We consider the problem of group testing with sum observations and 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 study a probabilistic setting with entropy loss, in which 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. We present a new non-adaptive policy, called the dyadic policy, show that it is optimal among non-adaptive policies, and is within a factor of two of optimal among adaptive policies. This policy is quick to compute, its nonadaptive nature makes it easy to parallelize, and...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
We consider the problem of active sequential hypothesis testing where a Bayesian\u3cbr/\u3edecision ...
Abstract. We introduce a method for making approximate Bayesian inference based on quantizing the hy...
We consider the problem of group testing with sum observations and noiseless answers, in which we ai...
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 noisy answers, in which we seek to find a target by rep...
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 noise for multiple players under the minimum entropy cr...
Abstract—We consider a new group testing model wherein each item is a binary random variable defined...
The classical group testing problem asks to determine at most d defective elements in a set of n ele...
We present computationally efficient and provably correct algorithms with near-optimal sample-comple...
We consider the problem of quickly localizing multiple targets by asking questions of the form “How ...
Abstract — We consider some computationally efficient and provably correct algorithms with near-opti...
Abstract—We introduce a novel probabilistic group testing framework, termed Poisson group testing, i...
Abstract—We consider the group testing problem, in the case where the items are defective independen...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
We consider the problem of active sequential hypothesis testing where a Bayesian\u3cbr/\u3edecision ...
Abstract. We introduce a method for making approximate Bayesian inference based on quantizing the hy...
We consider the problem of group testing with sum observations and noiseless answers, in which we ai...
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 noisy answers, in which we seek to find a target by rep...
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 noise for multiple players under the minimum entropy cr...
Abstract—We consider a new group testing model wherein each item is a binary random variable defined...
The classical group testing problem asks to determine at most d defective elements in a set of n ele...
We present computationally efficient and provably correct algorithms with near-optimal sample-comple...
We consider the problem of quickly localizing multiple targets by asking questions of the form “How ...
Abstract — We consider some computationally efficient and provably correct algorithms with near-opti...
Abstract—We introduce a novel probabilistic group testing framework, termed Poisson group testing, i...
Abstract—We consider the group testing problem, in the case where the items are defective independen...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
We consider the problem of active sequential hypothesis testing where a Bayesian\u3cbr/\u3edecision ...
Abstract. We introduce a method for making approximate Bayesian inference based on quantizing the hy...