for issues related to linear regression modelling approach

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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 ...
0
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1answer
186 views

cor(x,y) when x is POSIXct

I am calculating a linear regression between an age (numeric) vector and a date (POSIXct) vector. What is the most convenient way to transform the date so that cor is happy with it?
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1answer
202 views

Range of regularizer constant in linear regression

Is there any limit on the range of values that can be used for 'Lambda' - regularizer constant in Linear Regression. [Machine Learning Problem] I am getting a good fit for the data when the Lambda ...
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1answer
1k views

Analyzing correlated data in R: Linear, Ridge regression, PCR

I've got a time series of observations of 5 variables y, x_1, x_2, x_3, x_4 and the task is to find which of the xes are responsible for the changes in y. Now the problem is that all of them are ...
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1answer
9k views

Confidence Intervals in R

I am supposed to calculate different confidence intervals and I found out that, in R, I can do that with the predict-command. But I've got a problem understanding what I have to do really. I am ...
1
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1answer
199 views

What does “NOTE: A regression through the origin is fitted!” mean?

I'm using the plottol function in the tolerance package of R and getting an error / warning after my plot is generated that say "NOTE: A regression through the origin is fitted!" I've googled it and ...
2
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2answers
171 views

SLR - simple linear regression (in R, but about the math behind, not the programming)

So I have some problems understanding simple linear regression. I did read a lot, so I have the basic ideas in mind, but I cannot quite follow when we do one. So I have this equation: yi = a + bxi + ...
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1answer
850 views

Regression as a program

I am a newbie at this topic. I have a hard time copying example codes so i need to explain my problem here. What i have is a 1000+ numeric data given in excel column A. I have to take 50 (A1:A50) and ...
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3answers
3k views

How do you remove an insignificant factor level from a regression using the lm() function in R?

When I perform a regression in R and use type factor it helps me avoid setting up the categorical variables in the data. But how do I remove a factor that is not significant from the regression to ...
2
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2answers
3k views

How to manually set coefficients for variables in linear model?

In R, how can I set weights for particular variables and not observations in lm() function? Context is as follows. I'm trying to build personal ranking system for particular products, say, for ...
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1answer
64 views

How to use linear regression in R if some values of one of predictors are missing?

y is expected to be a linear function of predictors x1, x2, ..., xn so I use glm to find a regression but some values of one of parameters (x1, for example) are missing (NA in input data) they are ...
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1answer
602 views

Linear least squares fitting

DF times a b s ex 1 0 59 140 1e-4 1 2 20 59 140 1e-4 0 3 40 59 140 1e-4 0 4 60 59 140 1e-4 2 5 120 59 140 1e-4 20 6 180 59 140 1e-4 30 7 240 59 140 1e-4 31 8 360 59 140 1e-4 37 9 ...
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1answer
643 views

Linregress giving incorrect result

I am a big fan of Stack Overflow and am sure my question will be answered here. I am using Scipy to do linear regression. But at a particular set of inputs I am not getting the correct output. (Python ...
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2answers
4k views

How to Train and cross validation in R [closed]

Hello i am new to R, I am doing coursera course for machine learning, I know training and cross validation on datasets for purpose of prediction in octave but how can i do that operations in R?
3
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1answer
342 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 ...
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1answer
3k views

Interpreting residual value statement in lm() summary [closed]

I am working with R to create some linear models (using lm()) on the data that i have collected. Now I am not that good at statistics and am finding it difficult to understand the summary of the ...
7
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1answer
5k views

What is the difference between linear regression and logistic regression?

When we have to predict the value of a categorical outcome, we use logistic regression. I believe we use linear regression to also predict the value of an outcome given the input values. Then, what ...
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1answer
2k views

Errors in segmented package: breakpoints confusion

Using the segmented package to create a piecewise linear regression I am seeing an error when I try to set my own breakpoints; it seems only when I try to set more than two. (EDIT) Here is the code I ...
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3answers
899 views

how to do linear regression in python, with missing elements

I found an example of linear regression: http://docs.scipy.org/doc/numpy/reference/generated/numpy.linalg.lstsq.html#numpy.linalg.lstsq x = np.array([0, 1, 2, 3]) y = np.array([-1, 0.2, 0.9, 2.1]) ...
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2answers
2k views

How can I obtain segmented linear regressions with a priori breakpoints?

