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Deep Structured Cross-Modal Anomaly Detection

机译:深层结构的跨模态异常检测

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Anomaly detection is a fundamental problem in data mining field with many real-world applications. A vast majority of existing anomaly detection methods predominately focused on data collected from a single source. In real-world applications, instances often have multiple types of features, such as images (ID photos, finger prints) and texts (bank transaction histories, user online social media posts), resulting in the so-called multi-modal data. In this paper, we focus on identifying anomalies whose patterns are disparate across different modalities, i.e., cross-modal anomalies. Some of the data instances within a multi-modal context are often not anomalous when they are viewed separately in each individual modality, but contains inconsistent patterns when multiple sources are jointly considered. The existence of multi-modal data in many real-world scenarios brings both opportunities and challenges to the canonical task of anomaly detection. On the one hand, in multimodal data, information of different modalities may complement each other in improving the detection performance. On the other hand, complicated distributions across different modalities call for a principled framework to characterize their inherent and complex correlations, which is often difficult to capture with conventional linear models. To this end, we propose a novel deep structured anomaly detection framework to identify the cross-modal anomalies embedded in the data. Experiments on real-world datasets demonstrate the effectiveness of the proposed framework comparing with the state-of-the-art.
机译:在许多实际应用中,异常检测是数据挖掘领域中的一个基本问题。现有的绝大多数异常检测方法主要集中在从单一来源收集的数据上。在现实世界的应用程序中,实例通常具有多种类型的功能,例如图像(证件照片,指纹)和文本(银行交易记录,用户在线社交媒体帖子)等文本,从而形成了所谓的多模式数据。在本文中,我们着重于确定其模式在不同模式之间是不同的异常,即跨模式异常。当在每个模态下分别查看它们时,多模态上下文中的某些数据实例通常不是异常的,但是当联合考虑多个源时,它们包含不一致的模式。在许多实际场景中,多模式数据的存在给异常检测的规范任务带来了机遇和挑战。一方面,在多模式数据中,不同模式的信息可以在提高检测性能方面相互补充。另一方面,跨不同模态的复杂分布需要一个有原则的框架来表征其固有和复杂的相关性,而这通常很难用常规线性模型捕获。为此,我们提出了一种新颖的深度结构异常检测框架,以识别嵌入在数据中的交叉模式异常。在现实世界的数据集上进行的实验表明,与最新技术相比,该框架的有效性。

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