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Related Questions
- What are the main causes of overfitting in LLMs and how can regularization techniques help mitigate it?
- How does underfitting occur in LLMs and what are some strategies to prevent it?
- What is the difference between overfitting and underfitting in LLMs, and how can we balance model complexity to achieve good generalization?
- Can you explain the concept of regularization in LLMs and its impact on generalization performance?
- How does dropout regularization work in LLMs and what are its benefits and drawbacks?
- What are some common regularization techniques used in LLMs, such as L1 and L2 regularization, and how do they affect model performance?
- How can we evaluate the generalization performance of an LLM using metrics such as cross-validation and holdout sets?
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