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Related Questions
- What are the primary challenges in handling concept drift in contextual entity disambiguation?
- How do graph-based methods adapt to changing entity relationships over time in contextual entity disambiguation?
- What are some common techniques used to detect concept drift in entity embeddings for contextual entity disambiguation?
- Can you explain the impact of concept drift on the performance of graph-based methods in contextual entity disambiguation?
- How do graph-based methods handle the situation where the context in which entities are mentioned changes over time?
- What role does entity normalization play in mitigating the effects of concept drift in contextual entity disambiguation?
- Are there any graph-based methods that are specifically designed to handle concept drift in contextual entity disambiguation, and if so, what are their key characteristics?
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