for issues related to linear regression modelling approach

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0answers
14 views

Difference between linear regression in Python (and R) and Stata

I'm porting a Stata model to Python, and seeing different results for Python and Stata for linear regression using the same input data (available @ ...
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2answers
29 views

How to calculate the prediction power of each independent variable on a new data frame

I would like to calculate the prediction power of each independent variable.I have a training data frame named df and the test data frame named df1. I wrote a code that should append the prediction ...
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18 views

R: what's really se.fit from the predict.lm method?

I'm trying to understand what the se.fit returned by predict.lm are (the help is not overly useful here). Minimal example: x=seq(1,10,.01) # simulated data correspond to a linear model plus zero mean ...
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1answer
25 views

Linear regression in MATLAB and adding new features

I'm using the regress function in MATLAB for multiple linear regression. Below is the sample code given by the regress documentation: load carsmall x1 = Weight; x2 = Horsepower; % Contains NaN ...
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1answer
16 views

R: multivariate orthogonal regression without having to write the variable names explicitly

I have a dataframe train (21 predictors, 1 response, 1012 observations), and I suspect that the response is a nonlinear function of the predictors. Thus, I would like to perform a multivariate ...
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1answer
24 views

How can I filter out rows from linear regression based on another linear regression

I would like to conduct a linear regression that will have three steps: 1) Running the regression on all data points 2) Taking out the 10 outiers as found by using the absolute distanse value of ...
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0answers
28 views

Weighted linear regression with sci-kit learn

In R, specifying the weights for linear regression is easy: fit <- lm(y ~ x, weights=w) This can even be done with LASSO: lasso.fit <- cv.glmnet(x, y, weights=w) Is it possible to do ...
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0answers
17 views

How can I compute studentized residual to identity outliers on python, pandas, scikit-learn?

I heard that we can identify outliers calculating studentized residual. I use python language and pandas/ scikit-learn package as a data analysis tool. But, I cannot find the way how I compute ...
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0answers
17 views

How to add more row numbers to linear regression charts

I wonder how can I add more row numbers to points that are ploted on the linear regression residuals charts.Is there a way to add points number to the top 5% precents for example? or can I use a ...
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0answers
30 views

R Linear Model Maximum number of Terms Error

I am attempting to create a linear model to perform multiple regression in R. I will have 35-40 predictor terms. The model is created as follows: lm(Final_Gain ~ Question_Given + ...
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0answers
14 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 ...
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2answers
43 views

Linear Regression :: Normalization (Vs) Standardization

I am using Linear regression to predict data. But, I am getting totally contrasting results when I Normalize (Vs) Standardize variables. Normalization = x -xmin/ xmax – xmin   Zero ...
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0answers
23 views

limiting regression lines to data extent in a multi plot using visreg R

I am having issues limiting the regression lines in my "visreg" plots to the range of the data for each plot. They currently plot to the extent of the overall data frame and when I change the ...
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0answers
44 views

Highlighting points on a scatter plot that are in top 5% deviating furthest from the fit (ggplot)

I want to highlight points on a xy-scatter plot (plotted using ggplot) that are above certain threshold of the fit line (plotted using geom_smooth and lm). A good example of the threshold can be top ...
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1answer
52 views

{Methcomp} – Deming / orthogonal regression – goodness of fit + confidence intervals

A question following this post. I have the following data: x1, disease symptom y1, another disease symptom I fitted the x1/y1 data with a Deming regression with vr (or sdr) option set to 1. In ...
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2answers
60 views

Regression (logistic) in R: Finding x value (predictor) for a particular y value (outcome)

I've fitted a logistic regression model that predicts the a binary outcome vs from mpg (mtcars dataset). The plot is shown below. How can I determine the mpg value for any particular vs value? For ...
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1answer
56 views

How to change the names of confidence levels per variable in linear regression

I got the confidence levels per variable in linear regression.I wanted to use the results for sorting variables so I kept the result set as a data frame. However when I tried to do an str() function ...
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1answer
50 views

Treating data as categorical in linear regression

I have data in a csv file that looks somewhat like this: column1 column2 b 2 c 4 z 1 g 3 ... (This is not the real data) Column1 is categorical ...
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0answers
12 views

Linear regression with PYMC: Chi2 test

I am quite new in bayesian statistics and pymc and I wonder, if anyone could point me in the right direction since. I am trying to obtained a the best parameters for a model. The scheme I use in the ...
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2answers
92 views

Derivative of a slope in a linear function in R

When deriving the slope of a linear function (y = a + bx) it is stating the rate of change between x and y. However, if I wanted to know the speed of the rate of change (essentially the second ...
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0answers
12 views

correlation and linear regression

I have a dataset with 100 attributes {X} and 1 class Y, and intend to fit X to Y -- that is just linear regression. However, I found the higher weighting of X doesn't mean which has higher correlation ...
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1answer
26 views

importing converted data using pandas

I have a csv file that looks like this: patient_id age_in_years CENSUS_REGION URBAN_RURAL_STATUS YEAR MONTH DAY_NUMBER_IN_MONTH race 11511 7 Northeast Urban 2011 6 20 Other ...
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1answer
45 views

Why is linear regression called 'linear'?

