TimeTuner: Diagnosing Time Representations for Time-Series Forecasting with Counterfactual Explanations
Jianing Hao, Qing Shi, Yilin Ye, and Wei Zeng

TL;DR
TimeTuner is a visual analytics framework that helps analysts understand and diagnose how different time-series representations influence forecasting models, using counterfactual explanations and interactive visualizations.
Contribution
The paper introduces TimeTuner, a novel system combining counterfactual explanations and visual analytics to improve understanding of time-series representations in forecasting models.
Findings
Effective in characterizing time-series representations.
Assists in guiding feature engineering processes.
Applicable to real-world datasets like sunspots and air pollutants.
Abstract
Deep learning (DL) approaches are being increasingly used for time-series forecasting, with many efforts devoted to designing complex DL models. Recent studies have shown that the DL success is often attributed to effective data representations, fostering the fields of feature engineering and representation learning. However, automated approaches for feature learning are typically limited with respect to incorporating prior knowledge, identifying interactions among variables, and choosing evaluation metrics to ensure that the models are reliable. To improve on these limitations, this paper contributes a novel visual analytics framework, namely TimeTuner, designed to help analysts understand how model behaviors are associated with localized correlations, stationarity, and granularity of time-series representations. The system mainly consists of the following two-stage technique: We first…
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Taxonomy
TopicsData Visualization and Analytics · Time Series Analysis and Forecasting · Species Distribution and Climate Change
MethodsVisual Analytics
