We study the performance -- and specifically the rate at which the error probability converges to zero -- of Machine Learning (ML) classification techniques. Leveraging the theory of large deviations, we provide the mathematical conditions for a ML classifier to exhibit error probabilities that vanish exponentially, say $\sim \exp\left(-n\,I + o(n) \right)$, where $n$ is the number of informative observations available for testing (or another relevant parameter, such as the size of the target in an image) and $I$ is the error rate. Such conditions depend on the Fenchel-Legendre transform of the cumulant-generating function of the Data-Driven Decision Function (D3F, i.e., what is thresholded before the final binary decision is made) learned ...
Artificial intelligence has become one of the most important fields of study during the last decade....
High accuracy forecasts are essential to financial risk management, where machine learning algorithm...
We present a general approach to statistical problems with criteria based on probabilities of large ...
We study the performance of Machine Learning (ML) classification techniques. Leveraging the theory o...
One of the fundamental machine learning tasks is that of predictive classification. Given that organ...
This chapter is dedicated to the assessment and performance estimation of machine learning (ML) algo...
In this thesis, general theoretical tools are constructed which can be applied to develop ma- chine ...
The goal of machine learning is to develop predictors that generalize well to test data. Ideally, th...
Statistical hypothesis testing is a method to make a decision among two or more hypotheses using mea...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
Abstract: Machine Learning generates programs that make predictions and informed decisions about com...
Machine learning algorithms are celebrated for their impressive performance on many tasksthat we tho...
We introduce a framework for calibrating machine learning models so that their predictions satisfy e...
This paper reviews the appropriateness for application to large data sets of standard machine learni...
The estimated accuracy of a classifier is a random quantity with variability. A common practice in s...
Artificial intelligence has become one of the most important fields of study during the last decade....
High accuracy forecasts are essential to financial risk management, where machine learning algorithm...
We present a general approach to statistical problems with criteria based on probabilities of large ...
We study the performance of Machine Learning (ML) classification techniques. Leveraging the theory o...
One of the fundamental machine learning tasks is that of predictive classification. Given that organ...
This chapter is dedicated to the assessment and performance estimation of machine learning (ML) algo...
In this thesis, general theoretical tools are constructed which can be applied to develop ma- chine ...
The goal of machine learning is to develop predictors that generalize well to test data. Ideally, th...
Statistical hypothesis testing is a method to make a decision among two or more hypotheses using mea...
AbstractThe studies of generalization error give possible approaches to estimate the performance of ...
Abstract: Machine Learning generates programs that make predictions and informed decisions about com...
Machine learning algorithms are celebrated for their impressive performance on many tasksthat we tho...
We introduce a framework for calibrating machine learning models so that their predictions satisfy e...
This paper reviews the appropriateness for application to large data sets of standard machine learni...
The estimated accuracy of a classifier is a random quantity with variability. A common practice in s...
Artificial intelligence has become one of the most important fields of study during the last decade....
High accuracy forecasts are essential to financial risk management, where machine learning algorithm...
We present a general approach to statistical problems with criteria based on probabilities of large ...