Register
Login
Resources
Docs Blog Datasets Glossary Case Studies Tutorials & Webinars
Product
Data Engine LLMs Platform Enterprise
Pricing Explore
Connect to our Discord channel
General:  academic Type:  dataset Data Domain:  nlp Integration:  dvc git github
Michael Ekstrand f6b9ecdb3d
Release BD 2.1
1 year ago
f1083188ce
fix url
4 years ago
96487393ae
document rust dependencies
1 year ago
1 year ago
1 year ago
1 year ago
bfd1c6f25a
clean up old logging
1 year ago
bx
1 year ago
86da9c76c8
Merge branch 'master' into az18
1 year ago
f6b9ecdb3d
Release BD 2.1
1 year ago
1 year ago
1 year ago
1 year ago
src
8591a30132
small updates
1 year ago
d53bbdc7f1
rerun with current code
1 year ago
0ffc7b5cc2
Add Windows command support
4 years ago
2 years ago
8839f2ebb0
add re parsing
1 year ago
8591a30132
small updates
1 year ago
8591a30132
small updates
1 year ago
3001ffb24d
finish PEG repro
1 year ago
a357a63f7f
finish rerunning with AZ18
1 year ago
470cafa056
try pyproject specification
2 years ago
bfd1c6f25a
clean up old logging
1 year ago
e082850240
a number of documentation changes for rust
2 years ago
a357a63f7f
finish rerunning with AZ18
1 year ago
f6a5164e5a
linkage statistics
1 year ago
dc050c9280
fix docs
1 year ago
e337d7a87c
start scanning some banks
2 years ago
d37c2070ff
bump processes
2 years ago
1 year ago
82c16fdde4
config updates and docs
1 year ago
5f48ad28e8
update conda locking
1 year ago
a357a63f7f
finish rerunning with AZ18
1 year ago
48c68450b1
Merge branch 'datafusion'
2 years ago
1445651f2a
clean environment.yml
1 year ago
aab857bb68
functioning pipeline render
1 year ago
af71675a8c
Add some pipeline docs
1 year ago
391e1d85d3
clean run.py
1 year ago
96a057b16a
clean up data thingies
2 years ago
Storage Buckets
Data Pipeline
Legend
DVC Managed File
Git Managed File
Metric
Stage File
External File

README.md

You have to be logged in to leave a comment. Sign In

This repository contains the code to import and integrate the book and rating data that we work with. It imports and integrates data from several sources in a homogenous tabular outputs; import scripts are primarily Rust, with Python implement analyses.

If you use these scripts in any published research, cite our paper (PDF):

Michael D. Ekstrand and Daniel Kluver. 2021. Exploring Author Gender in Book Rating and Recommendation. User Modeling and User-Adapted Interaction (February 2021) DOI:10.1007/s11257-020-09284-2.

We also ask that you contact Michael Ekstrand to let us know about your use of the data, so we can include your paper in our list of relying publications.

Note: the limitations section of the paper contains important information about the limitations of the data these scripts compile. Do not use the gender information in this data data or tools without understanding those limitations. In particular, VIAF's gender information is incomplete and, in a number of cases, incorrect.

In addition, several of the data sets integrated by this project come from other sources with their own publications. If you use any of the rating or interaction data, cite the appropriate original source paper. For each data set below, we have provided a link to the page that describes the data and its appropriate citation.

See the documentation site for details on using and extending these tools.

Running Everything

The dependencies are declared in environment.yml, in a format suitable for use with conda-lock. We provide lockfiles for Windows, macOS, and Linux; to create a Conda environment, run:

conda-lock install -n bookdata conda-lock.yml

You can run the entire import process with:

dvc repro

To regenerate or update the lockfiles, run:

conda-lock lock --mamba -f environment.yml -f dev-environment.yml -f doc-environment.yml

Copyright ⓒ 2020–2022 Boise State University. Distributed under the MIT License; see LICENSE.md. This material is based upon work supported by the National Science Foundation under Grant No. IIS 17-51278. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the National Science Foundation.

Tip!

Press p or to see the previous file or, n or to see the next file

About

This repository contains the code to import and integrate the book and rating data that we work with. It imports and integrates data from several sources in a homogenous tabular outputs; import scripts are primarily Rust, with Python implement analyses.

Collaborators 1

Comments

Loading...