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Knowledge representation and rule based systems

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... both descriptions of attributes and procedural details ... extended knowledge about the attribute in a frame. This knowledge may be expressed in many ways ... – PowerPoint PPT presentation

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Title: Knowledge representation and rule based systems


1
Knowledge representation and rule based systems
Interviews Protocol analysis Repertory grid
Induction etc
Semantic/networks Influence diagrams Rule
matrices etc
2
Knowledge representation
  • There are four basic techniques for representing
    the acquired knowledge in a knowledge base
  • logic.
  • semantic networks.
  • frames.
  • production rules.
  • see course readings p52-75
  • In particular the sections on Logic 5.2,
    semantic networks 5.3
  • production rules 5.8 and frames 5.9.

3
Knowledge representation
  • Logic
  • Knowledge and reasoning could be represented
    using predicate logic.
  • This is the basis of the programming language
    PROLOG.
  • Semantic networks
  • ('concept maps', 'conceptual graphs' are very
    similar concepts)
  • This approach has also been introduced as an
    example of an analysis representation technique.
    However a more formal approach can lead to a
    representation scheme which may be able to be
    implemented

4
Knowledge representation
  • Semantic networks can
  • show natural relationships between
    objects/concepts
  • be used to represent declarative/descriptive
    knowledge
  • Semantic networks are constructed using nodes
    linked by directional lines called arcs
  • A node can represent a fact description
  • physical object
  • concept
  • event
  • An arc (or link) represents relationships between
    nodes

5
Knowledge representation
  • Semantic networks
  • There are some 'standard' relationship types
  • 'Is-a' (instance relationship)
  • 'Has-a' (part-subpart relationship)
  • ltwill depend on the contextgt ( definitional
    link)
  • lt again will depend on contextgt
    (heuristic link)

6
Knowledge representation
  • An example

7
Knowledge representation
  • A semantic net can be represented as a set of
    triples
  • from the above example
  • (Olesek)(is-a)(Male)
  • (Harding)(is-a)(Male)
  • (Male)(is-a)(Person)
  • (Person)(wears)(Apparel)
  • (Uniform)(is-a)(Apparel)
  • (Uniform)(has-a)(Shirt Sleeve)
  • etc
  • A knowledge base (storing facts/relationship) can
    be built up using this scheme.
  • In a semantic network inferencing involves search
    and deductive reasoning.

8
Knowledge representation
  • Disadvantages of a semantic network table 5.1,
    p60 readings
  • incomplete (no explicit operational/procedural
    knowledge)
  • lack of standards, ambiguity in node/link
    descriptions
  • not temporal (i.e. doesn't represent time or
    sequence)
  • Finally
  • semantic networks are mainly used as an aid to
    analysis to visually represent parts of the
    problem domain. The knowledge' can be
    transformed into rules or frames for
    implementation

9
Knowledge representation
  • A Frame-Based Approach sec 5.9, course readings
    p68
  • A frame is a data structure containing typical
    knowledge about a concept or object (Marvin
    Minsky (mid 1970s))
  • A frame can encompass both semantic and
    procedural knowledge.
  • A frame represents knowledge about real world
    things (or entities).
  • A frame contains both descriptions of attributes
    and procedural details
  • Expert (or knowledge base) systems that use
    frames as their fundamental knowledge
    representation scheme are referred to as
    frame-based systems
  • frames are an application of the object-oriented
    approach to knowledge-based systems

10
Knowledge representation
  • A Frame-Based Approach
  • A frame contains two key elements
  • slot
  • set of attributes for specific object being
    described
  • facet
  • extended knowledge about the attribute in a
    frame
  • This knowledge may be expressed in many ways
  • value a simple attribute value, can be
    symbolic, numeric, boolean etc
  • default the value taken if the attribute is not
    otherwise described
  • a range describes what type of information can
    appear in the attribute
  • if-added procedural knowledge i.e. what action
    to take when a value is added to the attribute
  • if needed procedural knowledge i.e. attribute
    is empty, but a value is needed --- so a
    procedure runs to obtain a value
  • ..............................
  • ...............................

