for issues related to linear regression modelling approach

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0answers
10 views

Difference between statsmodel OLS vs scikit linear regression

I have a question about two different methods from different libraries which seems doing same job. I am trying to make linear regression model. Here is the code which I using statsmodel library with ...
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0answers
10 views

Interpreting Matlab Fitln

I have a series of 200 x/y data-points and am using matlab to generate a model. I am trying to determine of what order the polynomial function generated by fitln should be. I tried starting at 6, ...
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0answers
15 views

How to pass dynamic values into a simple class as parameters - Thought to use a concatenated string

There is a simple plot implementation in java which can make a series of plots. I am working on a project with a couple of other classmates and we want to take a source of pairs of numbers which must ...
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1answer
22 views

How can I calculate Residual Standard Error in R for Test Data set?

I have split the Boston dataset into training and test sets as below: library(MASS) smp_size <- floor(.7 * nrow(Boston)) set.seed(133) train_boston <- sample(seq_len(nrow(Boston)), size ...
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0answers
16 views

Fama-Macbeth regressions in MATLAB

I have a data set of 25 stock returns (ER1, ER2... ER25) for a period of 570 months and I want to run Fama-MacBeth regressions (to test CAPM) on it i.e. 570 second pass regressions. Here's an ...
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0answers
29 views

number of rows in use has changed: remove missing values?

I have been trying to do stepwise selection on my variables with R. This is my code: library(lattice)#to get the matrix plot, assuming this package is already installed library(ftsa) #to get the ...
1
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1answer
24 views

Dynamic formula creation in R?

Is it at all possible to use the lm() function with a matrix? Or maybe, the correct question is: "Is it possible to dynamically create formulas in R?" I am creating a function whose output is a ...
2
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2answers
20 views

linear regression with Quarter dummy

I am trying to fit a linear regression to the data below Power<-mutate(Power,Year=format(Date,"%Y"),Quarter=quarters(Date),Month=format(Date,"%m")) head(Power) Date YY XX Year ...
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0answers
3 views

Obtain regression slopes for multiple treatments at once

I have a data set with 6 additions/treatments and I would like to write code such that I get a separate slope, intercept and p value for Chl against Cell for each addition. When I use ...
0
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1answer
8 views

sklearn LinearRegression, why only one coefficient returned by the model?

I'm trying out scikit-learn LinearRegression model on a simple dataset (comes from Andrew NG coursera course, I doesn't really matter, look the plot for reference) this is my script import numpy as ...
0
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1answer
38 views

Creating a matrix of OLS results

I have a data set of excess returns for 576 years for 25 asset portfolios(it goes on till 201012 and er25) date er1 er2 er3 er4 er5 market-rf 196301 12.77 11.19 9.15 ...
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0answers
6 views

A regression data set with n<p where one variable is binary and the other continuous

I am working on regression problems using various benchmark data sets. Currently I need a data set where there are more features than observations and only one feature is binary. I searched google a ...
-3
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1answer
44 views

prediction using linear regression with sklearn

data2 = pd.DataFrame(data1['kwh']) data2 kwh date 2012-04-12 14:56:50 1.256400 2012-04-12 15:11:55 1.430750 2012-04-12 15:27:01 1.369910 2012-04-12 15:42:06 ...
0
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1answer
43 views

Simple prediction using linear regression with python

data2 = pd.DataFrame(data1['kwh']) data2 kwh date 2012-04-12 14:56:50 1.256400 2012-04-12 15:11:55 1.430750 2012-04-12 15:27:01 1.369910 2012-04-12 15:42:06 ...
0
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0answers
20 views

Weights with plm package

My data frame looks like something as follows: unique.groups<- letters[1:5] unique_timez<- 1:20 groups<- rep(unique.groups, each=20) my.times<-rep(unique_timez, 5) play.data<- ...
2
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0answers
27 views

why does backwards selection in regsubsets (R, leaps package) yield nonsensical results after rearranging variables in data frame?

