Questions tagged [regression]

Regression analysis is a collection of statistical techniques for modeling and predicting one or multiple variables based on other data.

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Run an OLS regression with Pandas Data Frame

I have a pandas data frame and I would like to able to predict the values of column A from the values in columns B and C. Here is a toy example: import pandas as pd df = pd.DataFrame({"A": [10,20,30,...
100
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8answers
101k views

Find p-value (significance) in scikit-learn LinearRegression

How can I find the p-value (significance) of each coefficient? lm = sklearn.linear_model.LinearRegression() lm.fit(x,y)
92
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5answers
136k views

How to force R to use a specified factor level as reference in a regression?

How can I tell R to use a certain level as reference if I use binary explanatory variables in a regression? It's just using some level by default. lm(x ~ y + as.factor(b)) with b {0, 1, 2, 3, 4}. ...
83
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5answers
190k views

Adding a regression line on a ggplot

I'm trying hard to add a regression line on a ggplot. I first tried with abline but I didn't manage to make it work. Then I tried this... data = data.frame(x.plot=rep(seq(1,5),10),y.plot=rnorm(50)) ...
81
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10answers
54k views

Linear Regression and group by in R

I want to do a linear regression in R using the lm() function. My data is an annual time series with one field for year (22 years) and another for state (50 states). I want to fit a regression for ...
62
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5answers
35k views

Screening (multi)collinearity in a regression model

I hope that this one is not going to be "ask-and-answer" question... here goes: (multi)collinearity refers to extremely high correlations between predictors in the regression model. How to cure them......
58
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4answers
149k views

Extract regression coefficient values

I have a regression model for some time series data investigating drug utilisation. The purpose is to fit a spline to a time series and work out 95% CI etc. The model goes as follows: id <- ts(1:...
53
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8answers
46k views

Java-R integration?

I have a Java app which needs to perform partial least squares regression. It would appear there are no Java implementations of PLSR out there. Weka might have had something like it at some point, but ...
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3answers
169k views

Quadratic and cubic regression in Excel

I have the following information: Height Weight 170 65 167 55 189 85 175 70 166 55 174 55 169 69 170 58 184 84 161 ...
39
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4answers
130k views

What is the difference between Multiple R-squared and Adjusted R-squared in a single-variate least squares regression?

Could someone explain to the statistically naive what the difference between Multiple R-squared and Adjusted R-squared is? I am doing a single-variate regression analysis as follows: v.lm <- lm(...
37
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3answers
54k views

How to calculate the regularization parameter in linear regression

When we have a high degree linear polynomial that is used to fit a set of points in a linear regression setup, to prevent overfitting, we use regularization, and we include a lambda parameter in the ...
34
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5answers
63k views

setting values for ntree and mtry for random forest regression model

I'm using R package randomForest to do a regression on some biological data. My training data size is 38772 X 201. I just wondered---what would be a good value for the number of trees ntree and the ...
34
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3answers
44k views

Linear Regression with a known fixed intercept in R

I want to calculate a linear regression using the lm() function in R. Additionally I want to get the slope of a regression, where I explicitly give the intercept to lm(). I found an example on the ...
33
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2answers
81k views

fitting data with numpy

Let me start by telling that what I get may not be what I expect and perhaps you can help me here. I have the following data: >>> x array([ 3.08, 3.1 , 3.12, 3.14, 3.16, 3.18, 3.2 , 3....
33
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1answer
11k views

Distinguishing overfitting vs good prediction

These are questions on how to calculate & reduce overfitting in machine learning. I think many new to machine learning will have the same questions, so I tried to be clear with my examples and ...
32
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7answers
26k views

predict.lm() with an unknown factor level in test data

I am fitting a model to factor data and predicting. If the newdata in predict.lm() contains a single factor level that is unknown to the model, all of predict.lm() fails and returns an error. Is ...
31
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1answer
25k views

scikit-learn cross validation, negative values with mean squared error

When I use the following code with Data matrix X of size (952,144) and output vector y of size (952), mean_squared_error metric returns negative values, which is unexpected. Do you have any idea? ...
31
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2answers
25k views

tensorflow deep neural network for regression always predict same results in one batch

