English

CTBench: Cryptocurrency Time Series Generation Benchmark

Statistical Finance 2025-08-06 v1 Artificial Intelligence Computational Engineering, Finance, and Science Databases Machine Learning

Abstract

Synthetic time series are essential tools for data augmentation, stress testing, and algorithmic prototyping in quantitative finance. However, in cryptocurrency markets, characterized by 24/7 trading, extreme volatility, and rapid regime shifts, existing Time Series Generation (TSG) methods and benchmarks often fall short, jeopardizing practical utility. Most prior work (1) targets non-financial or traditional financial domains, (2) focuses narrowly on classification and forecasting while neglecting crypto-specific complexities, and (3) lacks critical financial evaluations, particularly for trading applications. To address these gaps, we introduce \textsf{CTBench}, the first comprehensive TSG benchmark tailored for the cryptocurrency domain. \textsf{CTBench} curates an open-source dataset from 452 tokens and evaluates TSG models across 13 metrics spanning 5 key dimensions: forecasting accuracy, rank fidelity, trading performance, risk assessment, and computational efficiency. A key innovation is a dual-task evaluation framework: (1) the \emph{Predictive Utility} task measures how well synthetic data preserves temporal and cross-sectional patterns for forecasting, while (2) the \emph{Statistical Arbitrage} task assesses whether reconstructed series support mean-reverting signals for trading. We benchmark eight representative models from five methodological families over four distinct market regimes, uncovering trade-offs between statistical fidelity and real-world profitability. Notably, \textsf{CTBench} offers model ranking analysis and actionable guidance for selecting and deploying TSG models in crypto analytics and strategy development.

Keywords

Cite

@article{arxiv.2508.02758,
  title  = {CTBench: Cryptocurrency Time Series Generation Benchmark},
  author = {Yihao Ang and Qiang Wang and Qiang Huang and Yifan Bao and Xinyu Xi and Anthony K. H. Tung and Chen Jin and Zhiyong Huang},
  journal= {arXiv preprint arXiv:2508.02758},
  year   = {2025}
}

Comments

14 pages, 14 figures, and 3 tables

R2 v1 2026-07-01T04:33:57.938Z