I am attempting to do forwards and backwards selection using the Boston data from the MASS package with the regsubsets() function in the leaps package in R and to compare the models selected of each ...
0
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0answers
35 views

Getting error for regression using csv files in scikit

I read the data from features.csv file and stored in a array. i got the classlabels of those features and stored in a textfile. Fitting the data: y_rbf = svr_rbf.fit(train_input, train_lab) But ...
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0answers
26 views

Determining whether to use one line or two in linear regression [migrated]

Basically I'm attempting to recreate the results of an example from class in R. What I'm trying to do is decide whether it's best to use a single regression line for an entire data set or two lines ...
1
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2answers
26 views

MATLAB Weighted Multiple Regression

I have a set of data that includes 821 observations, each with 20 measurements. I would like to regress this set data against a set of single dependent variables using a multiple linear regression in ...
0
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2answers
42 views

R Equivalents of S plus functions

I'm trying to get predictions from a fitted linear regression model in R using the S plus functions predict and pointwise. I was just wondering if anyone knew the R equivalents of these. I know there ...
0
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0answers
36 views

Cost function for linear regression with multiple variables in Matlab

The multivariate linear regression cost function: Is the following code in Matlab correct? function J = computeCostMulti(X, y, theta) m = length(y); J = 0; ...
0
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1answer
22 views

What is the most efficient way to do a large number of regressions in MATLAB and store the result?

I would like to make several hundreds of simple OLS regression estimations in MATLAB. Because it is hardly feasible to create a model object for each estimation I would instead like to store the ...
0
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2answers
27 views

poly() and orthogonal polynomials

I searched about poly() in R and I think it should produce orthogonal polynomials so when we use it in regression model like lm(y~poly(x,2)) the predictors are uncorrelated. However: poly(1:3,2)= ...
0
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1answer
27 views

Sklearn linear regression X and Y input format

I have a few questions about the inputs for the sklearn linear_model.LinearRegression(module). ages_train = [[20, 10000], [22, 12000], [22, 14000], [25, 17000], [30, 29000]] net_worths_train = ...
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0answers
21 views

plotting adjusted data points in ggplot2

I am interested in plotting a 2-way interaction in ggplot where X is a continuous variable and M is a categorical moderator. However, I am also including covariates. I would like to plot two ...
2
votes
1answer
26 views

fit to time series using Gnuplot

I am a big fan of Gnuplot and now I would like to use the fit-function for time series. My data set is like: 1.000000 1.000000 0.999795 0.000000 0.000000 0.421927 0.654222 -25.127700 1.000000 ...
-1
votes
1answer
43 views

Looping through columns in R

I am trying to run a linear regression on each variable relative to x x y1 y2 y3 This is the code i am using gen <-read.table("CH0032_time_soma.out",sep = "\t",header=TRUE) ...
0
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1answer
82 views

Calculating the bandwidth by sending several packets through linear regression

I implemented a TCP client-server model to test my bandwidth with the server through sending number of packets with different sizes and see the RTT then calculate the bandwidth through linear ...
0
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0answers
14 views

repetetive error when trying to run normality assumption test on regression model in R studio

Okay I want to say straight of that I am a Learner so any answers I would really appreciate in Laymans Terms. Any way.. So I Have Built a Multiple Linear Regression model using, lm.Vic <- lm(Vic ...
2
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0answers
37 views

sklearn LinearRegression.Predict() issue

I am trying to predict call volume for a call center based on various other factors. I have a fairly clean dataset, fairly small as well, but enough. I am able to train and test historical data and ...
-1
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0answers
8 views

How to find more than two coefficient for single variable nonlinear equation?

