Core Concepts
다변량 시계열 예측을 향상시키기 위해 상호 정보 기반의 Cross-Variable 및 Temporal 모델링을 도입하고 성과를 증명합니다.
Stats
"Recent advancements have underscored the impact of deep learning techniques on multivariate time series forecasting (MTSF)."
"A notable breakthrough has been the advent of Transformer-based models."
"Our novel framework significantly surpasses existing models, including those previously considered state-of-the-art, in comprehensive tests."
Quotes
"Channel-independence methods typically yield better results, Channel-mixing could theoretically offer improvements by leveraging inter-variable correlations."
"This has spurred initiatives to tease out single variable information for more nuanced forecasting."
"Informer’s superior performance over PatchTST, underscoring the importance of cross-variable insights."