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Ontology Mapping in Pervasive Computing Environment

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Title: Ontology Mapping in Pervasive Computing Environment


1
Ontology Mapping in Pervasive Computing
Environment
  • C.Y. Kong, C.L. Wang, F.C.M. Lau
  • The University of Hong Kong

2
Outline
  • Introduction
  • Literature review
  • Proposed design
  • Evaluation
  • Conclusion and Future works

3
Pervasive Computing
  • M. Satyanarayanan - An environment saturated with
    computing and communication capability, yet so
    gracefully integrated with users that it becomes
    a technology that disappears.
  • Various information flows
  • User intent
  • Resource discovery and query
  • Context information
  • Different types of computers communicate
  • Smart devices
  • Surrogates
  • Sensors
  • Peer-to-peer communication
  • Infeasible to expect all computers to have the
    same semantics on different information. i.e. the
    vocabulary of the messages, which includes the
    name and valid values of message elements

4
XML
  • A language commonly used for data exchange
  • XML sets rules for syntax for structured
    documents but it does not provide meanings for
    terms
  • Same term may be used with different meaning in
    different context
  • Different term may be used for items that have
    the same meaning
  • Hence, human needs to be involved to agree on tag
    names or mappings between roughly equivalent sets
    of tags in related standard
  • gt Device interoperability ?
  • A new language has been developed

5
Ontology
  • Provide a formal, explicit specification of a
    shared conceptualization of a domain that can be
    communicated between people and heterogeneous and
    widely spread application systems
  • A formal explicit description of concepts in a
    domain of discourse (classes), properties of each
    concept describing various features and
    attributes of the concept (slot) and restrictions
    on these properties
  • Provide meanings for terms when information
    exchange
  • Bridge knowledge gaps between different domains
  • Enable knowledge sharing in open and dynamic
    distributed systems
  • Allow devices and agents not expressly designed
    to work together to interoperate (i.e. better
    device interoperability)

6
Ontology (cont)
  • Example Country ontology (Source ontology)
  • Example Instance

Class/Concept Properties Relationship
7
Ontology Related Researches
  • Context Broker Architecture (CoBrA) University
    of Maryland, 2003
  • Defines a set of OWL ontologies called SOUPA
    (Standard Ontology for Ubiquitous and Pervasive
    Applications)
  • Ontologies for agent, personal device, time,
    space, event, document and policy
  • Enable communication between devices using
    defined ontologies
  • GAIA University of Illinois, 2002
  • Defines a set of ontologies for active space such
    as entity and context information
  • Enable communication between devices using
    defined ontologies
  • Communications may involve terms from different
    ontologies
  • Hence, Ontology Mapping is introduced

8
Scenario
Smart Space B
Concepts specified by Ontology O2
Smart Space A
Proxy B
Proxy A
Resource Description --- --- --- --- --- ---
Concepts specified by Ontology O1
Request --- --- --- --- --- --- --- --- ---
Resource Description --- --- --- --- --- ---
I want to find a resource/function
Concepts specified by Ontology O3
9
Scenario
Smart Space B
Concepts specified by Ontology O2
Proxy B
Concepts specified by Ontology O1
Resource Description --- --- --- --- --- ---
Request --- --- --- --- --- --- --- --- ---
Resource Description --- --- --- --- --- ---
I want to find a resource/function
Concepts specified by Ontology O3
10
Ontology Mapping
  • Given two ontologies O1 and O2, mapping one
    ontology onto another means that for each entity
    (concept, relation or instance) in ontology O1,
    we try to find a corresponding entity, which has
    the same intended meaning, in ontology O2

Ontology O1
Ontology O2
11
Literature Review
  • Source-based
  • Mappings are done by comparing the similarity of
    the concepts based on the properties of the
    concepts and the structure of the ontology
    defined in the source ontologies
  • Example PROMPT Stanford, 2000
  • Work well for ontologies having a specialized
    terminology like medical ontology
  • Matching accuracy decreases when mapping
    ontologies with more general terminologies
  • Instance-based
  • Mappings are done by comparing the similarity of
    the concepts based on the source ontologies and
    their instances
  • Example FCA-Merge University of Karlsruhe
    ,2001, GLUE University of Illinois and
    University of Washington, 2002
  • Structure and properties of the concepts are not
    taken into consideration
  • Accuracy varies based on the instance sets

