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Related Questions
- What are the key differences between query-by-committee and core-set active learning strategies?
- How does query-by-committee compare to random sampling in terms of sample efficiency and accuracy?
- Can you explain the concept of committee diversity in query-by-committee and its impact on model performance?
- How does query-by-committee handle heterogeneous data, such as images and text, compared to other active learning strategies?
- What are the computational costs associated with query-by-committee compared to other active learning methods?
- Can you discuss the trade-offs between query-by-committee and core-set in terms of balance between sample efficiency and model performance?
- How does query-by-committee adapt to changing data distributions, such as concept drift, compared to other active learning strategies?
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