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I was just reading this article and it mentions that some organization had an Ontology as(?) their database(?) layer, and that the decision to do this was bad. Problem is I hadn't heard about this before, so I can't understand why it's bad.

So I tried googling about databases and ontology, and came about quite a few pdfs from 2006 that we're full of incomprehensible content (for my mind). I read a few of these and at this point still have absolutely no idea what they are talking about.

My current impression is that it was some crazy fad of 2006 that some academics were trying to sell us, but failed miserably due to the wording of their ideas. But I'm still curious if anyone actually knows what this is actually all about.

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I'm interested to hear about it as well. –  Tomislav Nakic-Alfirevic Mar 25 '10 at 10:45

6 Answers 6

up vote 15 down vote accepted

Karussell already provided the wikipedia definition:

"a formal representation of the knowledge by a set of concepts within a domain and the relationships between those concepts".

In order to implement such a representation, several languages have been developed. The one that currently gets the most attention is probably the Web Ontology Language (OWL).

In a traditional relational database, concepts can be stored using tables, but the system does not contain any information about what the concepts mean and how they relate to each other. Ontologies do provide the means to store such information, which allows for a much richer way to store information. This also means that one can construct fairly advanced and intelligent queries. Query languages such as SPARQL have been developed specifically for this purpose.

For my masters thesis, I have worked with OWL ontologies, but this was as part of a fairly academic research. I don't know if any of this technology is currently used in practice very much, but I'm sure the potential is there.

Update: example

An example of 'meaning' and reasoning over the ontologies: say you define in your ontology a class Pizza, and a class Vegetarian Pizza, which is a Pizza that has no Ingredients that belong to the class Meat. If you now create some instance of a Pizza that just happens not to have any meat ingredients, the system can automatically infer that your pizza is also a Vegetarian Pizza, even if you did not explicitly specify it.

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Ok its still not truely clear, but I think I understand what you mean. Its kind of a snow flake database that stores all the metadata along with the data(?) sounds kind of reasonable if you had specialized software instead of a SQL based DB. It does seem hard to optimize but with all the NoSQL these days it might have some use. –  Robert Gould Mar 25 '10 at 12:40
Yeah, I know, the basis is not very difficult but it's hard to get your head around initially. If you really want to get a feel for it, I suggest you download an OWL editor such as Protégé and look for a tutorial (I remember working through a tutorial that models a lot about Pizza's, try searching for it). That will give you a better idea of what 'relationships' and 'meaning' mean in this context. –  Daan Mar 25 '10 at 13:18

An ontology is a schema (model) describing the types (and possibly some individuals) in a domain, the relationships that may exist between types and individuals, and constraints on the way that individuals and properties may be combined.

One analogy is with the UML class diagrams - but ontologies have formal semantics, so can be machine-interpreted, rather than just being diagrams for human consumption.


Classes: Project, Person, ProjectManager. ProjectManager is a subclass of Person (apparently). People and Projects are disjoint

Relationships: worksOn, manages. Manages is a sub-property of worksOn

Constraints: People work on Projects, not the other way around. Only Project Managers can manage projects.

This simple example enables machine inferences, e.g. if X manages Y, then we can infer that Y is a Project, and X is a Project Manager and therefore a Person.

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+1 Great and categorized exemple! And really nice analogy to UML. It clarified me the whole concept of ontology :) –  JosephConrad Jun 10 '13 at 18:03

Once upon a time I have assigned such question to a good developer to answer as a task, because my superior believed in Ontologies. It didn't materialize to any sharp answer and my superior was fired some time after. I'm still curios.

My current understanding is that this is an idea of words in a natural language (or "entities") being connected to each other with different relations. Then we generalize that idea to any DB entities. And basically we end up with noting interesting and with no useful query language.

I may be wrong.

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LOL! Ok that was a great answer to my third paragraph :) –  Robert Gould Mar 25 '10 at 12:31
If you want a query language for semantic web (ontologies) then there are several. Try SPARQL, for example: (w3.org/TR/rdf-sparql-query) –  DNA May 7 '11 at 20:09

AI people at some point thought that in case we want to build a system to be able to somehow think we should enable the system to somehow know what we know about the world. In other words they wanted to impose our own understanding of the word to the computers by generating a database which almost contains information and concise definitions about concepts and entities we know. Such databases have been built with different algorithms but not very precise after all. You better have a look on a database which is known to be among the best called CYC. http://sw.opencyc.org/ check few words in the box and see what you get as a return. Best wishes

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What about wikipedia?

an ontology is a formal representation of the knowledge by a set of concepts within a domain and the relationships between those concepts

See 'Domain ontologies' and this and that for more details.

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I am a total layman, but it appears to me that artificial intelligence research has a 50 year history that goes round in cycles.

  1. Extravagant predictions by academics.
  2. Generous funding by government.
  3. Modest results are produced.
  4. Funding is cut savagely.
  5. Time passes. The previous cycle is forgotten. Return to step 1.

We've been round the cycle twice. Possibly this time it will be different...?

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