for issues related to linear regression modelling approach

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0
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1answer
32 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 ...
0
votes
3answers
40 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 ...
-1
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1answer
36 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
votes
1answer
22 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',... ...
0
votes
1answer
34 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
36 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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0answers
39 views

LASSO Regression with Nonnegative Coefficients and Weighted Samples in R? [closed]

I'm trying to perform a linear regression that meets 3 criteria: it employs L1 regularization (i.e. "LASSO") the resulting coefficients are nonnegative the samples are weighted by a certainly ...
0
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1answer
15 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
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2answers
35 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 ...
0
votes
1answer
49 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
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1answer
24 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
34 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
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1answer
69 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
22 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
23 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
vote
1answer
21 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 ...
0
votes
0answers
12 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. ...
0
votes
1answer
18 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 ...
0
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0answers
3 views

Defining a custom cost function in linear regression

For a linear model, I want to define a cost function penalizing certain errors more than others. For instance, assuming both positive and negative outcomes a sign error (forecasted -1, observed +1) ...
1
vote
1answer
21 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
votes
0answers
72 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
vote
1answer
43 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 ...
0
votes
1answer
44 views

Gradient descent not working as expected

I am using Stochastic Gradient Descent from scikit-learn http://scikit-learn.org/stable/modules/sgd.html. The example given in the link works like this: >>> from sklearn.linear_model import ...
0
votes
0answers
31 views

mediation analysis when mediator is categorical (SPSS)

I want to do a mediation analysis, with the following variables: X: Independent variable: Categorical (2 levels) M: Mediator: Categorical (5 levels) Y: Dependent variable: Continuous Following ...
0
votes
1answer
39 views

Regression coefficients and abline in R - linear regression [closed]

Thanks in advance for your attention. Here it's my problem: I have a dataframe, this is it's structure (I have deleted some rows): DATE CASES 02/01/2013 1 02/01/2013 2 03/01/2013 3 ...
0
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0answers
36 views

Error while using stastmodels' WLS: SVD did not converge

I've written an algorithm for a cascaded boosting classifier using WLS (weighted least squares regression) in statsmodels, and have been able to successfully run it a few times. I used it with a few ...
0
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0answers
3 views

What could be the reason of low dw stat value and how can we increase the same?

I am running a linear regression model in R to find out the Key Business Drivers. My dw stat is coming out to be 0.75. This value of dw stat is not acceptable as this signifies there is some auto ...
3
votes
2answers
39 views

Performance issue in computing multiple linear regression with huge data sets

I am using np.linalg.lstsq for calculating the multiple linear regression. My data set is huge: has 20,000 independent variables(X) and 1 dependent variable (Y). Each independent variable has 10,000 ...
0
votes
1answer
23 views

R - Unit specific time trends in regression

In a regression I am trying to model unit specific time trends but I keep running into difficulties. In R when I estimate the model with unit and year fixed effects like ...
2
votes
1answer
97 views

Linear regression with constraints with Math.NET

I'm performing simple linear regression with Math.NET. I provided a common code sample below. Alternative to this example one can use the Fit class for simple linear regression. What I additionally ...
0
votes
2answers
39 views

R Linear Regression Data in Single Column

I have the following data as an example: InputName InputValue Output =================================== Oxide 35 0.4 Oxide 35.2 0.42 Oxide 34.6 0.38 Oxide ...
2
votes
1answer
63 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. ...
1
vote
1answer
55 views

How to speed up up Stochastic Gradient Descent?

I'm trying to fit a regression model with an L1 penalty, but I'm having trouble finding an implementation in python that fits in a reasonable amount of time. The data I've got is on the order of 100k ...
0
votes
1answer
17 views

SPSS Form questions weight

I have an issue with SPSS. I have a survey with about 20 questions, and about 40 people who answered it. I want to explain my 2nd question of the survey with the result of others. In fact, i want to ...
2
votes
1answer
51 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
39 views

How to calculate the 'Coefficient of determination' for a linear model in R?

I have the following set of x and y values: x = c(1:150) y = x^-.5 * 155 + (runif(length(x), min=-3, max=3)) And run a linear regression on the data: plot(x, y, log="xy", cex=.5) model = ...
0
votes
2answers
44 views

Weighted Least Squares in R

My dataset is quite big so I'm just using 10 lines of data as an example (I've worked out the answer in excel but can't replicate it in R-as i need help with the code): ...
0
votes
1answer
41 views

Sum of residuals using lm is non-zero

I have defined two variables x and y. I want to regress y on x, but the sum of residuals using the lm is non-zero Here are the variables: x<-c(1,10,6,4,3,5,8,9,0,3,1,1,12,6,3,11,15,5,10,4) ...
0
votes
0answers
33 views

Can “glmfit” be used for logistic regression as a classification type

"glmfit" is a command provided by matlab. Can "glmfit" be used for logistic regression as a classification problem? I am getting this doubt because it is mentioned in this link ...
0
votes
0answers
24 views

How to implement linear classification for given image

I have a image that stored at here. I want to use linear classification for the given image.That mean I must find the w and b of linear function y=wx+b. But I don't know which is y value. Could you ...
0
votes
0answers
15 views

Minitab - Linear Regression Line only when Line >= 0

I'm new to MiniTab, but I've created a Scatterplot graph with a linear line of regression however I want the regression line to only exist when it is >= 0 in accordance with the y-values. The y-values ...
2
votes
1answer
63 views

Is there a function for solving xA=b in opencv?

I know the function solve can solve Ax=b. But I want a function to solve xA=b for x? Is there some function available? By the way It should work like mrdivide of Matlab: x = B/A solves the system of ...
0
votes
3answers
79 views

R: difference between [[ ]] and $ while building linear model

I was building a model using lm() and put this in a self-defined function to compute the RSS of the model. but I noticed that it's different between $ and [[ ]] to assign response variables: model1: ...
0
votes
0answers
41 views

Liblinear bias parameter interpretation

Could you tell me whether the bias is the same as the intercept/constant (beta0) if I were to write it out? Or is this something fundamentally different and if so, could you explain the difference ...
-1
votes
1answer
17 views

finding variable relation in R

I have a data-set which has columns as x1 x2 x3 x4 x5 y all of them has integer / float value and Y values ranges from 98,000 to 1,10,000 If I want to find the relationship between x1 and ...
1
vote
1answer
33 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 ...
1
vote
0answers
66 views

Performance of adaptive signal processing algorithm for noisy input

I am taking a course on signal processing and have been looking at various algorithms performance in presence of additive noise of different SNR. I was implementing Least Mean Square (LMS) algorithm ...
0
votes
0answers
27 views

Interpreting the R Polynomial Regression output

I have the following linear regression output with two quadratic terms and I am unsure how you make the general equation from this for predicting values for Y outside of R software. Any suggestions ...
0
votes
2answers
44 views

non linear power regression in R

I have a similar problem, I'd like to calculate the non-linear regression in R, but I get an error. This is my code: f <- function(x1,x2,x3,a,b1,b2,b3) {a * (x1^b1) * (x2^b2) * (x3^b3) } # ...
0
votes
0answers
17 views

How calculate Multiple Linear Regression

I must write an application in C that calculates the Multiple Linear Regression but I have a doubt. Suppose to have X The matrix is referred to as the design matrix. It contains information about ...