five

Data and code for "Discoverability beyond the library: Search engine optimization (case study)"

收藏
DataCite Commons2022-09-05 更新2024-07-13 收录
下载链接:
https://researchdata.smu.edu.sg/articles/dataset/Data_and_code_for_Discoverability_beyond_the_library_Search_engine_optimization_case_study_/19121768
下载链接
链接失效反馈
官方服务:
资源简介:
This record includes the replication data and code supporting results of a published book chapter <em>Discoverability beyond the library: Search engine optimization (case study) </em>[link to be added]. The case study compares the discoverability of two hosted institutional repository solutions, Digital Commons and Figshare using a randomized controlled experiment. Two randomly selected groups of journal articles were deposited and made open access in institutional repositories hosted on Digital Commons and Figshare respectively. Download count data were collected over 7 months to measure and compare the open access discoverability and search engine visibility of the two platforms. <strong>GENERAL INFORMATION</strong> This readme file was generated on 2022-07-04 by Dong Danping <strong>Author Contact</strong> Name: Dong Danping ORCID: 0000-0002-2229-6709 Institution: Singapore Management University Email: danpingzzz@gmail.com Name: Aaron Tay ORCID: 0000-0003-0159-013X Institution: Singapore Management University Email: aarontay@smu.edu.sg Date of data collection: 2021-04-01 to 2021-10-01 <strong>SHARING/ACCESS INFORMATION</strong> Licenses/restrictions placed on the data: CC-BY-4.0 License<br> Links to publications that cite or use the data: [to be updated]<br> Links to other publicly accessible locations of the data:<br> https://github.com/dpdong19/IR-compare https://doi.org/10.25440/smu.19121768 <strong>Recommended citation for this dataset:</strong> Dong, D., &amp; Tay, A. (2022). Data and code to compare the discoverability of Digital Commons and Figshare. https://doi.org/10.25440/smu.19121768 <strong>DATA &amp; FILE OVERVIEW</strong> <strong>File List</strong> <em><strong>/analysis/2021-11_DataAnalysis_DCvsFig.ipynb</strong></em><br> This is the Jupyter Notebook containing notes and scripts of statistical analysis for the case study. <em><strong>/analysis/DCvsFigshare-downloads-combined-v1.csv</strong></em><br> This file contains clean data for analysis containing download stats from Apr to Oct 2021 for both InK(Digital Commons) and RDR(Figshare).<br> <strong>Relationship between files</strong>: The Jupyter Notebook and data file should be placed in the same folder for the code to run. <strong>Data Dictionary</strong> <em><strong>DCvsFigshare-downloads-combined-v1.csv</strong></em> Number of variables: 15<br> Number of cases/rows: 92 <strong>Variable List</strong><br> <strong>Identifier</strong>: unique ID for each record. Also the URL to access the record. (Note: Figshare records have been unpublished after the study thus no longer accessible)<br> <strong>IR</strong>: Name of the IR. InK is on Digital Commons and RDR is on Figshare.<br> <strong>Title</strong>: title of the deposited journal article<br> <strong>Column D-J</strong>: monthly download count excluding bots downloads from April to October 2021.<br> <strong>Total</strong>: sum of column D-J, total download count during the study period<br> <strong>AugToOct</strong>: sum of column H-J from Aug to Oct 2021<br> <strong>GS_avail</strong>: whether the record can be found in Google Scholar.<br> <strong>uniq_PDF</strong>: whether the record provides the only PDF in Google Scholar<br> <strong>primary</strong>: whether the record is displayed as the primary record in Google Scholar.<br> <strong>Missing data codes</strong>: blank <strong>METHODOLOGICAL INFORMATION</strong> Methods are described in <em><strong>2021-11_DataAnalysis_DCvsFig.ipynb</strong></em> and published book chapter [link to be added]
提供机构:
SMU Research Data Repository (RDR)
创建时间:
2022-02-04
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作