for issues related to linear regression modelling approach

learn more… | top users | synonyms

0
votes
0answers
48 views

Spark mllib linear regression giving really bad results

I've been getting really poor results when trying to do a linear regression using Spark mllib's LinearRegressionWithSGD using Python. I looked into similiar questions, like the following : Spark - ...
0
votes
0answers
8 views

Deciding on the number of folds in cross_validation.KFold for a Lasso model

I have price time-series with 190 observations. I want to use scikit-learn's lassoCV model to predict the price based on some other prices. I use the lasso linear model to avoid overfitting. I don'...
0
votes
0answers
63 views

Linear regression using gradient descent optimization

import numpy as np from sklearn.datasets import load_boston def gradient_descent(alpha,x,y,num_iteration): """implements gradient descent optimization for cost""" m,n=x.shape theta=np....
0
votes
0answers
38 views

How to visualize confidence interval for linear regression

The model is simple, I have two arrays, X and Y, and we want to run linear regression Y=aX+b. For example, if df denotes our data frame: X = df.x Y = df.y result = ols(x=X, y=Y) (a,b) = result.beta ...
0
votes
0answers
53 views

Weighted effect coding in R

I have a data set with a categorical variable and a continuous dependent variable, and I want to know the effect of deviation of mean of each category from the overall mean. str(dat) 'data.frame': ...
0
votes
0answers
31 views

L2 regularized MLR using caret, and how to make sure I am using best model while predicting

I am trying to do L2-regularized MLR on a data set using caret. Following is what I have done so far to achieve this: r_squared <- function ( pred, actual){ mean_actual = mean (actual) ...
0
votes
0answers
32 views

ar() function vs lag variables in lm()

I am trying to understand how the ar() function of the "stats" package differs from simply using lag variables in a regular linear regression through the Base lm() function. I have ran: ar(lh) ...
0
votes
0answers
22 views

Error message: Na/NaN/Inf

I am trying to add a best fit line to a scatterplot where the y variable has been log transformed. My command is: abline(lm(log(Epiphyte.Cover)~Seagrass.Cover)) And the error message that keeps ...
0
votes
0answers
9 views

SPSS: Interpretation of coefficients - OLS

I could need some help interpreting my findings. I've been conducting a linear OLS regression with the following output: I'm trying to discover what the influences are from an acquisition on the ...
0
votes
0answers
32 views

Linear Regression with character matrix, containing “0”, “1”, “2” and “-” in R. Are the numbers converted to numericals?

first of all I have to say I am very new to R. I just have been in contact with S plus throughout my degree but I only have been using R studio for a week now. I am currently working on a small ...
0
votes
0answers
8 views

unexpected error linear model---unexpected symbol in “model = lm(DV”

I am getting the error when I am trying to build linear model with 5 independent variables . unexpected symbol in "model = lm(DV" model = lm(DV~IV1+IV2+IV3+IV4+IV5) Sample data: Date IV1 IV2 ...
0
votes
0answers
53 views

Analysis of regression algorithms on matlab environment

Hi I want to do a comprehensive analysis of regression techniques and so will go on editing this question. I am trying to solve a regression problem using techniques available in Matlab. Ideally I ...
0
votes
0answers
17 views

Is it possible to use k-fold cross validation for regression models?

Some texts I read said it's possible to optimise the lambda parameters using this method, but using sklearn, it seems that continuous models are not supported. This is reasonable, since the aim of the ...
0
votes
0answers
12 views

Using -1 as dummy variable?

Can we take 1,0 & -1 as dummy variable in the time series regression modelling? Also can we put all these 3 numbers(1,0 &-1) under 1 variable?
0
votes
0answers
28 views

Lasso regression makes a mistake by a constant

I'm trying to apply a lasso regression for my data. I'm using lars package for R. Using coef function, I get coefficients of lasso model and using them, I plot this model. But this model is always ...
0
votes
0answers
58 views

Incorporating lag variables into an OLS regression model python

So I have am using the statsmodels OLS regression using a specified formula. I know that a few of the explanatory variables have some time lag effects that can help explain more the of variance in the ...
0
votes
0answers
15 views

Fitline computation in OpenCV in case of CV_DIST_FAIR

The documentation says that the used metric for OpenCV's fitLine() function in case of dist_type CV_DIST_FAIR is: ρ(r)=C2•[r/C - log(1 + r/C)], C=1.3998 However, looking at the source I found this ...
0
votes
0answers
14 views

does multiple imputation always reduce the standard error of regressed coefficients?

