2012
DOI: 10.1002/asi.22663
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Understanding public‐access cyberlearning projects using text mining and topic analysis

Abstract: The federal government has encouraged open access to publicly funded federal science research results, but it is unclear what knowledge can be gleaned from them and how the knowledge can be used to improve scientific research and shape federal research policies. In this article, we present the results of a preliminary study of cyberlearning projects funded by the National Science Foundation (NSF) that address these issues. Our work demonstrates that text-mining tools can be used to partially automate the proce… Show more

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“…[14] Web forums Healthcare Healthcare providers [13] Patents records Business strategy Corporations [25] Full-text articles Healthcare (bio-informatics) Researchers [26] Facebook & Twitter Business strategy Corporations (fast-food companies, esp. pizza) [27] Internal databases Awards determination Research funding agencies [28] Internal databases Business strategy Corporations (airline companies)…”
Section: Source Of Article Source Of Data Application Area Affected Pmentioning
confidence: 99%
“…[14] Web forums Healthcare Healthcare providers [13] Patents records Business strategy Corporations [25] Full-text articles Healthcare (bio-informatics) Researchers [26] Facebook & Twitter Business strategy Corporations (fast-food companies, esp. pizza) [27] Internal databases Awards determination Research funding agencies [28] Internal databases Business strategy Corporations (airline companies)…”
Section: Source Of Article Source Of Data Application Area Affected Pmentioning
confidence: 99%