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Error-driven learning is a type of learning that emphasizes the importance of errors in the educational process. It involves using mistakes or deviations from desired outcomes as a catalyst for improvement and adaptation. This approach is often applied in various fields, including machine learning, cognitive psychology, and education. Here are some key aspects of error-driven learning: 1. **Feedback Mechanism**: Errors serve as feedback that indicates where a learner or a system has deviated from the expected path.

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