I am performing multiple imputation for missing values and then conduct linear regression using the complete data. The regression coefficient β I got after imputation has larger standard deviation ...
0
votes
0answers
23 views

Stepwiselm with and without fitting through origin in MATLAB

I'm using MATLABs inbuilt function stepwiselm to conduct stepwise regression on several explanatory variables. With the conditions I'm specifying in MATLAB, the model is always starting with a full ...
0
votes
0answers
25 views

ODR fit in Python with asymmetric errors on x and y

I have a plot of x against y in Python. Is it possible to do an ODR fit (to a simple straight line), that takes into account the errors on x and y (like that available with Scipy) but for asymmetric ...
0
votes
0answers
20 views

How to place eqn of line on two regression plots side by side

I would like to make two linear regression plots side by side and have their eqns display near the top. My code shows both eqns on same plot :(. Also, how can I format the exponential of r^2 properly ...
0
votes
0answers
10 views

AIC values for Buckley james method in R

estimated both Cox regression model and Buckley&James regression model. In order to determine which model is better for my dataset, I used Akaike Information Criteria (AIC). I estimated AIC by ...
0
votes
0answers
38 views

Confidence interval for independent variable of a linear regression model in R

Let's assume a dataset the contains single time steps (in seconds) and a distance (in m) a runner managed each time step: time <- c(300,600,900) # time in sec dist <- c(1050,1950,3100) # dist ...
0
votes
0answers
18 views

Linear regression training poorly

I'm working on a small linear regression that's supposed to take n terms and find a general second-order polynomial that they fit to. The input data is cos and the value I'm trying to fit it to is ...
0
votes
0answers
16 views

On what kind of data (simple example) will KNN outperform linear regression

Linear regression outperforms KNN in simple dataset like a line or a polynomial (say quadratic) I am looking for a simple example where KNN would outperform linear regression. I tried sin and cosine ...
0
votes
0answers
17 views

Bayesian regression & heavy-tailed data

I am looking to use a Bayesian regression on a set of data where the dependent variable(s) follow a normal distribution, but the dependent variable is a heavy-tailed distribution (e.g., power-law). ...
0
votes
0answers
85 views

Event Study linear regression error

Event Study Error : In the linear regression the independent variable is not recognised. I don't know where the problem resides, thus making R^2 0.00 . I had as a base for my event study, the ...
0
votes
0answers
24 views

Fixing Autocorrelation Issue with Time Series Data for Multiple Linear Regression in R

I am trying to fit a time-series data in a multiple linear regression model. I am stuck with the autocorrelation issue that seems to be in every time-series regression problem. There seems to be lot ...
0
votes
0answers
11 views

Confidence intervals on the derivative of a polynomial surface

My problem is the following: I have fit a surface to some xyz coordinate data to obtain a polynomial surface. That's a polynomial in the variables x and y giving a surface of z-values. I know how to ...
0
votes
0answers
36 views

Trouble predicting y using Multiple Linear Regression in R

I'm trying to predict Wide Receiver yards using the lm function in R. I have several (x) variables and am attempting to predict 'Yrds2015', or y. My data frame contains 200 observations and several x ...
0
votes
0answers
84 views

Legend for regression lines in ggplot2

I am plotting multiple regression lines based on different data sets in one graph. I would like a legend to show what each regression line is, but I cannot get the legend to show up at all. Is there ...
0
votes
0answers
36 views

Unable to predict new dataset after building classifier and training it with train dataset

I am making predictions on testDataset using SMORegression classifier from weka.jar.I am unable to make predictions on test data set after training classifier with training data set. Actually i've ...
0
votes
0answers
77 views

How to fix .predict() function in statsmodels?

