International audienceIn many learning problems, ranging from clustering to ranking through metric learning, empirical estimates of the risk functional consist of an average over tu-ples (e.g., pairs or triplets) of observations, rather than over individual observations. In this paper, we focus on how to best implement a stochastic approximation approach to solve such risk minimization problems. We argue that in the large-scale setting, gradient estimates should be obtained by sampling tuples of data points with replacement (incomplete U-statistics) instead of sampling data points without replacement (complete U-statistics based on subsamples). We develop a theoretical framework accounting for the substantial impact of this strategy on the ...
AbstractVarious appealing ideas have been recently proposed in the statistical literature to scale-u...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We present a novel method for frequentist statistical inference in M-estimation problems, based on s...
In many learning problems, ranging from clustering to ranking through metric learning, empirical est...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
Iterative stochastic approximation methods are widely used to solve M-estimation problems, in the co...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Statistical inference, such as hypothesis testing and calculating a confidence interval, is an impor...
We study to what extent may stochastic gradient descent (SGD) be understood as a "conventional" lear...
Abstract The amount of data available in the world is growing faster than our ability to deal with i...
AbstractVarious appealing ideas have been recently proposed in the statistical literature to scale-u...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We present a novel method for frequentist statistical inference in M-estimation problems, based on s...
In many learning problems, ranging from clustering to ranking through metric learning, empirical est...
International audienceIn a wide range of statistical learning problems such as ranking, clustering o...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
Iterative stochastic approximation methods are widely used to solve M-estimation problems, in the co...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Empirical risk minimization (ERM) problems express optimal classifiers as solutions of optimization ...
Abstract. A general model is proposed for studying ranking problems. We investigate learning methods...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Abstract. When dealing with datasets containing a billion instances or with sim-ulations that requir...
Statistical inference, such as hypothesis testing and calculating a confidence interval, is an impor...
We study to what extent may stochastic gradient descent (SGD) be understood as a "conventional" lear...
Abstract The amount of data available in the world is growing faster than our ability to deal with i...
AbstractVarious appealing ideas have been recently proposed in the statistical literature to scale-u...
We study the problem of learning-to-learn: inferring a learning algorithm that works well on tasks s...
We present a novel method for frequentist statistical inference in M-estimation problems, based on s...