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SYSTEMS AND METHODS FOR RISK ANALYSIS AND MITIGATION WITH NESTED MACHINE LEARNING MODELS FOR EXAM REGISTRATION AND DELIVERY PROCESSES

机译:用于考试登记和交付流程的嵌套机器学习模型的风险分析和缓解系统和方法

摘要

Systems and methods may involve processing of entity data by nested machine learning models to produce one or more aggregate risk scores, which may be compared to one or more thresholds to determine when one or more predefined actions should be taken. The entity data may be collected for various entities related to an exam registration and delivery process, which may include a candidate, an exam, a test center, an exam registration event, a proctor, and an exam delivery event. Entity data for each entity may be separately processed by entity-specific machine learning models to generate intermediate entity risk scores. The intermediate entity risk scores may be input to an aggregate machine learning model, which may output an aggregate risk score. A resource management server may cause the predefined actions to be taken after comparing the aggregate risk score to the one or more thresholds.
机译:系统和方法可以涉及通过嵌套的机器学习模型处理实体数据以产生一个或多个聚合风险评分,这可以与一个或多个阈值进行比较,以确定应该采取一个或多个预定义的动作。 可以收集实体数据,用于与考试登记和交付过程相关的各种实体,其可以包括候选者,考试,测试中心,考试登记事件,Proctor和考试传送事件。 每个实体的实体数据可以由特定于特定的机器学习模型单独处理,以生成中间实体风险评分。 中间实体风险评分可以输入到聚合机器学习模型,其可以输出聚合风险分数。 资源管理服务器可以在将聚合风险分数与一个或多个阈值进行比较之后导致预定义的动作。

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