The Multiverse of Time Series Machine Learning: an Archive for Multivariate Time Series Classification
arXiv cs.LG / 2026/3/24
📰 ニュースIdeas & Deep AnalysisTools & Practical UsageModels & Research
要点
- The paper announces a major expansion of the existing UEA multivariate time-series classification benchmark archive, growing it from 30 classification datasets to 133, plus additional variants.
- It releases preprocessed versions that address common real-world issues such as missing values and unequal-length series, increasing the overall dataset count to 147.
- The archive is rebranded as the “Multiverse” repository to reflect its broader diversity of domains and to consolidate multiple existing collections into one unified source.
- To make experimentation feasible, the authors recommend a smaller “Multiverse-core (MV-core)” subset for initial exploration, alongside baseline evaluations and performance benchmarks.
- A dedicated repository is provided with an aeon and scikit-learn compatible framework, reproducibility support, an extensive record of published results, and an interactive interface for exploring benchmark outcomes.
