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Ehsan Zamiri Supervisor: Dr. Kahani Ferdowsi University of Mashad FOAF: Semantic Based NameSpace for Social Networking.

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Presentation on theme: "Ehsan Zamiri Supervisor: Dr. Kahani Ferdowsi University of Mashad FOAF: Semantic Based NameSpace for Social Networking."— Presentation transcript:

1 Ehsan Zamiri Supervisor: Dr. Kahani Ferdowsi University of Mashad FOAF: Semantic Based NameSpace for Social Networking

2 Outline Motivation Introduction The six popular ontologies FOAF vocabulary Why FOAF Building FOAF Document collection FOAF Document Identification FOAF Document Discovery Popular Properties of foaf:Person Applications Personal Information Fusion Social Network Analysis

3 Semantic Web The semantic web vision is that information and services are described using shared ontologies in KR-like markup languages, making them accessible to machines (programs). How do we get there? What kind of ontologies? IEEE SUO? Cyc? What kind of languages? RDF? OWL? RuleML? It’s reasonable to start with the simple and move toward the complex From Dublin Core to CYC From RDF to OWL and beyond Significant semantic web content exists today Using simple vocabularies (e.g., FOAF) and RDF/RDFS

4 The Semantic Web The more important word in “Semantic Web” is the latter The KR aspects of the SW were taken off the shelf, the result of 25 years of research done in the AI community Remember hypertext? It was a nice research backwater going back to the 50’s (recall Memex and Xanadu) Hypertext was forever change by the Web So maybe the web will forever change KR TBL: “The Semantic Web will globalize KR, just as the WWW globalize hypertext”

5 Web of what? What features does the web bring to the table? “Anyone can say anything about anything” The meaning of RDF terms will be (partly) determined socially It’s a web of documents, services, agents and people

6 What kind of Ontologies? General Logical constraints Terms/ glossary Thesauri “narrower term” relation Formal is-a Frames (properties) Informal is-a Formal instance Value Restriction Disjointness, Inverse, part of… Taxonomies Wordnet CYC RDFDAML OO DB SchemaRDFS IEEE SUOOWL UMLS Vocabularies Simple Ontologies Expressive Ontologies

7 The Semantic Web Today There are several simple RDF vocabularies that are widely used today Dublin Core RSS FOAF It’s instructive to study how these are being used today And to track how their usage changes

8 The Six Most Popular Ontologies includes the terms necessary for describing vocabularies RDF DC RSS FOAF RDFS MCVB The statistics is generated by http://swoogle.umbc.edu

9 A usecase: FOAF FOAF (Friend of a Friend) is a simple ontology to describe people and their social networks. See the foaf project page: http://www.foaf-project.org/ CS Department of UMBC crawled the web and discovered over 1,500,000 valid RDF FOAF files. Most of these are from seveal blogging system that encode basic user info in foaf See http://apple.cs.umbc.edu/semdis/wob/foaf/ Tim Finin 2410…37262c252e \\ cryptographical hash of email address

10 FOAF vocabulary http://xmlns.com/foaf/0.1/

11 FOAF: why RDF? Extensibility! FOAF vocabulary provides 50+ basic terms for making simple claims about people FOAF files can use other RDF terms too: RSS, MusicBrainz, Dublin Core, Wordnet, Creative Commons, blood types, starsigns, … RDF guarantees freedom of independent extension OWL provides fancier data-merging facilities Result: Freedom to say what you like, using any RDF markup you want, and have RDF crawlers merge your FOAF documents with other’s and know when you’re talking about the same entities.

12 No free lunch! Consequence: We must plan for lies, mischief, mistakes, stale data, slander Dataset is out of control, distributed, dynamic Importance of knowing who-said-what Anyone can describe anyone We must record data provenance Modeling and reasoning about trust is critical Legal, privacy and etiquette issues emerge Welcome to the real world

13 FOAF example using XML <rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf- syntax-ns#" xmlns:foaf="http://xmlns.com/foaf/0.1/"> Tim Finin

14 FOAF example using XML (Cont’d) Tim Finin Tim

15 FOAF example using XML (Cont’d) Tim Finin Anupam Joshi

16 FOAF isn’t the only one Other ontologies are used to publish social information Swoogle finds >360 RDFs or OWL classes with the local name “person.”

17 Lots of FOAF tools

18 Why FOAF Information Creators Community membership management Unique Person Identification (privacy preserved) Indicating Authorship Information Consumers Provenance tracking Social networking Expose community information to new comers Match interests Trust building block

19 Studying how FOAF is being used What counts as a FOAF document? How can we find foaf documents?

20 Identify a FOAF document 1.D is an RDF document. 2.D uses FOAF namespace 3.The RDF graph serialized by D contains the sub-graph below 4.D defines one and only one Person instance 1.D is an RDF document. 2.D uses FOAF namespace 3.The RDF graph serialized by D contains the sub-graph below 4.D defines one and only one Person instance D is a generic FOAF document when 1,2,3 met D is a strict FOAF document when 1,2,3,4 met X foaf:Person Z foaf:Y rdf:type

