Computer Science – Computation and Language
Scientific paper
2003-06-13
Proceedings of EACL 2003 Workshop on Natural Language Generation
Computer Science
Computation and Language
8 pages, 4 figures, 1 table
Scientific paper
This paper presents a machine learning approach to discourse planning in natural language generation. More specifically, we address the problem of learning the most natural ordering of facts in discourse plans for a specific domain. We discuss our methodology and how it was instantiated using two different machine learning algorithms. A quantitative evaluation performed in the domain of museum exhibit descriptions indicates that our approach performs significantly better than manually constructed ordering rules. Being retrainable, the resulting planners can be ported easily to other similar domains, without requiring language technology expertise.
Androutsopoulos Ion
Dimitromanolaki Aggeliki
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