Department of Industrial Engineering and Management, Ariel University, Ariel 407000, Israel.
Sensors (Basel). 2022 Aug 30;22(17):6526. doi: 10.3390/s22176526.
Achieving successful human-agent collaboration in the context of smart environments requires the modeling of human behavior for predicting people's decisions. The goal of the current study was to utilize the TBR and the Alpha band as electrophysiological features that will discriminate between different tasks, each associated with a different depth of reasoning. To that end, we monitored the modulations of the TBR and Alpha, while participants were engaged in performing two cognitive tasks: picking and coordination. In the picking condition (low depth of processing), participants were requested to freely choose a single word out of a string of four words. In the coordination condition (high depth of processing), participants were asked to try and select the same word as an unknown partner that was assigned to them. We performed two types of analyses, one that considers the time factor (i.e., observing dynamic changes across trials) and the other that does not. When the temporal factor was not considered, only Beta was sensitive to the difference between picking and coordination. However, when the temporal factor was included, a transition occurred between cognitive effort and fatigue in the middle stage of the experiment. These results highlight the importance of monitoring the electrophysiological indices, as different factors such as fatigue might affect the instantaneous relative weight of intuitive and deliberate modes of reasoning. Thus, monitoring the response of the human-agent across time in human-agent interactions might turn out to be crucial for smooth coordination in the context of human-computer interaction.
在智能环境中实现成功的人机协作需要对人类行为进行建模,以便预测人们的决策。本研究的目的是利用 TBR 和 Alpha 波段作为电生理特征,区分不同的任务,每个任务都与不同程度的推理相关联。为此,我们监测了 TBR 和 Alpha 的调制,同时参与者执行了两项认知任务:选择和协调。在选择条件(低处理深度)下,要求参与者从四个单词组成的字符串中自由选择一个单词。在协调条件(高处理深度)下,要求参与者尝试选择与他们分配的未知伙伴相同的单词。我们进行了两种分析,一种考虑时间因素(即观察试验过程中的动态变化),另一种不考虑时间因素。当不考虑时间因素时,只有 Beta 对选择和协调之间的差异敏感。然而,当考虑时间因素时,在实验的中间阶段,认知努力和疲劳之间发生了转变。这些结果强调了监测电生理指标的重要性,因为疲劳等不同因素可能会影响直觉和深思熟虑推理模式的即时相对权重。因此,在人机交互中,监测人机交互过程中的响应随时间的变化对于实现流畅的协调可能至关重要。