Sanskrit WordNet: Difference between revisions
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:The Sanskrit WordNet is an on-going collaboration between the University of Pavia and the University of Exeter, under the joint direction of William Michael Short and Silvia Luraghi to create a comprehensive lexico-semantic database of the Sanskrit language. It is intended to model Sanskrit's semantic system as fully and accurately as possible, in a form that is machine-interpretable and machine-actionable, and thus suitable to NLP applications of different kinds, especially in the area of natural language understanding. | :The Sanskrit WordNet is an on-going collaboration between the University of Pavia and the University of Exeter, under the joint direction of William Michael Short and Silvia Luraghi to create a comprehensive lexico-semantic database of the Sanskrit language. It is intended to model Sanskrit's semantic system as fully and accurately as possible, in a form that is machine-interpretable and machine-actionable, and thus suitable to NLP applications of different kinds, especially in the area of natural language understanding. | ||
[[category:Sanskrit]] | [[category:Sanskrit]] | ||
[[Category:Linguistics]] | |||
[[Category:WordNet]] | |||
[[category:Semantic analysis]] |
Latest revision as of 17:55, 7 September 2021
Available
Directors
- William Michael Short
- Silvia Luraghi
Description
From the project website (accessed: 2020-10-6):
- The Sanskrit WordNet is an on-going collaboration between the University of Pavia and the University of Exeter, under the joint direction of William Michael Short and Silvia Luraghi to create a comprehensive lexico-semantic database of the Sanskrit language. It is intended to model Sanskrit's semantic system as fully and accurately as possible, in a form that is machine-interpretable and machine-actionable, and thus suitable to NLP applications of different kinds, especially in the area of natural language understanding.