Li, 2020 - Google Patents
On polysemy: A philosophical, psycholinguistic, and computational studyLi, 2020
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- 10150210234884750844
- Author
- Li J
- Publication year
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Most words in natural languages are polysemous, that is they have related but different meanings in different contexts. These polysemous meanings (senses) are marked by their structuredness, flexibility, productivity, and regularity. Previous theories have focused on …
- 230000000051 modifying 0 abstract description 220
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