Decisions are increasingly taken by both humans and machine learning models. However, machine learning models are currently trained for full automation—they are not aware that some of the decisions may still be taken by humans. In this paper, we take a first step towards the development of machine learning models that are optimized to operate under different automation levels. More specifically, we first introduce the problem of ridge regression under human assistance and show that it is NP-hard. Then, we derive an alternative representation of the corresponding objective function as a difference of nondecreasing submodular functions. Building on this representation, we further show that the objective is nondecreasing and satisfies α-submod...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
In this manuscript, we offer a gentle review of submodularity and supermodularity and their properti...
We investigate three related and important problems connected to machine learning: approximating a s...
Most supervised learning models are trained for full automation. However, their predictions are some...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In many applications, one has to actively select among a set of expensive observations before making...
In many applications, one has to actively select among a set of expensive observations before making...
Linear regression methods are commonly used by both researchers and data scientists due to their int...
Maximization of submodular functions has wide applications in artificial intelligence and machine le...
In many applications, one has to actively select among a set of expensive observa-tions before makin...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
Advances in machine learning are having a profound impact on disciplines spanning the sciences. Assi...
Advances in machine learning are having a profound impact on disciplines spanning the sciences. Ass...
Machine learning models have liberated manpower greatly in many real-world tasks, but their predicti...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
In this manuscript, we offer a gentle review of submodularity and supermodularity and their properti...
We investigate three related and important problems connected to machine learning: approximating a s...
Most supervised learning models are trained for full automation. However, their predictions are some...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In many applications, one has to actively select among a set of expensive observations before making...
In many applications, one has to actively select among a set of expensive observations before making...
Linear regression methods are commonly used by both researchers and data scientists due to their int...
Maximization of submodular functions has wide applications in artificial intelligence and machine le...
In many applications, one has to actively select among a set of expensive observa-tions before makin...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
Advances in machine learning are having a profound impact on disciplines spanning the sciences. Assi...
Advances in machine learning are having a profound impact on disciplines spanning the sciences. Ass...
Machine learning models have liberated manpower greatly in many real-world tasks, but their predicti...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
In this manuscript, we offer a gentle review of submodularity and supermodularity and their properti...
We investigate three related and important problems connected to machine learning: approximating a s...