LAST SToP For Modeling Asynchronous Time Series
- URL: http://arxiv.org/abs/2502.01922v1
- Date: Tue, 04 Feb 2025 01:42:45 GMT
- Title: LAST SToP For Modeling Asynchronous Time Series
- Authors: Shubham Gupta, Thibaut Durand, Graham Taylor, Lilian W. BiaĆokozowicz,
- Abstract summary: We present a novel prompt design for Large Language Models (LLMs) tailored to Asynchronous Time Series.
Our approach effectively utilizes the rich natural language of event descriptions, allowing LLMs to benefit from their broad world knowledge for reasoning across different domains and tasks.
We further introduce Soft Prompting, a novel prompt-tuning mechanism that significantly improves model performance, outperforming existing fine-tuning methods such as QLoRA.
- Score: 19.401463051705377
- License:
- Abstract: We present a novel prompt design for Large Language Models (LLMs) tailored to Asynchronous Time Series. Unlike regular time series, which assume values at evenly spaced time points, asynchronous time series consist of timestamped events occurring at irregular intervals, each described in natural language. Our approach effectively utilizes the rich natural language of event descriptions, allowing LLMs to benefit from their broad world knowledge for reasoning across different domains and tasks. This allows us to extend the scope of asynchronous time series analysis beyond forecasting to include tasks like anomaly detection and data imputation. We further introduce Stochastic Soft Prompting, a novel prompt-tuning mechanism that significantly improves model performance, outperforming existing fine-tuning methods such as QLoRA. Through extensive experiments on real world datasets, we demonstrate that our approach achieves state-of-the-art performance across different tasks and datasets.
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