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Representation and Evolution of Knowledge Structures to Detect Anomalies in Financial Statements

机译:知识结构的演化和演化检测财务报表中的异常

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Deep learning, has delivered a variety of practical uses in the past decade. It has revolutionized customer experience and machine translation. It has made language recognition, autonomous vehicles and computer vision a reality. A multitude of other AI applications are common now. With Deep Learning we gain insights about hidden correlations. We extract features and distinguish categories. But we lack transparency of reasoning behind these conclusions. Most importantly, there is the absence of common sense. Deep learning models might be the best at perceiving patterns. Yet they cannot comprehend what the patterns mean. And they lack the ability to model their behaviors and reason about them.We present a new approach to augment Deep Learning using model based Deep Reasoning and its application to address fraud detection using financial statements. Recent theoretical models of computing structures with cognizing agents go beyond neural networks to provide models of observations, abstractions and generalizations from experience and create time dependent evolution and history to provide reasoning and predictive. We use Knowledge Structures defined therein to represent relevant domain knowledge. In this case, in a company’s financial statements. We analyze their history to detect potential fraud based on specific rules and observations. We use information from governance and compliance rules and experience of past violations. We analyze SEC 10-K statements using Deep Learning and model based Deep Reasoning. We use the Knowledge Structures to identify red flags and anomalies.
机译:深入学习,在过去十年中提供了各种实用用途。它彻底改变了客户体验和机器翻译。它使语言识别,自主车辆和计算机视觉成为现实。现在是众多的其他AI应用程序。深入学习,我们可以获得关于隐藏相关性的见解。我们提取特征和区分类别。但我们缺乏在这些结论背后推理的透明度。最重要的是,没有常识。深度学习模型可能是令人知觉的模式中最好的。然而,他们无法理解模式的意思。而且他们缺乏能力模拟他们的行为和理性的理由。我们现在使用基于模型的深度推理及其应用来解决使用财务报表来解决欺诈检测的新方法。近期具有认知代理的计算结构的理论模型超出神经网络,以提供来自经验的观测,抽象和概括的模型,并创造时间依赖的演化和历史,以提供推理和预测。我们使用其中定义的知识结构表示相关域知识。在这种情况下,在公司的财务报表中。我们分析了他们的历史,以检测基于具体规则和观察的潜在欺诈。我们使用来自治理和合规规则的信息和过去违规的经验。我们使用深度学习和基于模型的深度推理分析SEC 10-K陈述。我们使用知识结构来识别红旗和异常。

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