| Call Number | 12855 | 
|---|---|
| Day & Time Location | TR 1:10pm-2:25pm 301 Pupin Laboratories | 
| Points | 3 | 
| Grading Mode | Standard | 
| Approvals Required | None | 
| Instructor | Nakul Verma | 
| Type | LECTURE | 
| Method of Instruction | In-Person | 
| Course Description | Core topics from unsupervised learning such as clustering, dimensionality reduction and density estimation will be studied in detail. Topics in clustering: k-means clustering, hierarchical clustering, spectral clustering, clustering with various forms of feedback, good initialization techniques and convergence analysis of various clustering procedures. Topics in dimensionality reduction: linear techniques such as PCA, ICA, Factor Analysis, Random Projections, non-linear techniques such as LLE, IsoMap, Laplacian Eigenmaps, tSNE, and study of embeddings of general metric spaces, what sorts of theoretical guarantees can one provide about such techniques. Miscellaneous topics: design and analysis of datastructures for fast Nearest Neighbor search such as Cover Trees and LSH. Algorithms will be implemented in either Matlab or Python. | 
| Web Site | Vergil | 
| Department | Computer Science | 
| Enrollment | 46 students (110 max) as of 11:06AM Friday, October 31, 2025 | 
| Subject | Computer Science | 
| Number | W4774 | 
| Section | 001 | 
| Division | School of Engineering and Applied Science: Graduate | 
| Open To | Barnard College, Business, Columbia College, Engineering:Undergraduate, Engineering:Graduate, GSAS, General Studies, Journalism | 
| Section key | 20253COMS4774W001 |