Skip to content

Fast High-Dimensional Fixed Effects Regression in Python following fixest-syntax

License

Notifications You must be signed in to change notification settings

dsliwka/pyfixest

Β 
Β 

Repository files navigation

PyFixest: Fast High-Dimensional Fixed Effects Regression in Python

License PyPI - Python Version PyPI -Version image Ruff Pixi Badge All Contributors Downloads Downloads

PyFixest is a Python implementation of the formidable fixest package for fast high-dimensional fixed effects regression.

The package aims to mimic fixest syntax and functionality as closely as Python allows: if you know fixest well, the goal is that you won't have to read the docs to get started! In particular, this means that all of fixest's defaults are mirrored by PyFixest - currently with only one small exception.

Nevertheless, for a quick introduction, you can take a look at the documentation or the regression chapter of Arthur Turrell's book on Coding for Economists.

For questions on PyFixest, head on over to our PyFixest Discourse forum.

Features

  • OLS, WLS and IV Regression
  • Poisson Regression following the pplmhdfe algorithm
  • Multiple Estimation Syntax
  • Several Robust and Cluster Robust Variance-Covariance Estimators
  • Wild Cluster Bootstrap Inference (via wildboottest)
  • Difference-in-Differences Estimators:
  • Multiple Hypothesis Corrections following the Procedure by Romano and Wolf and Simultaneous Confidence Intervals using a Multiplier Bootstrap
  • Fast Randomization Inference as in the ritest Stata package
  • The Causal Cluster Variance Estimator (CCV) following Abadie et al.
  • Regression Decomposition following Gelbach (2016)
  • Publication-ready tables with Great Tables or LaTex booktabs

Installation

You can install the release version from PyPI by running

# inside an active virtual environment
python -m pip install pyfixest

or the development version from github by running

python -m pip install git+https://github.com/py-econometrics/pyfixest

Benchmarks

All benchmarks follow the fixest benchmarks. All non-pyfixest timings are taken from the fixest benchmarks.

Quickstart

import pyfixest as pf

data = pf.get_data()
pf.feols("Y ~ X1 | f1 + f2", data=data).summary()
###

Estimation:  OLS
Dep. var.: Y, Fixed effects: f1+f2
Inference:  CRV1
Observations:  997

| Coefficient   |   Estimate |   Std. Error |   t value |   Pr(>|t|) |   2.5% |   97.5% |
|:--------------|-----------:|-------------:|----------:|-----------:|-------:|--------:|
| X1            |     -0.919 |        0.065 |   -14.057 |      0.000 | -1.053 |  -0.786 |
---
RMSE: 1.441   R2: 0.609   R2 Within: 0.2

Multiple Estimation

You can estimate multiple models at once by using multiple estimation syntax:

# OLS Estimation: estimate multiple models at once
fit = pf.feols("Y + Y2 ~X1 | csw0(f1, f2)", data = data, vcov = {'CRV1':'group_id'})
# Print the results
fit.etable()
                           est1               est2               est3               est4               est5               est6
------------  -----------------  -----------------  -----------------  -----------------  -----------------  -----------------
depvar                        Y                 Y2                  Y                 Y2                  Y                 Y2
------------------------------------------------------------------------------------------------------------------------------
Intercept      0.919*** (0.121)   1.064*** (0.232)
X1            -1.000*** (0.117)  -1.322*** (0.211)  -0.949*** (0.087)  -1.266*** (0.212)  -0.919*** (0.069)  -1.228*** (0.194)
------------------------------------------------------------------------------------------------------------------------------
f2                            -                  -                  -                  -                  x                  x
f1                            -                  -                  x                  x                  x                  x
------------------------------------------------------------------------------------------------------------------------------
R2                        0.123              0.037              0.437              0.115              0.609              0.168
S.E. type          by: group_id       by: group_id       by: group_id       by: group_id       by: group_id       by: group_id
Observations                998                999                997                998                997                998
------------------------------------------------------------------------------------------------------------------------------
Significance levels: * p < 0.05, ** p < 0.01, *** p < 0.001
Format of coefficient cell:
Coefficient (Std. Error)

Adjust Standard Errors "on-the-fly"

