We consider the problem of twenty questions with noisy answers, in which we seek to find a target by repeatedly choosing a set, asking an oracle whether the target lies in this set, and obtaining an answer corrupted by noise. Starting with a prior distribution on the target's location, we seek to minimize the expected entropy of the posterior distribution. We formulate this problem as a dynamic program and show that any policy optimizing the one-step expected reduction in entropy is also optimal over the full horizon. Two such Bayes optimal policies are presented: one generalizes the probabilistic bisection policy due to Horstein and the other asks a deterministic set of questions. We study the structural properties of the latter, and illus...
We consider a hidden Markov model with multiple observation processes, one of which is chosen at eac...
This paper examines the problem of determining a sequence of questions, or a questionnaire, in order...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
We consider the problem of 20 questions with noisy answers, in which we seek to find a target by rep...
We consider the problem of twenty questions with noiseless answers, in which we aim to locate multip...
We consider the problem of 20 questions with noise for multiple players under the minimum entropy cr...
We consider the problem of group testing with sum observations and noiseless answers, in which we ai...
We consider the problem of quickly localizing multiple targets by asking questions of the form “How ...
International audienceThe stepwise entropy reduction idea was introduced in the field of Bayesian op...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
We consider the problem of robust optimization within the well-established Bayesian Optimization (BO...
We introduce a novel entropy-driven Monte Carlo (EdMC) strategy to efficiently sample solutions of r...
Importance sampling of target probability distributions belonging to a given convex class is conside...
AbstractWe consider the minimum entropy principle for learning data generated by a random source and...
: Suppose nature picks a probability measure P ` on a complete separable metric space X at random fr...
We consider a hidden Markov model with multiple observation processes, one of which is chosen at eac...
This paper examines the problem of determining a sequence of questions, or a questionnaire, in order...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
We consider the problem of 20 questions with noisy answers, in which we seek to find a target by rep...
We consider the problem of twenty questions with noiseless answers, in which we aim to locate multip...
We consider the problem of 20 questions with noise for multiple players under the minimum entropy cr...
We consider the problem of group testing with sum observations and noiseless answers, in which we ai...
We consider the problem of quickly localizing multiple targets by asking questions of the form “How ...
International audienceThe stepwise entropy reduction idea was introduced in the field of Bayesian op...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
We consider the problem of robust optimization within the well-established Bayesian Optimization (BO...
We introduce a novel entropy-driven Monte Carlo (EdMC) strategy to efficiently sample solutions of r...
Importance sampling of target probability distributions belonging to a given convex class is conside...
AbstractWe consider the minimum entropy principle for learning data generated by a random source and...
: Suppose nature picks a probability measure P ` on a complete separable metric space X at random fr...
We consider a hidden Markov model with multiple observation processes, one of which is chosen at eac...
This paper examines the problem of determining a sequence of questions, or a questionnaire, in order...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...