一种基于混沌集成的离群点检测方法

Li Wei
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引用次数: 0

摘要

随着大数据时代的到来,异常检测已经成为筛选数据有效性的重要工具。随着数据量的不断增加,许多基于距离或相关性的成熟异常检测方法被广泛应用于各种结构化和基于特征的数据集。然而,不同的方法策略有不同的侧重点,导致使用不同的方法对同一数据集的异常检测结果存在较大的偏差,这给异常检测研究带来了很大的挑战。本文提出了一种综合方法进行异常检测的新策略。该策略采用滑动窗口聚合法的两阶段过程,采用多模型异常评分方法和统一的定量准则过滤,获得合适的异常评分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Chaos-Based and Ensembled Method for Outlier Detection
With the advent of the Big Data era, anomaly detection has become an important tool for screening the validity of data. Many well-established distance-based or correlation-based anomaly detection methods are widely used for various structured and feature-based datasets with the increasing size of data. However, different method strategies have different focuses, leading to large deviations in anomaly detection results for the same dataset using different methods, which poses a great challenge to anomaly detection research. In this paper, a new strategy is proposed for anomaly detection using integrated methods. By using a two-stage process of the sliding window aggregation method, the strategy uses a multi-model anomaly scoring method and a uniform quantitative criterion filtering to obtain a suitable anomaly scoring.
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