核心概念
This paper introduces the Cross Variable and Temporal Network (CVTN), a novel deep learning architecture that distinctively separates cross-variable and cross-temporal feature extraction to enhance time series forecasting performance.
摘要
The paper presents the Cross Variable and Temporal Network (CVTN), a deep learning model designed for improved time series forecasting. CVTN consists of two key components:
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Cross-Variable Encoder (CVE): This component effectively mines features from historical time series data by leveraging a cross-variable transformer architecture to capture interdependencies among variables.
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Cross-Temporal Encoder (CTE): This component focuses on learning the temporal dependencies within the prediction sequences, addressing the limitations of the CVE in dynamic temporal feature learning.
By segregating the cross-variable and cross-temporal learning processes, CVTN effectively reduces the risk of overfitting commonly associated with cross-temporal learning.
The key insights from the paper are:
- Overfitting in cross-temporal learning is a significant factor behind models' failure to extract meaningful information from historical data. Transformer-based models often derive most of their efficacy from the associative relationships within target sequences rather than effectively leveraging historical sequence data.
- Prioritizing local dependencies, particularly the temporal relationships between predictive sequences, is crucial for precise time series forecasting, an aspect that is often overlooked.
The experiments conducted demonstrate CVTN's state-of-the-art performance on various real-world datasets, making it a significant advancement in the field of time series forecasting.
統計資料
The paper presents the following key statistics and figures:
CVTN achieves state-of-the-art performance on 64 out of the 96 evaluation metrics across the tested datasets.
CVTN outperforms other advanced models by a significant margin in both the average and median numbers of first places in MSE and MAE.
引述
"CVTN emphasizes three key dimensions in time series forecasting: the short-term and long-term nature of time series (locality and longevity), feature mining from both historical and prediction sequences, and the integration of cross-variable and cross-time learning."
"By distinctively segregating cross-variable and cross-temporal learning, our model significantly reduces the risk of overfitting commonly associated with cross-temporal learning."