Fast and robust extraction of original and updated publication dates from URLs and web pages.


Keywords
datetime, date-parser, entity-extraction, html-extraction, html-parsing, metadata-extraction, webarchives, web-scraping, date, information-extraction, lxml, metadata, natural-language-processing, nlp, parsing, time, webscraping
License
Apache-2.0
Install
pip install htmldate==1.8.0

Documentation

Htmldate: Find the Publication Date of Web Pages

Python package

Python versions

Documentation Status

Code Coverage

Downloads

Logo as PNG image

Find original and updated publication dates of any web page. On the command-line or with Python, all the steps needed from web page download to HTML parsing, scraping, and text analysis are included. The package is used in production on millions of documents and integrated by multiple libraries.

In a nutshell

Demo as GIF image

With Python

On the command-line

Features

  • Flexible input: URLs, HTML files, or HTML trees can be used as input (including batch processing).
  • Customizable output: Any date format (defaults to ISO 8601 YMD).
  • Detection of both original and updated dates.
  • Multilingual.
  • Compatible with all recent versions of Python.

How it works

Htmldate operates by sifting through HTML markup and if necessary text elements. It features the following heuristics:

  1. Markup in header: Common patterns are used to identify relevant elements (e.g. link and meta elements) including Open Graph protocol attributes.
  2. HTML code: The whole document is searched for structural markers like abbr or time elements and a series of attributes (e.g. postmetadata).
  3. Bare HTML content: Heuristics are run on text and markup:
    • In fast mode the HTML page is cleaned and precise patterns are targeted.
    • In extensive mode all potential dates are collected and a disambiguation algorithm determines the best one.

Finally, the output is validated and converted to the chosen format.

Performance

1000 web pages containing identifiable dates (as of 2023-11-13 on Python 3.10)
Python Package Precision Recall Accuracy F-Score Time
=============================== ========= ========= ========= ========= =======
articleDateExtractor 0.20 0.803 0.734 0.622 0.767 5x
date_guesser 2.1.4 0.781 0.600 0.514 0.679 18x
goose3 3.1.17 0.869 0.532 0.493 0.660 15x
htmldate[all] 1.6.0 (fast) 0.883 0.924 0.823 0.903 1x
htmldate[all] 1.6.0 (extensive) 0.870 0.993 0.865 0.928 1.7x
newspaper3k 0.2.8 0.769 0.667 0.556 0.715 15x
news-please 1.5.35 0.801 0.768 0.645 0.784 34x

For the complete results and explanations see evaluation page.

Installation

Htmldate is tested on Linux, macOS and Windows systems, it is compatible with Python 3.6 upwards. It can notably be installed with pip (pip3 where applicable) from the PyPI package repository:

  • pip install htmldate
  • (optionally) pip install htmldate[speed]

Documentation

For more details on installation, Python & CLI usage, please refer to the documentation: htmldate.readthedocs.io

License

This package is distributed under the Apache 2.0 license.

Versions prior to v1.8.0 are under GPLv3+ license.

Author

This project is part of methods to derive information from web documents in order to build text databases for research (chiefly linguistic analysis and natural language processing).

Extracting and pre-processing web texts to meet the exacting standards is a significant challenge. It is often not possible to reliably determine the date of publication or modification using either the URL or the server response. For more information:

@article{barbaresi-2020-htmldate,
  title = {{htmldate: A Python package to extract publication dates from web pages}},
  author = "Barbaresi, Adrien",
  journal = "Journal of Open Source Software",
  volume = 5,
  number = 51,
  pages = 2439,
  url = {https://doi.org/10.21105/joss.02439},
  publisher = {The Open Journal},
  year = 2020,
}

You can contact me via my contact page or GitHub.

Contributing

Contributions are welcome as well as issues filed on the dedicated page.

Special thanks to the contributors who have submitted features and bugfixes!

Acknowledgements

Kudos to the following software libraries: