for issues related to linear regression modelling approach

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2
votes
1answer
656 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 ...
2
votes
1answer
62 views

Line fit from an array of 2d vectors

I have a problem in some C code, I assume it belonged here over the Mathematics exchange. I have an array of changes in x and y position generated by a user dragging a mouse, how could I determine if ...
2
votes
1answer
103 views

Use a function with a linear regression model

I can run multiple linear regressions, and in each model estimate coefficients by removing one observation from the data.frame like this: library(plyr) as.data.frame(laply(1:nrow(mtcars), function(x) ...
2
votes
1answer
28 views

Specifying which category to treat as the base with 'statsmodels'

In understand that when I have a category variable in a model passed to a statsmodels fit that dummy variables will automatically be generated for the categories. For example if I have a variable ...
2
votes
2answers
452 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: ...
2
votes
1answer
586 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 <- ...
2
votes
1answer
287 views

Fitting downward trends (negative slope) with statsmodels linear regression

I can't get linear regression in python StatsModels to fit a data series with a negative slope - neither RLM nor OLS are working for me. Take a very simple case where I'd expect a slope of -1: In ...
2
votes
1answer
1k views

Ridge regression in matlab

I have this doubt about the ridge regression in matlab. They have mentioned at http://www.mathworks.com/help/stats/ridge.html, that ridge regression actually mean centers and make the std equal to 1 ...
2
votes
1answer
96 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 ...
2
votes
1answer
2k views

Plot and report X intercept from linear regression - R

I am using lm in r for linear regression. I would like to plot and report the x intercept. I know that I could use algebra and solve for x by setting y = 0, but is there a way to have r report it to ...
2
votes
1answer
2k views

OLS with pandas: datetime index as predictor

I would like to use pandas OLS function to fit a trendline to my data Series. Does anyone knows how to use the datetime index from the pandas Series as predictor in the OLS? For example, let say that ...
2
votes
1answer
5k views

R linear regression issue : lm.fit(x, y, offset = offset, singular.ok = singular.ok, …)

I try a regression with R. I have the following code with no problem in importing the CSV file dat <- read.csv('http://pastebin.com/raw.php?i=EWsLjKNN',sep=";") dat # OK Works fine Regdata ...
2
votes
2answers
631 views

Java or C equivalent of MATLAB's robustfit

MATLAB has a magnificent robustfit function that solves the problem of excluding outliers with linear regression fitting. Is there anything similar written in Java or C (or in language X that could be ...
2
votes
1answer
37 views

Is it possible to hide the coefficients that are from factors in R lm()?

I have a model with two types of many different fixed effects, and I am only interested in a few regressors and not the fixed effects themselves. I find it easier to include the as.factor variables ...
2
votes
1answer
139 views

How can I force cv.glmnet not to drop one specific variable?

I am running a regression with 67 observasions and 32 variables. I am doing variable selection using cv.glmnet function from the glmnet package. There is one variable I want to force into the model. ...
2
votes
1answer
61 views

Pymc3: very slow and stalling

is there any reason why the NUTS sampler might be slow or stall? I'm using http://twiecki.github.io/blog/2014/03/17/bayesian-glms-3/ as a basis for some hierachical linear regression work. I've tried ...
2
votes
1answer
54 views

How to automate the process of building several models in R

I have been trying to automate the process of building several models using a for loop, but I am getting an error each time. I need to build about 50 or more models, say like the following, ...
2
votes
1answer
118 views

Selecting variables in a multivariate regression in R

I am quite new to R and I am having trouble figuring out how to select variables in a multivariate linear regression in R. Pretend I have the following formulas: P = aX + bY Q = cZ + bY I have a ...
2
votes
1answer
272 views

R find angle between two lines, when have slope and intercept coefficients

I have timeserie: x 4557 9940 9855 9894 10142 9501 9532 9229 9169 9214 9347 9176 8951 9344 9873 9970 9139 9420 9476 9205 9271 8632 8730 9336 9150 9601 10012 9841 9951 ...
2
votes
1answer
4k views

Multiple linear regression python

I use multiple linear regression, I have one dependant variable (var) and several independant variables (varM1, varM2,...) I use this code in python: z=array([varM1, varM2, varM3],int32) ...
2
votes
1answer
86 views

Apply regression coefficients that have one answer per factor to many entries per factor in a dataframe in R

I have a dataframe that has a column for time, symbol, price, volatility. I use this dataframe to run a first pass OLS regression using dummy variables for the symbol fit <- ...
2
votes
1answer
811 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 ...
2
votes
0answers
13 views

Fit a line pattern on curve with unknown number of points

I've got a sample curve which ends theoretically with decreasing exponential. The curve end falls into noise. The sample points are given in log scale. What I want to do, is to find and fit the linear ...
2
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0answers
46 views

How to caclulate confidence interval for orthogonal distance regression line fit in python

I am using orthogonal distance regression method(scipy.odr) to fit my data, after fit, I have trouble in calculate the 95% confidence interval, please help me no how to calculate it~ here the code: ...
2
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0answers
49 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 ...
2
votes
1answer
76 views

Approximating a group of line segments with only one

Assuming I have a group of lines segments like the red lines (or green lines) in this picture I want to know how can I replace them with just one line segment that approximates them best. Or maybe ...
2
votes
0answers
66 views

unexpected predict() result for linear regression in R

I'm working on a code that predict an hourly rental rates of bikes based on historical data. Data have many attributes (shown below), and to fit the model I used linear regressions models , then I ...
2
votes
1answer
131 views

Ordinary least squares regression in R: no intercepts

I'd like to use the ols() (ordinary least squares) function from the rms package to do a multivariate linear regression, but I would not like it to calculate the intercept. Using lm() the syntax would ...
2
votes
0answers
23 views

Why does regtol.int() resort my X variable in ascending order?

