0
votes
0answers
11 views

Bagging of linear regression in R

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
0
votes
0answers
19 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 ...
0
votes
0answers
13 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 ...
0
votes
0answers
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 ...
0
votes
1answer
31 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 ...
1
vote
2answers
42 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 ...
0
votes
2answers
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 ...
0
votes
0answers
16 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 ...
0
votes
1answer
40 views

R: How to get rid of .lin in plinear nls

Explanation I am trying to fit an exponential curve to data in form theta = x0 * exp(-kappa*l). I do it firstly with linear = lm( I(-log(temp.theta/x0)) ~ l + 0 ) where I get coefficient (k = ...
0
votes
1answer
17 views

data prediction by regression or better ways

I am working on data prediction. Given data of a random variable X and Y, find out how to predict Y by X. I know how to do it by linear regression, y = k x + b . But, here, x is always ...
1
vote
0answers
11 views

Why does regtol.int() resort my X variable in ascending order?

I'm pretty new at R, so I guess I must be doing something wrong. I have a dataset named "series" with two columns, V1=CP and V2=CU, and I want to perform a linear regression with CU as the independent ...
0
votes
1answer
34 views

Correaltion and regression analysis

How should I analysis the correlation between four ordinal numbers (0,1,2,3) and various range of the continuous values? The scatter plot looks like a 4 parallel horizontal dots .
0
votes
1answer
55 views

why df.residual returns “logical” when using lm.fit in R?

I have three directories and there are five files in each directory. those files are matrix(rasters) 1383*586. I want to compute the regression equation between the corresponding columns of the ...
0
votes
1answer
63 views

How to supply a mean centered variable in a regression model

I am trying to fit the following model: using lm in R. I cannot get my head around the following behaviour... library(nlme) library(plyr) #create toy data set df0<-Orthodont ...
1
vote
2answers
55 views

SimpleRegression - Intercept & slope calculation errors

I want to implement the Simple Regression model from the apache commons math libary. I have implemented: //estimate alpha and beta parameters regression = new SimpleRegression(); for (int l = 0; l ...
1
vote
1answer
86 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 ...
2
votes
1answer
139 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 <- ...
1
vote
3answers
68 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
284 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
1answer
63 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
0answers
106 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 ...
1
vote
1answer
61 views

negative value for “mean_squared_error”

I am using scikit and using "mean_squared_error" as a scoring function for model evaluation in cross_val_score. rms_score = cross_validation.cross_val_score(model, X, y, cv=20, ...
1
vote
1answer
95 views

How to choose Gaussian basis functions hyperparameters for linear regression?

Good evening everyone, I'm quite new in machine learning environment, and I'm trying to understand properly some basis concept. My problem is the following: I have a set of data observation and the ...
1
vote
3answers
470 views

How to plot a linear regression to a double logarithmic R plot?

I have the following data: someFactor = 500 x = c(1:250) y = x^-.25 * someFactor which I show in a double logarithmic plot: plot(x, y, log="xy") Now I "find out" the slope of the data using a ...
0
votes
2answers
164 views

Which predictive modelling technique will be most helpful?

I have a training dataset which gives me the ranking of various cricket players(2008) on the basis of their performance in the past years(2005-2007). I've to develop a model using this data and then ...
1
vote
1answer
198 views

Re-transform a linear model. Case study with R

Let's say I have a response variable which is not normally distributed and an explanatory variable. Let's create these two variables first (coded in R): set.seed(12) resp = (rnorm(120)+20)^3.79 expl ...
0
votes
3answers
216 views

Multivar linear regression should be mathematically undetermined (Octave) [closed]

I apologize in advance for the rather abstract nature of my question, but it is indirectly a question about programming algorithms, and I don't think I'll be the only programmer to wonder about this. ...
1
vote
0answers
69 views

Using percentiles as predictors - good idea?

I am thinking about a problem which is to predict log(spend) of a customer using linear regression. I am considering what features to use as input and wondering if it would be ok to use the ...
0
votes
2answers
156 views

Plot residual error graph in multiple linear regression

I have a multiple linear regression model with one output value and two input values. z=Ax+By+C I would like to plot a graph of residual errors vs instances. Is there any standard tool which I can ...
0
votes
1answer
88 views

Offsets and categorical variables

Using this dataset: http://pastebin.com/4wiFrsNg and building on this question: How to fit predefined offsets to models containing categorical variables in R in order to test the validty of a ...
1
vote
2answers
107 views

How to plot a fitted abline to some data?

