Recent empirical and theoretical analyses of several commonly used prediction procedures reveal a peculiar risk behavior in high dimensions, referred to as double/multiple descent, in which the asymptotic risk is a non-monotonic function of the limiting aspect ratio of the number of features or parameters to the sample size. To mitigate this undesirable behavior, we develop a general framework for risk monotonization based on cross-validation that takes as input a generic prediction procedure and returns a modified procedure whose out-of-sample prediction risk is, asymptotically, monotonic in the limiting aspect ratio. As part of our framework, we propose two data-driven methodologies, namely zero- and one-step, that are akin to bagging and...
We consider the problem of estimating an unknown non-decreasing se-quence θ from finitely many noisy...
The risk of overparameterized models, in particular deep neural networks, is often double-descent sh...
International audienceThis paper studies monotone risk aversion, the aversion to monotone, meanprese...
Bagging is a commonly used ensemble technique in statistics and machine learning to improve the perf...
Plotting a learner’s average performance against the number of training samples results in a learnin...
Bagging is a commonly used ensemble technique in statistics and machine learning to improve the perf...
Plotting a learner’s average performance against the number of training samples results in a learnin...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This thesis describes a number of new data mining algorithms which were the result of our research i...
We extend conformal prediction to control the expected value of any monotone loss function. The algo...
We develop an adaptive monotone shrinkage es-timator for regression models with the following charac...
International audienceThis article investigates the theoretical convergence properties of the estima...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
We consider the problem of estimating an unknown non-decreasing se-quence θ from finitely many noisy...
The risk of overparameterized models, in particular deep neural networks, is often double-descent sh...
International audienceThis paper studies monotone risk aversion, the aversion to monotone, meanprese...
Bagging is a commonly used ensemble technique in statistics and machine learning to improve the perf...
Plotting a learner’s average performance against the number of training samples results in a learnin...
Bagging is a commonly used ensemble technique in statistics and machine learning to improve the perf...
Plotting a learner’s average performance against the number of training samples results in a learnin...
This paper considers nonparametric and semiparametric regression models subject to monotonicity cons...
This dissertation studies the incorporation of monotonicity constraints as a type of domain knowledg...
This thesis describes a number of new data mining algorithms which were the result of our research i...
This thesis describes a number of new data mining algorithms which were the result of our research i...
We extend conformal prediction to control the expected value of any monotone loss function. The algo...
We develop an adaptive monotone shrinkage es-timator for regression models with the following charac...
International audienceThis article investigates the theoretical convergence properties of the estima...
Statistical Learning Theory studies the problem of learning an unknown relationship between observed...
We consider the problem of estimating an unknown non-decreasing se-quence θ from finitely many noisy...
The risk of overparameterized models, in particular deep neural networks, is often double-descent sh...
International audienceThis paper studies monotone risk aversion, the aversion to monotone, meanprese...