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| Crossformer× | iTransformer: Ανεστραμμένο Transformer για Πρόβλεψη Πολυμεταβλητών Χρονοσειρών× | |
|---|---|---|
| Πεδίο | Βαθιά Μάθηση | Βαθιά Μάθηση |
| Οικογένεια | Machine learning | Machine learning |
| Έτος προέλευσης≠ | 2023 | 2024 |
| Δημιουργός≠ | Yunhao Zhang & Junchi Yan | Yong Liu et al. |
| Τύπος≠ | Transformer-based multivariate time-series forecasting model | Inverted-attention sequence model |
| Θεμελιώδης πηγή≠ | Zhang, Y., & Yan, J. (2023). Crossformer: Transformer utilizing cross-dimension dependency for multivariate time series forecasting. ICLR. link ↗ | Liu, Y., Hu, T., Zhang, H., Wu, H., Wang, S., Ma, L., & Long, M. (2024). iTransformer: Inverted transformers are effective for time series forecasting. ICLR. link ↗ |
| Εναλλακτικές ονομασίες≠ | Cross-Dimension Dependency Transformer, Crossformer TSF, Çapraz-Boyut Bağımlılık Transformatörü | Inverted Transformer, iTransformer for Time Series, Inverted Attention Transformer, Ters Transformer |
| Συναφείς≠ | 3 | 2 |
| Σύνοψη≠ | Crossformer is a Transformer-based architecture for multivariate time series forecasting, introduced by Yunhao Zhang and Junchi Yan at ICLR 2023. Unlike earlier Transformer variants that treat each variate independently, Crossformer explicitly models cross-dimension dependencies alongside temporal patterns. It achieves this through a two-stage attention design — cross-time and cross-dimension — applied over segment-level embeddings organized in a hierarchical encoder, enabling the model to capture both intra-variate dynamics and inter-variate correlations simultaneously. | iTransformer is a deep-learning architecture for multivariate time-series forecasting introduced by Liu et al. at ICLR 2024. Its defining idea is to invert the conventional Transformer tokenisation strategy: instead of treating each time step as a token, iTransformer treats each variate (sensor channel or feature series) as a single token whose embedding encodes the full observed look-back window. Self-attention is then applied across variates to capture inter-series dependencies, while a feed-forward network within each token learns temporal patterns. |
| ScholarGateΣύνολο δεδομένων ↗ |
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