发明名称 Detecting, classifying, and tracking abnormal data in a data stream
摘要 The present invention extends to methods, systems, and computer program products for detecting, classifying, and tracking abnormal data in a data stream. Embodiments include an integrated set of algorithms that enable an analyst to detect, characterize, and track abnormalities in real-time data streams based upon historical data labeled as predominantly normal or abnormal. Embodiments of the invention can detect, identify relevant historical contextual similarity, and fuse unexpected and unknown abnormal signatures with other possibly related sensor and source information. The number, size, and connections of the neural networks all automatically adapted to the data. Further, adaption appropriately and automatically integrates unknown and known abnormal signature training within one neural network architecture solution automatically. Algorithms and neural networks architecture are data driven, resulting more affordable processing. Expert knowledge can be incorporated to enhance the process, but sufficient performance is achievable without any system domain or neural networks expertise.
申请公布号 US8306931(B1) 申请公布日期 2012.11.06
申请号 US20090462634 申请日期 2009.08.06
申请人 BOWMAN CHRISTOPHER;DESIENO DUANE;DATA FUSION & NEURAL NETWORKS, LLC 发明人 BOWMAN CHRISTOPHER;DESIENO DUANE
分类号 G06E1/00;G06E3/00;G06F15/18;G06G7/00;G06N3/04 主分类号 G06E1/00
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