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TimeInf: Time Series Data Contribution via Influence Functions

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Evaluating the contribution of individual data points to a model's prediction is critical for interpreting model predictions and improving model performance. Existing data contribution methods have been applied to various data types, including tabular data, images, and text; however, their primary focus has been on i.i.d. settings. Despite the pressing need for principled approaches tailored to time series datasets, the problem of estimating data contribution in such settings remains under-explored, possibly due to challenges associated with handling inherent temporal dependencies. This paper introduces TimeInf, a model-agnostic data contribution estimation method for time-series datasets. By leveraging influence scores, TimeInf attributes model predictions to individual time points while preserving temporal structures between the time points. Our empirical results show that TimeInf effectively detects time series anomalies and outperforms existing data attribution techniques as well as state-of-the-art anomaly detection methods. Moreover, TimeInf offers interpretable attributions of data values, allowing us to distinguish diverse anomalous patterns through visualizations. We also showcase a potential application of TimeInf in identifying mislabeled anomalies in the ground truth annotations.

Yizi Zhang, Jingyan Shen, Xiaoxue Xiong, Yongchan Kwon• 2024

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingWeather
MSE0.322
295
Short-term forecastingM4 Monthly--
125
Short-term forecastingM4 Yearly--
116
Time Series ForecastingElectricity
MSE1.83
114
Time Series ForecastingIllness
MSE1.025
69
Long-term forecastingTraffic--
65
Time-series classificationHandwriting
Accuracy20.5
62
Time Series ForecastingETT
MSE0.314
52
Time Series ForecastingExchange Rate
MSE0.286
32
Time Series ForecastingM4 Daily--
31
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