Multiple Choice

A development team fine-tunes a large language model to be a helpful assistant for summarizing legal documents. They use a large dataset of legal texts and their corresponding summaries. After deployment, they observe the following:

  1. The model performs exceptionally well when asked to summarize new, unseen legal documents (e.g., contracts, court rulings).
  2. However, when users give it slightly different instructions, such as 'Explain this legal clause in simple terms,' 'Extract the key dates from this document,' or 'Translate this legal paragraph into French,' the model's performance is poor and unreliable.

Based on this scenario, which statement best analyzes the model's generalization capabilities?

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Updated 2025-09-26

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