Datasets:
Formats:
parquet
Languages:
English
Size:
100K - 1M
ArXiv:
Tags:
Time Series
Time Series QA
Time Series Analysis
Time Series Reasoning
Time Series Question Answering
Unified Time Series QA
License:
| license: mit | |
| task_categories: | |
| - question-answering | |
| - time-series-forecasting | |
| language: | |
| - en | |
| tags: | |
| - Time Series | |
| - Time Series QA | |
| - Time Series Analysis | |
| - Time Series Reasoning | |
| - Time Series Question Answering | |
| - Unified Time Series QA | |
| - TSQA | |
| size_categories: | |
| - 100K<n<1M | |
| # Time Series Analysis Question Answering Benchmark (TSAQA) | |
| View our paper at: https://arxiv.org/abs/2601.23204 | |
| ## Introduction | |
| TSAQA is a novel unified benchmark designed to broaden task coverage and evaluate diverse temporal analysis capabilities. | |
| TSAQA integrates 6 diverse tasks under a single framework ranging from Conventional Analysis, including anomaly detection and classification, to Advanced Analysis, such as characterization, comparison, data transformation, and temporal relationship analysis. | |
| Spanning 210k samples across 13 domains, the dataset employs diverse formats, including true-or-false (TF), multiple-choice (MC), and a novel puzzling (PZ), to comprehensively assess time series analysis. | |
| This benchmark allows development of Large Language Models (LLMs) and Time Series Foundation Models (TSFM) specifically for time series analysis and time series reasoning. | |
| <p align="center"> | |
| <img src="figs/final_conventional.png" alt="Illustration of Conventional Tasks" width="58%"> | |
| </p> | |
| <p align="center"> | |
| <img src="figs/final_reasoning.png" alt="Illustration of Advanced Tasks" width="99%"> | |
| </p> | |
| <p align="center"> | |
| <b>Figure:</b> Data distribution and tasks of TSAQA. | |
| </p> | |
| ### 🧩 Tasks of TSAQA. TF, MC, and PZ denote true-or-false, multiple-choice, and puzzling. | |
| | **Group** | **Task** | **Description** | **Question Type** | | |
| | ---------------------- | --------------------- | ----------------------------------------------------------- | ----------------- | | |
| | **Conventional Tasks** | Anomaly Detection | Determine whether the input contains anomalies. | TF | | |
| | | Classification | Classify the input time series. | MC | | |
| | **Advanced Tasks** | Characterization | Determine the characteristics of the time series. | TF & MC | | |
| | | Comparison | Compare the characteristics of two time series. | TF & MC | | |
| | | Data Transformation | Identify the relationship between raw and transformed data. | TF & MC | | |
| | | Temporal Relationship | Determine the temporal relationship of patches. | TF & MC & PZ | | |
| # Data Statistics of TSAQA | |
| <p align="center"> | |
| <img src="figs/data_statistics.jpg" alt="Domain and Task Distribution of TSAQA" width="40%"> | |
| </p> | |
| # 🧠 Task Groups in TSAQA | |
| TSAQA benchmark encompasses two groups of tasks with six diverse tasks designed to evaluate a model's ability of understanding the fundamental properties of time series data. | |
| The **TSAQA** benchmark includes two major groups of tasks designed to evaluate different reasoning abilities in time series analysis. | |
| ### 🔹 **Conventional Analysis Tasks** | |
| These are classic tasks widely explored in traditional time series analysis: | |
| 1. **🩸 Anomaly Detection** – Identify irregular or unexpected patterns in a time series. | |