I use a tensorflow to implement a simple multi-layer perceptron for regression. The code is modified from standard mnist classifier, that I only changed the output cost to MSE (use tf.reduce_mean(tf....
28
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6answers
67k views

Stepwise regression using p-values to drop variables with nonsignificant p-values

I want to perform a stepwise linear Regression using p-values as a selection criterion, e.g.: at each step dropping variables that have the highest i.e. the most insignificant p-values, stopping when ...
28
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3answers
32k views

Linear regression analysis with string/categorical features (variables)?

Regression algorithms seem to be working on features represented as numbers. For example: This dataset doesn't contain categorical features/variables. It's quite clear how to do regression on this ...
27
votes
2answers
29k views

extracting standardized coefficients from lm in R

My apologies for the dumb question...but I can't seem to find a simple solution I want to extract the standardized coefficients from a fitted linear model (in R) there must be a simple way or ...
25
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2answers
35k views

Working with neuralnet in R for the first time: get “requires numeric/complex matrix/vector arguments”

I'm in the process of attempting to learn to work with neural networks in R. As a learning problem, I've been using the following problem over at Kaggle: Don't worry, this problem is specifically ...
25
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2answers
14k views

How is Elastic Net used?

This is a beginner question on regularization with regression. Most information about Elastic Net and Lasso Regression online replicates the information from Wikipedia or the original 2005 paper by ...
25
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2answers
14k views

Display regression equation in seaborn regplot [duplicate]

Does anyone know how to display the regression equation in seaborn using sns.regplot or sns.jointplot? regplot doesn't seem to have any parameter that you can be pass to display regression diagnostics,...
24
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4answers
14k views

Non-linear regression in C#

I'm looking for a way to produce a non-linear (preferably quadratic) curve, based on a 2D data set, for predictive purposes. Right now I'm using my own implementation of ordinary least squares (OLS) ...
23
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2answers
6k views

Fit a non-linear function to data/observations with pyMCMC/pyMC

I am trying to fit some data with a Gaussian (and more complex) function(s). I have created a small example below. My first question is, am I doing it right? My second question is, how do I add an ...
22
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5answers
59k views

R: standard error output from lm object

We got a lm object from and want to extract the standard error lm_aaa<- lm(aaa~x+y+z) I know the function summary, names and coefficients. However, summary seems to be the only way to manually ...
22
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5answers
15k views

Cost function for logistic regression

In least-squares models, the cost function is defined as the square of the difference between the predicted value and the actual value as a function of the input. When we do logistic regression, we ...
22
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4answers
33k views

Stepwise Regression in Python

How to perform stepwise regression in python? There are methods for OLS in SCIPY but I am not able to do stepwise. Any help in this regard would be a great help. Thanks. Edit: I am trying to build a ...
22
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1answer
5k views

Local linear regression in R — locfit() vs locpoly()

I am trying to understand the different behaviors of these two smoothing functions when given apparently equivalent inputs. My understanding was that locpoly just takes a fixed bandwidth argument, ...
20
votes
2answers
34k views

Scikit-learn cross validation scoring for regression

How can one use cross_val_score for regression? The default scoring seems to be accuracy, which is not very meaningful for regression. Supposedly I would like to use mean squared error, is it possible ...
20
votes
1answer
16k views

Multiple outputs in Keras

I have a problem which deals with predicting two outputs when given a vector of predictors. Assume that a predictor vector looks like x1, y1, att1, att2, ..., attn, which says x1, y1 are coordinates ...
20
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4answers
4k views

Partial Least Squares Library

There was already a question like this, but it was not answered, so I try to post it again. Does anyone know of an open-source implementation of a partial least squares algorithm in C++ (or C)? Or ...
20
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2answers
5k views

How to correctly use scikit-learn's Gaussian Process for a 2D-inputs, 1D-output regression?