Just a silly doubt, why is it called 'linear'. Is it because of the degree of polynomial function used in regression or because we have 1 output to predict, or some other reason. I am a beginner in ...
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1answer
56 views

ggplot2: Plotting regression lines with different intercepts but with same slope

I want to plot regression lines with different intercepts but with the same slope. With the following ggplot2 code, I can plot regression lines with different intercepts and different slopes. But ...
2
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1answer
30 views

Fitted values from the ivreg {AER} object do not match manual 2SLS results

I'm trying to find out why fitted values from the ivreg estimation {AER} differ from manually performed 2-stage least squares (and from the appropriate reduced form equation)... the help for ivreg and ...
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2answers
160 views

linear regression using lm() - surprised by the result

I used a linear regression on data I have, using the lm function. Everything works (no error message), but I'm somehow surprised by the result: I am under the impression R "misses" a group of points, ...
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1answer
18 views

manova or regression or ?; how to in excel

I need to conduct analysis on one factor - which is number of days per project. I have around 30000 of projects with the number of days for each. The projects are grouped in: categories(there are 10 ...
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1answer
38 views

Appending regression slope to new vector

I have a large dataset of site locations and associated measurements/dates with variable length records. I would like to do a linear regression at each site and append the slope of the regression line ...
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0answers
23 views

Model selection for linear regression with categorical variables [migrated]

I regressed the dependent variable Rating (numeric) on Judge which is categorical. The output of the first model is given at the end of the question. Only Judge John Foy and Linda Murphy came out to ...
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0answers
44 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 = ...
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1answer
33 views

What is the easiest to implement linear regression algorithm?

I want to implement single variable regression using ordinary least squares. I have no access to linear algebra or calculus libraries, so any matrix operations or differentiation methods needs to be ...
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0answers
11 views

Need BIG DATA SETS FOR Multiple Linear Regression computing

I need BIG DATA SETS FOR Multiple Linear Regression computing for experimentation thesis please ( up to 3 million example)
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3answers
61 views

Aggregate linear regression

Sorry I am quite new to R, but I have a dataframe with gamelogs for multiple players. I am trying to get the slope coefficient for each player's points over all of their games. I have seen that ...
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0answers
14 views

weka: linear regression works differently in “classify” and “select attributes”?

I am running a dataset with 60 attributes. I am comparing "classify" and "select attribute", and both with Linear regression. However, the result looks different. In classify: ...
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2answers
179 views

Parallelising gradient calculation in Julia

I was persuaded some time ago to drop my comfortable matlab programming and start programming in Julia. I have been working for a long with neural networks and I thought that, now with Julia, I could ...
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1answer
50 views

Using lm() with just one variable in R

I've got some baseball stats, RBIs by season, let's say: player s1 s2 s3 Brian_Giles 66 68 70 Joe_Thomas 71 72 71 Robin_Yount 71 69 68 Jim_Jones 66 66 65 And I want to do a simple ...
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0answers
41 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 ...
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0answers
4 views

Generalised method of moments explained

Would someone be able to explain generalised method of moments using a toy example? All the examples I see in the internet are very abstract and theoretical. Thx
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0answers
7 views

Taking differences, indexes or levels in regression analysis?

I am new to regression analysis and I am trying to make a decision on which path to follow. I have cross sectional data, and I want to estimate the impact of advertising, promotions, price, etc on ...
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1answer
31 views

doParallel in R - Improvement in speed but CPU is not always utilised to 90%-100%

I am trying to run many linear regressions and diagnostics over them and to speed things up I am using the doParallel package in the R programming language. I have come across though an interesting ...
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0answers
41 views

R: Regression term is significant but estimate is 0? [migrated]

I just ran a linear regression in R, where the following is my result: Call: lm(formula = Posttest ~ TotalHints + Pretest, data = all) Residuals: Min 1Q Median 3Q Max ...
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0answers
12 views

Linear regression estimates the same weights

I use linear regression in order to find the relationship between two variables and one of the weights does not change values, even if the variables' values are different. Specifically, I have two ...
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0answers
25 views

stepAIC forward function in R has a long run time

I am using the stepAIC function in R to run a stepwise regression on a dataset with 28 predictor variables. The backwards method is working perfectly, however the forward method has been running for ...
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2answers
45 views

Extract Regression P Value in R

I am performing multiple regressions on different columns in a query file. I've been tasked with extracting certain results from the regression function lm in R. So far I have, > reg <- ...
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2answers
53 views

Why use multiple features in Linear Regression?

Linear regression defines Y is a function of X. Using this function can predict Y using values of X before they occur (ignoring outliers). Uni-variate linear regression depends on just one variable. ...
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0answers
42 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 ...
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2answers
63 views

How to calculate the smallest sum of squared differences among 5 variables

I would like to calculate in Gnu R the smallest sum of squared differences between w,x,y,z and a and choose which of this four variables fits a best, but I have no clue about how to do it in the most ...
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1answer
40 views

incorrect R-squared calculated using linear regression in R [duplicate]

I am doing a really simple linear regression in R but the calculated R^2 just doesn't seem right. The regression I have done is the following: data(cats) fit = lm(Hwts ~ Bwts+0, data = cats) ...
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2answers
30 views

What does learning algorithm output in linear regression?

Reading course notes of Andrew NG's machine learning course it states for linear regression : Take a training set and pass it into a learning algorithm. The algorithm outputs a function h (the ...
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1answer
21 views

What is the zero condition in linear regression?

hypothesis is given as h theta(x) = theta0 + theta1x , in other words y is a linear function of x . theta0 is zero condition. What is the meaning of term zero condition ?