计算机科学
特征学习
人工智能
边距(机器学习)
机器学习
判别式
代表(政治)
时间序列
深度学习
特征(语言学)
多元统计
循环神经网络
自编码
人工神经网络
语言学
哲学
政治
法学
政治学
作者
Gerald Woo,Chenghao Liu,Doyen Sahoo,Akshat Kumar,Steven C. H. Hoi
标识
DOI:10.48550/arxiv.2202.01575
摘要
Deep learning has been actively studied for time series forecasting, and the mainstream paradigm is based on the end-to-end training of neural network architectures, ranging from classical LSTM/RNNs to more recent TCNs and Transformers. Motivated by the recent success of representation learning in computer vision and natural language processing, we argue that a more promising paradigm for time series forecasting, is to first learn disentangled feature representations, followed by a simple regression fine-tuning step -- we justify such a paradigm from a causal perspective. Following this principle, we propose a new time series representation learning framework for time series forecasting named CoST, which applies contrastive learning methods to learn disentangled seasonal-trend representations. CoST comprises both time domain and frequency domain contrastive losses to learn discriminative trend and seasonal representations, respectively. Extensive experiments on real-world datasets show that CoST consistently outperforms the state-of-the-art methods by a considerable margin, achieving a 21.3% improvement in MSE on multivariate benchmarks. It is also robust to various choices of backbone encoders, as well as downstream regressors. Code is available at https://github.com/salesforce/CoST.
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