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Trust filter for disease surveillance: Identity

机译:用于疾病监视的信任过滤器:身份

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A flexible and extensible mobile application was delivered for evaluation and optimal inclusion of NextGen (Next Generation) data sources into biosurveillance for early detection, situational awareness and prediction. We present trust analysis of NextGen data sources to increase data confidence. One of the trust filters is the Identity filter, which helps us determine the degree of separation between the sender and the subject of a sentence. In this paper, the authors present the definition of Identity. To help us distinguish different degrees of separation, the authors use relation distance along with a family tree to weigh different relationships. Then the authors compare a discriminative algorithm and a generative algorithm to calculate a user's Identity score. In the end, the authors conclude that it is a good choice to apply a binary classification algorithm combined with a Natural Language Processing algorithm because of the trade-off between accuracy and runtime complexity.
机译:提供了一个灵活且可扩展的移动应用程序,用于评估NextGen(下一代)数据源并将其最佳地纳入生物监视,以进行早期检测,态势感知和预测。我们提出了对NextGen数据源的信任分析,以提高数据的可信度。信任过滤器之一是身份过滤器,它可以帮助我们确定发件人与句子主题之间的分隔程度。在本文中,作者提出了身份的定义。为了帮助我们区分不同程度的分离,作者使用关系距离和一棵家谱来权衡不同的关系。然后,作者比较判别算法和生成算法,以计算用户的身份评分。最后,作者得出结论,将二进制分类算法与自然语言处理算法结合使用是一个不错的选择,因为它需要在准确性和运行时复杂性之间进行权衡。

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