I need to explain this in excruciating detail because I don't have the basics of statistics to explain in a more succinct way. Asking here in SO because I am looking for a python solution, but might ...
0
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0answers
149 views

Creating simple rules of classification based on linear SVM coeficients

Gretings. I'm trying to translate SVM findings in a linear combination of predictors. Here is an example of R code : ## Data example test = structure(list(y_bin = c(1, 0, 0, 0, 0, 1, 1, 1, 0, ...
3
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1answer
791 views

R Pass colname into glht function as variable in loop

I'm sure I'm missing something obvious here; am trying to use a loop to change the inputs to a formula, then generate a glht involving that formula. (glht = general linear hypothesis test). Thanks ...
0
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1answer
303 views

Boolean regression or similar algorithm

I'm looking to take in a set of values and then return a boolean value based on that set. Similar to linear regression but only returning a boolean value. Is a boolean regression model what I'm ...
5
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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 ...
2
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1answer
3k 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: ...
5
votes
2answers
3k views

Python linear fitting with multiple error bars

I am fitting some data with a linear fit. I want to weight the error bars. Up to this point, I have been using bulldogs fitting.py. Their linear_fit makes weighted linear regressions very easy. ...
0
votes
1answer
731 views

How to specify an arbitrary dummy variable contrast in R? [duplicate]

I know that R automatically creates dummy variables from categorical values, but it also automatically chooses the reference value (I think alphabetically?). How do I specify a different value to be ...
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0answers
254 views

Java library for computing a multi-dimensional line of best fit?

I'd like a (free) library or other method that can take N data points with M variables each and compute a line of best fit those data points. Speed is more necessary than exactness. Are there ...
3
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2answers
6k views

Fitting Logarithmic Curve to Data Points in R

So if I have a set of points in R that are linear I can do the following to plot the points, fit a line to them, then display the line x=c(61,610,1037,2074,3050,4087,5002,6100,7015) y=c(0.401244, ...
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2answers
351 views

Store regression result in MySQL from R with RMySQL package

I am new to R and stuck with one problem. I will explain it by an example. I am using R with php. I have one R script that calculates the linear regression: reg_result <- lm( Y ~ A1 + A2 + A3, ...
22
votes
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 ...
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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 ...
3
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1answer
2k views

Efficient Cointegration Test in Python

I am wondering if there is a better way to test if two variables are cointegrated than the following method: import numpy as np import statsmodels.api as sm import statsmodels.tsa.stattools as ts y ...
2
votes
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. ...
3
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4answers
7k 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 ...
0
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2answers
1k views

Linear Regression In Objective C or C

I am looking to find the slope between two vectors via linear regression in Objective C or C (its for xcode). The equation I am attempting to mirror is implemented in matlab. (Info on it here: ...
0
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2answers
274 views

lmFit model datasets requirements

I am very new to R and try to analyze a few expression array data. For the gene expression analysis, we use linear fit and eBayes to calculate the data. But if I only have one sample for each ...
4
votes
1answer
1k 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 ...
1
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1answer
455 views

About using GAM Models in R

Currently I'm replicating the exercise did by Wood (2006) about the relationship between air pollution and death rates in Chicago, using GAM models. So, I followed the code he used in his book. The ...
2
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5answers
416 views

why overfitting gives a bad hypothesis function

In linear or logistic regression if we find a hypothesis function which fits the training set perfectly then it should be a good thing because in that case we have used 100 % of the information given ...
1
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0answers
317 views

linear regession model testing with regsubsets time and correctness

I have 2700 observations with 60 characteristic columns and 3 response variables. I am analyzing the data in R. At first I estimated a model with 34 of the characteristics based on the R^2 value. ...
0
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1answer
407 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 ...
0
votes
1answer
1k views

Step halving issue in gnls{nlme}

I am trying to estimate parameters for generalized least-squares regression on some community data. I have successfully done this for one set of data, but when I try the same technique to estimate ...
0
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1answer
384 views

In R, how to extract just the significant variables after running a Multiple Regression with a large number of variables

After running a multiple regression in R, the regression summary indicates the significant variables with stars. In a dataset that I am working on there are nearly 2000 variables and the significant ...
5
votes
1answer
3k views

“weighted” regression in R

I have created a script like the one below to do something I called as "weighted" regression: library(plyr) set.seed(100) temp.df <- data.frame(uid=1:200, ...
10
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3answers
5k 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. ...
3
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2answers
544 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) ...
0
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1answer
251 views

Minimal but fast Weighted- Least Squares Regression

I know that similar questions have been asked in the past but mine has to do with weighted regression in which only the coefficients are needed. The computation should be as fast as possible. I know ...
7
votes
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 ...
6
votes
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 ...