12
New Challenges
  • Online mapping with partial ontology information
  • Efficiency
  • Space limitation of devices
  • Knowledge propagation

13
Proposed Design
  • Partial Ontology Mapping
  • A device submits a resource or function request
    (an instance I1 of ontology O1)
  • A resource or function is present and described
    by O2
  • Map all the concepts used in I1 with the concepts
    in O2
  • Number of concepts to be mapped reduces
  • More efficient

Instance
Ontology O1
Ontology O2
14
Proposed Design (cont)
  • Hybrid of source-based and instance-based
    ontology mapping
  • Properties of the concept and its relationships
    with other concepts are considered
  • Instances are considered to increase accuracy
  • Store evaluation results of instances to
  • avoid handling large number of instances at one
    time
  • but, still provide a reasonable amount of
    instances for mapping

15
Methodology
  • Notation
  • O1 source ontology of the request instance
  • O2 source ontology of the resource
  • Ir request instance
  • For each concept (Ci) appear in Ir,
  • Find a set of candidate concepts in O2
  • For each candidate concepts (Cn)
  • Compute the similarity of Ci and Cn
  • The candidate concept with maximum similarity
    degree is the mapped concept of Ci
  • History Records

16
Extraction of candidate concepts
  • Compare the name similarity of Ci and every
    concept C in O2
  • For the k-highest name similarity concepts,
    denoted by C1..k

17
Similarity of concepts Ci and Cn
  • Similarity is defined as

where Ux instance set of ontology Ox UxCi,Cn
instance set of ontology Ox that contains
concepts Ci and Cn N(instance set) Number of
instances in the instance set
  • How to find N(U1Ci,Cn), N(U1Ci,Cn) and
    N(U1Ci,Cn)?
  • (1 ) and (2) from Learning to map between
    ontologies on Semantic Web, 2002

18
Find
N(U1Ci,Cn), N(U1Ci,Cn), N(U1Ci,Cn)
  • N(U1Ci,Cn) means finding the number of instances
    in U1Ci that also contain Cn
  • Partition U1 into two sets. One set contains
    concept Ci (denoted U1Ci) while the other set
    does not contain concept Ci (denoted U1Ci)
  • Partition U2 into two sets. U2Cn and U2Cn
  • N(U1Ci,Cn) N(U1Ci)StructSim(Ci,Cn)
  • where StructSim(Ci,Cn) structure similarity of
    Ci and Cn
  • N(U1Ci,Cn) N(U1Ci) N(U1Ci,Cn)
  • N(U1Ci,Cn) N(U1Cn) N(U1Ci,Cn)
  • Similarly, N(U2Ci,Cn), N(U2Ci,Cn) and N(U2Ci,Cn)

19
Find
N(U1Ci,Cn), N(U1Ci,Cn), N(U1Ci,Cn)
  • N(U1Ci,Cn) means finding the number of instances
    in U1Ci that also contain Cn
  • Partition U1 into two sets. One set contains
    concept Ci (denoted U1Ci) while the other set
    does not contain concept Ci (denoted U1Ci)
  • Partition U2 into two sets. U2Cn and U2Cn
  • N(U1Ci,Cn) N(U1Ci)StructSim(Ci,Cn)
  • where StructSim(Ci,Cn) structure similarity of
    Ci and Cn
  • N(U1Ci,Cn) N(U1Ci) N(U1Ci,Cn)
  • N(U1Ci,Cn) N(U1Cn) N(U1Ci,Cn)
  • Similarly, N(U2Ci,Cn), N(U2Ci,Cn) and N(U2Ci,Cn)

