for issues related to linear regression modelling approach

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4
votes
1answer
857 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 ...
4
votes
3answers
48 views

How does having smaller values for parameters help in preventing over-fitting?

To reduce the problem of over-fitting in linear regression in machine learning , it is suggested to modify the cost function by including squares of parameters. This results in smaller values of the ...
4
votes
1answer
53 views

R not drawing regression line

So I'm trying to get a regression line to show up on the data plot, and it isn't working. I tried restarting R, checked the code, it looks totally fine to me. The abline() command worked for every ...
4
votes
1answer
3k views

R: predict.lm() not recognizing an object

> reg.len <- lm(chao1.ave ~ lg.std.len, b.div) # b.div is my data frame imported from a CSV file > reg.len Call: lm(formula = chao1.ave ~ lg.std.len, data = b.div) Coefficients: (Intercept) ...
4
votes
4answers
10k views

Gradient descent and normal equation method for solving linear regression gives different solutions

I'm working on machine learning problem and want to use linear regression as learning algorithm. I have implemented 2 different methods to find parameters theta of linear regression model: Gradient (...
4
votes
1answer
53 views

how to generate a linear regression matrix like cor()

I have a dataframe like below : a1 a2 a3 a4 1 3 3 5 5 2 4 3 5 5 3 5 4 6 5 4 6 5 7 3 I want to do linear regression for every two columns in the dataframe, and set intercept as 0. ...
4
votes
1answer
916 views

Numpy linear regression with regularization

I'm not seeing what is wrong with my code for regularized linear regression. Unregularized I have simply this, which I'm reasonably certain is correct: import numpy as np def get_model(features, ...
4
votes
2answers
784 views

matlab: optimum amount of points for linear fit

I want to make a linear fit to few data points, as shown on the image. Since I know the intercept (in this case say 0.05), I want to fit only points which are in the linear region with this particular ...
4
votes
1answer
5k views

MATLAB: Linear regression

I'm trying to work out the most efficient method to find the linear regression equation (y = mx + c) for a dataset, given a 2 by n array. Basically I want to know what the value of Y is when X is, ...
4
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1answer
1k views

lm function in R does not give coefficients for all factor levels in categorical data

I was trying out linear regression with R using categorical attributes and observe that I don't get a coefficient value for each of the different factor levels I have. Please see my code below, I ...
4
votes
2answers
1k views

R - k-fold cross-validation for linear regression with standard error of estimate

I would like to perform k-fold cross-validation in R for a linear regression model and test the one standard error rule: http://stats.stackexchange.com/questions/17904/one-standard-error-rule-for-...
4
votes
1answer
2k views

Label outliers in an scatter plot

I've plot this graphic to identify graphically high-leverage points in my linear model. Given the variable "NOMBRES" of the data set which my model uses, I've tried to plot all the points of my ...
4
votes
1answer
2k views

Linear regression in Objective-C

I´m trying to implement a method that fits a line to a set of points in 2D. I wrote the following code that reads the data from two Array (X, Y coordinate) and should calculate the parameters of the ...
4
votes
1answer
153 views

Linear regression fails in Python with large values in dependent variables

I'm trying to rewrite a forecasting model (in Stata) using Python (with pandas.stats.api.ols), and ran into an issue with linear regression: the coefficients and intercept computed by pandas do not ...
4
votes
1answer
659 views

sklearn LinearRegression.Predict() issue

I am trying to predict call volume for a call center based on various other factors. I have a fairly clean dataset, fairly small as well, but enough. I am able to train and test historical data and ...
4
votes
1answer
988 views

Matlab Least Squares approximation with Constraints for Two independent variables (x,y coordinates)

I have a couple of binary images of outdoor paths and am required to get a fine outline of the roads, however, due to noisy pixels still remaining, I am unable to trace an accurate outline of the road....
4
votes
2answers
738 views

Is there a special type of multivariate regression for multiple-parameter predictions?

