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Concept Learning in Machine Learning

Concept Learning ek supervised ML approach hai jisme machine labeled training examples se general rules seekh kar naye data ko classify karti hai. Is article me terminologies, process, version space, candidate elimination algorithm, applications, advantages aur limitations explain kiye gaye hain.

Gracy TyagiJul 8, 2026 5 min padhne ka time 13 views
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