Abstract
Time series forecasting has attracted wide attention in recent decades. However, some time series are imbalanced and show different patterns between special and normal periods, leading to the prediction accuracy degradation of special periods. In this paper, we aim to develop a unified model to alleviate the imbalance and thus improving the prediction accuracy for special periods. This task is challenging because of two reasons: (1) the temporal dependency of series, and (2) the tradeoff between mining similar patterns and distinguishing different distributions between different periods. To tackle these issues, we propose a self-attention-based time-varying prediction model with a two-stage training strategy. First, we use an encoder-decoder module with the multi-head self-attention mechanism to extract common patterns of time series. Then, we propose a time-varying optimization module to optimize the results of special periods and eliminate the imbalance. Moreover, we propose reverse distance attention in place of traditional dot attention to highlight the importance of similar historical values to forecast results. Finally, extensive experiments show that our model performs better than other baselines in terms of mean absolute error and mean absolute percentage error.
Highlights
Time series forecasting has attracted wide attention in recent decades
We cannot eliminate the influence of imbalanced data by oversampling the data of special periods because it will break the temporal dependency of time series
We propose a Self-attention based Time-Varying (STV) prediction model to overcome the aforementioned challenges and improve the prediction accuracy for special periods
Summary
Time series forecasting has attracted wide attention in recent decades. some time series are imbalanced and show different patterns between special and normal periods, leading to the prediction accuracy degradation of special periods. We aim to develop a unified model to alleviate the imbalance and improving the prediction accuracy for special periods This task is challenging because of two reasons: (1) the temporal dependency of series, and (2) the tradeoff between mining similar patterns and distinguishing different distributions between different periods. To tackle these issues, we propose a self-attention-based time-varying prediction model with a two-stage training strategy. These methods can roughly predict the trend of call arrivals, the predicted values are significantly higher than the true values because call arrivals decrease in holidays. We cannot eliminate the influence of imbalanced data by oversampling the data of special periods because it will break the temporal dependency of time series
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