In this work, we consider a binary hypothesis testing problem involving a group of human decision-makers. Due to the nature of human behavior, each human decision-maker observes the phenomenon of interest sequentially up to a random length of time. The humans use a belief model to accumulate the log-likelihood ratios until they cease observing the phenomenon. The belief model is used to characterize the perception of the human decision-maker towards observations at different instants of time, i.e some decision-makers may assign greater importance to observations that were observed earlier, rather than later and vice-versa. The global decision-maker for a binary hypothesis testing problem when the global decision-maker is a machine, fuses the human decisions using the Chair-Varshney rule with different weights for the human decisions, where the weights are determined by the number of observations that were used by the humans to arrive at their respective decisions.
翻译:在这项工作中,我们考虑的是涉及一组人类决策者的二元假设测试问题。由于人类行为的性质,每个人类决策者都按顺序观察兴趣现象,直至随机的时间长度。人类使用信仰模型积累日志相似率,直到他们停止观察该现象为止。信仰模型用来描述人类决策者对不同时间时刻观测的看法,即一些决策者可能更加重视早先观察到的观察,而不是后来观察到的观察,反之亦然。当全球决策者是机器时,全球决策者对二元假设测试问题的决策,用主席-瓦什尼规则结合人类决策,而人类决策的分量则不同,其中的分量由人类用于作出各自决定的观察次数决定。