Timeless Foundations: Exploring DC-VAEs as Foundation Models for Time Series Analysis

  • Gastón García González
  • , Pedro Casas-Hernandez (Autor:in und Vortragende:r)
  • , Emilio Martínez
  • , Alicia Fernández

Publikation: Beitrag in Buch oder TagungsbandBeitrag in Tagungsband mit PosterpräsentationBegutachtung

Abstract

We investigate a novel approach to time-series modeling, inspired by the successes of large pre-trained foundation models. We introduce FAE (Foundation Auto-Encoders), a foundation generative-AI model for anomaly detection in time-series data, based on Variational Auto-Encoders (VAEs). By Foundation Model (FM), we mean a model pre-trained on massive amounts of time-series data which can learn complex temporal patterns useful for accurate modeling and forecasting on previously unseen datasets. FAE leverages VAEs and Dilated Convolutional Neural Networks (DCNNs) to build a generic model for time-series modeling, which could eventually perform properly in out-of-the-box, zero-shot anomaly detection applications. We introduce the main concepts and ideas of this FM for time-series (TSFM), and present some preliminary results in a multi-dimensional mobile network monitoring dataset. We also present example results applying novel TSFMs to this dataset, both in a zero-shot manner and relying on fine-tuning, and show how complex it is in the practice to achieve accurate results.
OriginalspracheEnglisch
Titel2024 8th Network Traffic Measurement and Analysis Conference (TMA)
Seiten1-4
Seitenumfang4
ISBN (elektronisch)978-3-903176-64-5
DOIs
PublikationsstatusVeröffentlicht - 20 Juni 2024
Veranstaltung2024 8th Network Traffic Measurement and Analysis Conference (TMA) - Dresden, Dresden, Deutschland
Dauer: 21 Mai 202424 Mai 2024

Konferenz

Konferenz2024 8th Network Traffic Measurement and Analysis Conference (TMA)
Land/GebietDeutschland
StadtDresden
Zeitraum21/05/2424/05/24

Research Field

  • Multimodal Analytics

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