I'm pretty new at R, so I guess I must be doing something wrong. I have a dataset named "series" with two columns, V1=CP and V2=CU, and I want to perform a linear regression with CU as the independent ...
2
votes
1answer
336 views

Least Squares line fit in Matlab - Polyfit isn't (doesn't seem to be) answer

I'm looking for help doing a (simple?) least squares line fit to a set of points in Matlab. I have an image with a set of points that I'm trying to fit a line to, minimizing the distance from each ...
2
votes
1answer
1k views

Performing linear regression on a log-log (base 10) plot Matlab

I have two sets of data: Peak Velocity and Amplitude. The relation between the two parameters is not linear and I used a logarithmic (base10) plot before performing linear regressions (this process is ...
2
votes
0answers
264 views

R - Fitting a constrained AutoRegression time series

I have a time-series which I need to fit onto an AR (auto-regression) model. The AR model has the form: x(t) = a0 + a1*x(t-1) + a2*x(t-2) + ... + aq*x(t-q) + noise. I have two contraints: Find ...
2
votes
1answer
1k views

Matlab plot regression function

I'm plotting a linear regression using the MATLAB function plotregression in this way: hand = plotregression(x, y, 'Regression') However, I'd like to get rid of the y = T line in the plot, and ...
2
votes
0answers
297 views

What is wrong in this Python code for Regularized Linear Regression?

I wrote code with numpy(theta, X is numpy array): def CostRegFunction(X, y, theta, lambda_): m = len(X) # add bias unit X = np.concatenate((np.ones((m,1)),X),1) H = np.dot(X,theta) ...
2
votes
0answers
55 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. ...
2
votes
1answer
310 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 ...
2
votes
1answer
454 views

Logistic Regression with R and Hadoop

We are using rmr and rhadoop package of RevoR. Can we perform linear regression on an entire data set in hadoop without the need to implement the linear regression algorithm in map reduce or Is ...
2
votes
2answers
966 views

R: Variable selection for multiple regression w/ percentage dependent variable, serious collinearity

I've got a dataset with 9 continuous independent variables that I'm trying to select between to fit a model to a single percentage (dependent) variable: Score. Unfortunately, I know there will be ...
1
vote
5answers
2k views

Gradient Descent in linear regression

I am trying to implement linear regression in java. My hypothesis is theta0 + theta1 * x[i]. I am trying to figure out the value of theta0 and theta1 so that the cost function is minimum. I am using ...
1
vote
4answers
3k 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 ...
1
vote
2answers
316 views

sklearn linear regression for large data

Does sklearn.LinearRegression support online/incremental learning? I have 100 groups of data, and I am trying to implement them altogether. For each group, there are over 10000 instances and ~ 10 ...
1
vote
2answers
1k views

In R draw two lines, with slopes double and half the value of the best fit line

I have data with a best fit line draw. I need to draw two other lines. One needs to have double the slope and the other need to have half the slope. Later I will use the region to differentially ...
1
vote
1answer
2k views

Cost Function, Linear Regression, trying to avoid hard coding theta. Octave.

I'm in the second week of Professor Andrew Ng's Machine Learning course through Coursera. We're working on linear regression and right now I'm dealing with coding the cost function. The code I've ...
1
vote
1answer
684 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. ...
1
vote
3answers
1k views

How to plot a linear regression to a double logarithmic R plot?

I have the following data: someFactor = 500 x = c(1:250) y = x^-.25 * someFactor which I show in a double logarithmic plot: plot(x, y, log="xy") Now I "find out" the slope of the data using a ...
1
vote
3answers
4k views

Plotting Regression results from lme4 in R using Lattice (or something else)

I have fit a regression using lme4 thanks to a previous answer. Now that I have a regression fit for each state I'd like to use lattice to plot QQ plots for each state. I would also like to plot error ...
1
vote
1answer
53 views

Plot coefficients depending on their significance

I try to visualize the significance of each variable/combination of a DiD model. attach(mtcars) M=lm(mpg ~ hp + wt * gear , data =mtcars) summary(M) coef(M) confint(M, level = 0.9) Therefore I ...
1
vote
2answers
56 views

Dropping every predictor once at a time in R

Let's say I have 4 predictors x1, x2, x3, x4. I want to have a code that drops every predictor one at a time. For e.g. set.seed(10) y<-c(1:20) x1<-c(1:20)*runif(20,min=0,max=2) ...
1
vote
2answers
66 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) ...