What is the Difference between Concept Learning and Classification Learning in Machine Learning?
Answer / Akash Kumar Misra
Concept learning involves teaching an AI system to recognize patterns or relationships that define a concept, while classification learning focuses on categorizing instances into predefined classes. In other words, concept learning is about discovering new concepts, whereas classification learning is about identifying known classes.
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