for issues related to linear regression modelling approach

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0
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3answers
2k views

A simple perceptron in Python

http://en.wikipedia.org/wiki/Perceptron#Example My question is, why are there 3 input values in each vector when NAND only takes 2 parameters and returns 1: ...
4
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3answers
15k views

How can I create a linear regression line on a scatterplot with R?

I tried abline function to create a linear regression line on a scatterplot. x= c (1.0325477, 0.6746901, 1.0845737, 1.1123872, 1.1060822, 0.8595918, 0.8512941, 1.0148842, 1.0722369, 0.9019220 , ...
0
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2answers
624 views

Generalized least square on large dataset

I'd like to linearly fit the data that were NOT sampled independently. I came across generalized least square method: b=(X'*V^(-1)*X)^(-1)*X'*V^(-1)*Y The equation is Matlab format; X and Y are ...
3
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, ...
1
vote
1answer
459 views

Using coef and summary.lm with robcov in R (extracting p-values)

I can extract the p-values for my slope & intercept from an ols object this way: library(rms) m1 <- ols(wt ~ cyl, data= mtcars, x= TRUE, y= TRUE) coef(summary.lm(m1)) But when I try the same ...
3
votes
2answers
943 views

Weka nullPointerException while classifying

I am using for training the model and classifying again by using the model. I am correctly getting the statistics for the first part but not the second part. It gives nullPointerException while ...
6
votes
3answers
317 views

Why does lm return values when there is no variance in the predicted value?

Consider the following R code (which, I think, eventually calls some Fortran): X <- 1:1000 Y <- rep(1,1000) summary(lm(Y~X)) Why are values returned by summary? Shouldn't this model fail to ...
3
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2answers
658 views

Recursive time series segmentation algorithm

Im doing Time series analysis on stock market data and trying to implement an algorithm for piecewise linear segmentation, which is as follows : split(T [ta, tb ]) – split a time series T of ...
1
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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 ...
0
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1answer
169 views

multiple regression using only covar matrix and means

I have a comprehensive covariance matrix for variables y1 (dependent variable), x1, x2, x3 (independent variables) and the associated mean values for each variable. How can I perform multiple ...
4
votes
1answer
473 views

segmented linear regression in python

Is there a library in python to do segmented linear regression? I'd like to fit multiple lines to my data automatically to get something like this: Btw. I do know the number of segments.
1
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1answer
1k views

Linear Regression with Multiple Variables - Python - Implementation issues

I am trying to implement Linear Regression with Multiple variables( actually , just 2 ) . I am using the data from the ML-Class Stanford. I got it working correctly for the single variable case. The ...
0
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1answer
426 views

the difference between ridge and A\b in matlab

Given the same A, b and L2 regularization parameter beta = 0, why do ridge and \ give two different solutions? b = [ 0 -2 -3 -3 -3 -3 -3 -3 -3 -3 -3 -3 ...
9
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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 ...
1
vote
1answer
2k views

pure python code for multivariate linear regression

Due to a bug (perhaps in the numpy distribution I'm using), I can't use numpy.linalg.lstsq. And every statistics library I found didn't install under python 3 (on Windows). Does someone have pure ...
5
votes
1answer
5k 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 <- ...
1
vote
2answers
378 views

Why does adding features to linear regression decrease accuracy?

I am new to ML and am working on a kaggle competition to learn a bit. When I add certain features to my dataset, the accuracy decreases. Why isn't the feature that adds to the cost just weighted ...
8
votes
3answers
1k views

Visual Comparison of Regression & PCA

I'm trying to perfect a method for comparing regression and PCA, inspired by the blog Cerebral Mastication which has also has been discussed from a different angle on SO. Before I forget, many thanks ...
9
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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. ...
0
votes
1answer
729 views

Perl packages for statistics - multiple regression

I am new to perl and looking for a package that includes a code to calculate multiple regression. Something like OLS that is presented here: wikipedia - estimation methods for multiple regression ...
2
votes
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 ...
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3answers
9k views

How to find the standard deviation s of simple linear regression coefficients Alpha and Beta in Matlab?

I have data and I need to do a linear regression on the data to obtain y=Alpha*x+Beta Alpha and Beta are estimators given by the regression, polyfit can give me those with no problem but this is a ...
0
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1answer
611 views

Which is the best package for econometrics in java?

I was wondering if there is a Java toolkit that deals with econometrics. I am aware of Jet ( http://jet.codehaus.org/) and other regression packages (like ...
3
votes
1answer
5k views

Linear Regression in R with variable number of explanatory variables [duplicate]

Possible Duplicate: Specifying formula in R with glm without explicit declaration of each covariate how to succinctly write a formula with many variables from a data frame? I have a ...
1
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2answers
516 views

What exactly does delta mean in the gradient descent algorithm?

