for issues related to linear regression modelling approach

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36 views

### Multiple Linear Regression in C#

I want to make a multiple linear regression in C#. I am trying to achieve this with MathNet.Numerics, but I keep getting the error "Matrix dimensions must agree 2x3".
...

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29 views

### Bagging of linear regression in R [on hold]

Is there a package available to run bagging of linear regression. I know the iPred has one for trees, how about linear regression ?
Thanks,
Suresh

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**1**answer

32 views

### Regression of a timeseries delta in pandas

Lets say I have a timeseries like this
A B
0 a b
1 c d
2 e f
3 g h
0,1,2,3 are times, a, c, e, g is one time series and b, d, f, h is another time series.
What i need is a ...

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votes

**1**answer

45 views

### How do you predict outcomes from a new dataset using a model created from a different dataset in R?

I could be missing something about prediction -- but my multiple linear regression is seemingly working as expected:
> bigmodel <- lm(score ~ lean + gender + age, data = mydata)
> ...

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24 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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10 views

### Linear Regression effect of data points on coefficients

I have data pairs (a1, b1)....(an, bn), where ai belongs to R is the ith data point and bi belongs to R is the associated target variable. Suppose I fit a linear regression model to
...

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**1**answer

23 views

### How to automate the process of building several models in R

I have been trying to automate the process of building several models using a for loop, but I am getting an error each time. I need to build about 50 or more models, say like the following,
...

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17 views

### how to build a stepwise regression model with three variables

Sampling from the standard normal distribution, independently generate 500 obs for 101 variables.
using stepwise or subset with any criterion, find the "best" model with three explanatory variables.
...

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votes

**1**answer

53 views

### Selecting variables in a multivariate regression in R

I am quite new to R and I am having trouble figuring out how to select variables in a multivariate linear regression in R.
Pretend I have the following formulas:
P = aX + bY
Q = cZ + bY
I have a ...

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votes

**1**answer

34 views

### Strange abline behavior when inverting X and Y

I'm trying to do a regression line with 2 variables, WMC and BUG
When BUG is the X axis, the regression line seems perfect.
However, when BUG is the Y axis and WMC the X axis, the line behaves ...

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vote

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41 views

### How do I run multiple regression analysis in R with both numerical/categorical values? [closed]

Sorry in advance for this likely being frustrating to somebody who does regression analysis regularly -- but I'm currently teaching myself modeling in R; I've gotten pretty close, but there are a few ...

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22 views

### Gradient Descent to Logistic Regression

so I have been recently working on a gradient descent algorithm and would like to convert my code to do logistic regression instead of linear regression.
Here is my code:
def gradientDescent(x, y, ...

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13 views

### How to use analytical test to check the importance of a column in a dataset?

I have a dataset like user_id | val1 | val2 | val3 and I would like to know how I can use analytical tests such as Anova or t-test to find the parameter/column that is the more important in the more ...

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votes

**0**answers

14 views

### Handling String Values in Regression

I am trying to perform Regression using Java and facing a huge difficulty in handling String values. As String values are not supported for Regression, I could not able to perform what I intended to ...

**1**

vote

**1**answer

32 views

### Ordinary least squares regression in R: no intercepts

I'd like to use the ols() (ordinary least squares) function from the rms package to do a multivariate linear regression, but I would not like it to calculate the intercept. Using lm() the syntax would ...

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**1**answer

42 views

### PyMC multiple linear regressions

I'm trying to fit several lines sharing the same intercept.
import numpy as np
import pymc
# Observations
a_actual = np.array([[2., 5., 7.]]).T
b_actual = 3.
t = np.arange(100)
obs = ...

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**2**answers

46 views

### Perform n linear regressions, simultaneously

I have y - a 100 row by 5 column Pandas DataFrame
I have x - a 100 row by 5 column Pandas DataFrame
For i=0,...,4 I want to regress y[:,i] against x[:,i].
I know how to do it using a loop.
But is ...

