for issues related to linear regression modelling approach

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0
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1answer
53 views

Creating legends that report R^2 correctly

Apologies if this has been asked before; I couldn't locate a similar question besides this one (How can I plot my R Squared value on my scatterplot using R?). It was helpful in demonstrating the right ...
3
votes
2answers
105 views

Accelerate the calculation of inv(X'*X)*Q*inv(X'*X) in Matlab?

I have to calculate Newey-West standard errors for large multiple regression models. The final step of this calculation is to obtain nwse = sqrt(diag(N.*inv(X'*X)*Q*inv(X'*X))); This file exchange ...
0
votes
1answer
58 views

standard error of outcome in lm and lme

I have the following linear models fm2 <- lme(distance ~ age + Sex, data = Orthodont, random = ~ 1) fm2.lm <- lm(distance ~ age + Sex,data = Orthodont) How can I obtain the standard error of ...
0
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1answer
69 views

R: How to get rid of .lin in plinear nls

Explanation I am trying to fit an exponential curve to data in form theta = x0 * exp(-kappa*l). I do it firstly with linear = lm( I(-log(temp.theta/x0)) ~ l + 0 ) where I get coefficient (k = ...
7
votes
1answer
212 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 ...
2
votes
2answers
338 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: ...
0
votes
1answer
25 views

data prediction by regression or better ways

I am working on data prediction. Given data of a random variable X and Y, find out how to predict Y by X. I know how to do it by linear regression, y = k x + b . But, here, x is always ...
0
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0answers
67 views

How to use mapreduce to do the linear regression for overlaps data

Here is my original code for doing all data using map-reduce. But how to split the data into different groups (each overlapping 252 days for a group) and then make linear regression for each group? ...
2
votes
0answers
22 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 ...
1
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2answers
81 views

Fitting polynomial results in multiple straight lines on plot in R

I'm trying to plot a polynomial line to my data, however the plot results in multiple diagonal lines instead of one single curved line. I've managed to correctly produce a polynomial using a fake ...
0
votes
1answer
409 views

linear regression with multiple variables in matlab, formula and code do not match

I have the following datasets: X X = 1.0000 0.1300 -0.2237 1.0000 -0.5042 -0.2237 1.0000 0.5025 -0.2237 1.0000 -0.7357 -1.5378 1.0000 1.2575 1.0904 1.0000 -0.0197 ...
2
votes
1answer
2k views

OLS Regression: Scikit vs. Statsmodels?

Short version: I was using the scikit LinearRegression on some data, but I'm used to p-values so put the data into the statsmodels OLS, and although the R^2 is about the same the variable coefficients ...
1
vote
2answers
55 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) ...
0
votes
1answer
67 views

Breakpoints when using linear regression

I'm using the code below to check whether X and Y are giving me the same results for each iteration. Essentially, X and Y (1 x 16 Vectors) are only slightly different and give the value for an ...
1
vote
1answer
127 views

Multivariable regression attribute selection in python

I'm a beginner to using statsmodels & I'm also open to using other Python based methods of solving my problem: I have a data set with ~ 85 features some of which are highly correlated. When I run ...
0
votes
1answer
30 views

AIC- sample size

is the result of the AIC () valid if the sample size differs between the 2 linear regression models (in my case only by one observation). R prints a result but I also get a error message about the ...
0
votes
1answer
202 views

Stata command: repeated cross section VS Panel

I have a question regarding my understanding about repeated cross section and panel. Is the Stata command xtreg, fe the same as regress and putting all possible fixed effects? The Assumption here is: ...
0
votes
1answer
512 views

LinearRegression Predict- ValueError: matrices are not aligned

I've been searching google and can't figure out what I'm doing wrong. I'm pretty new to python and trying to use scikit on stocks but I'm getting the error "ValueError: matrices are not aligned" when ...
0
votes
1answer
164 views

Linear regression with Lasso penalty needs to increase iterations, Scikit-learn

I am using Linear regression with Lasso implemented in Scikit-learn package. linear_regress = linear_model.Lasso(alpha = 2) linear_regress.fit(X, Y) For X, there is 7827 examples and 758 features. ...
0
votes
1answer
49 views

Correaltion and regression analysis

How should I analysis the correlation between four ordinal numbers (0,1,2,3) and various range of the continuous values? The scatter plot looks like a 4 parallel horizontal dots .
0
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0answers
28 views

Nonlinear regression, normalization after compute nonlinear features?

I have a great doubt whether I am doing correctly. My goal is to perform linear regression, and I have Y as a response variable and X_1 and X_2 as explanatory variables. The model should be nonlinear, ...
2
votes
1answer
240 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 ...
0
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0answers
12 views

Decomposable Hypergraph

I am wondering if we change a unique leaf of a clique with another clique in a decomposable hypergraph (undirected one), will it then be still decomposable hypergraph or not? I also want a reference ...
1
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0answers
125 views

Pandas Rolling OLS Bug with Version 0.12.0

I have the following example data for performing a rolling OLS calculation (here I am doing it from the debugger): (Pdb) rhs ['Yield'] (Pdb) lhs 'Returns' (Pdb) min_periods 12 (Pdb) window 60 ...
0
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0answers
162 views

Extending the limits of multiple linear regression in ggplot2 and extrapolating the corresponding intersecting point

I have some data here in a .txt file from which I plot the graph below using the following lines of code, library(scales) library(ggplot2) library(reshape2) # read data from .txt file into a ...
1
vote
1answer
230 views

Using robust linear methods from python module “statsmodels” with weights?

