Download presentation
Presentation is loading. Please wait.
Published byDonna Robinson Modified over 8 years ago
1
CS344 Artificial Intelligence Prof. Pushpak Bhattacharya Class on 26 Mar 2007
2
Knowledge Representation (KR) AI is often equated with KR Four layers in KR – Each layer knows how to use the layer below it. Wisdom Knowledge Information Data
3
KR (contd.) KR (kinds): – Structured (Semantic Net, Frame) – Unstructured (propositional and predicate calculus) KR (application to): – Language situation (Linguistic processing) – Visual situations (Geometric processing) KR (characterization): – Analytic (Problem solving) – Synthetic (Creative Situations, Arts)
4
Ontology/Taxonomy Ontology/Taxonomy is at the heart of KR Hierarchical organization of concepts (typical relation is IS-A) Terminology: – “Upper Ontology” – CYC project (D. Lenat – 1985) – IEEE SUMO (Standard Upper Merged Ontology) – Semantic Web efforts: Resource Description Framework (RDF), Web Ontology Language (OWL), Description Logic Entity Things Events AbstractConcreteMental Physical Upper Ontology
5
Structured Knowledge Representation Structured Knowledge Representation is of two types, viz., Semantic Net and Frame Semantic Net – Concepts – Relations IS-A PART-OF
6
Knowledge Representation Illustration through a)Visual situation b)Language situation Observer Scene ID of scene: Picture 101
7
Unstructured Knowledge Representation Visual situation – Unstructured knowledge representation for Picture 101: near(table, Ram) on(table, vase) in(table, flower) colour(flower, red)
8
Structured Knowledge Representation Representation of “Still Life” as SemanticNet is shown alongside. Storing as records: Picture-101{ Instance_of: Still_life Has-parts: table-59{ instance_of: table} vase-3112{ instance_of: vase} ⋮ } Picture- 101 Still Life IS-A Picture -101 Table- 59 Ram Vase- 3112 Flower -7123 RED PART-OF COLOUR-OF IN ON
Similar presentations
© 2024 SlidePlayer.com. Inc.
All rights reserved.