I'm trying to predict temperature at 12 UTC tomorrow in 1 location. To forecast, I use a basic linear regression model with the statmodels module. My code is hereafter: x = ds_main X = sm....
0
votes
0answers
43 views

fit a line to 3D data with weighted regression

I am trying to calculate a 3D linear regression LINE using the Singular Value Decomposition method (SVD). This works fine. Now, I'd like to generalise the method for weighted regression. how to ...
0
votes
0answers
54 views

One hot encoding for Machine Learning in Python

My dataset contains variables of which categorical variables of wind direction (NW, North, West, etc) at 5 different geographical locations. My goal is to predict the temperature at 1 location thanks ...
0
votes
0answers
33 views

R: Tabulate Items Within a List

See below for a few calls demonstrating what I am working with. The result of the 3rd and 4th call, that single number, is the only statistic I care about in this larger list, inclusiveEffects. It is ...
0
votes
0answers
39 views

Predict() function in R. How to use it for prediciting a dependent variable

I have a question on how to use the function predict(). I have a dataset with n rows and 10 columns. The first column is the dependent variable and the others variables are independent. I have 50% of ...
0
votes
0answers
47 views

Spark: LinearRegressionWithSGD and Pandas OLS do not give same results

I'm trying to do a simple linear regression in Spark and Pandas. I want the two to come out the same to know that spark is in fact behaving as I think it should. Below is a description of my problem. ...
0
votes
0answers
35 views

Matlab: for loop in Linear Mixed Model

I am trying to use Linear Mixed Model in Matlab. I have response variable y (Nx1 matrix), design matrix for fixed effects X and design matrix for random effects Z. What I would like to do is to hold ...
0
votes
0answers
36 views

R - NLS and linear equation

I know NLS is used to fit nonlinear equations, but I don't understand why it won't work with a simple linear one. I mean, the theory should still hold, right? But, when I try to do something simple ...
0
votes
0answers
51 views

Calculate t-ratio and R square adjusted value using C#

I'm usign MathDotNet for Multiple regression. Is there way to get a t-ratio , or r square adjusted value ? Is there any alternative open source .net libraries which can calculate these values.
0
votes
0answers
30 views

Looking for a linear time implementation of Salvador's L-Method for determining the number of clusters

The original paper is here http://cs.fit.edu/~pkc/papers/ictai04salvador.pdf The L-method discovered by Stan Salvador and Philip Chan is for "Determining the number of clusters in hierarchical ...
0
votes
0answers
4 views

How to model a dramatic change in linear model based on Lowess curve

My model looks like this. Where the Lowess curve is showing a dramatic change in the linear model. How should I reflect this changing point? My data and model My thought was to create a regression ...
0
votes
0answers
41 views

Improving inference prediction in linear regression y axis offset with uncertainty in both axes

Using the example provided by [Abraham Flaxman] Fit a non-linear function to data/observations with pyMCMC/pyMC, I have produced this code to perform a linear regression: y = m * x + n which takes ...
0
votes
0answers
61 views

P value of intercept

I was working on linear regression example. I have generated output using Data Analysis tool pack of Excel. Now I want to know how to calculate P value of intercept in linear regression output using ...
0
votes
0answers
14 views

Clustering genes in time course analysis according slopes in quadratic regression model

I have a RNA time course experiment, 7 time points and I want to subset my results in 4 categories Those genes that are increasing expression lineally from time 0 to 7 Those genes that are ...
0
votes
0answers
63 views

How to get F-score, R square, and p-value from scikit learn's linear regression?

I would like to run a linear regression with specified weights (based on the actual number of observations within a state) in scikit learn python. But even with consulting with the documentation, I ...
0
votes
0answers
36 views

Determining regression equation from coefficients obtained by Lasso Logistic Regression in python?

I performed Lasso regression to first do categorical feature selection (parameter space had 900 features, they were reduced to 78 after Lasso), and then as a linear model to calculate certain response ...
0
votes
0answers
58 views

Loop linear regrssion model

I have a data like this where Amount is the dependent variable and len,age, quantity and pos are explanotry variables. I trying to Make a regression of Amount On age, quantity and pos Using stepwise. ...
0
votes
0answers
68 views

Error in statsmodels.api OLS predict attribute using complex formula

I am trying to use a OLS regression to predict missing (NAN) values of ustar using know data of wind speed (WS), variation of WS by month, and radiation (Rn) using known values of all the variables ...