I am trying using multivariate regression to play basketball. Specificlly, I need to, based on X, Y, and distance from the target, predict the pitch, yaw, and cannon strength. I was thinking of using ...
4
votes
1answer
666 views

applying lm to multiple datasets

Below are 4 datasets (I've just created them randomly for the sake of providing a reproducible code). I created a list of these so I could apply "lm" to these multiple datasets at once : H<-data....
4
votes
1answer
324 views

sklearn, LassoCV() and ElasticCV() broken?

sklearn provides LASSO method for regression estimation. However, when I try to fit LassoCV(X,y) with y a matrix, it throws an error. See screenshot below, and the link for their documentation. The ...
4
votes
1answer
440 views

is logistic regression large margin classifier? [closed]

As I understand large margin effect in SVM: For example let's look at this image: In SVM optimization objective by regularization term we trying to find a set of parameters, where the norm of (...
4
votes
2answers
90 views

Difference between linear and non linear regression

In Machine Learning, we see that w1x1 + w2x2 +...+ wnxn is linear regression model where w1,w2....wn are the weights and x1,x2...x2 are the features whereas w1x12 + w2x22 +...+ wnxn2 is a non ...
4
votes
2answers
53 views

How to compute regression coefficients with proc mixed in sas?

Here are my data. Data are structured like so: id x1 x2 x3 y. I used proc mixed to analyze it, but now want to determine regression coefficients and I don't know how to do it. I'm only a beginner ...
4
votes
0answers
87 views

How to use `lmplot` to plot linear regression without intercept?

The lmplot in seaborn fit regression models with intercept. However, sometimes I want to fit regression models without intercept, i.e. regression through the origin. For example: In [1]: import ...
4
votes
2answers
145 views

How to solve several independent time series at the same time using scikit linear regression model

I try to predict multiple independent time series simultaneously using sklearn linear regression model, but I seem not be able to get it right. My data is organised as follow: Xn is a matrix where ...
4
votes
0answers
85 views

R: Can´t find mistake on Linear Regression

I have to reproduce the code used by http://scholar.harvard.edu/files/mankiw/files/permanent_income.pdf. I do understand the concept of linear regressions and instrumental variables, I just can´t find ...
4
votes
1answer
280 views

Python Regression Variable Selection

I have a basic linear regression with 80 numerical variables (no classification variables). Training set has 1600 rows, testing 700. I would like a python package that iterates through all column ...
4
votes
2answers
584 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 &...
4
votes
1answer
269 views

Finding the break in data from a piecewise function

Greetings, I'm performing research that will help determine the size of observed space and the time elapsed since the big bang. Hopefully you can help! I have bilinear data on which I want to ...
3
votes
4answers
9k views

how to get the slope of a linear regression line using c++?

I need to attain the slop of a linear regression similar to the way the excel function in the below link is implemented: http://office.microsoft.com/en-gb/excel-help/slope-function-HP010342903.aspx ...
3
votes
3answers
279 views

Aggregate linear regression

Sorry I am quite new to R, but I have a dataframe with gamelogs for multiple players. I am trying to get the slope coefficient for each player's points over all of their games. I have seen that ...
3
votes
2answers
845 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 ...
3
votes
1answer
12k views

How to fit a linear regression model with two principal components in R?

Let's say I have a data matrix d pc = prcomp(d) # pc1 and pc2 are the principal components pc1 = pc$rotation[,1] pc2 = pc$rotation[,2] Then this should fit the linear regression model right? ...
3
votes
1answer
4k views

3D Linear Regression

I want to write a program that, given a list of points in 3D-space, represented as an array of x,y,z coordinates in floating point, outputs a best-fit line in this space. The line can/should be in the ...
3
votes
2answers
667 views

How to combine a list of unequal lm object length into a data frame?

I like to extract the coefficients and standard errors of each lm object and combine them into a data.frame with NA fill in for the missing predictors. set.seed(12345) x<-matrix(rnorm(1000)...
3
votes
2answers
61 views

Unexpected discrepancy between two different predictions using linear regression

I'm using ggplot2 to plot some time-series data along with a linear regression line. I'm interested to determine when the regression line will hit 82%. Visual inspection of the graph suggests that ...
3
votes
2answers
82 views

R: Multiple regression leave out one variable (column)

This might be a very simple question to many of the R experts. Where there are many columns in data frame and you want to just leave out one or two columns and include everything else in the Multiple ...
3
votes
2answers
2k views

Linear Regression on Pandas DataFrame using Sci-kit Learn

I'm new to Python and trying to perform linear regression using sklearn on a pandas dataframe. This is what I did: data = pd.read_csv('xxxx.csv') After that I got a DataFrame of two columns, let's ...
3
votes
3answers
5k views

R-squared on test data

I fit a linear regression model on 75% of my data set that includes ~11000 observations and 143 variables: gl.fit <- lm(y[1:ceiling(length(y)*(3/4))] ~ ., data= x[1:ceiling(length(y)*(3/4)),]) #3/...
3
votes
1answer
2k views

Is there a function for solving xA=b in opencv?

I know the function solve can solve Ax=b. But I want a function to solve xA=b for x? Is there some function available? By the way It should work like mrdivide of Matlab: x = B/A solves the system of ...
3
votes
2answers
3k views

Standard deviation/error of linear regression

So I have: t = [0.0, 3.0, 5.0, 7.2, 10.0, 13.0, 15.0, 20.0, 25.0, 30.0, 35.0] U = [12.5, 10.0, 7.6, 6.0, 4.4, 3.1, 2.5, 1.5, 1.0, 0.5, 0.3] U_0 = 12.5 y = [] for number in U: y.append(math.log(...
3
votes
1answer
5k views

Why does the number of rows change during AIC in R? How to ensure that this doesn't happen?

I'm trying to find a minimal adequate model using AIC in R. I keep getting the following error: Error in step(model) : number of rows in use has changed: remove missing values? My data: ...
3
votes
1answer
9k views

How does the subset argument work in the lm() function?

I have been trying to figure out how the subset argument in R's lm() function works. Especially the follwoing code seems dubious for me: data(mtcars) summary(lm(mpg ~ wt, data=mtcars)) summary(lm(...
3
votes
2answers
459 views

Do there exist methods to identify quadratic components in a linear model with R?

Suppose we have an additive model of the form y=x1+x2+... with a lot of variables. Is there a routine in R to identify variables that should be considered as exhibiting a quadratic effect? I know that ...
3
votes
6answers
4k views

Multiple Linear Regression

I am trying to use GLSMultipleLinearRegression (from apache commons-math package) for multiple linear regression. It is expecting a covariance matrix as input -- I am not sure how to compute them. I ...
3
votes
2answers
5k views

geom_segment: Removed 1 rows containing missing values [closed]

I am working through a linear regression example for uni variate data. The example is listed in this webpage: http://al3xandr3.github.com/2011/02/24/ml-ex2-linear-regression.html Sorry for not ...
3
votes
3answers
759 views

How to plot a multivariate function in Python?

Plotting a single variable function in Python is pretty straightforward with matplotlib. But I'm trying to add a third axis to the scatter plot so I can visualize my multivariate model. Here's an ...
3
votes
1answer
399 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 : a<-lm(...
3
votes
1answer
1k 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, ...
3
votes
2answers
55 views

Why does sklearn linear regression give a non-zero intercept for a line passing through (0,0)?

Given some data points for a line y = 3x: from sklearn import datasets, linear_model X = [[1],[2],[3],[4],[5]] y = [[3],[6],[9],[12],[15]] regr = linear_model.LinearRegression() regr.fit(X,y) then: ...
3
votes
2answers
1k views

Linear regression in Apache Spark giving wrong intercept and weights

Using MLLib LinearRegressionWithSGD for the dummy data set (y, x1, x2) for y = (2*x1) + (3*x2) + 4 is producing wrong intercept and weights. Actual data used is, x1 x2 y 1 0.1 6.3 2 0.2 8.6 3 ...