ReSSFormer: A Recursive Sparse Structured Transformer for Scalable and Long-Context Reasoning
October 02, 2025 ยท Declared Dead ยท ๐ ACM Multimedia Asia
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Authors
Haochen You, Baojing Liu
arXiv ID
2510.01585
Category
cs.CL: Computation & Language
Cross-listed
cs.NI
Citations
1
Venue
ACM Multimedia Asia
Last Checked
3 months ago
Abstract
While Transformer architectures have demonstrated impressive scalability across domains, they continue to face challenges in long-context reasoning, computational efficiency, and structural generalization - largely due to rigid layer stacking, dense attention, and reliance on positional encodings. We present ReSSFormer, a Recursive Sparse Structured Transformer that integrates three complementary innovations: Recurrent Reasoning & Memory Unit (R2MU) for iterative reasoning with bounded depth, Adaptive Sparse Attention Module (ASAM) for efficient and focused context selection, and Self-Organizing Encoder Structure (SOES) for position-free structure induction. ReSSFormer replaces conventional depth stacking with recurrent inference, substitutes full attention with token- and expert-level sparsity, and models latent token topology directly from content. Across language modeling, multi-hop QA, and structure-sensitive tasks, ReSSFormer consistently outperforms strong baselines under comparable FLOPs and parameter budgets, highlighting its scalability, efficiency, and structural flexibility.
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