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**0**answers

33 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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votes

**2**answers

12 views

### Updating linear regression

I have a question about a code I wrote which should update a linear regression.
data<-rnorm(100,mean= 3,sd=1.8)
reg.cuve<-rep(0,length(data)-20)
x<-seq(1:20)
for(i in 20:length(data)){
...

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votes

**1**answer

26 views

### Should elastic net regression be able to regress y=x perfectly?

I have a toy dataset of one independent variable x and one dependent variable y=x. Linear regression can find the right intercept, 0, and coefficient, 1. But the elastic net always gives a non-zero ...

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votes

**1**answer

48 views

### How to get the confidence intervals for LOWESS fit using R?

I didn't find any satisfactory answer to the confidence intervals (CIs) for LOWESS regression line of the 'stats' package of R:
plot(cars, main = "lowess(cars)")
lines(lowess(cars), col = 2)
But ...

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**0**answers

33 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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**1**answer

61 views

### Plotting Pandas OLS linear regression results

How would I plot my linear regression results for this linear regression I did from pandas?
import pandas as pd
from pandas.stats.api import ols
df = pd.read_csv('Samples.csv', index_col=0)
control ...

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votes

**1**answer

32 views

### R Durbin Watson Test for a list of lm objects

I have a list with two (or more) lm objects. Now I want to execute a Durbin-Watson test either with dwtest or durbinWatsonTest from lmtest or car respectively on both lm objects at once, ie. I would ...

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**1**answer

130 views

### Multiple Linear Regression math.net 2.6 with Fit.LinearMultiDim

Reffering to the question:
Multiple Regression with math.net
@christoph-ruegg
Can you provide me an example of resolving regression using Fit.LinearMultiDim.
var xdata = new DenseMatrix(
...

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vote

**2**answers

43 views

### sklearn linear regression for large data

Does sklearn.LinearRegression support online/incremental learning?
I have 100 groups of data, and I am trying to implement them altogether. For each group, there are over 10000 instances and ~ 10 ...

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**2**answers

30 views

### Matrix with all pairwise interactions between columns

Let's say that I have a numeric data matrix with columns w, x, y, z and I also want to add in the columns that are equivalent to w*x, w*y, w*z, x*y, x*z, y*z since I want my covariate matrix to ...

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votes

**1**answer

22 views

### several regressions on a single dataset in SAS

I have a dataset of the following format:
a table of M rows and 2K columns.
My columns are pairs of variables: X_i, Y_i and the rows are observations.
I would like to perform many linear regressions: ...

**-1**

votes

**1**answer

29 views

### Linear regression of 2 observations in R

I am trying to do a simple regression based on two observations:
> x=c(1,2)
> y=c(3,5)
> fit <- lm(y ~ x)
> Prediction <- predict(fit, newdata=c(3,4))
Error in eval(predvars, data, ...

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**1**answer

128 views

### Cost Function, Linear Regression, trying to avoid hard coding theta. Octave.

I'm in the second week of Professor Andrew Ng's Machine Learning course through Coursera. We're working on linear regression and right now I'm dealing with coding the cost function.
The code I've ...

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**1**answer

43 views

### R: multiple linear regression model and prediction model

Starting from a linear model1 = lm(temp~alt+sdist) i need to develop a prediction model, where new data will come in hand and predictions about temp will be made.
I have tried doing something like ...

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votes

**0**answers

36 views

### Regression in R with multiple columns for the Independent and dependent variable

I'm looking to perform a regression in R. I have a data set with group number up to 4 and confidence levels from 0,0.1,0.2 etc to one sort it looks something lke this:
0 0.1 ...

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**1**answer

19 views

### R: Multiple Linear Regression error

I am having hard times running the lm() function and understanding the error.
So, my script is this:
#! /usr/bin/env/ Rscript
meteodata <- read.table("/path/to/dataset.txt", header=T)
meteodata
...

