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A Maximum Likelihood Method for Estimating Performance in a Rapid Serial Visual Presentation Target-Detection Task

机译:快速串行视觉演示目标检测任务中评估性能的最大似然法

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In human-agent teams, communications are frequently limited by how quickly the human component can deliver information to the computer-based agents. Treating the human as a sensor can help relax this limitation. As an instance of this, the rapid serial visual presentation target-detection paradigm provides a fast lane for human target-detection information; however, estimating target-detection performance can be challenging when the inter-stimulus interval is short, relative to human response time variability. This difficulty stems from the uncertainty in assigning each response to the correct stimulus image. We developed a maximum likelihood method to estimate the hit rate and false alarm rate that generally outperforms classic heuristic-based approaches and our previously developed regression-based method. Simulations show that this new method provides unbiased and accurate estimates of target-detection performance across a range of true hit rate and false alarm rate values. In light of the improved estimation of hit rates and false alarm rates, this maximum likelihood method would seem the best choice for estimating human target-detection performance.
机译:在人员代理团队中,通信经常受到人员组件可以多快地将信息传递给基于计算机的代理的限制。将人视为传感器可以帮助缓解这种局限性。例如,快速的串行视觉呈现目标检测范例为人类目标检测信息提供了一条快速通道。但是,相对于人类响应时间的可变性,当刺激间隔短时,估计目标检测性能可能会面临挑战。这种困难源于将每个响应分配给正确的刺激图像的不确定性。我们开发了一种最大似然法来估计命中率和误报率,该方法通常优于经典的基于启发式的方法和我们先前开发的基于回归的方法。仿真表明,这种新方法可以在一系列真实命中率和错误警报率值之间提供无偏且准确的目标检测性能估计。考虑到对命中率和误报率的改进估计,这种最大似然法似乎是估计人类目标检测性能的最佳选择。

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