Published December 21, 2021 | Version 1.0
Dataset Open

Medieval manuscripts and their migrations: Using SPARQL to investigate the research potential of an aggregated Knowledge Graph

  • 1. University of Western Australia; University of Oxford
  • 2. University of London
  • 3. University of Pennsylvania
  • 4. Aalto University; University of Helsinki
  • 5. Institut de recherche et d'histoire des textes

Description

This dataset contains the SPARQL queries presented and discussed in our article published in Digital Medievalist 2022 (as a PDF file), together with the results of those queries as CSV files. The query and step numbering follows that given in the article.

The queries can be run against the SPARQL endpoint for the Mapping Manuscript Migrations project: https://ldf.fi/mmm/sparql

The full Mapping Manuscript Migrations dataset can also be downloaded from the Zenodo repository and installed in your own triple store: https://zenodo.org/record/4440464

When copying and pasting these SPARQL queries into a SPARQL client like YASGUI, please check that the line numbering has been copied over correctly. Copying from a PDF file can sometimes break a single long line into multiple separate lines, which will cause a SPARQL validation error.

The CSV files contain the results of the queries when run against the Mapping Manuscript Migrations SPARQL endpoint as of 17 December 2021. Please note that Query 2, Step 2, produces no results, so a CSV file has not been provided.

The Mapping Manuscript Migrations portal can be found at https://mappingmanuscriptmigrations.org/en/ 

SPARQL tutorials are included in the project's GitHub documentationhttps://mapping-manuscript-migrations.github.io/

Notes

Funded by the Trans-Atlantic Platform Digging into Data Challenge through the Economic and Social Research Council (UK), the Institute of Museum and Library Services (US), the Academy of Finland, and the Agence nationale de recherche (France).

Files

Burrows_et_al_2022_Query1_results.csv

Files (12.5 MB)

Name Size Download all
md5:486be18f65bddc7c6ca167aa555cd24e
167.9 kB Preview Download
md5:deb530b3b30e236911514336c986bc48
65.1 kB Preview Download
md5:3832e30d307e3ea5ba26eb57914dced8
251.4 kB Preview Download
md5:a358c3988503fabffd154c5ff33882da
9.6 MB Preview Download
md5:e0268ddadfcc28b43c7286bcd7c2e1b1
454.0 kB Preview Download
md5:361cec6f155c17384c4364b18c967a3c
270.9 kB Preview Download
md5:0a4f61bb93d77826f6621b32401a5b07
227.9 kB Preview Download
md5:20df028d692c007be69921859d7abcec
159.7 kB Preview Download
md5:357ab666eb67bcbb664045b673397d8d
142.2 kB Preview Download
md5:35231534bcf043924904bc4c90e56752
9.4 kB Preview Download
md5:627df3ad3c5767fb7f23236d7b3ee0dd
8.0 kB Preview Download
md5:76f546ad5fb552e610a047a5058225ee
9.8 kB Preview Download
md5:c9ec47e4020367a84045de4e485a0bc0
2.4 kB Preview Download
md5:c85ef9b3f00bf6a076c944c0563bd400
11.9 kB Preview Download
md5:1b728e8dfcc446f55bc8d0a744448846
33.4 kB Preview Download
md5:129613906fa03d24c81c39f65c4b6d6c
3.3 kB Preview Download
md5:f05c503a3d626c7b1d4b2455c6732908
1.1 MB Preview Download