Frequent pattern subject transactions from the University of Illinois Library (2016 - 2018)
Dataset Description |
The data are provided to illustrate methods in evaluating systematic transactional data reuse in machine learning. A library account-based recommender system was developed using machine learning processing over transactional data of 383,828 transactions (or check-outs) sourced from a large multi-unit research library. The machine learning process utilized the FP-growth algorithm over the subject metadata associated with physical items that were checked-out together in the library. The purpose of this research is to evaluate the results of systematic transactional data reuse in machine learning. The analysis herein contains a large-scale network visualization of 180,441 subject association rules and corresponding node metrics. |
Subject |
Social Sciences |
Keywords |
evaluating machine learning; network science; FP-growth; WEKA; Gephi; personalization; recommender systems |
License |
CC0 |
Funder |
Research and Publications Committee of the University of Illinois Library -Grant:81034 |
Corresponding Creator |
Jim Hahn |
Downloaded |
1213 times |
| Version | DOI | Comment | Publication Date |
|---|---|---|---|
| 1 | 10.13012/B2IDB-9440404_V1 | 2019-05-31 |
Contact the Research Data Service for help interpreting this log.
| RelatedMaterial | update: {"uri"=>[nil, "hdl.handle.net/2142/105401"], "uri_type"=>[nil, "Handle"], "datacite_list"=>[nil, "IsSupplementTo"], "note"=>[nil, ""], "feature"=>[nil, false]} | 2024-02-05T21:15:25Z |
| RelatedMaterial | update: {"uri"=>["", "hdl.handle.net/2142/103843"], "uri_type"=>["", "Handle"], "datacite_list"=>["", "IsSupplementTo"], "note"=>[nil, ""], "feature"=>[nil, false]} | 2024-02-05T21:15:25Z |
| RelatedMaterial | create: {"material_type"=>"Article", "availability"=>nil, "link"=>"http://hdl.handle.net/2142/105401", "uri"=>nil, "uri_type"=>nil, "citation"=>"Jim Hahn. 2019. Evaluating systematic transactional data enrichment and reuse. In Artificial Intelligence for Data Discovery and Reuse 2019 (AIDR '19), May 13–15, 2019, Pittsburgh, PA, USA. ACM, New York, NY, USA. https://doi.org/10.1145/3359115.3359116", "dataset_id"=>955, "selected_type"=>"Article", "datacite_list"=>nil} | 2019-08-27T16:54:44Z |
| RelatedMaterial | update: {"uri"=>[nil, ""], "uri_type"=>[nil, ""], "datacite_list"=>[nil, ""]} | 2019-05-31T20:20:44Z |
| Dataset | update: {"version_comment"=>[nil, ""], "subject"=>[nil, "Social Sciences"]} | 2019-05-31T20:20:44Z |