for issues related to linear regression modelling approach

learn more… | top users | synonyms

0
votes
0answers
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 ...
0
votes
1answer
293 views

Add line to ci.plot

I've made a confidence interval plot to a simple linear regression problem using ci.plot from the HH library observations2 <- subset(observations, year > 1994 & year < 2049) model.seaice ...
4
votes
1answer
1k views

numpy multivarient regression with linalg.lstsq

I am trying to solve for m1,m2,m3,m4 in the set of equations such that: y=(m1*x1)+(m2*x2)+(m3*x3)+(m4*x4) Where: x1=[x11,x12,x13...] x2=[x21,x22,x23...] x3=[x31,x32,x33...] x4=[x41,x42,x43...] ...
3
votes
1answer
2k views

matlab plotting linear regression on a 3D scatter plot

I am new to matlab and have just started on the UBC AI course. I used the least squares algorithm to generate the weights for the data-set I'm working with and the weights ive generated are [ 0.3400 ...
1
vote
1answer
437 views

Scipy Minimize uses a NoneType

I'm trying to code a multiple linear regression. Here's the line of code where my program raises an error: least = optimize.minimize(residsq(xmat, ylist, coeff), coeff, constraints = ({'type': 'eq', ...
4
votes
1answer
704 views

Constrained least-square regression - Matlab or R

I'm doing a least-square regression on some data, the function has the form y ~ a + b*x and I want the regression line to pass through a specific point P(x,y) (which is not the origin). How can I ...
0
votes
0answers
41 views

Proper Formatting and Procedures for Basic Data Entry and Manipulation in SAS [duplicate]

I have a data file that I am trying to import into SAS that looks something like the below: WCM2B W C M 2 B M.B 2 18.4 12.3 g WCM2B W C M 2 B M.B 2 19.2 12.3 g WCM2B W C M 2 B S.P 2 19.5 DQ ('') ...
2
votes
0answers
57 views

R: saving lm object with least amount of space while still maintaining functionality of the predict function [duplicate]

I have developed a linear regression model using lm. My main purpose is to predict a prediction interval using the function predict. As it stands right now, the lm object is too big for my taste. ...
1
vote
1answer
313 views

How do I combine the results (predictions) if I have generated predictions from say, randomforest, gbm, svm, nnet to get more accurate predictions?

More specifically, how to improve my predictions by creating an ensemble? I mean I know that we perform regression on the results(predictions) one gets from different algorithms(random forest, nnet, ...
3
votes
1answer
863 views

R- Polynomial Linear model coefficients not fit predicted values of model

I am trying to fit some models to some data and the resulting model predicts sensible values and the plots seem correct. But when extracting the coefficients and plotting the functions separately, ...
2
votes
1answer
2k views

(Python) Estimating regression parameter confidence intervals with scikits bootstrap

I've just started to try out a nice bootstrapping package available through scikits: https://github.com/cgevans/scikits-bootstrap but I've encountered a problem when trying to estimate confidence ...
3
votes
1answer
340 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
1answer
653 views

Linear regression on multiple rows in matrix in R

Just sitting with my bachelors thesis, and using R, to run linear regressions on some financial data. My problem: I have a large matrix of data, that I have split up into rows, because I want to run ...
-1
votes
1answer
219 views

What does this summary data mean? [closed]

I am using sample algae data to understand data mining a bit more, i have used the following commands: > data(algae) > algae <- algae[-manyNAs(algae),] > clean.algae ...
2
votes
4answers
1k views

Linear regression library for Go language

I'm looking for a Go library that implements linear regression with MLE or LSE. Has anyone seen one? There is this stats library, but it doesn't seem to have what I need: ...
0
votes
2answers
114 views

Having weights shown as an unused argument in logistf R function

I kept getting a problem for the following code; "weights=weight" was shown as an unused argument. How should I solve the problem? x_0 <- rbinom(1,100, 0.01) x_1 <- rbinom(1,100, 0.1) x ...
0
votes
1answer
248 views

julian dates as.date

I am trying to run a simple regression in R (mac OSX), to see if the level of an environmental certification has improved over time - among other things. The data I downloaded offers a level from ...
3
votes
1answer
1k 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
1answer
324 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 ...
0
votes
2answers
206 views

Gretl - how to compute a matrix

i have a linear regression model: yi = α + βxi + ui and I want to compute: (\sigma_u)^2(X'X)^(-1) Can I do that in gretl and how? If not, how to get the X matrix out of gretl? I really ...
5
votes
1answer
4k 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 <- ...
1
vote
2answers
411 views

How to perform least squares regression in R given training and testing data with class labels?

I have a 63*62 training set and the class labels are also present. The test data is a 25*62 dimensions and has the class labels too. Given this how would I perform least squares regression? I am using ...
2
votes
1answer
102 views

Why does R behave strangely with the lm.predict function, in the following code?

I have a problem with the code below, which I'm trying to understand: x = rnorm(50) y = 3 * x +rnorm(50) df_eq <- data.frame(x, y) model1 <- lm(y ~ x - 1) model2 <- lm(df_eq[,2] ~ ...
0
votes
1answer
146 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) ...
0
votes
1answer
227 views

How to use linear models to obtain coefficients by factors levels?

