for issues related to linear regression modelling approach

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6
votes
0answers
199 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<- data....
4
votes
0answers
88 views

How to use `lmplot` to plot linear regression without intercept?

The lmplot in seaborn fit regression models with intercept. However, sometimes I want to fit regression models without intercept, i.e. regression through the origin. For example: In [1]: import ...
4
votes
0answers
86 views

R: Can´t find mistake on Linear Regression

I have to reproduce the code used by http://scholar.harvard.edu/files/mankiw/files/permanent_income.pdf. I do understand the concept of linear regressions and instrumental variables, I just can´t find ...
3
votes
0answers
86 views

prediction plots for statsmodels OLS fit, taking out categorical effects

I have some data for about 500 galaxies in a pandas DataFrame (a few hundred measurements per galaxy), and I'm trying to perform OLS regression on a few variables, one of which is categorical (each ...
3
votes
0answers
92 views

Linear Regression fill_between with matplotlib

I'm currently performing a linear regression on my data with the following code (from the stats models.api): import statsmodels.api from statsmodels.stats.outliers_influence import summary_table X = ...
3
votes
0answers
645 views

How to get R-squared for robust regression (RLM) in Statsmodels?

When it comes to measuring goodness of fit - R-Squared seems to be a commonly understood (and accepted) measure for "simple" linear models. But in case of statsmodels (as well as other statistical ...
3
votes
0answers
50 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 ...
3
votes
0answers
299 views

Java Apache Commons Math, linear least squares (fitting) with constraints

I'm trying to use Apache Commons Math library in Java (latest version) to solve a linear least squares problem, where there is a constraint on the solution. Specifically, I want the solution to ...
2
votes
0answers
86 views

Wrong intercept in Spark linear regression

I am starting with Spark Linear Regression. I am trying to fit a line to a linear dataset. It seems that the intercept is not correctly adjusting, or probably I am missing something.. With intercept=...
2
votes
0answers
59 views

Difference between numpy.linalg.lstsq and sklearn.linear_model.LinearRegression

As I understand, numpy.linalg.lstsq and sklearn.linear_model.LinearRegression both look for solutions x of the linear system Ax = y, that minimise the resdidual sum ||Ax - y||. But they don't give ...
2
votes
0answers
29 views

How do I create Interaction Terms in a Linear Regression Model in R that Uses a transformed response variable?

I've created a linear regression model in R that contains the following interaction terms. lm.data <- lm(sharer_prob ~ sympathy + trust + fear + greed, na.action=NULL, data=data) Greed, Sympathy,...
2
votes
0answers
120 views

Bayesian error-in-variables (total least squares) model in R using MCMCglmm

I am fitting some Bayesian linear mixed models using the MCMCglmm package in R. My data includes predictors that are measured with error. I'd therefore like to build a model that takes this into ...
2
votes
0answers
59 views

SGD does not converge if #samples < #features

I'm trying to implement a stochastic gradient descent and it works, as long as the number of sampes are greater than the number of features, otherwise, the loss diverges as seen in the figures, in ...
2
votes
0answers
51 views

Lasso Regression in Sklearn Returning Inaccurate Coefficients

I'm trying to use sklearn and Lasso regression to do some analysis, but I'm getting some strange results. I've tried to narrow the problem, but it appears that the issue is that I just don't ...
2
votes
0answers
72 views

piecewise linear regression python: arbitrary amount of knots

I have an experimental data, which is piecewise continuous, and each part should fit linearly. However, I would like to fit it without knowing where exactly are the knots (so the points where the ...
2
votes
0answers
147 views

How do I determine the weight to assign to each bucket?

Someone will answer a series of questions and will mark each important (I), very important (V), or extremely important (E). I'll then match their answers with answers given by everyone else, compute ...
2
votes
0answers
298 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 ...
2
votes
0answers
203 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
votes
0answers
236 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
0answers
37 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
0answers
117 views

Limit to the number of explanatory variables that R's BMA package can handle?

Using R's BMA (Bayesian Model Averaging) package, I want to run the following code: result = bic.glm(x,y,prior.param = c(1,1,1,1,0.5,1,0.5,0.5,0.5,1,1,1,1,1,0.5,1, 1,1,1,1,1,1,1,1,1,1,1,1,0.5,1), glm....
2
votes
0answers
517 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 ...
1
vote
0answers
12 views

Can some coefficients be held constant during regression training in PySpark?

Is it possible to specify that certain coefficients should be held constant (at a pre-determined value) during the training of a regression model in PySpark? For example, if I have the simple, single-...
1
vote
0answers
33 views

Running diagnostics on a multivariate multiple regression in r

I have a data set that gives the rates of incidence of some phenomena in all the zip codes of a state, and some demographic data. The rates are given for each year in the data set (year 1 - year 6). A ...
1
vote
0answers
27 views

Change SKlearn Linear Regression classifier to return more than one class label (nbest prediction)

I'm working on a classification problem with Sklearn Linear Regression classifier in python. I'm looking for 5 predictions for each test data, but the default function of this classifier returns only ...
1
vote
0answers
34 views

Forecasting panel data and time series

I have a panel data set of lets say 1000 observations, so i=1,2,...,1000 . The data set runs in daily basis for a month, so t=1,2,...,31. I want to estimate individual specific in R: y_i10=αi+...
1
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0answers
21 views

Efficient cholesky decomposition of ABA^T given cholesky(B)

Given n*n matrices A, B, and B^1/2 (i.e. cholesky(B) ), where B is positive definite, what are efficient approaches to obtain cholesky(ABA^T) - is it possible to avoid another full Cholesky ...
1
vote
0answers
22 views

OLS or Ridge in Multicollinearity data

I am new to stats and linear regression. I just want to understand the exact scenario and usage between Ridge and OLS. Here is the data sample i have been using. In this both Weight and BSA are ...
1
vote
0answers
101 views

How can I determine three best linear fits to a data with Python?

