Tagged Questions

for issues related to linear regression modelling approach

5answers
11k views

Linear Regression and group by in R

I wan to do a linear regression in R using the lm() function. My data is an annual time series with one field for year (22 years) and another for state (50 states). I want to fit a regression for each ...
5answers
14k views

multivariate linear regression in python?

I can't seem to find any python libraries that do multivariate regression. The only things I find only do simple regression. I need to regress my dependent variable (y) against several independent ...
3answers
32k views

How to do exponential and logarithmic curve fitting in Python? I found only polynomial fitting

I have a set of data and I want to compare which line describes it best (polynomials of different orders, exponential or logarithmic). I use Python and Numpy and for polynomial fitting there is a ...
4answers
27k views

How to force R to use a specified factor level as reference in a regression?

Somehow I can´t find it in my notes... nor do find the obivous on the net. How can I tell R to use a certain level as reference if I use dummy explanatories in a regression? It´s just using some level ...
1answer
1k views

Is there a better alternative than string manipulation to programmatically build formulas?

Everyone else's functions seem to take formula objects and then do dark magic to them somewhere deep inside and I'm jealous. I'm writing a function that fits multiple models. Parts of the formulas ...
2answers
5k views

predict.lm() with an unknown factor level

I am fitting a model to factor data and predicting. If the newdata in predict.lm() contains a single factor level that is unknown to the model, all of predict.lm() fails and returns an error. Is ...
2answers
6k views

Weighted Linear Regression in Java

Does anyone know of a scientific/mathematical library in Java that has a straightforward implementation of weighted linear regression? Something along the lines of a function that takes 3 arguments ...
1answer
11k views

gradient descent using python and numpy

def gradient(X_norm,y,theta,alpha,m,n,num_it): temp=np.array(np.zeros_like(theta,float)) for i in range(0,num_it): h=np.dot(X_norm,theta) #temp[j]=theta[j]-(alpha/m)*( np.sum( ...
6answers
19k views

Are there any Linear Regression Function in SQL Server?

Are there any Linear Regression Function in SQL Server 2005/2008, similar to the the Linear Regression functions in Oracle ?
2answers
19k views

How can I plot my R Squared value on my scatterplot using R?

This seems a simple question, so I hope its a simple answer. I am plotting my points and fitting a linear model, which I can do OK. I then want to plot some summary statistics, for example the R ...
1answer
440 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 ...
1answer
899 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 <- ...
5answers
3k views

How to fit the 2D scatter data with a line with C++

I used to work with MATLAB, and for the question I raised I can use p = polyfit(x,y,1) to estimate the best fit line for the scatter data in a plate. I was wondering which resources I can rely on to ...
1answer
3k views

Free library for regression in c#

Do you know of a free library in .net that I can use to fit a multivariate regression. I want to get the coefficients, and all the statistics (p-values, Std Errors, Goodness of Fitness, etc). I've ...
3answers
32k views

Linear regression with matplotlib / numpy

I'm trying to generate a linear regression on a scatter plot I have generated, however my data is in list format, and all of the examples I can find of using polyfit require using arange. arange ...
2answers
13k views

Linear Regression with explicit intercept in R

I want to calculate a linear regression using the lm() function in R. Additionally I want to get the slope of a regression, where I explicitly give the intercept to lm(). I found an example on the ...
3answers
6k views

Can scipy.stats identify and mask obvious outliers?

With scipy.stats.linregress I am performing a simple linear regression on some sets of highly correlated x,y experimental data, and initially visually inspecting each x,y scatter plot for outliers. ...
2answers
4k views

6th degree curve fitting with numpy/scipy

I have a very specific requirement for interpolating nonlinear data using a 6th degree polynomial. I've seen numpy/scipy routines (scipy.interpolate.InterpolatedUnivariateSpline) that allow ...
2answers
2k views

R extract regression coefficients from multiply regression via lapply command

I have a large dataset with several variables, one of which is a state variable, coded 1-50 for each state. I'd like to run a regression of 28 variables on the remaining 27 variables of the dataset ...
2answers
6k views

Multiple linear regression with python

I would like to calculate multiple linear regression with python. I found this code for simple linear regression import numpy as np from matplotlib.pyplot import * x = np.array([1, 2, 3, 4, 5]) y ...
3answers
10k views

Is there a Java library for better linear regression? (E.g., iteratively reweighted least squares) [closed]

I am struggling to find a way to perform better linear regression. I have been using the Moore-Penrose pseudoinverse and QR decomposition with JAMA library, but the results are not satisfactory. ...
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 ...
3answers
120 views

linear regression in R without copying data in memory?

The standard way of doing a linear regression is something like this: l <- lm(Sepal.Width ~ Petal.Length + Petal.Width, data=iris) and then use predict(l, new_data) to make predictions, where ...
1answer
1k views

how to use predict()

Want to predict a value but this is clearly not the solution. I am doing a multiple choice test and 0.304... is not an answer.How to use predict() correctly? library(glm2) data(crabs) fit= ...
1answer
95 views

Linear Regression analysis for Date column in SQL Server

I have the following block of code that calculates the formula for a trend line using linear regression (method of least squares). It just find the R-Squared and coefficient of corelation value for X ...
1answer
742 views

Linear Regression calculation several times in one dataframe

I am using R to evaluate climate data and I have a data set that looks like the following miniaturized version... please forgive my crude posting etiquette, I hope this post is understandable. ...
1answer
2k views

Get Confidence Interval For One Point On Regression Line In R?

