- Mining Web Documents for Unintended Information Revelation
- LHNCBC: Mansur Project - Anatomical Text to Images
- Data processing: presentation processing of document patents new
- Philippe Jost - LTS2
- nformation Sciences Institute - Research
- [PDF] Music notation/representation requirements for the protection of ...
- [PDF] Microsoft PowerPoint - Research_GET_STIC ASIE.ppt
- Informed Content Delivery Across Adaptive Overlay Networks
- Digital Television Applications
- [PDF] Abstract Model, 70–76 Accessibility characteristics, 262 Act, 217 ...
- [PS] Selecting Task-Relevant Sources for Just-in-Time Retrieval
- [Cc-uk] FW: IEE Events] The 2nd European Workshop on the ...
- [PDF] T R D R
- XML Pitstop : Largest Source of XML Examples on the Web
- ...
The above results I picked from pages 79 and 78 only -- and already learned a lession: It might make more sense to apply some kind of clustering here instead of walking through the list manually. Even the intellectual check whether there is anything in between of "content" and "representation" -- to filter out false hits --, can be done by software.
I'd like to learn the most-often used terms (besides of "content representation"), and, by help of that clustering/visualization, I want to get the chance to ignore obvious false hits.
That demands for using -- get hands on -- the Google API.
Updates: none so far
No comments:
Post a Comment