I have data of the form shown in figure. The natural logarithm of the data when will always have three distinct linear ranges but the ranges will not always be the same, it varies with data, but there ...
1
vote
0answers
26 views

R - paste() invalidates UDF input object

The below function used to work before I added the compatibility for factorMain by changing static response variable in lm() description to the following: <<..paste("factorMain", "~ ."),..>>. ...
1
vote
0answers
34 views

Relationship between sklearn .fit() and .score()

While working with a linear regression model I split the data into a training set and test set. I then calculated R^2, RMSE, and MAE using the following: lm.fit(X_train, y_train) R2 = lm.score(X,y) ...
1
vote
0answers
29 views

R: test quadratic regression with interaction

I have data from an experiment with two conditions (dichotomous IV: 'condition'). I also want to make use of another IV which is metric ('hh'). My DV is also metric ('attention.hh'). I've already run ...
1
vote
0answers
34 views

Robust statistics linear regression in seaborn pairplot

Trying to implement robust statistics instead of ordinary least squares (OLS) fitting so that outliers aren't such a problem to my fits. I was hoping to implement this in the pairplot function of ...
1
vote
0answers
32 views

WEKA linear regression error rate too high

I am trying to perform linear regression on a set of data i.e. books, and predict the ratings using all the attributes. Below is how i formatted my data on Excel then conveted the file to csv to ...
1
vote
0answers
36 views

difference between feval and predict in matlab

I am trying to learn a linear regression model in Matlab. So my variables are : train_fv, train_fv_labels, test_fv and test_fv_labels. The sizes of the variables are as follows : 333x9, 333x1, 167x9 ...
1
vote
0answers
132 views

Scoring regression model using PMML with Augustus in Python

I have a PMML file (below) generated from an R linear model from my colleague that is to be used to predict the cost of an item based on 5 features. I am trying to consume this model using Augustus in ...
1
vote
0answers
54 views

R: testing linear combination of coefficients from multiple regressions with plm

I would like to calculate confidence intervals for a sum of coefficients from different regressions With n=2: plm(y ~ x ...) plm(y ~ z ...) I'd need the confidence interval for the point estimate ...
1
vote
0answers
14 views

How to omit a model formula from the output of mtable

Does anyone know how to exclude from the output of mtable (from the package memisc) the part relative to the model call? I am building a table to compare 4 models, all of them with over 10 regressors (...
1
vote
0answers
23 views

How to compute weights using design matrix for 2D training data?

I want to implement linear regression on a data set with 2 features (2D) with 5D space (basis or mapping function dimensions). If I use the simplest form of basis function which is phi(x)=x, what ...
1
vote
0answers
48 views

calculate multivariate linear regression

I have these 2 sets, Set A, and Set B (https://paste.debian.net/343292/) that contains data of several previous executions. The Set B contains the total execution times, and Set A contains several ...
1
vote
0answers
41 views

Package for C++ multivaiable linear regression

I am currently using using mlpack::regression to do multivaiable linear regression. All is good, the problem is that it does not handle invalid data gracefully. If there is no unique solution, the ...
1
vote
0answers
56 views

Machine learning algorithm for predicting a quantitative value from many binary predictors

I'm working on a project where I have many, many qualitative variables(700+) with binary values, and only a few are "true" or "1" for any given entry. There is also a single quantitative predictor. ...
1
vote
0answers
39 views

Simple Linear Regression with Repeated Measures using PyMC3

I'm trying to reproduce the example from John Kruschke's book "Doing Bayesian Data Analysis" (2nd edition). The example is from chapter 16 on simple linear regression with repeated measures. I think I'...
1
vote
0answers
196 views

Treating quantity as constant in TensorFlow

Suppose I want to compute the least squares coefficients in TensorFlow using the closed form solution. Normally, I would do this like so, beta_hat = tf.matmul( tf.matmul(tf.matrix_inverse(...
1
vote
0answers
61 views

Do we need to scale output variables when doing gradient descent with multiple variables?

I am trying to implement gradient descent algorithm in Python. In lecture of Angrew Ng he said that we have to do feature scaling when implementing Gradient descent with multiple variables. I have ...
1
vote
0answers
120 views

Java - Streaming Linear Regression

I am working on a project in Java that involves fitting a simple linear regression line through a rolling / sliding window of n data points. For each new point added the linear regression slope and ...
1
vote
0answers
126 views

Linear regression function in R with conditions for the coefficients

I've searched and searched without finding an answer, although I think it's not that hard what I want R to do... I'm sorry for spelling mistakes, I'm not a native speaker ;) I have a few (x,y)-data ...
1
vote
0answers
35 views

How to get Spearman R2 value using multiple linear regression

The R2 obtained from a linear regression is the Pearson correlation coefficient. However, I am wondering if I could get Spearman rank coefficient instead of Pearson in a linear regression. I would be ...
1
vote
0answers
49 views

tuple index error while doing regression fit

I'm writing a code to do linear single variate regression analysis of data using numpy. I know that fit() function in Python uses np.array() but the program is throwing me tuple index error and I'm at ...
1
vote
0answers
286 views

Summary statistics in glmnet

I have been working on a data set and using glmnet for linear LASSO/Ridge regressions. For the sake of simplicity, let's assume that the model I am using is the following: cv.glmnet(train.features, ...