I have some data,y with errors, y_err, measured at x. I need to fit a straight line to this mimicking some code from matlab specifically the fit method with robust "on" and giving the weights as ...
2
votes
1answer
319 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 ...
0
votes
1answer
78 views

why df.residual returns “logical” when using lm.fit in R?

I have three directories and there are five files in each directory. those files are matrix(rasters) 1383*586. I want to compute the regression equation between the corresponding columns of the ...
0
votes
2answers
124 views

How to return only the degrees of freedom from a summary of a regression in r?

I would like to return only the df (degrees of freedom) out of the summary.I searched thru Internet but I did not find anything for this. y=c(2,13,0.4,5,8,10,13) y1=c(2,13,0.004,5,8,1,13) ...
0
votes
1answer
51 views

How to use dyn package to perform regression on xts object?

I've recently learn that there is a package call dyn which can perform regressions on xts object, however I have trouble reading the manual. If there is a datum like below: data(sample_matrix) ...
1
vote
1answer
194 views

Reproducing Excel's LINEST function with NumPy

I have to use Excel's LINEST function to compute error in my linear regression. I was hoping to reproduce the results using Numpy's polyfit function. I was hoping to reproduce the following LINEST ...
1
vote
1answer
112 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 ...
0
votes
1answer
218 views

Linear regression with XTS object

How to do linear regressions with xts object? lm(xtsObject ~ index(xtsObject)) doesn't work, I've tried. My data is a daily stock price of a company. but index gives the seconds since the epoch to lm ...
0
votes
1answer
210 views

How to supply a mean centered variable in a regression model

I am trying to fit the following model: using lm in R. I cannot get my head around the following behaviour... library(nlme) library(plyr) #create toy data set df0<-Orthodont ...
1
vote
3answers
653 views

How to interpret R linear regression when there are multiple factor levels as the baseline? [closed]

My data has 3 independent variables, all of which are categorical: condition: cond1, cond2, cond3 population: A,B,C task: 1,2,3,4,5 The dependent variable is the task completion time. I run ...
2
votes
1answer
230 views

Linear regression implementation always performs worse than sklearn

I implemented linear regression with gradient descent in python. To see how well it is doing I compared it with scikit-learn's LinearRegression() class. For some reason, sklearn always outperforms my ...
0
votes
1answer
133 views

How to create Linear Regression line on a 2D scatter plot [closed]

I have one class of data from a bivariate normal distribution. This gives me 2 columns, and I plot it using plot(Data_Class1). Now I have another class of data from a different bivariate normal ...
0
votes
0answers
243 views

pandas rolling linear regression of more signals

I have a dataframe df with 2 or more columns ['A','B','C'...] each one respresenting a signal. I need to compute a rolling linear regression on each signal against a series ...
0
votes
1answer
402 views

Fitting a multiple linear regression in R

So I have data like this - ## V2 V3 V4 V5 V6 V7 V8 ## 2 27.0 41.3 2948.0 26.2 51.7 42.7 89.8 ## 3 22.9 66.7 4644.0 3.0 45.7 41.8 121.3 ## 4 26.3 58.1 3665.0 3.0 50.8 38.5 ...
1
vote
2answers
138 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 ...
1
vote
0answers
83 views

Plotting a curve on a scatter (linear regression) plot

I have a the following plot in R: I used the following code to build it: df <- read.csv("C:/temp/df.csv") df.x <- df$DR df.y <- df$GB df.fit = lm(df.y ~ df.x) plot(df.x,df.y, ...
0
votes
1answer
58 views

Get the predicted value with Linear Regression

Say I have a have a plot with the following information: Based on this R code: concentration <- c(1,10,20,30,40,50) signal <- c(4, 22, 44, 244, 643, 1102) plot(concentration, signal) res ...
0
votes
1answer
113 views

Using Apache Library for OLS Regression : Matrix is singular exception

I am using the Apache Math Library for Java to find the OLS regression for a set of data. However, I will occasionally get the following error : ...
1
vote
3answers
135 views

Are a majority of machine learning techniques derived from linear regression and kNN?

While reading Elements of Statistical Learning, I came across this quote: A large subset of the most popular techniques in use today are variants of these two simple procedures. In fact ...
4
votes
1answer
73 views

estimate in lm function in R doesn't match correlation (data with NA)

I'm fitting lm model x <- c(0.1, 0.3, 0.2, 0.5, NA, 0.1, 0.8, 0.4) y <- c(0.3, 0.2, 0.5, NA, 0.4, 0.5, 0.2, 0.4) fit1<-lm(scale(y) ~ scale(x), na.action=na.omit) summary(fit1) This gives ...
0
votes
1answer
790 views

How to do linear regression, taking errorbars into account?

I am doing a computer simulation for some physical system of finite size, and after this I am doing extrapolation to the infinity (Thermodynamic limit). Some theory says that data should scale ...
1
vote
1answer
49 views

How to use lm function for large number of attributes

i have a dataset with 1 label attribute and 784 pixel attributes with 42000 rows like below label pixel0 pixel1 pixel2 ........... pixel783 0 1 0 0 16 . ...
1
vote
1answer
139 views

Which model is suitable for predicting percentages? [closed]

I came across this problem to predict loss on a loan-default, based on various input attributes. You not only have to predict loss/no-loss but also predict what percentage of loan will be lost ...
0
votes
1answer
1k views

Leave one out cross validation with lm function in R

I have a dataset of 506 rows on which I am performing Leave-one-out Cross Validation, once I get the mean squared errors , I am computing the mean of the mean squared errors I found. This is changing ...
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 ...