Prior to posting I did a lot of searches and found this question which might be exactly my problem. However, I tried what is proposed in the answer but unfortunately this did not fix it, and I couldn'...
19
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2answers
19k views

Specifying formula in R with glm without explicit declaration of each covariate

I would like to force specific variables into glm regressions without fully specifying each one. My real data set has ~200 variables. I haven't been able to find samples of this in my online ...
19
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1answer
2k views

Newey-West standard errors with Mean Groups/Fama-MacBeth estimator

I'm trying to get Newey-West standard errors to work with the output of pmg() (Mean Groups/Fama-MacBeth estimator) from the plm package. Following the example from here: require(foreign) require(plm)...
18
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1answer
24k views

Multivariate (polynomial) best fit curve in python?

How do you calculate a best fit line in python, and then plot it on a scatterplot in matplotlib? I was I calculate the linear best-fit line using Ordinary Least Squares Regression as follows: from ...
18
votes
6answers
19k views

Simple multidimensional curve fitting

I have a bunch of data, generally in the form a, b, c, ..., y where y = f(a, b, c...) Most of them are three and four variables, and have 10k - 10M records. My general assumption is that they are ...
18
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1answer
3k 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. (...
18
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3answers
30k views

Multivariate polynomial regression with numpy

I have many samples (y_i, (a_i, b_i, c_i)) where y is presumed to vary as a polynomial in a,b,c up to a certain degree. For example for a given set of data and degree 2 I might produce the model y =...
17
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2answers
20k views

PCA first or normalization first?

When doing regression or classification, what is the correct (or better) way to preprocess the data? Normalize the data -> PCA -> training PCA -> normalize PCA output -> training Normalize the data ->...
17
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1answer
3k views

Any Python Library Produces Publication Style Regression Tables

I've been using Python for regression analysis. After getting the regression results, I need to summarize all the results into one single table and convert them to LaTex (for publication). Is there ...
17
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3answers
8k views

sklearn LogisticRegression without regularization

Logistic regression class in sklearn comes with L1 and L2 regularization. How can I turn off regularization to get the "raw" logistic fit such as in glmfit in Matlab? I think I can set C = large ...
16
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2answers
6k views

What does the capital letter “I” in R linear regression formula mean?

I haven't been able to find an answer to this question, largely because googling anything with a standalone letter (like "I") causes issues. What does the "I" do in a model like this? data(rock) lm(...
16
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2answers
19k views

lme4::lmer reports “fixed-effect model matrix is rank deficient”, do I need a fix and how to?

I am trying to run a mixed-effects model that predicts F2_difference with the rest of the columns as predictors, but I get an error message that says fixed-effect model matrix is rank deficient so ...
16
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1answer
28k views

How to export coefficients of the regression analysis from RStudio to a spreadsheet or csv file?

I am new to RStudio and I guess my question is pretty easy to solve but a lot of searching did not help me. I am running a regression and summary(regression1) shows me all the coefficients and so on....
16
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2answers
10k views

Understanding Tensorflow LSTM Input shape

I have a dataset X which consists N = 4000 samples, each sample consists of d = 2 features (continuous values) spanning back t = 10 time steps. I also have the corresponding 'labels' of each sample ...
15
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3answers
27k views

How do I print the variance of an lm in R without computing from the Standard Error by hand?

Simple question really! I am running lots of linear regressions of y~x and want to obtain the variance for each regression without computing it from hand from the Standard Error output given in the ...
15
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2answers
7k views

Why is it inadvisable to get statistical summary information for regression coefficients from glmnet model?

I have a regression model with binary outcome. I fitted the model with glmnet and got the selected variables and their coefficients. Since glmnet doesn't calculate variable importance, I would like ...
15
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5answers
14k views

Weighted logistic regression in Python

I'm looking for a good implementation for logistic regression (not regularized) in Python. I'm looking for a package that can also get weights for each vector. Can anyone suggest a good implementation ...