| Speaker: | Santanu Das (TIFR) |
| Organiser: | Yeshwant Chandrakant Pandit |
| Date: | Friday, 21 Nov 2025, 16:00 to 17:00 |
| Venue: | A-201 (STCS Seminar Room) |
Sparse mean estimation is a fundamental problem in high-dimensional statistics, arising in diverse applications such as signal processing, genomics, and machine learning. However, real-world datasets are rarely clean—samples are often corrupted by adversarial noise or malicious outliers. This motivates the study of robust sparse mean estimation, where the goal is to design estimators that remain accurate even when a fraction of the data has been arbitrarily contaminated.