Guided by the answer to this post: Linear Regression with explicit intercept in R I have fit an explicit intercept value to some data, but also an explicit slope, thus: intercept <- 0.22483 fit ...
0
votes
0answers
69 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), ...
0
votes
0answers
98 views

Automated Linear Regression with a large database

I am working with a large database where I need to run consecutive linear regression analyses where each analysis is based on a new set of data. I am working with about five hundred markets each ...
0
votes
0answers
57 views

Logistic Regression Backward elimination using Java

I'm looking for a Java library/framework for Logistic Regression Backward Elimination task. Can someone recommend me one ?
0
votes
0answers
18 views

Regression of a binary variable with a dominating class (more examples from that class)

How can I perform a regression where the dependent variable is binary and there are many more examples of one class that the other one? I am specifically interested in the regression case, not ...
3
votes
1answer
181 views

order of coefficients in lm, R

When running a regression in R, what is the order for the returned coefficients? For example: coef(lm(y ~ x + z, data=data.frame(x=1:10, y=10:1, z=1:5))) Is it guaranteed that the coefficient ...
0
votes
0answers
49 views

Fast way of finding RSS of Multiple Linear Regression

Is there any smarter way to compute Residual Sum of Squares(RSS) in Multiple Linear Regression other then fitting the model -> find coefficients -> find fitted values -> find residuals -> find norm of ...
3
votes
1answer
577 views

Normalization in multiple-linear regression

I have a data set for which I would like build a multiple linear regression model. In order to compare different independent variable I normalize them by their standard deviation. I used ...
0
votes
0answers
195 views

Interval regression with R

I need to perform a multiple regression analysis of response data that is expressed as an interval (a lower bound and an upper bound), that I assume is log-normally distributed, on a number of ...
2
votes
1answer
1k views

R: plm — year fixed effects — year and quarter data

I am having a problem setting up a panel data model. Here is some sample data: library(plm) id <- c(1,1,1,1,1,1,1,1,2,2,2,2,2,2,2,2) year <- ...
0
votes
1answer
95 views

The regression line don't pass through the cloud of points

The code is this one down here. altura <- read.table("altura.txt", header=T, quote="\"") altura <- cbind(altura, altura$Esposa/altura$X.Marido, altura$X.Marido/altura$Esposa) ...
-6
votes
1answer
241 views

In SPSS, how do I do a bunch of regression analyses by looping through independent variables by their label variables? Is it easier in R? [duplicate]

Here's an example of my dataset in comma-delimited form (with variable names in the top row)... LABEL,X,Y bimmy,1,2 bimmy,2,4 bimmy,3,6 jimmy,2,8 jimmy,5,4 jimmy,6,10 marian,3,10 marian,4,9 ...
0
votes
1answer
622 views

Why does regression in R delete index 1 of a factor variable? [duplicate]

I am trying to do a regression in R using the lm and the glm function. My dependent variable is logit transformed data based on proportion of events over non-events within a given time period. So my ...
8
votes
3answers
962 views

How to put a complicated equation into a R formula?

We have the diameter of trees as the predictor and tree height as the dependent variable. A number of different equations exist for this kind of data and we try to model some of them and compare the ...
0
votes
1answer
171 views

Extracting the terminal nodes of each tree associated with a new observation

I would like to extract the terminal nodes of the random forest R implementation. As I have understood random forest, you have a sequence of orthogonal trees. When you predict a new observation (In ...
1
vote
3answers
3k views

Time series prediction using R

I have the following R code library(forecast) value <- c(1.2, 1.7, 1.6, 1.2, 1.6, 1.3, 1.5, 1.9, 5.4, 4.2, 5.5, 6, 5.6, 6.2, 6.8, 7.1, 7.1, 5.8, 0, 5.2, 4.6, 3.6, 3, 3.8, 3.1, 3.4, 2, 3.1, 3.2, ...
0
votes
2answers
192 views

Applying mathematical expressions on time series data

I have parsed HL7 file and have generated some values. So that now, I have series of values over time for different identifiers of OBX segment of HL7 file. Now, as per requirement I want to apply ...
0
votes
2answers
227 views

Appropriate ways to smooth a periodic time series?

I have a periodic time series, of air temperature over several years, and I want to be able to predict future values for it. I've calculated the average over the available years of the value at each ...
2
votes
2answers
207 views

Fast way of evaluating a formula?

I'm using either dyn or dynlm to predict time series using lagged variables. However, the predict function in either case only evaluates one time step at a time, taking a constant time of 24 ...