Thesis (Ph.D.)--University of Washington, 2012Active learning is a machine learning setting where the learning algorithm decides what data is labeled. Submodular functions are a class of set functions for which many optimization problems have efficient exact or approximate algorithms. We examine their connections. 1. We propose a new class of interactive submodular optimization problems which connect and generalize submodular optimization and active learning over a finite query set. We derive greedy algorithms with approximately optimal worst-case cost. These analyses apply to exact learning, approximate learning, learning in the presence of adversarial noise, and applications that mix learning and covering. 2. We consider active learni...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Maximization of submodular functions has wide applications in artificial intelligence and machine le...
We investigate three related and important problems connected to machine learning: approximating a s...
Thesis (Ph.D.)--University of Washington, 2012Active learning is a machine learning setting where th...
Many problems in artificial intelligence require adaptively making a sequence of decisions with unce...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
Abstract. Submodular functions are discrete functions that model laws of diminishing returns and enj...
Submodularity is a discrete domain functional property that can be interpreted as mimicking the role...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
In this manuscript, we offer a gentle review of submodularity and supermodularity and their properti...
We investigate two new optimization problems — minimizing a submodular function subject to a submodu...
We investigate two new optimization problems — minimizing a submodular function subject to a submodu...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
We study the worst-case adaptive optimization problem with budget constraint that is useful for mode...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Maximization of submodular functions has wide applications in artificial intelligence and machine le...
We investigate three related and important problems connected to machine learning: approximating a s...
Thesis (Ph.D.)--University of Washington, 2012Active learning is a machine learning setting where th...
Many problems in artificial intelligence require adaptively making a sequence of decisions with unce...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
Abstract. Submodular functions are discrete functions that model laws of diminishing returns and enj...
Submodularity is a discrete domain functional property that can be interpreted as mimicking the role...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
In this manuscript, we offer a gentle review of submodularity and supermodularity and their properti...
We investigate two new optimization problems — minimizing a submodular function subject to a submodu...
We investigate two new optimization problems — minimizing a submodular function subject to a submodu...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
We study the worst-case adaptive optimization problem with budget constraint that is useful for mode...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Maximization of submodular functions has wide applications in artificial intelligence and machine le...
We investigate three related and important problems connected to machine learning: approximating a s...