International audienceThe present aim is to update, upon arrival of new learning data, the parameters of a score constructed with an ensemble method involving linear discriminant analysis and logistic regression in an online setting, without the need to store all of the previously obtained data. Poisson bootstrap and stochastic approximation processes were used with online standardized data to avoid numerical explosions, the convergence of which has been established theoretically. This empirical convergence of online ensemble scores to a reference “batch” score was studied on five different datasets from which data streams were simulated, comparing six different processes to construct the online scores. For each score, 50 replications using...
Supplementary information files for 'An ensemble based on neural networks with random weights for on...
International audienceWe study a stochastic gradient algorithm for performing online a constrained b...
The recent emergence of reinforcement learning has created a demand for robust statistical inference...
International audienceThe present aim is to update, upon arrival of new learning data, the parameter...
International audienceBy constructing a collection of predictors (by varying samples, selection of v...
International audienceIn an online setting, where data arrives continuously, we want to update the p...
International audienceOnline learning is a method for analyzing very large datasets ("big data") as ...
We study a stochastic gradient algorithm for performing online a constrained binary logistic regress...
We present a novel ensemble of logistic linear regressors that combines the robustness of online Ba...
International audienceThe present study addresses the problem of sequential least square multidimens...
We propose a Bayesian framework for recur-sively estimating the classifier weights in online learnin...
International audienceEnsemble forecasting resorts to multiple individual forecasts to produce a dis...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
Supplementary information files for 'An ensemble based on neural networks with random weights for on...
International audienceWe study a stochastic gradient algorithm for performing online a constrained b...
The recent emergence of reinforcement learning has created a demand for robust statistical inference...
International audienceThe present aim is to update, upon arrival of new learning data, the parameter...
International audienceBy constructing a collection of predictors (by varying samples, selection of v...
International audienceIn an online setting, where data arrives continuously, we want to update the p...
International audienceOnline learning is a method for analyzing very large datasets ("big data") as ...
We study a stochastic gradient algorithm for performing online a constrained binary logistic regress...
We present a novel ensemble of logistic linear regressors that combines the robustness of online Ba...
International audienceThe present study addresses the problem of sequential least square multidimens...
We propose a Bayesian framework for recur-sively estimating the classifier weights in online learnin...
International audienceEnsemble forecasting resorts to multiple individual forecasts to produce a dis...
Numerous information system applications produce a huge amount of non-stationary streaming data that...
Supplementary information files for 'An ensemble based on neural networks with random weights for on...
International audienceWe study a stochastic gradient algorithm for performing online a constrained b...
The recent emergence of reinforcement learning has created a demand for robust statistical inference...