We are studying long term sequence prediction (forecasting). We approach this by investigating criteria for choosing a compact useful state representation. The state is supposed to summarize useful information from the history. We want a method that is asymptotically consistent in the sense it will provably eventually only choose between alternatives that satisfy an optimality property related to the used criterion. We extend our work to the case where there is side information that one can take advantage of and, furthermore, we briefly discuss the active setting where an agent takes actions to achieve desirable outcomes
We study online prediction of bounded stationary ergodic processes. To do so, we consider the settin...
International audienceA sequence x1,...,xn,... of discrete-valued observations is generated accordin...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
We are studying long term sequence prediction (forecasting). We approach this by investigating crite...
We are studying long term sequence prediction (forecasting). We approach this by investigating crite...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
We present an efficient exact algorithm for estimating state sequences from outputs (or observations...
Scientific explanation often requires inferring maximally predictive features from a given data set....
In this thesis we discuss finite state Markov chains, which are a special class of stochastic proces...
In this work we address the problem of how to use time series data to choose from a finite set of ca...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
The present thesis addresses several machine learning problems on generative and predictive models o...
International audienceA sequence $x_1,\dots,x_n,\dots$ of discrete-valued observations is generated ...
A very general framework for modeling uncertainty in learning environments is given by Partially Obs...
Scientific explanation often requires inferring maximally predictive features from a given data set....
We study online prediction of bounded stationary ergodic processes. To do so, we consider the settin...
International audienceA sequence x1,...,xn,... of discrete-valued observations is generated accordin...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
We are studying long term sequence prediction (forecasting). We approach this by investigating crite...
We are studying long term sequence prediction (forecasting). We approach this by investigating crite...
We address the problem of sequence prediction for nonstationary stochastic processes. In particular,...
We present an efficient exact algorithm for estimating state sequences from outputs (or observations...
Scientific explanation often requires inferring maximally predictive features from a given data set....
In this thesis we discuss finite state Markov chains, which are a special class of stochastic proces...
In this work we address the problem of how to use time series data to choose from a finite set of ca...
This A lot of machine learning concerns with creating statistical parameterized models of systems ba...
The present thesis addresses several machine learning problems on generative and predictive models o...
International audienceA sequence $x_1,\dots,x_n,\dots$ of discrete-valued observations is generated ...
A very general framework for modeling uncertainty in learning environments is given by Partially Obs...
Scientific explanation often requires inferring maximally predictive features from a given data set....
We study online prediction of bounded stationary ergodic processes. To do so, we consider the settin...
International audienceA sequence x1,...,xn,... of discrete-valued observations is generated accordin...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...