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Related Questions
- What are contextualized embeddings and how do they differ from traditional word embeddings?
- Can you provide an example of how contextualized embeddings are used in natural language processing?
- How do contextualized embeddings relate to the concept of semantic meaning and word sense disambiguation?
- What is the role of contextualized embeddings in ontology alignment and how do they improve alignment accuracy?
- Can you explain the concept of multi-task learning and how it is used in conjunction with contextualized embeddings for ontology alignment?
- How do contextualized embeddings handle polysemy and homographs in ontology alignment?
- What are the benefits and limitations of using contextualized embeddings for ontology alignment compared to traditional methods?
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