Difference between revisions of "Class meeting for 10-405 Streaming Naive Bayes"
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=== Quiz === | === Quiz === | ||
− | * [https://qna.cs.cmu.edu/#/pages/view/161 Today's quiz] | + | * [https://qna.cs.cmu.edu/#/pages/view/161 Today's quiz]. |
=== Readings for the Class === | === Readings for the Class === |
Revision as of 14:26, 24 January 2018
This is one of the class meetings on the schedule for the course Machine Learning with Large Datasets 10-405 in Spring 2018.
Slides
- Slides in Powerpoint - the stream-and-sort pattern, and large-vocabulary Naive Bayes
- Slides in PDF
Quiz
Readings for the Class
- Required: my notes on streaming and Naive Bayes
- Optional: If you're interested in reading more about smoothing for naive Bayes, I recommend this paper: Peng, Fuchun, Dale Schuurmans, and Shaojun Wang. "Augmenting naive Bayes classifiers with statistical language models." Information Retrieval 7.3 (2004): 317-345.
Things to Remember
- Zipf's law and the prevalence of rare features/words
- Communication complexity
- Stream and sort
- Complexity of merge sort
- How pipes implement parallel processing
- How buffering output before a sort can improve performance
- How stream-and-sort can implement event-counting for naive Bayes