| 2. **🏷️ Classification** – Reason about the relationship between a time series and its underlying conceptual category. | |
| ### 🔸 **Advanced Analysis Tasks** | |
| These novel analytical tasks focus on deeper, intrinsic properties of time series: | |
| 3. **📊 Characterization** – Infer fundamental properties such as trend, seasonality, and dispersion. | |
| 4. **⚖️ Comparison** – Reason about relative similarities and differences between two time series. | |
| 5. **🔄 Data Transformation** – Understand relationships between original and transformed time series (e.g., via Fourier transform). | |
| 6. **⏱️ Temporal Relationship** – Capture chronological dependencies among time series patches. | |
| --- | |
| > 🧩 **Insight:** | |
| > These **advanced analysis tasks** push the boundaries of conventional time series modeling—encouraging the development of models that can **grasp cognitive concepts of time series** and **reason over human-posed questions**. | |
| # 📊 Data Collection | |
| In this section, we detail the data sources, including **core datasets**, **anomaly detection datasets**, and **classification datasets**. | |
| --- | |
| ## 🧩 Core Datasets | |
| We extract data from multiple time-series datasets, including: | |
| **Australian Electricity Demand** — Half-hourly electricity demand for Victoria, Australia (2014). | |
| **BDG-2 Rat** — Building-level electricity data from the Building Data Genome Project 2. | |
| **GEF12** — Load forecasting benchmark from the Global Energy Forecasting Competition 2012. | |
| **ExchangeRate** — Daily exchange rates for currencies of eight countries (1990–2016). | |
| **FRED-MD** — Monthly macroeconomic indicators from the Federal Reserve Bank. | |
| **BIDMC32HR** — ICU PPG and ECG recordings from 53 adult patients. | |
| **PigArtPressure** — Vital sign data from 52 pigs pre/post induced injury. | |
| **US Births** — Daily number of U.S. births (1969–1988). | |
| **Sunspot** — Daily sunspot numbers from 1818–2020. | |
| **Saugeen** — Daily mean river flow data for the Saugeen River (1915–1979). | |
| **Subseasonal Precipitation** — Daily precipitation (1948–1978). | |
| **Hierarchical Sales** — SKU-level daily pasta brand sales (2014–2018). | |
| **M5** — Walmart hierarchical sales forecasting dataset. | |
| **Pedestrian Counts** — Hourly pedestrian counts from 66 sensors in Melbourne (2009–2020). | |
| **PEMS03** — Traffic flow data collected by Caltrans PeMS. | |
| **Uber TLC Daily** — Uber pickup counts in NYC (Jan–Jun 2015). | |
| **WikiDaily100k** — Daily traffic data for 100,000 Wikipedia pages. | |
| ### 📈 Summary of Core Datasets | |
| | **Dataset** | **Total Data Points** | **Domain** | | |
| |--------------|----------------------|-------------| | |
| | AustralianElectricityDemand | 1,153,584 | Energy | | |
| | BDG-2 Rat | 4,728,288 | Energy | | |
| | GEF12 | 788,280 | Energy | | |
| | ExchangeRate | 56,096 | Finance | | |
| | FRED MD | 76,612 | Finance | | |
| | BIDMC32HR | 8,000,000 | Healthcare | | |
| | PigArtPressure | 624,000 | Healthcare | | |
| | USBirths | 7,275 | Healthcare | | |
| | Sunspot | 73,924 | Nature | | |
| | Saugeenday | 23,711 | Nature | | |
| | SubseasonalPrecip | 9,760,426 | Nature | | |
| | HierarchicalSales | 212,164 | Sales | | |
| | M5 | 58,327,370 | Sales | | |
| | PedestrianCounts | 3,130,762 | Transport | | |
| | PEMS03 | 9,382,464 | Transport | | |
| | UberTLCHourly | 1,129,444 | Transport | | |
| | WikiDaily100k | 274,099,872 | Web | | |
| --- | |
| ## 🚨 Anomaly Detection Datasets | |
