In the first part of the thesis we explore three fundamental questions that arise naturally when we conceive a machine learning scenario where the training and test distributions can differ. Contrary to conventional wisdom, we show that in fact mismatched training and test distribution can yield better out-of-sample performance. This optimal performance can be obtained by training with the dual distribution. This optimal training distribution depends on the test distribution set by the problem, but not on the target function that we want to learn. We show how to obtain this distribution in both discrete and continuous input spaces, as well as how to approximate it in a practical scenario. Benefits of using this distribution are exemplified ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
A machine learning system, including when used in reinforcement learning, is usually fed with only l...
This thesis explores one of the most fundamental questions in Machine Learning, namely, how should t...
As machine learning gains significant attention in many disciplines and research communities, the va...
Supervised machine learning techniques developed in the Probably Approximately Correct, Maximum A Po...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
Discriminative learning methods for classification perform well when training and test data are draw...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
In learning theory, the training and test sets are assumed to be drawn from the same probability dis...
A common use case of machine learning in real world settings is to learn a model from historical dat...
This thesis is in the field of machine learning: the use of data to automatically learn a hypothesis...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
A machine learning system, including when used in reinforcement learning, is usually fed with only l...
This thesis explores one of the most fundamental questions in Machine Learning, namely, how should t...
As machine learning gains significant attention in many disciplines and research communities, the va...
Supervised machine learning techniques developed in the Probably Approximately Correct, Maximum A Po...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
Discriminative learning methods for classification perform well when training and test data are draw...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
In learning theory, the training and test sets are assumed to be drawn from the same probability dis...
A common use case of machine learning in real world settings is to learn a model from historical dat...
This thesis is in the field of machine learning: the use of data to automatically learn a hypothesis...
Wide-ranging digitalization has made it possible to capture increasingly larger amounts of data. In ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
We study a novel machine learning (ML) problem setting of sequentially allocating small subsets of t...
Designing robust models is critical for reliable deployment of artificial intelligence systems. Deep...