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**0**answers

26 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 ...

**1**

vote

**1**answer

48 views

### Why do the correlation coefficients differ?

Why aren't the correlation coefficients as given by the command
cor(t,g)
and as given by the command
summary(tgmodel, correlation=TRUE)
the same after running:
...

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votes

**1**answer

66 views

### Adding statsmodels 'predict' results to a Pandas dataframe

It is common to want to append the results of predictions to the dataset used to make the predictions, but the statsmodels predict function returns (non-indexed) results of a potentially different ...

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votes

**1**answer

16 views

### Force step() to keep a certain valuable

I'm using step() to find a model to adjust a score based on other variables. My full model is thus :
mod<-lm(Adjusted.score ~ original.score + X1 + X2 + X3 + ... + X10)
It's logical that I need ...

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votes

**0**answers

38 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 ...

**1**

vote

**1**answer

38 views

### Use a function with a linear regression model

I can run multiple linear regressions, and in each model estimate coefficients by removing one observation from the data.frame like this:
library(plyr)
as.data.frame(laply(1:nrow(mtcars), function(x) ...

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votes

**1**answer

28 views

### Is there a 'patsy' formula syntax for specifying “baseline” models for 'statsmodels'

I would like to use formulas to specify a "baseline" model for some models fitting using statsmodels For example, I'd like to be able to specify a formula to pass to a olm or Logit model that simply ...

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vote

**2**answers

64 views

### Multiple Linear Regression with Dichotomous Predictor Variables in R: to dummy-code or let R handle it?

I am running a multiple linear regression for a course using R. One of my predictor variables that I want to include in the model is the sex of the individual coded as "m" and "f". I ran the model in ...

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**0**answers

38 views

### Weighted Linear Regression R [migrated]

Can anyone expalin to me in simple terms what happens when we use weights in regsubsets or lm in R? What effect do weights have on a linear regression?
for example :
...

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**0**answers

37 views

### calculate r-squared with known parameters [migrated]

I'm trying to do something a little odd. I have used Akaike's Information Criterion to select the top four models of Growth Rate (using different combinations of 11 variables). I then used the package ...

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**0**answers

19 views

### R: Bivariate linear model fitting (regression + ANOVA) for data in table with column 1 vs 5 other columns, individually

Precursor: I'm a beginner (but fast learning due to being assigned a project in R - having never used R before - don't ask)
First, the title question is only a tip of the iceberg. I have CSV data ...

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votes

**1**answer

24 views

### predicting outcome with a model in R

I am trying to do a simple prediction, using linear regression
I have a data.frame where some of the items are missing price (and therefor noted NA).
This apperantely doesn't work:
#Simple LR
fit ...

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**0**answers

13 views

### Model Representation - Linear Regression and k-nearest neighbours

Can anyone help me by explaining to me, in what kind of scenario/case whereby linear regression is suitable to produce a good predictive model for some given data. And in what kind of scenario/case ...

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vote

**1**answer

19 views

### Specifying which category to treat as the base with 'statsmodels'

In understand that when I have a category variable in a model passed to a statsmodels fit that dummy variables will automatically be generated for the categories. For example if I have a variable ...

**3**

votes

**1**answer

60 views

### Does 'statsmodels' or another Python package offer an equivalent to R's 'step' function?

Is there a statsmodels or other Python equivalent for R's step functionality for selecting a formula-based model using AIC?

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18 views

### Severe Multicollinearity: Time trend correlated with Real Icnome Per Capita

I am running some OLS regressions and I find that two of my regressors are highly correlated. These correlated variables are the time trend (starts at 1 and increase by 1 for every observation) and ...

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votes

**2**answers

46 views

### supervised learning,unsupervised learning ,regression

I know that:
unsupervised learning is that of trying to find hidden structure in
unlabeled data,otherwise ,we call it supervised learning.
regression is also a type of classification ,except that ...