| Literature DB >> 23060783 |
Abstract
Traditional pre-publication peer review of scientific output is a slow, inefficient, and unreliable process. Efforts to replace or supplement traditional evaluation models with open evaluation platforms that leverage advances in information technology are slowly gaining traction, but remain in the early stages of design and implementation. Here I discuss a number of considerations relevant to the development of such platforms. I focus particular attention on three core elements that next-generation evaluation platforms should strive to emphasize, including (1) open and transparent access to accumulated evaluation data, (2) personalized and highly customizable performance metrics, and (3) appropriate short-term incentivization of the userbase. Because all of these elements have already been successfully implemented on a large scale in hundreds of existing social web applications, I argue that development of new scientific evaluation platforms should proceed largely by adapting existing techniques rather than engineering entirely new evaluation mechanisms. Successful implementation of open evaluation platforms has the potential to substantially advance both the pace and the quality of scientific publication and evaluation, and the scientific community has a vested interest in shifting toward such models as soon as possible.Entities:
Keywords: data sharing; open access; peer review; publishing; scientific evaluation
Year: 2012 PMID: 23060783 PMCID: PMC3461500 DOI: 10.3389/fncom.2012.00072
Source DB: PubMed Journal: Front Comput Neurosci ISSN: 1662-5188 Impact factor: 2.380
Figure 1Schematic illustration of key elements of the proposed model. (1) Metadata for published or unpublished articles are automatically extracted from other sources and fed into the platform database. (2) Users have the ability to rate and/or comment on any article in the database. (3) Comments are threaded, allowing recursive evaluation. (4) A user's reputation reflects their aggregate contribution to the content in the database, with separate metrics for authorship and commenting. (5) Articles can be categorized into topics using both automated semantic classification techniques and manual curation. (6) Retrieved records are ranked based on a (potentially personalizable) combination of quality, relevance, and recency criteria. (7) Most of the data in the database can be accessed independently via API, allowing other parties to create their own evaluation-related applications. Numbered elements are described in greater detail in the main text.
Figure 2Sample web views for a hypothetical “ReviewIt” post-publication evaluation platform modeled closely on reddit ( Ranked listing of top articles tagged with the “neuroimaging” tag. Each record displays the current number of points (red), provides upvote/downvote arrows for rating the article, and displays basic information about the article (authors, journal, etc). (B) Clicking on an article's “comments” link takes the user to a discussion page where users can comment on any aspect of the article or respond to and rate other comments. Comments with high scores are displayed further up on the page, increasing their likelihood of influencing evaluation of the article.