As on the picture: Could someone help me understand what exactly what delta means in the gradient descent algorithm?
8
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4answers
3k views

Gradient descent algorithm won't converge

I'm trying to write out a bit of code for the gradient descent algorithm explained in the Stanford Machine Learning lecture (lecture 2 at around 25:00). Below is the implementation I used at first, ...
3
votes
1answer
435 views

Create function to automatically create dataset from summary(fit <- lm( y ~ x1 + x2 +… xn)

This question is closely related to my previous question. The only difference is that instead of plotting the data, I want the raw data behind fit. I tried to solve it myself following the last answer ...
1
vote
3answers
362 views

Create function to automatically create plots from summary(fit <- lm( y ~ x1 + x2 +… xn))

I am running the same regression with small alterations of x variables several times. My aim is after having determined the fit and significance of each variable for this linear regression model to ...
1
vote
3answers
427 views

Linear regression factor

Given a list of points, I need to achieve a simple linear regression on them. This part is quite easy and code examples can be found in a lot of places. My problem is determining the regression ...
1
vote
2answers
642 views

Linear regression, with limits

I have a set of points, (x, y), where each y has an error range y.low to y.high. Assume a linear regression is appropriate (in some cases the data may originally have followed a power law, but has ...
13
votes
2answers
11k 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 ...
1
vote
1answer
4k views

WPF Charting with Dynamic Data Display: How can I show a regression line?

I'm using Dynamic Data Display (D3) to render a few simple LineSeries on a chart: <d3:ChartPlotter> <d3:CursorCoordinateGraph/> <d3:LineGraph DataSource="{Binding ...
0
votes
1answer
858 views

Calculate Confidence interval values and plot the curves accordingly

I have [x,y] pair of data that I am plotting. I am computing the best fit line for the curve using the least-square regression model and predicting the y-values accordingly. I now want to generate ...
0
votes
2answers
354 views

Linear regression to predict the y-value for the trend series

I have [x,y] pairs where x value is in Unix- time values and y in float. I am needing to find the best fit line for this series. I am using the linear regression model as in this link below: ...
6
votes
3answers
821 views

Regression in R — 4 features, 4 million instances

I have a text file in the form ( User Id, Movie Id, Ratings, Time) and I want to do a vanilla regression on the dataset .( Just 4 features, >4 million instances) model <- glm ( UserId ~ ...
5
votes
2answers
13k views

Linear regression in R (normal and logarithmic data)

I want to carry out a linear regression in R for data in a normal and in a double logarithmic plot. For normal data the dataset might be the follwing: lin <- data.frame(x = c(0:6), y = c(0.3, ...
4
votes
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) ...
13
votes
5answers
9k views

Linear Regression in Javascript

I want to do Least Squares Fitting in Javascript in a web browser. Currently users enter data point information using HTML text inputs and then I grab that data with jQuery and graph it with Flot. ...
1
vote
1answer
3k views

How to read the correlation matrix output by PROC LOGISTIC and PROC REG in SAS?

As you know, with an option CORRB, you can let logistic regression or linear regression in SAS to output a correlations of estimates matrix. Interestingly, I am not sure how to read this matrix. I ...
10
votes
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 ...
28
votes
3answers
28k views

Linear regression with matplotlib / numpy

still a Python beginner. 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' ...
5
votes
3answers
1k views

Ruby Library for doing Linear or NonLinear Least Squares Approximation?

Is there a Ruby library that allows me to do either linear or non-linear least squares approximation of a set of data. What I would like to do is the following: Given a series of [x,y] data points ...
1
vote
1answer
4k views

Multiple Regression

In order to combine 3 different estimators of the same variable I need to implement a multiple regression method in Java (therefore 3 independent variables and 1 dependent variable). I'm looking for a ...
3
votes
5answers
994 views

numpy: code to update least squares with more observations

I am looking for a numpy-based implementation of ordinary least squares that would allow the fit to be updated with more observations. Something along the lines of Applied Statistics algorithm AS 274 ...
3
votes
2answers
419 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 ...
5
votes
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 ...
2
votes
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 ...
4
votes
1answer
2k views

Getting p-value for linear regression in C gsl_fit_linear() function from GSL library

I'm trying to reporduce some code from R in C, so I'm trying to fit a linear regression using the gsl_fit_linear() function. In R I'd use the lm() function, which returns a p-value for the fit using ...
1
vote
1answer
6k views

linear regression/trend line with ms charting

I have data that are numbers both on x and y and have charted them using mschart 4.0 I need to add a trend line/linear regression to a bunch of points I have. The data on x and y are both numbers ...
7
votes
5answers
2k views

Solving normal equation system in C++

I would like to solve the system of linear equations: Ax = b A is a n x m matrix (not square), b and x are both n x 1 vectors. Where A and b are known, n is from the order of 50-100 and m is ...