Tutorial The surprising effectiveness of hierarchical Bayesian methods sparse signal recovery
نویسندگان
چکیده
Speakers: Aditya Gopalan (ECE, IISc Bengaluru) Ketan Rajawat (EE, IIT Kanpur) Amitabha Bagchi (CSE, IIT Delhi) Krishna Jagannathan (EE, IIT Madras) Anand Louis (CSA, IISc Bengaluru) Nikhil Karamchandani (EE, IIT Bombay) Avhishek Chatterjee (EE, IIT Madras) Piyush Srivastava (STCS, TIFR) Bruce Hajek (ECE, UIUC) Praneeth Netrapalli (MSR Bengaluru) Chandra Murthy (ECE, IISc Bengaluru) Rajesh Sundaresan (ECE, IISc Bengaluru)
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