ClariSense+: An enhanced traffic anomaly explanation service using social network feeds
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ClariSense+: An enhanced traffic anomaly explanation service using social network feeds

机译:Clarisense +:使用社交网络饲料增强的交通异常说明服务

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AbstractThe explosive growth in social networks that publish real-time content begs the question of whether their feeds can complement traditional sensors to achieve augmented sensing capabilities. One such capability is toexplainanomalous sensor readings. In our previous conference paper, we built an automated anomaly clarification service, called ClariSense, with the ability to explain sensor anomalies using social network feeds (from Twitter). In this extended work, we present an enhanced anomaly explanation system that augments our base algorithm by considering both (i) the credibility of social feeds and (ii) the spatial locality of detected anomalies. The work is geared specifically for describing small-footprint anomalies, such as vehicular traffic accidents. The original system used information gain to select more informative microblog items to explain physical sensor anomalies. In this paper, we show that significant improvements are achieved in our ability to explain small-footprint anomalies by accounting for information credibility and further discriminating among high-information-gain items according to the size of their spatial footprint. Hence, items that lack sufficient corroboration and items whose spatial footprint in the blogosphere is not specific to the approximate location of the physical anomaly receive less consideration. We briefly demonstrate the workings of such a system by considering a variety of real-world anomalous events, and comparing their causes, as identified by ClariSense+, to ground truth for validation. A more systematic evaluation of this work is done using vehicular traffic anomalies. Specifically, we consider real-time traffic flow feeds shared by the California traffic system. When flow anomalies are detected, our system automatically diagnoses their root cause by correlating the anomaly with feeds on Twitter. For evaluation purposes, the identified cause is then retroactively compared to official traffic and incident reports that we take as ground truth. Results show a great correspondence between our automatically selected explanations and ground-truth data.]]>
机译:<![cdata [ 抽象 公布实时内容的社交网络中的爆炸增长乞求其饲料是否可以补充传统传感器的问题实现增强的传感能力。一种这样的能力是解释异常传感器读数。在我们以前的会议论文中,我们建立了一个自动化的异常澄清服务,称为Clarisense,能够使用社交网络饲料(来自Twitter)来解释传感器异常。在这个扩展的工作中,我们提出了一种增强的异常解释系统,通过考虑(i)社会饲料的可信度和(ii)检测到的异常的空间局部,增强了我们的基础算法。这项工作专门用于描述小型占地面积,如车辆交通事故。原始系统使用信息增益来选择更多信息性的微博项目来解释物理传感器异常。在本文中,我们表明,在我们通过核算信息可信度以及根据其空间足迹的规模,我们可以通过核算信息可信度和进一步区分高信息收益项目来实现显着的改进。因此,缺乏足够的粗化和膀胱脚印的物品的物品不是特定于物理异常的近似位置接受较少考虑的特定。通过考虑各种真实的异常事件,并将其原因与Clarisense +确定的原因进行比较,以验证的原因,简要展示了这样一个系统的工作。使用车辆交通异常完成对这项工作的更系统评估。具体而言,我们考虑加州交通系统共享的实时业务流量。当检测到流异常时,我们的系统通过将异常与Twitter上的源相关联,自动诊断其根本原因。为了评估目的,与我们认为真理的官方交通和事件报告相比,依照鉴定的原因追溯。结果显示我们自动选择的解释和地面真实数据之间的良好对应关系。 ]]>

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