2013 IEEE International Congress on Big Data 2013
DOI: 10.1109/bigdata.congress.2013.65
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Analysis of Technology Trends Based on Big Data

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Cited by 9 publications
(4 citation statements)
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“…This suggests the entities related to both technologies are experiencing initial hype with the public while the researchers have already passed this stage and show diminished interests in the same entities. Such differences are validated by the authors' previous research on the different time windows for technology growth curves in different datasets, where the technology's development starts with the academic domain and the public inherits the changes afterward [1], [18].…”
Section: Extracting Technology-related Entity Trendsmentioning
confidence: 60%
See 1 more Smart Citation
“…This suggests the entities related to both technologies are experiencing initial hype with the public while the researchers have already passed this stage and show diminished interests in the same entities. Such differences are validated by the authors' previous research on the different time windows for technology growth curves in different datasets, where the technology's development starts with the academic domain and the public inherits the changes afterward [1], [18].…”
Section: Extracting Technology-related Entity Trendsmentioning
confidence: 60%
“…The trend curves are generated by connecting the discrete data points into a series of line graphs. The trend curves are not normalized as in the previous research [18] since the process searches not only for curves with a specific growth pattern but also curves with overall elevated values. All entities are deemed related to the technology in question and are treated equally regardless of their distances from it, or the number of see-also sections between them.…”
Section: Extracting Technology-related Entity Trendsmentioning
confidence: 99%
“…Multiple applications of the predictive topic evolution have been proposed. A semi-manual technology trend analysis was done to identify the roots of new technologies with their projected impact on the research field [36]. A semantically enhanced technology-topic model for interdisciplinary knowledge sharing was also proposed, integrating topic models and their similarities to calculate the likelihood of a technology being adapted to a specific research area without extensive presence in the field [28].…”
Section: Identifying and Predicting New Topicsmentioning
confidence: 99%
“…There is plenty of literature, however, giving examples of how big data use cases could look like in enterprises [33], public administration bodies [34] or research institutions [35]. Segev et al [36], for instance, explain how technology trends can be analyzed based on big data. Making the identification of use cases less challenging requires a combination of expert guidance, to compensate a potential lack of big data experience, and a systemic view of the organization, to ensure that the use cases create added value and encounter organizational demand.…”
Section: Research Directionsmentioning
confidence: 99%