See it, Think it, Sorted: Large Multimodal Models are Few-shot Time Series Anomaly Analyzers
Jiaxin Zhuang, Leon Yan, Zhenwei Zhang, Ruiqi Wang, Jiawei Zhang,, Yuantao Gu

TL;DR
This paper introduces TAMA, a novel framework utilizing large multimodal models to improve few-shot time series anomaly detection and interpretation, reducing reliance on labeled data and enhancing understanding of anomalies.
Contribution
The paper presents TAMA, a pioneering multimodal approach that converts time series into visual formats for LMMs, enabling effective few-shot anomaly detection and semantic analysis.
Findings
TAMA outperforms state-of-the-art TSAD methods on multiple datasets.
TAMA provides natural language explanations of detected anomalies.
The framework reduces dependence on extensive labeled datasets.
Abstract
Time series anomaly detection (TSAD) is becoming increasingly vital due to the rapid growth of time series data across various sectors. Anomalies in web service data, for example, can signal critical incidents such as system failures or server malfunctions, necessitating timely detection and response. However, most existing TSAD methodologies rely heavily on manual feature engineering or require extensive labeled training data, while also offering limited interpretability. To address these challenges, we introduce a pioneering framework called the Time Series Anomaly Multimodal Analyzer (TAMA), which leverages the power of Large Multimodal Models (LMMs) to enhance both the detection and interpretation of anomalies in time series data. By converting time series into visual formats that LMMs can efficiently process, TAMA leverages few-shot in-context learning capabilities to reduce…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Time Series Analysis and Forecasting
Methodstravel james
