Machine Learning and Data Mining Lecture Notes
2. The Software Engineering View. Machine learning allows us to program computers by example, which can be easier than writing code the traditional way. 3. The Stats View. Machine learning is the marriage of computer science and statistics: com-putational techniques are applied to statistical problems. Machine learning has been applied
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