for issues related to linear regression modelling approach

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0answers
63 views

How to define a trilinear regression model in Python

I am trying to fit a trilinear model to my observation. The observation values look like A: A = array([[ 4.18680470e-01, 2.27554169e+00, 1.88600000e+02, 3.40000000e+00], [ 2.64688814e-01, ...
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0answers
31 views

Drop1() and Summary() on lm object

I need to analyse unbalanced data through linear regression: modJuin=lm(TleafMax~TairMax*orientation, na.action="na.exclude", data=aJuin) "TairMax" is a continuous numerical variable and ...
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1answer
86 views

Contiki: Error if ELF File contains calculation with several unsinged int

I encountered some problems while working with the contiki ELF-loader and hope that someone would be so kind to provide me more insight or some hints to solve these problems. In the following I try to ...
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2answers
455 views

Linear Regression with sklearn using categorical variables

I am trying to run a usual linear regression in Python using sk-learn, but I have some categorical data that I don't know exactly how to handle, especially because I imported the data using pandas ...
2
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1answer
91 views

Use all variables in a model with {plm} in R

Using different sources, I wrote a little function that creates a table with standard errors, t statistics and standard errors that are clustered according to a group variable "cluster" after a linear ...
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1answer
52 views

Linear regression in R between two data frames.

I have two data frames, one with predictor information and one with response data. Both matrices have row names expressing the same sample IDs in the same order (i.e. "TCGA_5896," "TCGA_5133"...) To ...
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0answers
29 views

Models for continous dependent variables in large(wrt predictors) datasets in R

I have a data set with 4000 variables and 10 000 rows. I would like to use lm() to predict but its taking extremely long to build a model. I don't want to use rpart because it gives me fixed values ...
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0answers
40 views

VB.Net issue with double data range while performing a linear regression

I am performing linear regression using this data in VB.Net 1411478155,71.9700012207031 1411478150,72.9700012207031 1411478145,73.9700012207031 1411478140,74.9700012207031 ...
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1answer
43 views

Why won't this simple linear regression with gradient descend works?

I'm new in machine learning and I'm trying to do a linear regression for f(x)=kx by gradient descend. And d(f(x)-y)^2 / dk =2(f(x)-y) * d(kx-y) / dk =2x(f(x)-y) =2x(kx-y) So update k by k = k ...
0
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1answer
131 views

Error in segmented regression for three covariates and two breakpoints in R

I am trying to estimate the breakpoints for a variable V with three covariates (X,Y,Z) and two breakpoints. The response variable V = aX + bY + cZ + d I simulate the data where (a,b,c,d) have 3 ...
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1answer
50 views

labelling residuals

I have made a linear regression model in R with 3 continuous independent variables and one continuous dependent variable. I have generated the diagnostic plots. I would now like to label/colour the ...
0
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1answer
105 views

How to run regression with presence of constant and linear time trend in R?

I have 2 time series X and Y. I have already known how to run the regression with presence of constant, represented by the following equation: The regression (equation with constant) shown right ...
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0answers
232 views

Identification of an ARX model with both linear equality constraints and stability

From input and output data I have to identify with least squares an ARX model y(n) = -a1 y(n-1) -....- aN y(n-N) + b1 x(n-1)+...+bM x(n-M) that has to be stable (all its poles are inside the unit ...
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0answers
41 views

what is the value residues_ in sklearn LinearRegression

The function LinearRegression from sklearn report the value residues_. This value does not seem to be reported in the documentation doc. According to github it seems to come from scipy lsqrt but ...
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2answers
502 views

R-squared on test data

I fit a linear regression model on 75% of my data set that includes ~11000 observations and 143 variables: gl.fit <- lm(y[1:ceiling(length(y)*(3/4))] ~ ., data= x[1:ceiling(length(y)*(3/4)),]) ...
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1answer
37 views

Choosing between different methods when the first one raises error message for linear regression

I have a linear regression problem (Ax=b). My initial approach that helped to solve some of my questions was using SVD and obtaining the chi-square and some other values that I am interested but it is ...
2
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3answers
117 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 ...
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0answers
198 views

least squares regression Math.Net

I am looking for some information on how to use Math.Net. I don't see any documentation on how to create a matrix using 36 Independent variables and 1 dependent variable. I would assume that if this ...
1
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1answer
68 views

Scatterplot for multiple regression results in R

I am trying to find a way to get a scatterplot in R of actual values vs. regressed values. Example: fit = lm(y ~ a + x + z) I get the results y ~ 2*a + 3*x - 7*z + 4 Now how do I make a ...
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0answers
105 views

Error when introducing dummy variables in a regression in Matlab

I am running some regressions in Matlab. My first three regressions are: tbl1=table(Y1,X1); mdl1=fitlm(tbl1,'Y1~X1'); mdl12=fitglm(tbl1,'Y1~X1','Distribution','binomial','link','probit'); ...
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0answers
96 views

Quadratic programming with linear equality constraints in Matlab

I have to identify an ARX under some linear constraints, this means that I have a quadratic programming with linear equality constraints problem. One way is to use the following equations in the ...
0
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1answer
407 views

Pandas/Statsmodel OLS predicting future values

I've been trying to get a prediction for future values in a model I've created. I have tried both OLS in pandas and statsmodels. Here is what I have in statsmodels: import statsmodels.api as sm ...
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0answers
66 views

Understanding Errors and Warnings in lmrob

I am using lmrob() of package robustbase to fit robust linear models in some small time series of biological measurements, for each individual. On most cases it worked without errors, some cases had ...
2
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2answers
75 views

Linear Regression Coefficient Information as Data Frame or Matrix

I am trying to create a script to optimize a linear regression analysis, and I would really like to operate on the model output, most specifically the Pr(>|t|) value. Unfortunately, I do not know how ...
2
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1answer
91 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 ...
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0answers
77 views

