核心概念
MACE proposes a novel anomaly detection method that efficiently handles diverse normal patterns with a unified model in the frequency domain.
摘要
The content discusses the challenges of anomaly detection in cloud systems and introduces MACE, a multi-normal-pattern accommodated and efficient anomaly detection method. It highlights three key characteristics: pattern extraction mechanism, dualistic convolution mechanism, and leveraging frequency domain sparsity. The proposed method is theoretically and experimentally proven to be effective in handling diverse normal patterns with high efficiency.
- Introduction to Anomaly Detection: Discusses the importance of anomaly detection in cloud systems.
- Challenges Faced: Outlines practical challenges faced by neural network-based methods.
- Proposed Solution - MACE: Introduces MACE as an innovative approach to anomaly detection.
- Key Characteristics of MACE: Details the three novel characteristics of MACE.
- Experimental Validation: Demonstrates the effectiveness of MACE through extensive experiments on real-world datasets.
統計資料
"The anomaly ratio in SMD is 4.16%."
"The anomaly ratios for J-D1 and J-D2 are 5.25% and 20.26%, respectively."
"SMAP has an anomaly ratio of 13.13%."
引述
"We propose MACE, a multi-normal-pattern accommodated and efficient anomaly detection method."
"Moreover, extensive experiments demonstrate MACE’s effectiveness in handling diverse normal patterns with a unified model."