I don't have good knowledge on mathematics, but now I faced one problem with maths. That is, I have a data set which contains only one independent and one dependent variable. Now I have a equation ...
1
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1answer
53 views

R - Faster way to run multiple linear models with different design matrices

I have a data matrix where every column corresponds to some measured substance concentrations and I need to regress every substance to every other substance, with some fixed correction covariates. As ...
1
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1answer
41 views

Generate random exponential value correctly c++

I want to generate random number belonging to an exponential distribution. I wrote this int size = atoi(argv[2]); double *values = (double*)malloc(sizeof(double)*size); double gamma = ...
0
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0answers
15 views

What is the difference between lm(log(y) ~ x) and glm(y ~ x, family = gaussian(link = “log”))? [migrated]

Is all in the title. I would like to know if there is any difference in terms of coefficients, residuals, p-values, but also conceptually. Thanks!
-2
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0answers
16 views

Generating regression t-scores using GLS with serial correlation

I have a set of serially correlated data and consequently I am trying to use GLS rather than LM. To start, I ran the GLS function with only the required parameters (formula and data). As I examined ...
4
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1answer
170 views

R - k-fold cross-validation for linear regression with standard error of estimate

I would like to perform k-fold cross-validation in R for a linear regression model and test the one standard error rule: ...
1
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1answer
62 views

Numpy and R give non-zero intercept in linear regression when x = y

I was testing some code which, among other things, runs a linear regression of the form y = m * x + b on some data. To keep things simple, I set my x and y data equal to each other, expecting the ...
2
votes
1answer
20 views

Creating Specific linear regression equations from A larger equation using R

here is a sample of my data, which is found at this link: http://www.uwyo.edu/crawford/datasets/drugreactions.txt I made this equation for the data fit2 <- ...
1
vote
1answer
40 views

Workaround: ISO C90 forbids variable length array

I am reading from a file called reg.dat, and setting the first variable in each column as an index of variable Y, and the remaining variables in each column as a index of X. Then, I want to feed X and ...
1
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0answers
15 views

Using dgesv in C to determine linear regression with and without intercept

The following code is using dgesv library in C to calculate linear regression. It has X observations and Y predictions, with X and Y saved as double arrays. I am wondering 1) Is this code calculating ...
0
votes
1answer
57 views

Stochastic Gradient Descent Convergence Criteria

Currently my convergence criteria for SGD checks whether the MSE error ratio is within a specific boundary. def compute_mse(data, labels, weights): m = len(labels) hypothesis = ...
0
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1answer
14 views

Getting incorrect values when using dgsev in C

I am using the dgesv library in C to do linear regression (with intercept) and return the regression coefficients. I know that, given the values X and Y in the code below, I should get regression ...
0
votes
1answer
32 views

Linear regression with Stochastic Gradient Descent (SGD) update rule

I understand that in SGD we update the weights w.r.t. to a single training example such as: for i in range(m): weights = weights + (alpha * gradient) # for each i in m Do we then calculate the ...
1
vote
1answer
45 views

predict() in pandas statsmodels, adding independent variables

Data: https://courses.edx.org/c4x/MITx/15.071x_2/asset/climate_change.csv I'm building a multiple linear regression model with pandas: import pandas as pd import statsmodels.api as sm climate = ...
1
vote
1answer
23 views

Getting rank deficient warning when using regress function in MATLAB

I have a dataset comprising of 30 independent variables and I tried performing linear regression in MATLAB R2010b using the regress function. I get a warning stating that my matrix X is rank ...
-1
votes
1answer
32 views

add condition in my linear regression model in SAS

I am a beginner of SAS. I am currently doing a linear model but I stuck at fitting the model. Initially, I need to split the data into two parts first. Here is my code to cut the data into 2 parts, T ...
-1
votes
1answer
56 views

Find sum of daily variables in range of month dates in different data frame

We have external data with daily values (pulled in that format to DB) that need to be added up to approximate monthly values, that align with another external dataset showing approximate monthly ...
0
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0answers
28 views

How do I perform a three-segment, slope-constrained linear regression in R?

I’m trying to perform a piecewise linear regression in R with three segments. The slope of the center segment (i.e. the segment between the two break points) is supposed to be 0. I’ve written a script ...
0
votes
1answer
26 views

Python cov_struct attribute for MixedLM

I would like to specify the cov_struct attribute when calling the method MixedLM (statsmodels package) but it doesn't work. On the contrary, when specifying this parameter to the method GEE ...
0
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1answer
15 views

data cleaning on SPSS for linear regression

I've got a large amount of data and I want to use the independent variables A and B to predict the dependent variable C by using multiple linear regression. But now some of the A and B are lacking ...