI,data=DSET) Now, what I want to run is a linear model with the inverse of SPCI, which is (1/SCPCI). I guessed that the sintaxis was : ...
1
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5answers
1k views

Gradient Descent in linear regression

I am trying to implement linear regression in java. My hypothesis is theta0 + theta1 * x[i]. I am trying to figure out the value of theta0 and theta1 so that the cost function is minimum. I am using ...
0
votes
1answer
115 views

What package can plot/analyze fitting result of optim() function easily?

I am trying to analyze the result of linear regression using lm() and optim(). Actually, the result from lm() function is very easy to plot or analyze by related functions,such as: fit <- ...
1
vote
1answer
987 views

R: Making sense of the output of a MCMCglmm

I performed a MCMCglmm (MCMCglmm package). Here is the summary of this model Iterations = 3001:12991 Thinning interval = 10 Sample size = 1000 DIC: 211.0108 G-structure: ~Region ...
0
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3answers
207 views

Linear regression in R with data from Sql server

I want to import data from MS Sql Server and apply linear regression on the data in R. But i am not sure how i can manipulate the data from sql server so that i can do a regression. My table in sql ...
0
votes
2answers
224 views

Standard errors for multivariate regression coefficients

I've done a multivariate regression using sklearn.linear_model.LinearRegression and obtained the regression coefficients doing this: import numpy as np from sklearn import linear_model ...
1
vote
3answers
113 views

change null hypothesis in lmtest in R

I have a linear model generated using lm. I use the coeftest function in the package lmtest go test a hypothesis with my desired vcov from the sandwich package. The default null hypothesis is beta = ...
0
votes
3answers
1k views

How to return predicted values,residuals,R square from lm.fit in R?

this piece of code will return coefficients :intercept , slop1 , slop2 set.seed(1) n=10 y=rnorm(n) x1=rnorm(n) x2=rnorm(n) lm.ft=function(y,x1,x2) return(lm(y~x1+x2)$coef) res=list(); for(i in ...
0
votes
0answers
53 views

Specifying prior weights of explanatory variables in R's bic.reg function (BMA package)

The bic.glm function in the BMA (Bayesian Model Averaging) package has an argument "prior.param" for specifying prior weights for explanatory variables. That same argument causes an error when used ...
1
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0answers
48 views

Limit to the number of explanatory variables that R's BMA package can handle?

Using R's BMA (Bayesian Model Averaging) package, I want to run the following code: result = bic.glm(x,y,prior.param = c(1,1,1,1,0.5,1,0.5,0.5,0.5,1,1,1,1,1,0.5,1, 1,1,1,1,1,1,1,1,1,1,1,1,0.5,1), ...
0
votes
1answer
83 views

Neural nets (or similar) for regression problems

The motivating idea behind neural nets seems to be that they learn the "right" features to apply logistic regression to. Is there a similar approach for linear regression? (or just regression problems ...
1
vote
1answer
107 views

How can I regularize a linear regression with scipy's curve_fit?

I have recently become proficient at using Python/scipy curve_fit to perform linear regression. However, with higher order polynomials, my data is sometimes overfit. How can I add regularization to ...
1
vote
1answer
226 views

Different Python minimization functions give different values, Why?

I’m trying to learn python by rewriting Andrew Ng’s Machine learning course assignments from Octave (I took the classed and got the certificate). I’m having issues with the optimization functions. In ...
1
vote
2answers
114 views

Linear fit with a previously known slope

I'm trying to fit a linear function for whom I know the slope to this data in R: > flN eCenter eLow eHigh arrivalTime_4_8 timeError_4_8 vCenter vLow vHigh 1 56.4997 ...
6
votes
2answers
494 views

Why do I get only one parameter from a statsmodels OLS fit

Here is what I am doing: $ python Python 2.7.6 (v2.7.6:3a1db0d2747e, Nov 10 2013, 00:42:54) [GCC 4.2.1 (Apple Inc. build 5666) (dot 3)] on darwin >>> import statsmodels.api as sm ...
9
votes
1answer
648 views

Vector autoregressive model fitting with scikit-learn

I am trying to fit vector autoregressive (VAR) models using the generalized linear model fitting methods included in scikit-learn. The linear model has the form y = X w, but the system matrix X has a ...
1
vote
2answers
277 views

