What is 'Training set' and 'Test set'?
Answer: In various areas of information science like machine learning, a set of data is used to discover the potentially predictive relationship known as 'Training Set'. Training set is an examples given to the learner, while Test set is used to test the accuracy of the hypotheses generated by the learner, and it is the set of example held back from the learner. Training set are distinct from Test set.
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Machine Learning
- Give a popular application of machine learning that you see on a day-to-day basis?
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- What is the function of unsupervised learning?
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- What is Machine Learning?
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- Why does gradient descent, regardless of the slope's sign, eventually converge to its minimum value?