Okay
welcome back.
I'm happy you made it in the cold.
We are talking about a field
a subfield of logic-based AI called knowledge representation.
The idea in this is to...
There's multiple ideas
actually.
The main idea is that we want to describe the world in terms of concepts.
That's like
in natural language
we have nouns.
Dogs and cats and automobiles and persons and photons and numbers and whatever.
We want to describe the world not only in terms of classes of objects
but also of their
their relationships amongst each other and also at the level of individuals
objects in the world.
One way of doing that we've looked at is...
Semantic networks.
Semantic networks are a very simple way of doing this.
But it already gives us some of the stuff we want.
One of the things it gives us is the notion of a network of concepts and a corresponding network of individuals.
That's an important concept idea.
We divide them into things that only talk about classes of objects
the terminology.
And parts of the ontology that talk about individuals and their properties and what classes they belong to
and what the relationships of individuals are next to each other.
You can think of this a little bit like a database.
In a database
you can have different classes of objects like lectures and persons
and you can have a relation between a particular person
say me
who is in the teacher's class
relation to AI-1 in the winter semester 25-26.
The terminology you can think of as the schema of the database.
Think of all of the edges as very simple topples.
Triples, actually.
And the A-box you can think of as the data
schema and data in this.
And we're going to look at that a little bit more.
We've looked at a particular way of starting to do this using logic because logic gives us much
much more inference.
And we have mechanisms for that.
And we've started out with propositional logic only that we've given it an ontological interpretation
where the propositional variables basically act as concepts.
Sorry.
And the nice thing about this is that we can still use the tools from propositional logic.
If we have a world description, we can actually see whether it's satisfiable,
whether there may be a world that actually is represented by this.
And the central idea in which this logic is better than the semantic networks is that we can actually make world descriptions
Presenters
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01:29:18 Min
Aufnahmedatum
2026-01-22
Hochgeladen am
2026-01-23 20:30:04
Sprache
en-US