We consider the problem of twenty questions with noiseless answers, in which we aim to locate multiple objects by querying the number of objects in each of a sequence of chosen sets. We assume a joint Bayesian prior density on the locations of the objects and seek to choose the sets queried to minimize the expected entropy of the Bayesian posterior distribution after a fixed number of questions. An optimal policy for accomplishing this task is characterized by the dynamic programming equations, but the curse of dimensionality prevents its tractable compu-tation. We first derive a lower bound on the performance achievable by an optimal policy. We then provide explicit performance bounds relative to optimal for two computationally tractable p...
Planar point location is among the most fundamental search problems in computational geometry. Altho...
Suppose that n points are located at n mutually distinct but unknown positions on the line, and we c...
Suppose that we are given n mutually exclusive hypotheses, m mutually exclusive possible observation...
We consider the problem of twenty questions with noisy answers, in which we seek to find a target by...
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 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 ...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
Given a planar polygonal subdivision S, point location involves preprocessing this subdivision into ...
We introduce a novel entropy-driven Monte Carlo (EdMC) strategy to efficiently sample solutions of r...
International audienceThe stepwise entropy reduction idea was introduced in the field of Bayesian op...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
An informative measurement is the most efficient way to gain information about an unknown state. We ...
Planar point location is among the most fundamental search problems in computational geometry. Altho...
Suppose that n points are located at n mutually distinct but unknown positions on the line, and we c...
Suppose that we are given n mutually exclusive hypotheses, m mutually exclusive possible observation...
We consider the problem of twenty questions with noisy answers, in which we seek to find a target by...
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 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 ...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
Given a planar polygonal subdivision S, point location involves preprocessing this subdivision into ...
We introduce a novel entropy-driven Monte Carlo (EdMC) strategy to efficiently sample solutions of r...
International audienceThe stepwise entropy reduction idea was introduced in the field of Bayesian op...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
We consider the Bayesian formulation of a number of learning problems, where we focus on sequential ...
An informative measurement is the most efficient way to gain information about an unknown state. We ...
Planar point location is among the most fundamental search problems in computational geometry. Altho...
Suppose that n points are located at n mutually distinct but unknown positions on the line, and we c...
Suppose that we are given n mutually exclusive hypotheses, m mutually exclusive possible observation...