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Integrating Human Behavior Modeling and Data Mining Techniques to Predict Human Errors in Numerical Typing

机译:集成人类行为建模和数据挖掘技术来预测数字键入中的人为错误

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Numerical typing errors can lead to serious consequences, but various causes of human errors and the lack of contextual clues in numerical typing make their prediction difficult. Human behavior modeling can predict the general tendency in making errors, while data mining can recognize neurophysiological feedback in detecting cognitive abnormality on a trial-by-trial basis. This study suggests integrating human behavior modeling and data mining to predict human errors because it utilizes both 1) top-down inference to transform interactions between task characteristics and conditions into a general inclination of an average operator to make errors and 2) bottom-up analysis in parsing psychophysiological measurements into an individual's likelihood of making errors on a trial-by-trial basis. Real-time electroencephalograph (EEG) features collected in a numerical typing experiment and modeling features produced by an enhanced human behavior model (queuing network model human processor) were combined to improve error classification performance by a linear discriminant analysis (LDA) classifier. Integrating EEG and modeling features improved the results of LDA classification by 28.3% in keenness (′) and by 10.7% in the area under ROC curve (AUC) from that of using EEG only; it also outperformed the other three benchmarking scenarios: using behaviors only, using apparent task features, and using task features plus trial information. The AUC was significantly increased from using EEG along only if EEG + Model features were used.
机译:数字输入错误可能会导致严重的后果,但是人为错误的各种原因以及数字输入中缺少上下文线索使它们的预测变得困难。人类行为建模可以预测犯错误的一般趋势,而数据挖掘可以在逐次试验的基础上识别神经生理反馈以检测认知异常。这项研究建议整合人类行为建模和数据挖掘以预测人为错误,因为它利用以下两种方式:1)自上而下的推理将任务特征和条件之间的交互转换为一般操作员的普遍倾向以进行错误; 2)自下而上的分析在将心理生理测量结果解析为个人在逐个尝试的基础上犯错的可能性。通过线性判别分析(LDA)分类器,将在数字类型实验中收集的实时脑电图(EEG)功能和由增强型人类行为模型(排队网络模型人处理器)产生的建模功能组合在一起,以提高错误分类性能。与仅使用EEG相比,整合EEG和建模功能可将LDA分类的敏锐度(')提高28.3%,ROC曲线下面积(AUC)降低10.7%;它还优于其他三种基准测试方案:仅使用行为,使用明显的任务功能以及使用任务功能和试用信息。仅当使用EEG +模型特征时,使用EEG才使AUC显着增加。

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