首页> 外文会议>Human Factors and Ergonomics Society Annual Meeting >Neural Correlates of Trust During an Automated System Monitoring Task: Preliminary Results of an Effective Connectivity Study
【24h】

Neural Correlates of Trust During an Automated System Monitoring Task: Preliminary Results of an Effective Connectivity Study

机译:自动化系统监控任务期间信任的神经关系:有效连接研究的初步结果

获取原文

摘要

As autonomous systems become more prevalent and their inner workings become more opaque, we increasingly rely on trust to guide our interactions with them especially in complex or rapidly evolving situations. When our expectations of what automation is capable of do not match reality, the consequences can be sub-optimal to say the least. The degree to which our trust reflects actual capability is known as trust calibration. One of the approaches to studying this is neuroergonomics. By understanding the neural mechanisms involved in human-machine trust, we can design systems which promote trust calibration and possibly measure trust in real time. Our study used the Multi Attribute Task Battery to investigate neural correlates of trust in automation. We used EEG to record brain activity of participants as they watched four algorithms of varying reliability perform the SYSMON subtask on the MATB. Subjects reported their subjective trust level after each round. We subsequently conducted an effective connectivity analysis and identified the cingulate cortex as a node, and its asymmetry ratio and incoming information flow as possible indices of trust calibration. We hope our study will inform future work involving decision-making and real-time cognitive state detection.
机译:随着自治系统变得更加普遍,其内在的工作变得更加不透明,我们越来越依赖信任,引导我们与他们的互动,特别是在复杂或快速发展的情况下。当我们对自动化的预期能够与现实不匹配时,所需的后果可能是最重要的。我们信任反映实际能力的程度称为信任校准。学习这一点的方法之一是神经变动脉。通过了解涉及人机信任的神经机制,我们可以设计促进信任校准的系统,并可能实时测量信任。我们的研究使用了多属性任务电池来调查自动化信任的神经关系。我们使用EEG来记录参与者的大脑活动,因为他们观看了四种不同可靠性的算法,请在MATB上执行SYSMON子批次。受试者在每轮之后报告了他们的主观信任水平。随后我们进行了有效的连接性分析,并将Cingulate Cortex作为节点识别,以及其不对称比和输入信息流,以及可能的信任校准指标。我们希望我们的研究能够告知未来的工作涉及决策和实时认知状态检测。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号