The group testing problem asks for efficient pooling schemes and algorithms that allow to screen moderately large numbers of samples for rare infections. The goal is to accurately identify the infected samples while conducting the least possible number of tests. Exploring the use of techniques centred around the Belief Propagation message passing algorithm, we suggest a new test design that significantly increases the accuracy of the results. The new design comes with Belief Propagation as an efficient inference algorithm. Aiming for results on practical rather than asymptotic problem sizes, we conduct an experimental study.
翻译:群体测试问题要求制定高效的集合计划和算法,以便筛选少量的样本以发现稀有感染。目标是在进行尽可能少的测试的同时准确识别受感染的样本。探索围绕信仰传播信息传递算法的技术的使用,我们建议采用新的测试设计,大大提高结果的准确性。新设计与信仰传播相匹配,以此作为有效的推理算法。我们用实用而非无药可治的问题大小来寻找结果,我们进行一项实验研究。