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Automatic Adaptation of WordNet to Domains

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Figure 1. Example of a lexicalized tree.
Figure 2. a) example of semantic net for room#1; b) example of intersecting semantic patterns for transport#3 and company#1.
Figure 4. An intermediate step and the final pruning step over the Domain Concept Tree for "wine#1".

References

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