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Pyraformer: 長期時系列予測のためのピラミダルアテンションTransformer×Informer×Reformer: 長いシーケンスのための効率的なTransformer×
分野深層学習深層学習深層学習
系統Machine learningMachine learningMachine learning
提唱年202220212020
提唱者Shizhan Liu et al.Zhou, H. et al.Nikita Kitaev, Łukasz Kaiser & Anselm Levskaya
種類Pyramidal self-attention transformer for time-series forecastingTransformer (ProbSparse self-attention)Memory-efficient attention-based sequence model
原典Liu, S., Yu, H., Liao, C., Li, J., Lin, W., Liu, A. X., & Dustdar, S. (2022). Pyraformer: Low-complexity pyramidal attention for long-range time series modeling and forecasting. ICLR. link ↗Zhou, H. et al. (2021). Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting. AAAI. DOI ↗Kitaev, N., Kaiser, Ł., & Levskaya, A. (2020). Reformer: The efficient transformer. ICLR. link ↗
別名Pyramidal Attention Transformer, Pyraformer Transformer, Piramit Dikkat Dönüştürücüsü, Low-Complexity TransformerInformer — Uzun Dizi Transformer Tahmini, Informer transformer, ProbSparse attention forecasterEfficient Transformer, LSH Transformer, Locality-Sensitive Hashing Transformer, Verimli Dönüştürücü
関連352
概要Pyraformer is a Transformer-based model for long-range time-series forecasting introduced by Liu et al. at ICLR 2022. Its central innovation is a Pyramidal Attention Module (PAM) that organizes tokens into a multi-resolution hierarchy, enabling the model to capture temporal dependencies across multiple scales while keeping time and memory complexity at O(L log L) rather than the quadratic cost of vanilla self-attention.Informer is a Transformer-based model introduced by Zhou et al. in 2021 for long-sequence time-series forecasting, using a ProbSparse self-attention mechanism that lowers the computational complexity of the standard Transformer to O(L log L). It is built for problems that demand predictions across thousands of future steps.The Reformer is an efficient variant of the Transformer architecture introduced by Kitaev, Kaiser, and Levskaya at ICLR 2020. It addresses the prohibitive O(L²) memory and computational cost of standard self-attention for long sequences. The key innovations are locality-sensitive hashing (LSH) attention, which approximates full attention in O(L log L) time, and reversible residual layers that dramatically reduce activation memory during training.
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ScholarGate手法を比較: Pyraformer · Informer · Reformer. 2026-06-18に以下より取得 https://scholargate.app/ja/compare