Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, 2018Cataloged from PDF version of thesis.Includes bibliographical references (pages 71-77).In this thesis, I create solutions to two problems. In the first, I address the problem that many machine learning models are not interpretable, by creating a new form of classifier, called the Falling Rule List. This is a decision list classifier where the predicted probabilities are decreasing down the list. Experiments show that the gain in interpretability need not be accompanied by a large sacrifice in accuracy on real world datasets. I then briefly discuss possible extensions that allow one to directly optimize rank statistics over r...
Abstract. The theoretical novelty of many machine learning methods leading to high performing algori...
Data science and machine learning are subjects largely debated in practice and in mainstream researc...
International audienceThe use of black-box models for decisions affecting citizens is a hot topic of...
A common use case of machine learning in real world settings is to learn a model from historical dat...
Recent severe failures of black box models in high stakes decisions have increased interest in inter...
One of the fundamental assumptions behind many supervised machine learning al-gorithms is that train...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
peer reviewedThe underlying paradigm of big data-driven machine learning reflects the desire of deri...
Most machine learning methods assume that the input data distribution is the same in the training an...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
In supervised machine learning, model performance can decrease significantly when the distribution g...
Many instances of algorithmic bias are caused by distributional shifts. For example, machine learnin...
Data science techniques are revolutionizing decision making processes and facilitating data driven i...
This paper promotes a new task for supervised machine learning research: quantification—the pursuit ...
Abstract. The theoretical novelty of many machine learning methods leading to high performing algori...
Data science and machine learning are subjects largely debated in practice and in mainstream researc...
International audienceThe use of black-box models for decisions affecting citizens is a hot topic of...
A common use case of machine learning in real world settings is to learn a model from historical dat...
Recent severe failures of black box models in high stakes decisions have increased interest in inter...
One of the fundamental assumptions behind many supervised machine learning al-gorithms is that train...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
peer reviewedThe underlying paradigm of big data-driven machine learning reflects the desire of deri...
Most machine learning methods assume that the input data distribution is the same in the training an...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
Machine learning algorithms are used to train the machine to learn on its own and improve from exper...
In supervised machine learning, model performance can decrease significantly when the distribution g...
Many instances of algorithmic bias are caused by distributional shifts. For example, machine learnin...
Data science techniques are revolutionizing decision making processes and facilitating data driven i...
This paper promotes a new task for supervised machine learning research: quantification—the pursuit ...
Abstract. The theoretical novelty of many machine learning methods leading to high performing algori...
Data science and machine learning are subjects largely debated in practice and in mainstream researc...
International audienceThe use of black-box models for decisions affecting citizens is a hot topic of...