Description: Jupyter Notebooks for harvesting, transforming and analysing text of metadata descriptions from the Centre for Research Collections online archival catalog, ArchivesSpace, prior to manual annotation. Metadata field names include: an identifier (<unitid>
), Title (<title>
) Biographical / Historical (<bioghist>
), Scope and Contents (<scopecontent>
), and Processing Information (<processinfo>
).
Click here to run the Jupyter Notebooks in MyBinder.
Description: Plaintext files that will be uploaded to brat, a web-based annotation tool, for sentence-level gendered language labeling by five annotators.
Source Information:
- Date Extracted: October 2020
- Dataset Publisher: Centre for Research Collections, University of Edinburgh
- Source: https://archives.collections.ed.ac.uk/
- Dataset Creator: Lucy Havens
- Earliest written metadata description date: Unknown (could date back to the founding of the Centre for Research Collections)
- Latest written metadata description date: 2020
Summary Statistics:
Estimates calculated using Natural Language Toolkit's (NLTK) word_tokenize
and sent_tokenize
- Characters: 13,739,019
- Tokens: 2,754,044
- Words with Metadata Field Names: 2,006,380
- Words without Metadata Field Names: 1,273,237
- Sentences: 156,124
- TXT Files: 3,649
- Fonds (archival collections): 1,081
There will be one ANN file per TXT file with annotation labels, totalling 7,298 files
Description: Additional metadata fields for every fonds in the data_to_ann.zip directory (1,081 rows total, one row per fonds), with six columns for:
- String of fonds-level identifiers (highest level of the archival hierarchy)
- List of unit identifiers (at the series, sub-series, and item (lowest level of the archival hierarchy) levels)
- List of unit dates
- List of units' associated geographic locations
- List of units' associated languages
- Data source: Archives Online, Centre for Research Collections, University of Edinburgh
- Dataset annotation repository: annot
- Publications:
Creative Commons Attribution 4.0 International (CC BY 4.0)
@inproceedings{havens-etal-2020-situated,
title = "Situated Data, Situated Systems: A Methodology to Engage with Power Relations in Natural Language Processing Research",
author = "Havens, Lucy and
Terras, Melissa and
Bach, Benjamin and
Alex, Beatrice",
booktitle = "Proceedings of the Second Workshop on Gender Bias in Natural Language Processing",
month = dec,
year = "2020",
address = "Barcelona, Spain (Online)",
publisher = "Association for Computational Linguistics",
url = "https://aclanthology.org/2020.gebnlp-1.10",
pages = "107--124",
abstract = "We propose a bias-aware methodology to engage with power relations in natural language processing (NLP) research. NLP research rarely engages with bias in social contexts, limiting its ability to mitigate bias. While researchers have recommended actions, technical methods, and documentation practices, no methodology exists to integrate critical reflections on bias with technical NLP methods. In this paper, after an extensive and interdisciplinary literature review, we contribute a bias-aware methodology for NLP research. We also contribute a definition of biased text, a discussion of the implications of biased NLP systems, and a case study demonstrating how we are executing the bias-aware methodology in research on archival metadata descriptions."
}