How do I get the CI for one point on the regression line? I'm quite sure I should use confint() for that, but if I try this confint(model,param=value) it just gives me the same number as if I just ...
2answers
416 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 ...
1answer
415 views

Linear regression with interaction fails in the rms-package

I'm playing around with interaction in the formula. I wondered if it's possible to do a regression with interaction for one of the two dummy variables. This seems to work in regular linear regression ...
1answer
1k views

Graphing perpendicular offsets in a least squares regression plot in R

I'm interested in making a plot with a least squares regression line and line segments connecting the datapoints to the regression line as illustrated here in the graphic called perpendicular offsets: ...
1answer
1k views

Using a smoother with the L Method to determine the number of K-Means clusters

Has anyone tried to apply a smoother to the evaluation metric before applying the L-method to determine the number of k-means clusters in a dataset? If so, did it improve the results? Or allow a ...
3answers
2k views

Conditionally colour data points outside of confidence bands in R

I need to colour datapoints that are outside of the the confidence bands on the plot below differently from those within the bands. Should I add a separate column to my dataset to record whether the ...
3answers
6k views

Constrained Linear Regression in Python

I have a classic linear regression problem of the form: y = X b where y is a response vector X is a matrix of input variables and b is the vector of fit parameters I am searching for. Python ...
3answers
2k views

Equations for 2 variable Linear Regression

We are using a programming language that does not have a linear regression function in it. We have already implemented a single variable linear equation: y = Ax + B and have simply calculated ...
2answers
2k views

Optimal two variable linear regression calculation

Problem Am looking to apply the y = mx + b equation (where m is SLOPE, b is INTERCEPT) to a data set, which is retrieved as shown in the SQL code. The values from the (MySQL) query are: SLOPE = ...
1answer
4k views

support vector machines - a simple explanation?

So, i'm trying to understand how the SVM algorithm works but i just cannot figure out how you transform some datasets in points of n-dimensional plane that would have a mathematical meaning in order ...
1answer
4k views

Converting Numpy Lstsq residual value to R^2

I am performing a least squares regression as below (univariate). I would like to express the significance of the result in terms of R^2. Numpy returns a value of unscaled residual, what would be a ...
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 ...
1answer
6k views

matrices are not aligned Error: Python SciPy fmin_bfgs

Problem Synopsis: When attempting to use the scipy.optimize.fmin_bfgs minimization (optimization) function, the function throws a derphi0 = np.dot(gfk, pk) ValueError: matrices are not ...
1answer
372 views

Why does my linear regression fit line look wrong?

I have plotted a 2-D histogram in a way that I can add to the plot with lines, points etc. Now I seek to apply a linear regression fit at the region of dense points, however my linear regression line ...
1answer
6k views

R: cannot predict specific value

> age <- c(23,19,25,10,9,12,11,8) > steroid <- c(27.1,22.1,21.9,10.7,7.4,18.8,14.7,5.7) > sample <- data.frame(age,steroid) > fit2 <- ...
1answer
2k views

Rolling regression over multiple columns

I have an issue finding the most efficient way to calculate a rolling linear regression over a xts object with multiple columns. I have searched and read several previously questions here on ...
1answer
3k 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 <- ...
2answers
2k views

How to compute minimal but fast linear regressions on each column of a response matrix?

I want to compute ordinary least square (OLS) estimates in R without using "lm", and this for several reasons. First, "lm" also computes lots of stuff I don't need (such as the fitted values) ...
1answer
1k views

Map Reduce Linear Regression in base R

I'm working on a distributed linear regression calculation in R for Hadoop, but before implementing it, I'd like to verify that my calculations agree with the results of the lm function. I have the ...
2answers
21k views

Linear Regression with Python numpy

I'm trying to make a simple linear regression function but continue to encounter a numpy.linalg.linalg.LinAlgError: Singular matrix error Existing function (with debug): def makeLLS(inputData, ...
1answer
35 views

fit to time series using Gnuplot

I am a big fan of Gnuplot and now I would like to use the fit-function for time series. My data set is like: 1.000000 1.000000 0.999795 0.000000 0.000000 0.421927 0.654222 -25.127700 1.000000 ...
1answer
5k views

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

This may actually be a bit of a stupid question but it seems as if I'm not capable enough to solve it right away. I have been trying to figure out how the subset argument in R's lm() function works. ...
1answer
5k views

Doing linear prediction with R: How to access the predicted parameter(s)?

I am new to R and I am trying to do linear prediction. Here is some simple data: test.frame<-data.frame(year=8:11, value= c(12050,15292,23907,33991)) Say if I want to predict the value for ...
1answer
604 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 ...