Natural Language Processing(NLP)
loss function
risk function
empirical risk
expected risk
machine learning
nlp
cross entropy loss
risk minimization
generalization
sentiment analysis
Losses and Risks in Machine Learning (NLP)
Learn Losses and Risks in Machine Learning in simple Hinglish. Understand Loss Function, Risk Function, Empirical Risk, Expected Risk, Risk Minimization, and Generalization with practical NLP examples such as Sentiment Analysis, Spam Detection, Chatbots, and Machine Translation.
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