We study the fundamental problem of learning an unknown, smooth probability function via pointwise Bernoulli tests. We provide a scalable algorithm for efficiently solving this problem with rigorous guarantees. In particular, we prove the convergence rate of our posterior update rule to the true probability function in L2-norm. Moreover, we allow the Bernoulli tests to depend on contextual features, and provide a modified inference engine with provable guarantees for this novel setting. Numerical results show that the empirical convergence rates match the theory, and illustrate the superiority of our approach in handling contextual features over the state-of-the-art
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
In Machine Learning (ML) and Evolutionary Computation (EC), it is often beneficial to approximate a ...
International audienceReading more and more bits from an infinite binary sequence that is random for...
The Minimum Description Length principle for online sequence estimation/prediction in a proper learn...
The Minimum Description Length principle for online sequence estimateion/prediction in a proper lear...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
We propose a new method to approximate the posterior distribution of probabilistic programs by means...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
Reading more and more bits from an infinite binary sequence that is random for a Bernoulli measure w...
AbstractWe consider two models of on-line learning of binary-valued functions from drifting distribu...
There are many high dimensional function classes that have fast agnostic learning algorithms when as...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
International audienceWe present a static analysis for discovering differentiable or more generally ...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
In Machine Learning (ML) and Evolutionary Computation (EC), it is often beneficial to approximate a ...
International audienceReading more and more bits from an infinite binary sequence that is random for...
The Minimum Description Length principle for online sequence estimation/prediction in a proper learn...
The Minimum Description Length principle for online sequence estimateion/prediction in a proper lear...
We consider the Minimum Description Length principle for online sequence prediction. If the underlyi...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
We propose a new method to approximate the posterior distribution of probabilistic programs by means...
The speed with which a learning algorithm converges as it is presented with more data is a central p...
Reading more and more bits from an infinite binary sequence that is random for a Bernoulli measure w...
AbstractWe consider two models of on-line learning of binary-valued functions from drifting distribu...
There are many high dimensional function classes that have fast agnostic learning algorithms when as...
Modern technological advances have prompted massive scale data collection in manymodern fields such ...
International audienceWe present a static analysis for discovering differentiable or more generally ...
In this dissertation, we explore two fundamental sets of inference problems arising in machine learn...
In Machine Learning (ML) and Evolutionary Computation (EC), it is often beneficial to approximate a ...
International audienceReading more and more bits from an infinite binary sequence that is random for...