| We extract data from multiple anomaly detection benchmarks, including: | |
| - **MGAB** – Mackey–Glass time series exhibiting chaotic behavior and synthetic anomalies. | |
| - **ECG** – Electrocardiogram recordings with anomalies corresponding to ventricular premature contractions. | |
| - **Genesis** – Spacecraft telemetry data from a pick-and-place demonstrator. | |
| - **GHL** – Gasoil Heating Loop data with simulated cyber-attacks. | |
| - **Occupancy** – Room occupancy monitoring using temperature, humidity, light, and CO₂ data. | |
| - **SMD** – Server Machine Dataset from a large Internet company, labeled for anomaly detection. | |
| ### 🧾 Summary of Anomaly Detection Datasets | |
| | **Name** | **# Samples** | **Domain** | | |
| |-----------|---------------|------------| | |
| | ECG | 17,862 | Healthcare | | |
| | SMD | 58,888 | Cyber-security / IT Operations | | |
| | MGAB | 376 | Mathematical Biology | | |
| | Genesis | 274 | Spacecraft Telemetry | | |
| | GHL | 768 | Industrial Control System | | |
| | Occupancy | 8,178 | Environmental Sensing | | |
| --- | |
| ## 🧠 Classification Datasets | |
| We extract data from the **UCR Archive** using the following criteria: | |
| - Datasets with **≤4 classes** | |
| - Time series length **≤400** time points | |
| A total of **37 benchmarks** were selected, spanning domains such as robotics, energy, healthcare, synthetic, manufacturing, nature, and transport. | |
| ### 🗂️ Summary of Classification Datasets | |
| | **Name** | **# Samples** | **# Classes** | **Domain** | | |
| |-----------|---------------|---------------|-------------| | |
| | SonyAIBORobotSurface1 | 486 | 2 | Robotics | | |
| | SonyAIBORobotSurface2 | 771 | 2 | Robotics | | |
| | FreezerRegularTrain | 2,404 | 2 | Energy | | |
| | FreezerSmallTrain | 2,353 | 2 | Energy | | |
| | ToeSegmentation1 | 210 | 2 | Healthcare | | |
| | ToeSegmentation2 | 129 | 2 | Healthcare | | |
| | TwoPatterns | 3,999 | 4 | Synthetic | | |
| | CBF | 757 | 3 | Synthetic | | |
| | Wafer | 5,744 | 2 | Manufacturing | | |
| | ECG200 | 159 | 2 | Healthcare | | |
| | TwoLeadECG | 923 | 2 | Healthcare | | |
| | ECGFiveDays | 704 | 2 | Healthcare | | |
| | DistalPhalanxOutlineCorrect | 690 | 2 | Healthcare | | |
| | MiddlePhalanxOutlineCorrect | 731 | 2 | Healthcare | | |
| | ProximalPhalanxOutlineCorrect | 688 | 2 | Healthcare | | |
| | DistalPhalanxOutlineAgeGroup | 423 | 3 | Healthcare | | |
| | MiddlePhalanxOutlineAgeGroup | 435 | 3 | Healthcare | | |
| | ProximalPhalanxOutlineAgeGroup | 485 | 3 | Healthcare | | |
| | PhalangesOutlinesCorrect | 2,076 | 2 | Healthcare | | |
| | MoteStrain | 1,012 | 2 | Nature | | |
| | GunPointMaleVersusFemale | 362 | 2 | Healthcare | | |
| | GunPointOldVersusYoung | 356 | 2 | Healthcare | | |
| | GunPointAgeSpan | 368 | 2 | Healthcare | | |
| | GunPoint | 169 | 2 | Healthcare | | |
| | Strawberry | 786 | 2 | Nature | | |
| | ItalyPowerDemand | 890 | 2 | Energy | | |
| | Chinatown | 293 | 2 | Transport | | |
| | BME | 137 | 3 | Synthetic | | |
| | PowerCons | 294 | 2 | Energy | | |
| | DodgersLoopWeekend | 111 | 2 | Transport | | |
| | DodgersLoopGame | 115 | 2 | Transport | | |
| | DiatomSizeReduction | 248 | 4 | Nature | | |
| | SmoothSubspace | 236 | 3 | Synthetic | | |
| | UMD | 148 | 3 | Synthetic | | |
| | Wine | 85 | 2 | Nature | | |
| | Coffee | 48 | 2 | Nature | | |
| | ArrowHead | 175 | 3 | Nature | | |
| <!-- --- | |
| ### 🔸 Data Link: | |
| https://drive.google.com/file/d/12wBN5ZxYZuN8aQnX3qsbkVTqpyM0aaes/view?usp=sharing | |
| --- --> |