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PATRA: Pattern-Aware Alignment and Balanced Reasoning for Time Series Question Answering

About

Time series reasoning demands both the perception of complex dynamics and logical depth. However, existing LLM-based approaches exhibit two limitations: they often treat time series merely as text or images, failing to capture the patterns like trends and seasonalities needed to answer specific questions; and when trained on a mix of simple and complex tasks, simpler objectives often dominate the learning process, hindering the development of deep reasoning capabilities. To address these limitations, we propose the Pattern-Aware Alignment and Balanced Reasoning model (PATRA), introducing a pattern-aware mechanism that extracts trend and seasonality patterns from time series to achieve deep alignment. Furthermore, we design a task-aware balanced reward to harmonize learning across tasks of varying difficulty, incentivizing the generation of coherent Chains of Thought. Extensive experiments show that PATRA outperforms strong baselines across diverse Time Series Question Answering (TSQA) tasks, demonstrating superior cross-modal understanding and reasoning capability.

Junkai Lu, Peng Chen, Xingjian Wu, Yang Shu, Chenjuan Guo, Christian S. Jensen, Bin Yang• 2026

Related benchmarks

TaskDatasetResultRank
MACD PredictionFinance 7 days
MSE0.191
21
MACD PredictionFinance 30 days
MSE0.822
21
Trend PredictionFinance 7 days
3-way Accuracy63.33
18
Trend PredictionFinance 30 days
3-way Accuracy54.39
18
Multiple-choice Question AnsweringWeather news-driven MCQA
MCQ Accuracy60.46
11
Time Series ComprehensionTimeMQA
Accuracy0.5603
11
Time Series PrescienceTimeMQA
Accuracy52.78
11
Time Series ReasoningTimeMQA
Accuracy44.59
11
Time Series RecognitionTimeMQA
Accuracy64.69
11
Trend PredictionWeather
Pre.52.04
11
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