21 Different FOAF collections DS-Swoogle Foaf documents selected from Swoogle’s database of ~340K semantic web documents Swoogle selects at most 1000 documents from any site DS-FOAF Custom crawler found 1.5M foaf documents, most from a few large blog sites (e.g., livejournal) DS-FOAF-Small Subset of ~7K non-blog foaf documents from ~1K sites defining ~37K people

22 FOAF document Discovery Bootstrap: using web search engine (Got 10,000 docs) Discovery: using rdfs:seeAlso semantics (Got 1.5M docs) Top 7 FOAF websites

23 From DS-Swoogle 17 SWDs add to the definition of foaf:Person e.g., defining superclasses, disjointness, etc. 162 properties are defined for foaf:Person e.g., properties whose domain is foaf:Person 74 properties defined as relations between people e.g., properties with both domain and range of foaf:Person 582 properties used e.g., used to assert something of a foaf:Person instance

24 Popular properties of foaf:Person non-blog (26,936) liveJournal.com (20,298,073) DS-FOAF-SMALL * (33,790) 1foaf:mbox_sha1sum (0.84)foaf:mbox_sha1sum (1.0)foaf:name(0.80) 2foaf:homepage (0.66 )dc:description(1.0)foaf:mbox_sha1sum(0.71) 3foaf:name (0.64)dc:title (1.0)foaf:nick (0.51) 4foaf:nick (0.61)foaf:nick (1.0)foaf:homepage (0.40) 5foaf:weblog (0.60)foaf:page (1.0)foaf:depiction (0.35) 6foaf:knows (0.44)foaf:weblog (0.99)foaf:weblog (0.30) 7foaf:mbox (0.38)rdfs:seeAlso (0.85)foaf:knows (0.28) 8foaf:img (0.38)foaf:knows (0.85)foaf:surname (0.27) 9bio:olb (0.35)foaf:dateOfBirth (0.71)foaf:firstName (0.26) 10rdfs:seeAlso (0.34) foaf:interest (0.67)rdfs:seeAlso (0.26) 11foaf:mbox (0.26) *DS-FOAF-SMALL is a newly dataset in Oct 2004, based on 7276 evenly sampled documents. Top 10 popular properties (per document)

25 Popular properties of foaf:Person non-blog (26,936) liveJournal.com (20,298,073) DS-FOAF-SMALL * (33,790) 1 foaf:name (0.84)dc:title (1.74)foaf:name(0.69) 2 foaf:knows (0.79)foaf:interest (1.68)foaf:mbox_sha1sum(0.65) 3 foaf:homepage (0.63)foaf:nick (1.04)rdfs:seeAlso (0.39) 4 foaf:mbox_sha1sum (0.51)foaf:weblog (1.00)foaf:nick (0.26) 5 rdfs:seeAlso (0.40)rdfs:seeAlso (0.99)foaf:homepage (0.18) 6 dc:title (0.31)foaf:knows (0.95)foaf:mbox (0.15) 7 foaf:nick (0.22)foaf:page (0.95)foaf:weblog (0.15) 8 foaf:weblog (0.18)dc:description (0.046)foaf:firstName (0.11) 9 foaf:mbox (0.15)foaf:mbox_sha1sum (0.046)foaf:surname (0.11) 10 daml:equivalentTo (0.13)foaf:dateOfBirth (0.046)foaf:depiction (0.10) 11 foaf:knows (0.07) Top 10 popular properties (per instance)

26 Collecting Personal Information http:www.cs.umbc.edu/~dingli1/foaf.rdf http://www-2.cs.cmu.edu/People/fgandon/foaf.rdf

27 Caution: Collision? Mistake! http://www.mindswap.org/~katz/2002/11/jordan.foaf http://www.ilrt.bris.ac.uk/people/cmdjb/webwho.xrdf caution

28 Instances of foaf:Person per doc Zipf’s distribution Sloppy tail: few foaf documents contain thousands of instances

29 Degree analysis For social networks, the in-degree and out-degree measure of a person is of interest Can be used to identify hubs and authorities or to compute other interesting properties or rankings Analyzing most large social networks reveals that in-degree and out-degree follows a power law or Zipf distribution We found that to be the case for social networks induced by foaf documents

30 In-degree of group Zipf’s Distribution Sharp tail: few FOAF documents have large in-degrees

31 Out-degree of group Zipf’s distribution Sloppy tail: few person directory documents

32 Patterns of FOAF Network Four types of group Isolated Only in only one inlink (97%) Only out Both (intermediate) Basic Patterns: Singleton: (isolated) Star: (only out) an active person publishes friends Clique: a small group

33 Growth of FOAF network The data suggests that there is a natural evolution for a social network (1) disjointed star-like, connected components (2) link together to form trees and forests, (3) eventually forming a scale-free network

34 Growth of FOAF network

35 The Map of FOAF network

36 Conclusions The semantic web is evolving There is a growing volume of RDF content FOAF is one of the one of the early successes. FOAF data is being used FOAF data is relatively easy to collect and analyze FOAF data is a good source for social network information

37 Thanks for your attention


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