Emergent Semantics - PowerPoint PPT Presentation

1 / 23
About This Presentation
Title:

Emergent Semantics

Description:

How about combining WI & WII synergistically? Problems with current ... Image always has meaning relative to practices and social codes of specific user. ... – PowerPoint PPT presentation

Number of Views:129
Avg rating:3.0/5.0
Slides: 24
Provided by: sah45
Category:

less

Transcript and Presenter's Notes

Title: Emergent Semantics


1
Emergent Semantics
  • Trends Controversies
  • Satya Sanket Sahoo
  • LSDIS Lab,
  • University Of Georgia

2
Outline
  • Overview
  • Case 1 Image Retrieval
  • (Simone Santini, University of California, San
    Diego)
  • Case 2 Multiagent system communication
  • (Luc Steels, University of Brussels AI lab and
    Sony Computer Science Lab, Paris)
  • Case 3 Emergent Semantics for ontologies
  • (Alexander Maedche, University of Karlsruhe)
  • Conclusions

3
Overview of Emergent Semantics
  • We are drowning in information starving for
    knowledge! Web, Knowledge management etc.
  • Wittgenstein I World is composed of complex
    facts and we analyze into less complex facts till
    we arrive at atomic facts
  • Wittgenstein II The meaning of an expression
    must be understood in terms of its communication
    context i.e. a posteriori.

4
Overview
  • How about combining WI WII synergistically?
  • Problems with current semantic-based systems
  • Knowledge acquisition bottleneck shortage of
    up-to-date semantic description
  • Interactions between users and systems go unused
    can help semantic structure emerge

  • Emergent Semantics Let the semantics for a
    system emerge through the interactions of human
    machine agents!

5
Case 1 Image Retrieval
  • Problem Retrieve images from a database based on
    their content.
  • Content ? images meaning perhaps?
  • Idea - extract features from image and cast in a
    metric space so that similar images have
    similar meaning.
  • But, problem in Image database because of this
    very Semantic presupposition

6
Images meaning
  • Images are terms predicated by an external
    discourse
  • Images in isolation have no meaning, rely on an
    external context to predicate their content.
  • Every decoding is another encoding! context
    makes the meaning clear.
  • Ex UFO Artwork
  • (Year 1660)

7
Semantics in Database
  • Possibly, design a schema using some data types
    and data algebras that encapsulate the desired
    semantics.
  • Database discourse The set of constructs that
    determine the semantics of records.
  • So, the database schema determines the discourse
    a priori completely formalized.
  • But, in Image databases, representing discourse
    is not possible.

8
Solution concentrate on these points
  • Parts of an images semantic is derived from its
    relation with other images so, query should
    manipulate similarity function
  • Semantics of images descriptor (features) should
    be specified through a discourse (logic,
    algebraic or functional aspects)
  • Image always has meaning relative to practices
    and social codes of specific user.

9
Goals
  • The interaction between user and database should
    not be so much as to retrieve image based on
    pre-existing semantics but, to create image
    semantics
  • Interaction between user and database should be a
    navigation, not a query, so that user dictates
    similarities association between images
    through this re-organize the database to reflect
    the desired semantics.

10
Case 2 Language Games for Emergent Semantics
  • To process information, the information must be
    represented there is no computation without
    representation.
  • Can computer systems develop and adapt
    representations?
  • Origins of representations can be classified into
    two approaches
  • Induction
  • Selection

11
Induction
  • In statistical-pattern recognition, symbolic
    machine learning and neural-network research
  • Can be supervised the system receives
    feedback on what it needs to learn
  • Can be unsupervised the system attempts to
    detect the natural classes or regularities in the
    data.

12
Induction - limitations
  • For supervised learning great deal of human
    intervention (assemble adequate set of training
    data, choose outline of representation to bias
    learning algorithm..)
  • For unsupervised learning systems come up with
    concepts that are irrelevant to task at hand.
  • Ex a series of images may cluster based on
  • the of day they were taken rather than on
  • objects contained in the image.

13
Selection
  • Based on Darwinian model of genetic algorithm.
  • One process generates at random a variety of
    possible representations and the other process
    (selection process) picks out the representation
    best suited for the given task.
  • But, limitations w.r.t Human intervention and
    risk associated with search like ending up with
    local minima or long search time.

14
Construction
  • Proposed by the author Luc Steels
  • Ex Moving into a new house, so order everyones
    shoes we need a shoes to be categorized and an
    external representation of the categorization.
  • Need three activities
  • Interaction
  • Construction
  • Communication

15
Construction
  • Interaction involves task that generates need
    for new meaning and we need a multiagent system
    that interacts with the real world to evolve a
    representation
  • Construction these agents impose new categories
    (based on function of the task). It does not
    necessarily have to gradual development.

16
Construction
  • Communication agents need to communicate among
    themselves develop symbols (on their own) to
    externalize their concepts

17
Goals
  • Co-evolution of language (external
    representation) and meaning memetically?
  • This is a collective and incremental process of
    development of conceptual framework.
  • can be applied to formation and adaptation of
    ontologies for Web-based agents or evolving
    dialogs with humanoid robots.
  • This approach to Emergent Semantics is
    complementary to Induction and Selection.

18
Case 3 Emergent Semantics for Ontologies
  • The proposed semantic web will use formal
    languages like OWL to represent ontologies.
  • But, Semantic Web should bring value to human
    users and not just enable machine understanding
    of content.
  • Communication process between humans and machines
    cannot be ensured by these formal semantics alone.

19
Emergent Semantics for Ontologies
  • We need to analyze, design and develop computing
    systems using and evaluating Semiotic theories.
  • In general, there are three levels of
    understanding
  • Syntactic Natural language primitives
  • Semantic Meaning of the primitives
  • Pragmatic Interpretation of primitives by humans.

20
Ontology development
  • Ontology tries to formalize natural language to
    enable machine processable and understandable
    data.
  • There are three aspects to be covered
  • Formal semantics imposes machine processable
    semantics
  • Human cognitive structures the language
    primitives in use
  • How humans use these structures to communicate

21
Ontology learning
  • Ontology learning should be a bottom-up
    approach.
  • Given a set of data to reflect human
    communication and interactive process discover
    semantics implicitly contained in it
  • Emergent Semantic require support from ontology
    learning approaches
  • Extracting ontology from scratch
  • Ontology evolution from analyzing legacy and
    application data.

22
Emergent Semantics - Conclusions
  • Instead of imposing a priori concepts on
    observations (Top-Down).
  • Let semantics emerge from simple observations
    derived from interactions (Bottom-up).
  • This approach is proposed to provide precise
    query, retrieval, communication or translation
    for a wide variety of applications.

23
References
  • Steffen Staab , Alexander Mädche , Frank Nack ,
    Simone Santini , Luc Steels Emergent Semantics.
  • IEEE Intelligent Systems, Trends
    Controversies, 17(1), Jan/Feb 2002, pp. 78-86.,
    Publishing Year 2002
  • W.I. Gorky, D.V. Sreenath, and F. Fotouhi
    Emergent Semantics and the Multimedia Semantic
    Web.
  • Ramesh Jain, University of California, San Diego
    and PRAJA Inc. Emergent Semantics and
    Experiential Computing. jain_at_praja.com
Write a Comment
User Comments (0)
About PowerShow.com