11
Knowledge representation
  • A Frame-Based Approach
  • Note
  • if-changed, if-needed are examples of demons
  • In general a demon has an IF -THEN structure
  • they allow procedural knowledge to be combined
    with the declarative knowledge stored in the
    frame.
  • instantiation --- an instance of a frame is
    created see figure 5-16, course readings
  • For some general examples of frames see figure
    5.13, 5.16 p 70 course readings

12
Knowledge representation
  • Advantages and Disadvantages of a Frame-Based
    Approach
  • see table 5.6, course notes p. 74
  • Disadvantages
  • complex
  • reasoning (inferencing) is difficult
  • explanation is difficult
  • Advantages
  • knowledge domain can be naturally structured a
    similar motivation as for the O-O approach.
  • handles both semantic/procedural knowledge.
  • easy to include the idea of default values,
    detect missing values, include specialised
    procedures and to add further slots to the frames

13
Knowledge representation
  • Production Rules sec 5.8, course readings
  • a representation scheme implementable by many ES
    shells.
  • they consist of conditional statements.
  • expresses relationships b/w parameters and
    variables.
  • easy to understand (ie knowledge' is visible).
  • can express heuristic knowledge.
  • can incorporate uncertainty and can be expressed
    in modules.
  • Expert systems that use a knowledge base
    consisting of production rules are called
    rule-based systems see course readings p 76 -
    95

14
Knowledge representation
  • syntax
  • IF ltpremisegt THEN ltactiongt
  • ltpremisegt is boolean. The AND, and to a lesser
    degree OR and NOT, logical connectives are
    possible.
  • ltactiongt a series of statements
  • Notes
  • The rule premise can consist of a series of
    clauses and is sometimes referred to as the
    antecedent
  • The actions are sometimes referred to as the
    consequent
  • A rule that contains two clauses in the
    antecedent connected by logical OR can re-written
    as two rules
  • IF weather is hot OR temperature is high THEN
    ice-cream sales are high
  • could be re-written as
  • IF weather is hot THEN ice-cream sales are high
  • IF temperature is high THEN ice-cream sales are
    high
  • see table 5-3, course readings for some rule
    characteristics

15
Knowledge representation
  • Differences b/w production rules and the
    conditional statements found in conventional
    programming languages
  • Production rules are relatively independent of
    one another.
  • Production rules can be based on heuristics or
    experiential reasoning.
  • Production rules can accept uncertainty in the
    reasoning process.
  • Conditional statements combine the knowledge'
    and the reasoning' in the one structure.
  • Production rules simply represent the knowledge
    --- the inferencing or reasoning is separate.
  • A simple example part of a small KBS to help in
    weather prediction
  • R1 IF the ambient temperature is above 35 C
  • THEN the weather is hot
  • R2 IF the relative humidity is greater than
    65
  • THEN the atmosphere is humid
  • R3 IF the weather is hot AND the atmosphere is
    humid
  • THEN thunderstorms are likely (CF 9/10)
  • an alternative is to write one rule (R1 R2 are
    placed directly in the premise of R3). However we
    may wish use the statements, the weather is hot
    and the atmosphere is humid, for other purposes
    in the knowledge base.

16
Knowledge representation
  • Advantages and disadvantages of a rule-based
    approach
  • Advantages
  • easy to understand the knowledge content'.
  • explanation for the reasoning is easily shown
    i.e. a list of which rules fired (and in which
    order) during reasoning.
  • maintenance (or modification) is easy, provided
    the rule base structured well.
  • uncertainty can incorporated into the knowledge
    base.
  • Disadvantages (or limitations)
  • rule bases can be very large (thousands of
    rules)
  • rules may not reflect the actual decision
    making
  • the only structure in the KB is through the
    rule chaining

17
Next time
  • A visualisation of the rule base the AND/OR
    graph
  • Reasoning with a rule base
  • Forward chaining
  • Backward chaining
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