Difference between revisions of "Class meeting for 10-605 Randomized Algorithms"
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=== Slides === | === Slides === | ||
− | * Lecture 1 [http://www.cs.cmu.edu/~wcohen/10-605/randomized-1.pptx Powerpoint], [http://www.cs.cmu.edu/~wcohen/10-605/randomized-1.pdf PDF]. | + | * Lecture 1 [http://www.cs.cmu.edu/~wcohen/10-605/2016/randomized-1.pptx Powerpoint], [http://www.cs.cmu.edu/~wcohen/10-605/2016/randomized-1.pdf PDF]. |
− | * Lecture 2 [http://www.cs.cmu.edu/~wcohen/10-605/randomized-2.pptx Powerpoint], [http://www.cs.cmu.edu/~wcohen/10-605/randomized-2.pdf PDF]. | + | * Lecture 2 [http://www.cs.cmu.edu/~wcohen/10-605/2016/randomized-2.pptx Powerpoint], [http://www.cs.cmu.edu/~wcohen/10-605/2016/randomized-2.pdf PDF]. |
=== Quizzes === | === Quizzes === |
Revision as of 16:46, 1 August 2017
This is one of the class meetings on the schedule for the course Machine Learning with Large Datasets 10-605 in Fall_2016.
Slides
- Lecture 1 Powerpoint, PDF.
- Lecture 2 Powerpoint, PDF.
Quizzes
- Quiz for lecture 1
- There is no quiz for lecture 2.
Sample Code
Optional Readings
- Randomized Algorithms and NLP: Using Locality Sensitive Hash Functions for High Speed Noun Clustering Deepak Ravichandran, Patrick Pantel, and Eduard Hovy
- Online Generation of Locality Sensitive Hash Signatures. Benjamin Van Durme and Ashwin Lall. ACL Short. 2010
- Sketch Algorithms for Estimating Point Queries in NLP. Amit Goyal, Hal Daume III, and Graham Cormode, EMNLP 2012]
Key things to remember
- The API for the randomized methods we studied: Bloom filters, LSH, CM sketches, and LSH.
- The benefits of the online LSH method.
- The key algorithmic ideas behind these methods: random projections, hashing and allowing collisions, controlling probability of collisions with multiple hashes, and use of pooling to avoid storing many randomly-created objects.
- When you would use which technique.
- The relationship between hash kernels and CM sketches.
- What are the key tradeoffs associated with these methods, in terms of space/time efficiency and accuracy, and what sorts of errors are made by which algorithms (e.g., if they give over/under estimates, false positives/false negatives, etc).
- What guarantees are possible, and how space grows as you require more accuracy.
- Which algorithms allow one to combine sketches easily (i.e., when are the sketches additive).