Difference between revisions of "Template Based Natural Language Generation"

From Cohen Courses
Jump to navigationJump to search
Line 1: Line 1:
 
This is a [[category::method]] of [[AddressesProblem::Natural Language Generation]].
 
This is a [[category::method]] of [[AddressesProblem::Natural Language Generation]].
  
 +
In general, template-based systems are natural language generating (NLG) systems that map their non-linguistic input directly to linguistic structure. This structure may contain "gaps" which are filled in during output.
  
 +
For example a simple template-based NLG system may take in some semantic representation like:
 +
* Departure(Delta 2047, Gate B37, 15:00)
 +
Which will in turn be associated directly with a given template, whose "gaps" are filled in with data from the semantic representation:
 +
* [flight] will depart from [gate] at [time].
 +
 +
More sophisticated models of template-based NLG have been proposed to explore the following:
 +
* Automatic methods of inducing templates
 +
** To address maintainability issues of template-based methods
 +
* Making templates more domain independent.
 +
** To address the perception that template based methods are always domain specific
 +
 +
The following are some modern template-based systems:
 +
* TG/2
 +
* D2S
 +
* EXEMPLARS
 +
* YAG
 +
* XTRAGEN
 +
 +
== References ==
 +
* Real vs. template-based natural language generation: a false opposition? Deemter et al. CL 2003.
  
 
== Relevant Papers ==
 
== Relevant Papers ==

Revision as of 02:22, 31 March 2011

This is a method of Natural Language Generation.

In general, template-based systems are natural language generating (NLG) systems that map their non-linguistic input directly to linguistic structure. This structure may contain "gaps" which are filled in during output.

For example a simple template-based NLG system may take in some semantic representation like:

  • Departure(Delta 2047, Gate B37, 15:00)

Which will in turn be associated directly with a given template, whose "gaps" are filled in with data from the semantic representation:

  • [flight] will depart from [gate] at [time].

More sophisticated models of template-based NLG have been proposed to explore the following:

  • Automatic methods of inducing templates
    • To address maintainability issues of template-based methods
  • Making templates more domain independent.
    • To address the perception that template based methods are always domain specific

The following are some modern template-based systems:

  • TG/2
  • D2S
  • EXEMPLARS
  • YAG
  • XTRAGEN

References

  • Real vs. template-based natural language generation: a false opposition? Deemter et al. CL 2003.

Relevant Papers