Standard Errors can be adjusted after estimation, "on-the-fly":

fit1 = fit.fetch_model(0)
fit1.vcov("hetero").summary()
Model:  Y~X1
###

Estimation:  OLS
Dep. var.: Y
Inference:  hetero
Observations:  998

| Coefficient   |   Estimate |   Std. Error |   t value |   Pr(>|t|) |   2.5% |   97.5% |
|:--------------|-----------:|-------------:|----------:|-----------:|-------:|--------:|
| Intercept     |      0.919 |        0.112 |     8.223 |      0.000 |  0.699 |   1.138 |
| X1            |     -1.000 |        0.082 |   -12.134 |      0.000 | -1.162 |  -0.838 |
---
RMSE: 2.158   R2: 0.123

Poisson Regression via fepois()

You can estimate Poisson Regressions via the fepois() function:

poisson_data = pf.get_data(model = "Fepois")
pf.fepois("Y ~ X1 + X2 | f1 + f2", data = poisson_data).summary()
###

Estimation:  Poisson
Dep. var.: Y, Fixed effects: f1+f2
Inference:  CRV1
Observations:  997

| Coefficient   |   Estimate |   Std. Error |   t value |   Pr(>|t|) |   2.5% |   97.5% |
|:--------------|-----------:|-------------:|----------:|-----------:|-------:|--------:|
| X1            |     -0.007 |        0.035 |    -0.190 |      0.850 | -0.075 |   0.062 |
| X2            |     -0.015 |        0.010 |    -1.449 |      0.147 | -0.035 |   0.005 |
---
Deviance: 1068.169

IV Estimation via three-part formulas

Last, PyFixest also supports IV estimation via three part formula syntax:

fit_iv = pf.feols("Y ~ 1 | f1 | X1 ~ Z1", data = data)
fit_iv.summary()
###

Estimation:  IV
Dep. var.: Y, Fixed effects: f1
Inference:  CRV1
Observations:  997

| Coefficient   |   Estimate |   Std. Error |   t value |   Pr(>|t|) |   2.5% |   97.5% |
|:--------------|-----------:|-------------:|----------:|-----------:|-------:|--------:|
| X1            |     -1.025 |        0.115 |    -8.930 |      0.000 | -1.259 |  -0.790 |
---

Call for Contributions

Thanks for showing interest in contributing to pyfixest! We appreciate all contributions and constructive feedback, whether that be reporting bugs, requesting new features, or suggesting improvements to documentation.

If you'd like to get involved, but are not yet sure how, please feel free to send us an email. Some familiarity with either Python or econometrics will help, but you really don't need to be a numpy core developer or have published in Econometrica =) We'd be more than happy to invest time to help you get started!

Contributors ✨

Thanks goes to these wonderful people:

styfenschaer
styfenschaer

πŸ’»
Niall Keleher
Niall Keleher

πŸš‡ πŸ’»
Wenzhi Ding
Wenzhi Ding

πŸ’»
Apoorva Lal
Apoorva Lal

πŸ’» πŸ›
Juan Orduz
Juan Orduz

πŸš‡ πŸ’»
Alexander Fischer
Alexander Fischer

πŸ’» πŸš‡
aeturrell
aeturrell

βœ… πŸ“– πŸ“£
leostimpfle
leostimpfle

πŸ’» πŸ›
baggiponte
baggiponte

πŸ“–
Sanskriti
Sanskriti

πŸš‡
Jaehyung
Jaehyung

πŸ’»
Alex
Alex

πŸ“–
Hayden Freedman
Hayden Freedman

πŸ’» πŸ“–
Aziz Mamatov
Aziz Mamatov

πŸ’»
rafimikail
rafimikail

πŸ’»
Benjamin Knight
Benjamin Knight

πŸ’»
Dirk Sliwka
Dirk Sliwka

πŸ’» πŸ“–
daltonm-bls
daltonm-bls

πŸ›
Marc-AndrΓ©
Marc-AndrΓ©

πŸ’» πŸ›
Kyle F Butts
Kyle F Butts

πŸ”£
Marco Edward Gorelli
Marco Edward Gorelli

πŸ‘€
Vincent Arel-Bundock
Vincent Arel-Bundock

πŸ’»
IshwaraHegde97
IshwaraHegde97

πŸ’»
Tobias Schmidt
Tobias Schmidt

πŸ“–
escherpf
escherpf

πŸ›

This project follows the all-contributors specification. Contributions of any kind welcome!

About

Fast High-Dimensional Fixed Effects Regression in Python following fixest-syntax

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 78.7%
  • Jupyter Notebook 20.3%
  • Other 1.0%