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Toward a Practical Process Model for Anomaly Detection Systems

机译:建立异常检测系统的实用过程模型

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摘要

Process models are an important tool for software engineers to produce reliable software within schedule and budget. Especially technically challenging domains like machine learning need a supportive process model to guide the developers and stakeholders during the development process. One major problem type of machine learning is anomaly detection. Its goal is to identify anomalous data points (outlier) between the normal data instances. Anom- aly detection has a wide scope of applications in industrial and scienti c areas. Detecting intruders in computer networks, distin- guishing between cancerous and healthy tissue in medical images, cleaning data from disturbing outliers for further evaluation and many more. The cross-industry standard process for data mining (CRISP-DM) has been developed to support developers with all kinds of data mining applications. It describes a generic model of six phases that covers the whole development cycle. The generality of the CRISP-DM model is as much a strength as it is a weakness, since the particularities of di erent problem types like anomaly detection can not be addressed without making the model overly complex. There is a need for a more practical, specialised process model for anomaly detection applications. We demonstrate this issue and outline an approach towards a practical process model tailored to the development of anomaly detection systems.
机译:流程模型是软件工程师在计划和预算范围内生产可靠软件的重要工具。尤其是像机器学习这样在技术上具有挑战性的领域,需要一个支持性的过程模型来在开发过程中指导开发人员和利益相关者。机器学习的一种主要问题类型是异常检测。其目标是识别正常数据实例之间的异常数据点(异常值)。异常检测在工业和科学领域具有广泛的应用范围。检测计算机网络中的入侵者,区分医学图像中的癌性组织和健康组织,清除干扰点中的数据以进行进一步评估等等。已经开发了跨行业的数据挖掘标准流程(CRISP-DM),以支持开发人员使用各种数据挖掘应用程序。它描述了涵盖整个开发周期的六个阶段的通用模型。 CRISP-DM模型的普遍性既有优点也有缺点,这是因为不同的问题类型(如异常检测)的特殊性无法在不使模型变得过于复杂的情况下得到解决。需要用于异常检测应用的更实用,专门的过程模型。我们演示了这个问题,并概述了针对异常检测系统开发量身定制的实用过程模型的方法。

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