I'm analyzing data from a solar power plant. I wanted to adjust the estimated production plant Hourly each subsequent day, the data that can be obtained are the weather forecasts of the next three ...
0
votes
1answer
195 views

Error in curve fitting and other syntax issues

I have a set of vector 'measured_data' containing 200 sample data which are positive floating point values. I am having a tough time to find a model which fits this data.The following code returns ...
0
votes
2answers
860 views

Efficient way to do a rolling linear regression

I have two vectors x and y, and I want to compute a rolling regression for those, e.g a on (x(1:4),y(1:4)), (x(2:5),y(2:5)), ... Is there already a function for that? The best algorithm I have in mind ...
7
votes
1answer
11k views

Adding a regression line on a ggplot

I'm trying hard to add a regression line on a ggplot. I first tried with abline but I didn't manage to make it work. Then I tried this... data = data.frame(x.plot=rep(seq(1,5),10),y.plot=rnorm(50)) ...
-6
votes
1answer
341 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 ...
1
vote
3answers
1k views

Simple linear regression for data set

I am looking to create a trend function in C# for a set of data and it seems like using a big math library is a bit overkill for my needs. Given a list of values such as 6,13,7,9,12,4,2,2,1. I would ...
3
votes
1answer
897 views

How to efficiently extrapolate missing data for multiple variables

I have panel data and numerous variables are missing observations before certain years. The years vary across variables. What is an efficient way to extrapolate for missing data points across multiple ...
2
votes
1answer
108 views

Interpolate new values using a set of samples

I'm new to R. Having a set of samples along with the target, I want to fit a numeric function to solve the target of new samples. My sample is time in seconds indicating the duration of a user's ...
0
votes
0answers
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 ...
2
votes
1answer
915 views

Scikit learn linear regression with several outputs

I'm trying to use scikit learn to do linear regression with several outputs code (random data as example): from sklearn import datasets, linear_model import numpy as np X = np.random.rand(300,10) y ...
3
votes
2answers
1k views

Implementation of logistic regression formula in R

I am trying to build my own logistic regression function using stochastic gradient descent in R, but what I have right now makes the weights grow without bound and therefore never halts: # Logistic ...
0
votes
1answer
896 views

Multiple Regression with math.net

Hello I am trying to get multiple regression with math.net and I am a little confused. var xdata = new DenseMatrix( new double[,]{{1, 36, 66, 45, 32}, {1, 37, 68, 12, 2}, ...
0
votes
2answers
123 views

Qualitative predictor variables not appearing in regression summary output R

I have a big dataset where I use to run linear regression models with some qualitative predictor variables. I call the dataset WN and the qualitative variables are OState and DState (States in US). ...
0
votes
1answer
828 views

How to get the standard error of the restricted least square regression in R

I am estimating a restricted linear regression model lm(TC~Q+PL+PK+PF) under the linear restriction the coefficients of PL+PK+PF sum to one. I want both the regression coefficients and standard ...
1
vote
2answers
70 views

linearRegression coef results per line with R

Assume I use the following data data(iris) iris And make the following regression: linearReg <- lm(Sepal.Length ~ Petal.Length+Petal.Width, data=iris) linearReg$coefficients (Intercept) ...
0
votes
1answer
1k 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 ...
3
votes
1answer
247 views

linear regression on log-log histogram in numpy

I have a distribution (drawn with numpy.histogram) that seems to be linear when plotted on log-log axis. I'd like to compute and draw a linear regression on this histogram to find out the parameters ...
0
votes
1answer
252 views

Gradient Descent Implementation in Python returns Nan

I am trying to implement gradient descent in python; the implementation works when I try it with training_set1 but it returns not a number(nan) when I try it training_set. Any idea why my code is ...
0
votes
0answers
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 ...
11
votes
1answer
43k views

How to calculate the 95% confidence interval for the slope in a linear regression model in R

Here is an exercise from Introductory Statistics with R: With the rmr data set, plot metabolic rate versus body weight. Fit a linear regression model to the relation. According to the fitted model, ...
1
vote
1answer
106 views

Expansion Regression models In R

I am doing a regression with several categorial variables and continuous variables mixed together. For simplify my question, I want to create a regression model that predicts the driving time given a ...
2
votes
1answer
342 views

regression coefficient calculation in python

I have a Dataframe and an input text file of activity.Dataframe is produced via pandas.I want to find out the regression coefficient of each term using following formula ...
9
votes
3answers
2k 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 ...
1
vote
2answers
1k views

comparing two linear models in R

Let's say I have two linear models in R such that: lm1 = (x ~ a + b) lm2 = (x ~ a + b + c) I want to determine the effect of c on x in terms of 1) significance of effect 2) estimate of effect 3) ...
3
votes
2answers
588 views

Plotting a single line with two different colours with ggplot2

I'm trying to plot a set of data with ggplot2. The data are in two categories. I would like to plot them together, with a single linear regression line. However, I would like to have each of the two ...
2
votes
2answers
636 views

Linear Regression\Gradient Descent python implementation

So I'm trying to implement linear regression using the gradient descent method from scratch for learning purposes. One part of my code is really bugging me. For some reason the variable x is being ...