Python - dmatrices method reduces categorical features

I am having following problems when using dmatrices function to construct X and Y for regression analysis. X contains around 6 features, out of which there are 2 features are categorical. When ...
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0answers
71 views

Issues in generating linear regression model and calculating mean square error

I want to generate a moving average model (MA) and Autoregressive model(AR). For MA model I used a filter in the following way. h = [1 0.45 -0.6]; %assuming them to be the filter coefficients N = ...
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1answer
716 views

scipy linregress: computing only scaling/slope parameter with intercept fixed at 0

I am trying to use scipy.stats.linregress to compute a scaling factor between two sets of data in the least square sense. However, it gives me an intercept despite the fact that the input $xi$ ...
0
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0answers
83 views

reference dummy coding with regression in matlab

Thanks in advance for the help I have a set of data that is composed of multiple categorical predictors and a single numerical response. I want to use regression to predict the response. Matlab ...
0
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1answer
182 views

How to plot the standard error of linear combination of two variables in Stata

I am trying to plot the 95% CI of a spline function in Stata. I can easily plot the fitted values, but am not sure how to calculate the SE here. Can someone please help? sysuse auto.dta, clear ...
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1answer
863 views

Multivariate Linear Regression in MATLAB

I already have my data prepared in terms of: p1=input1 %load of today current hour p2=input2 %load of today past one hour p3=input3 $load of today past two hours a1=output %load of next day current ...
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3answers
66 views

Plotting a number of regression lines in a single plot

How do I show 2 regression lines on the same plot? Here are both models: data(mtcars) a <- lm(mpg~wt+hp) b <- lm(mpg~wt+hp+wt*hp) I plot wt on the x-axis, mpg on the y-axis and hp as the ...
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1answer
143 views

R: Using the predict function to add standard error and confidence intervals to predictions

I've made this model: model <- lm(mpg ~ wt, mtcars) I now want to made prediction for new data, and I can do this with the effects package library(effects) effect_df <- ...
0
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1answer
29 views

I need to add a fitting line to a plot

I am interested in adding a fitting line (linear regression) only to the linear part of a plot filename = 'data_250var600.txt' ; P=load( filename ) ; f00 = figure; plot(P(:,1),P(:,2),'-bx',... ...
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1answer
356 views

Matlab R2014a - stepwiselm problems

I am currently working on a timeseries model using the function stepwiselm in Matlab. I am running Matlab R2014a. The documentation on the function can be found here. Introduction to the mathematical ...
2
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0answers
88 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 ...
0
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1answer
231 views

how to merge two linear regression prediction models (each per data frame's subset) into one colmn of the data frame

I would like to build 2 linear regression models that are based on 2 subsets of the dataset and then to have one column that contians the prediction values per each subset. Here is my data frame ...
0
votes
2answers
165 views

Linear regression for multivariate time series in R

As part of my data analysis, I am using linear regression analysis to check whether I can predict tomorrow's value using today's data. My data are about 100 time series of company returns. Here is my ...
1
vote
1answer
438 views

Model Prediction for pooled regression model in panel data

I'm trying to produce a predictive model where i performed multiple pooled regressions in each year (based on previous years) and thus allow coefficients to vary across time. (This might not make ...
0
votes
1answer
72 views

using fitted() on output from lm with dummy variables

reg_ss <- predict(lm(stem_d~stand_id*yr,ss)) fitted.values(reg_ss) #Error: $ operator is invalid for atomic vectors I have tried this with fitted() and fitted.values() and receive the same ...
0
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0answers
173 views

Reading data into linear regression C program

Below is the code I've modified from Numerical Recipes. My x will represent voltage in and my y will represent the digital code out. I am still pretty new to programming and this is also my first time ...
2
votes
1answer
1k 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 ...
0
votes
1answer
45 views

OLS of statsmodels does not work with inversely proportional data?

I'm trying to perform a Ordinary Least Squares Regression with some inversely proportional data, but seems like the fitting result is wrong? import statsmodels.formula.api as sm import numpy as np ...
0
votes
1answer
64 views

Can I create conditions for regression coefficients in something like nls() or nnls()?

I have recently been playing around with R's regression functions/packages. I'm wondering, is there a way that I could force my regression coefficients to sum to a particular value? I understand that ...
1
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1answer
106 views

Adding error variance to output of predict()

I am attempting to take a linear model fitted to empirical data, eg: set.seed(1) x <- seq(from = 0, to = 1, by = .01) y <- x + .25*rnorm(101) model <- (lm(y ~ x)) summary(model) # R^2 is ...
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0answers
38 views

How to use Wald Test properly

I would like to test the null hypothesis that all coeffcients of my categorical variable with 4 Levels are really zero. I`m new to the R family. And just have some problems to implement that question. ...
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1answer
257 views

GAMS maximum element

I have to get GAMS to find the maximum element of a set. This should result in some linear regression model, where the objective is not the least squares but the least maximum deviation. My data ...
1
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1answer
148 views

Matlines getting in linear regression model in R

I am running a toy prediction model that looks like this: model1 <- lm(weight ~ age) plot(predict(model1), weight) pred.frame <- data.frame(age = 4:20) pp <- predict (model1, int = "p", ...
0
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0answers
172 views

R stepwise regression with non-negative coefficients

I'm new to the R community, and I wonder if there is a way to restrict the coefficients to be non-negative in a stepwise regression? I tried to use nnls for non-negative linear regression, and step ...
1
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1answer
181 views

Multi variable gradient descent

I am learning gradient descent for calculating coefficients. Below is what I am doing: #!/usr/bin/Python import numpy as np # m denotes the number of examples here, not the number of features ...