Classifying document categories based on physiological measures of analyst responses

Christopher Chow, Tom Gedeon
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引用次数: 10

Abstract

Improvements in the collection and analysis of physiological signals has increased the potential for computer systems to assist human analysts in various workplace tasks. We have constructed a data set of documents with three main categories of documents, being related to national security, natural disasters and computer science, ranging from stressful to non-stressful. We include some documents which contain more than one of these categories and some which contain none of these categories. The document collection is designed to mimic the range of documents an intelligence analyst would need to read quickly and categorize in the few days after the seizure of computers from suspects in a national security investigation. Our participants were university students, primarily our own computer science students, hence the inclusion of the computer science category. We found that on our dataset our participants were 79% correct on average, which we could replicate with 88% accuracy, that is, by a 70% correctness on the underlying task. The worst results by our participants was on the computer science task which was surprising, but this did not reduce the performance of our replicating the results using AI techniques.
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根据分析人员反应的生理测量对文件类别进行分类
生理信号收集和分析的改进增加了计算机系统在各种工作场所任务中协助人类分析人员的潜力。我们构建了一个文档数据集,包含三大类文档,分别与国家安全、自然灾害和计算机科学相关,从有压力到无压力。我们包括了一些包含以上一个类别的文档,以及一些不包含这些类别的文档。收集文件的目的是模仿情报分析人员在国家安全调查中没收嫌疑人的电脑后几天内需要快速阅读和分类的文件范围。我们的参与者是大学生,主要是我们自己的计算机科学专业的学生,因此包含了计算机科学类别。我们发现,在我们的数据集中,参与者的平均正确率为79%,我们可以以88%的准确率复制,也就是说,在底层任务上的正确率为70%。我们的参与者的最差结果是在计算机科学任务上,这令人惊讶,但这并没有降低我们使用人工智能技术复制结果的性能。
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