为评估机器学习方法检测过程数据集中的异常值制定基准

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
T. Schindler, Simon Schlicht, K. Thoben
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引用次数: 0

摘要

在数据驱动过程模型的集成和开发中,通过感官数据采集和随后的建模,将底层过程数字映射到模型中。根据数据挖掘跨行业标准过程(CRISP-DM),在这个过程中,每个建模步骤都会出现不同类型和严重程度的挑战。特别是在数据采集和集成到流程模型的上下文中,可以假定获得的数据有足够高的概率包含各种类型的异常。异常值必须在数据准备和处理阶段检测出来,并进行相应的处理。如果充分实现这一点,它将在准确性和精度方面对后续建模产生积极影响。因此,本文展示了如何使用无监督机器学习方法来识别异常值,自动编码器,基于密度的噪声应用空间聚类(DBSCAN),隔离森林(ifforest)和一类支持向量机(OCSVM)。在实现这些方法之后,我们应用Numenta异常基准(NAB)对它们进行了比较,并充分展示了各自的优缺点。通过对本文所描述的正确性、显著性和鲁棒性标准的评价表明,一类支持向量机在所考虑的方法中表现突出。这是因为OCSVM以相对较少的努力在可用的过程数据集上实现了可接受的异常检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Benchmarking for Evaluating Machine Learning Methods in Detecting Outliers in Process Datasets
Within the integration and development of data-driven process models, the underlying process is digitally mapped in a model through sensory data acquisition and subsequent modelling. In this process, challenges of different types and degrees of severity arise in each modelling step, according to the Cross-Industry Standard Process for Data Mining (CRISP-DM). Particularly in the context of data acquisition and integration into the process model, it can be assumed with a sufficiently high degree of probability that the acquired data contain anomalies of various kinds. The outliers must be detected in the data preparation and processing phase and dealt with accordingly. If this is sufficiently implemented, it will positively impact the subsequent modelling in terms of accuracy and precision. Therefore, this paper shows how outliers can be identified using the unsupervised machine learning methods autoencoder, Density-Based Spatial Clustering of Applications with Noise (DBSCAN), Isolation Forest (iForest), and One-Class Support Vector Machine (OCSVM). Following implementing these methods, we compared them by applying the Numenta Anomaly Benchmark (NAB) and sufficiently presented the individual strengths and disadvantages. Evaluating the correctness, distinctiveness and robustness criteria described in the paper showed that the One-Class Support Vector Machine was outstanding among the methods considered. This is because the OCSVM achieved acceptable anomaly detections on the available process datasets with comparatively little effort.
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来源期刊
Computers
Computers COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.40
自引率
3.60%
发文量
153
审稿时长
11 weeks
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