Collective Semantics: Collective Intelligence & the Semantic Web - Semantically enriching folksonomies with flor
author:
Sofia Angeletou,
The Knowledge Media Institute, The Open University
Description
Web 2.0 has introduced new style of information sharing featuring
mass user participation, social networking, heterogeneity of data
sources, and a huge scale of information and knowledge, posing
difficulties in discovering relevant information. The Semantic Web
may contribute by providing a language basis and ontologies to
support structuring, or introducing new ways to explore the
information space. This may be achieved by combining semantics from
semantic web resources with structure of the sharing platforms
(tags, social acquaintances etc.) and automatic content analysis
tools. This workshop targets integration arising from the mining of
Web 2.0 information, multimedia content and knowledge with help of
the Semantic Web.
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| Slides | |
| 0:00 | Semantically Enriching Folksonomies with |
| 0:08 | Semantic Web2.0 |
| 0:24 | Web2.0 |
| 0:41 | tagging systems’ characteristics |
| 1:24 | ..an example |
| 1:36 | .. some missed photos |
| 1:57 | modifying the query.. |
| 2:07 | our goal |
| 2:27 | our goal |
| 3:05 | our goal |
| 3:37 | “Dolphin OR Seal OR Sea Elephant OR Whale” |
| 3:43 | existing work on folksonomy enrichment |
| 4:31 | our approach |
| 5:31 | FLOR |
| 5:56 | 1.1.Lexical Isolation |
| 6:32 | 1.2.Lexical Normalisation |
| 7:14 | FLOR methodology |
| 7:53 | 2. Sense Definition & Semantic Expansion |
| 8:21 | 2.1.Sense Definition |
| 8:41 | 2.1.Sense Definition |
| 9:08 | 2.1.Sense Definition |
| 9:20 | 2.1.Sense Definition |
| 9:33 | 2.1.Sense Definition |
| 9:42 | 2.1.Sense Definition |
| 9:51 | 2.2.Semantic Expansion |
| 10:15 | FLOR methodology |
| 10:19 | 3.Semantic Enrichment |
| 10:25 | 3.1.Entity Discovery |
| 10:43 | 3.1.Entity Discovery |
| 10:46 | 3.2.Entity Selection |
| 11:10 | FLOR methodology |
| 11:30 | preliminary experiments |
| 11:46 | tag based results |
| 12:18 | tag based results |
| 13:31 | FLOR algorithm issues |
| 14:39 | photo based results |
| 15:15 | photo based results |
| 15:36 | future work |
| 16:49 | conclusions |
| 17:23 | Thank you |
| 17:36 | - Questions |
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What the hell with her accent