Abstrakti

Time series data are essential in a wide range of machine learning (ML) applications. However, temporal data are often scarce or highly sensitive, limiting data sharing and the use of data-intensive ML methods. A possible solution to this problem is the generation of synthetic datasets that resemble real data. In this work, we introduce Time Series Generative Modeling (TSGM), an open-source framework for the generative modeling and evaluation of synthetic time series datasets. TSGM includes a broad repertoire of machine learning methods: generative models, probabilistic, simulation-based approaches, and augmentation techniques. The framework enables users to evaluate the quality of the produced data from different angles: similarity, downstream effectiveness, predictive consistency, diversity, fairness, and privacy. TSGM is extensible and user-friendly, which allows researchers to rapidly implement their own methods and compare them in a shareable environment. The framework has been tested on open datasets and in production and proved to be beneficial in both cases. https://github.com/AlexanderVNikitin/tsgm
AlkuperäiskieliEnglanti
OtsikkoAdvances in Neural Information Processing Systems 37 (NeurIPS 2024)
ToimittajatA. Globerson, L. Mackey, D. Belgrave, A. Fan, U. Paquet, J. Tomczak, C. Zhang
KustantajaCurran Associates Inc.
ISBN (painettu)9798331314385
TilaJulkaistu - 2025
OKM-julkaisutyyppiA4 Artikkeli konferenssijulkaisussa
TapahtumaConference on Neural Information Processing Systems - Vancouver, Canada, Vancouver , Kanada
Kesto: 10 jouluk. 202415 jouluk. 2024
Konferenssinumero: 38
https://neurips.cc/Conferences/2024

Julkaisusarja

NimiAdvances in Neural Information Processing Systems
KustantajaCurran Associates, Inc.
Vuosikerta37
ISSN (painettu)1049-5258

Conference

ConferenceConference on Neural Information Processing Systems
LyhennettäNeurIPS
Maa/AlueKanada
KaupunkiVancouver
Ajanjakso10/12/202415/12/2024
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