20
Find
N(U1Ci,Cn), N(U1Ci,Cn), N(U1Ci,Cn)
  • N(U1Ci,Cn) means finding the number of instances
    in U1Ci that also contain Cn
  • Partition U1 into two sets. One set contains
    concept Ci (denoted U1Ci) while the other set
    does not contain concept Ci (denoted U1Ci)
  • Partition U2 into two sets. U2Cn and U2Cn
  • N(U1Ci,Cn) N(U1Ci)StructSim(Ci,Cn)
  • where StructSim(Ci,Cn) structure similarity of
    Ci and Cn
  • N(U1Ci,Cn) N(U1Ci) N(U1Ci,Cn)
  • N(U1Ci,Cn) N(U1Cn) N(U1Ci,Cn)
  • Similarly, N(U2Ci,Cn), N(U2Ci,Cn) and N(U2Ci,Cn)

21
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    property of Ci (denoted by PCi) and property of
    Cn (dentoed by PCn)
  • Instance Similarity is the similarity of the
    content of the instances
  • Property Similarity
  • for x 1 to number of properties of Cn

22
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    property of Ci (denoted by PCi) and property of
    Cn (dentoed by PCn)
  • Instance Similarity is the similarity of the
    content of the instances
  • Property Similarity
  • for x 1 to number of properties of Cn

23
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    property of Ci (denoted by PCi) and property of
    Cn (dentoed by PCn)
  • Instance Similarity is the similarity of the
    content of the instances
  • Property Similarity
  • for x 1 to number of properties of Cn

24
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    property of Ci (denoted by PCi) and property of
    Cn (dentoed by PCn)
  • Instance Similarity is the similarity of the
    content of the instances
  • Property Similarity
  • for x 1 to number of properties of Cn

25
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    property of Ci (denoted by PCi) and property of
    Cn (dentoed by PCn)
  • Instance Similarity is the similarity of the
    content of the instances
  • Property Similarity
  • for x 1 to number of properties of Cn

26
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    relationship of Ci (denoted by RCi) and
    relationship of Cn (dentoed by RCn)
  • Relationship Similarity
  • for x 1 to number of relationships of Cn
  • Structure Similarity

27
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    relationship of Ci (denoted by RCi) and
    relationship of Cn (dentoed by RCn)
  • Relationship Similarity
  • for x 1 to number of relationships of Cn
  • Structure Similarity

28
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    relationship of Ci (denoted by RCi) and
    relationship of Cn (dentoed by RCn)
  • Relationship Similarity
  • for x 1 to number of relationships of Cn
  • Structure Similarity

29
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    relationship of Ci (denoted by RCi) and
    relationship of Cn (dentoed by RCn)
  • Relationship Similarity
  • for x 1 to number of relationships of Cn
  • Structure Similarity

30
Structure Similarity
, StructSim(Ci,Cn)
  • Compute the similarity between each pair of
    relationship of Ci (denoted by RCi) and
    relationship of Cn (dentoed by RCn)
  • Relationship Similarity
  • for x 1 to number of relationships of Cn
  • Structure Similarity

31
No. of instances
, N(U1Cn)
  • Estimate the similarity between ontology O1 and
    O2
  • where N(O1) and N(O2) are the number of concepts
    in O1 and O2
  • N(U1Cn)

32
History Records
  • Caching mapping results
  • Increase efficiency
  • Caching instance mapping results
  • Maintain a reasonable amount of instances for
    mapping
  • Increase accuracy and reduce space usage
  • Popularity counters
  • Each property or relationship of a concept has a
    popularity counter
  • Act as a weight for the importance of the concept
  • Increase accuracy and reduce space usage
  • Knowledge accumulation
  • Knowledge propagation

33
Evaluation
  • Programming language Java 1.4.2
  • Ontology language OWL (Ontology Web Language)
  • Ontology Parser Jena 2.1
  • Input source ontologies
  • Semantic Web Research Community (SWRC) ontology
    24 concepts
  • Manually created a similar concept as SWRC
    ontology 20 concepts
  • Request instance 6 8 concepts
  • Result

Proposed design Source based
Accuracy 80 gt90
Efficiency 6s 10s
Proposed design Instance based
Accuracy 70 70
Efficiency 6s 20s
34
Conclusion
  • New challenges
  • Online mapping
  • Efficiency
  • Space limitation
  • Knowledge propagation
  • Partial ontology mapping
  • Future work
  • Experiments
  • Context
  • Resource instances selection

35
Q A
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