deep mathematical properties of submodularity with applications to machine learning
Published 8 years ago • 727 plays • Length 1:59:09Download video MP4
Download video MP3
Similar videos
-
25:42
machine learning work shop - why submodularity is important to machine learning
-
1:26:35
submodular optimization and machine learning - part 1
-
13:03
submodular combinatorial information measures with applications in machine learning
-
1:25:55
submodular optimization and machine learning - part 2
-
1:07:51
adaptive submodularity: a new approach to active learning and stochastic optimization
-
3:02
deeparnab chakrabarty: provable submodular function minimization via fujishige wolfe algorithm
-
30:58
large language models to enhance bayesian optimization
-
35:37
greg yang: the unreasonable effectiveness of mathematics in large scale deep learning
-
1:02:01
directions in ml: structured models for automated machine learning
-
47:10
robust sensor placements and submodular functions
-
58:03
learning and testing submodular functions
-
32:23
recent progress on submodular function minimization
-
8:57
02 - bommireddi - testing submodularity and other properties of valuation functions
-
1:03:53
interactive learning of mixtures of submodular functions
-
58:57
reflection methods for user-friendly submodular optimization
-
46:37
principles of intelligence session 1: learning, decisions, and intelligence
-
1:44:29
ee596b lecture 2, submodular functions, optimization, and applications to machine learning
-
1:09:20
levy processes and applications to machine learning
-
46:12
provable submodular minimization via wolfe’s algorithm