SPSS creating a loop for a multiple regression over several variables

For my master thesis I have to use SPSS to analyse my data. Actually I thought that I don't have to deal with very difficult statistical issues, which is still true regarding the concepts of my ...
1
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0answers
48 views

Huber sandwich estimator in Quantile Regression in R [closed]

I would like to know how was estimated Huber sandwich standard errors in Quantile Regression in R. I found only these kind of explanations: nid" which presumes local (in tau) linearity (in x) of ...
3
votes
1answer
229 views

Newton's Gradient Descent Linear Regression

I am trying to implement a function in MatLab that calculates the optimum linear regression using Newton's method. However, I became stuck in one point. I don't know how to find the second ...
1
vote
0answers
178 views

Multi-dimensional regression with Vowpal Wabbit

I have an unusual regression problem that I'm trying to fit into vowpal wabbit. I'm trying to learn a set of regressors {r_m(x)} that train on the data set {(x_n, h_n[m])} for n=1 to n=N, where m ...
4
votes
2answers
2k views

D3.js linear regression

I searched for some help on building linear regression and found some examples here: nonlinear regression function and also some js libraries that should cover this, but unfortunately I wasn't able ...
3
votes
1answer
436 views

How to do gaussian/polynomial regression with scikit-learn?

Does scikit-learn provide facility to perform regression using a gaussian or polynomial kernel? I looked at the APIs and I don't see any. Has anyone built a package on top of scikit-learn that does ...
2
votes
0answers
230 views

R - Fitting a constrained AutoRegression time series

I have a time-series which I need to fit onto an AR (auto-regression) model. The AR model has the form: x(t) = a0 + a1*x(t-1) + a2*x(t-2) + ... + aq*x(t-q) + noise. I have two contraints: Find ...
0
votes
1answer
48 views

Get variables from summary?

I want to grab the Standard Error column when I do summary on a linear regression model. The output is below: Estimate Std. Error z value Pr(>|z|) (Intercept) -8.436954 0.616937 ...
3
votes
1answer
575 views

Efficient 1D linear regression for each element of 3D numpy array

I have 3D stacks of masked arrays. I'd like to perform a linear regression for values at each row,col (spatial index) along axis 0 (time). The dimensions of these stacks varies, but a typical shape ...
1
vote
1answer
364 views

ValueError: negative dimensions are not allowed in scikit linear regression CV model with sparse matrices

I recently competed in a kaggle competition and ran into problems trying to run linear CV models from scikit learn. I am aware of a similar question on stack overflow but I can't see how the accepted ...
2
votes
2answers
82 views

What algorithm can I use to recognize the line in this scatterplot?

I'm creating a program to compare audio files which uses a similar algorithm to the one described here http://www.ee.columbia.edu/~dpwe/papers/Wang03-shazam.pdf. I am plotting the times of matches ...
1
vote
1answer
1k views

MATLAB: Piecewise function in curve fitting toolbox using fittype

Ignore the red fitted curve first. I'd like to get a curve to the blue datapoints. I know the first part (up to y~200 in this case) is linear, then a different curve (combination of two logarithmic ...
0
votes
0answers
108 views

Precision issue with linear regression in java using commons apache

I need to compute significance for linear regression in Java. I am using the SimpleRegression class provided by apache commons math. The library works fine except when the significance p-value gets ...
1
vote
2answers
361 views

Java Non-negative multiple linear regression library

I am working on a Java project, and I have to compute a multiple linear regression, but I want the gotten parameters to be non-negative. Is there an existing commercial-friendly-licensed library to do ...
0
votes
1answer
127 views

Weird regression line in scatterplot in R

Hi guys so my problem is possibly either a stats or a programming issue. I have two xts time series of mostly overlapping time periods and I'm simply plotting a regression of their log differences: ...
0
votes
1answer
71 views

Calculate the linear regression for several files?

I have 3 files (matrix with 200 columns and 6 rows) in one folder mat1 <- matrix(seq(1:1200), ncol = 200) mat2 <- matrix(seq(1:1200), ncol = 200) mat3 <- matrix(seq(1:1200), ncol = 200) I ...