| Literature DB >> 28394907 |
Matthew S Mayernik1, Keith E Maull1.
Abstract
Significant progress has been made in the past few years in the development of recommendations, policies, and procedures for creating and promoting citations to data sets, software, and other research infrastructures like computing facilities. Open questions remain, however, about the extent to which referencing practices of authors of scholarly publications are changing in ways desired by these initiatives. This paper uses four focused case studies to evaluate whether research infrastructures are being increasingly identified and referenced in the research literature via persistent citable identifiers. The findings of the case studies show that references to such resources are increasing, but that the patterns of these increases are variable. In addition, the study suggests that citation practices for data sets may change more slowly than citation practices for software and research facilities, due to the inertia of existing practices for referencing the use of data. Similarly, existing practices for acknowledging computing support may slow the adoption of formal citations for computing resources.Entities:
Mesh:
Year: 2017 PMID: 28394907 PMCID: PMC5386254 DOI: 10.1371/journal.pone.0175418
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Breakdown of persistent IDs assigned to different kinds of resources by UCAR groups, as of Nov. 30, 2016.
| ResourceType | Number of IDs assigned |
|---|---|
| Dataset | 3393 |
| Text | 626 |
| PhysicalObject | 22 |
| Software | 8 |
| Collection | 3 |
| Model | 2 |
| InteractiveResource | 1 |
| Event | 1 |
| Service | 1 |
| [Resource type not supplied] | 1 |
| TOTAL | 4058 |
Google Scholar search terms and phrases used to find papers that used these resources.
| NARCCAP data set | NCL software | Yellowstone supercomputer | NCEP FNL data set |
|---|---|---|---|
| 10.5065/D6RN35ST | 10.5065/D6WD3XH5 | 85065/d7wd3xhc | 10.5065/D6M043C6 |
| "North American Regional Climate Change Assessment Program data" | yellowstone supercomputer | “NCEP FNL Operational Model Global Tropospheric Analyses, continuing from July 1999” | |
| "NARCCAP data" | “NCAR Command Language” | yellowstone super computer | “NCEP FNL Operational Model Global Tropospheric Analyses” |
| "data from NARCCAP" | yellowstone cisl | rda.ucar.edu/datasets/ds083.2 [the data set’s URL after April 2012] | |
| "data from North American Regional Climate Change Assessment Program" | yellowstone "national center for atmospheric research“ | dss.ucar.edu/datasets/ds083.2 [the data set’s URL up to April 2012] | |
| "The North American Regional Climate Change Assessment Program Dataset" | yellowstone "computational and information systems laboratory“ | ds083.2 | |
| "NARCCAP dataset" | yellowstone ncar | ds083.0 [a file format variant of the NCEP FNL data] | |
| [searches were also run that used “model” and “model output” in above queries instead of “data” or “dataset”] |
Overall numbers of relevant documents found.
| References that use the ID | References that do not use the ID | Total docs found | % of Total that use the ID | |||
|---|---|---|---|---|---|---|
| 29 | 12 | 144 | 62 | 247 | 17% | |
| 45 | 5 | 543 | 169 | 762 | 7% | |
| 140 | 27 | 229 | 192 | 588 | 28% | |
| 191 | 27 | 120 | 19 | 357 | 61% | |
Fig 1Reference distributions across primary and grey literature.
Distribution of Citations, acknowledgments, and In-Text references for the four case studies. Blue bars show references from primary literature, and pink bars show references from grey literature.
Fig 2Summation of references over time.
Timelines showing the sum of citations, acknowledgments, and in-text references per year from primary literature, with and without the persistent IDs.
Fig 3Proportion of references over time.
Timelines showing the proportion of primary literature references, with and without the persistent IDs.