MS-SSM: Multi-Scale State Space Model for Efficient Sequence Modeling
Published:Dec 29, 2025 19:36
•1 min read
•ArXiv
Analysis
This paper introduces MS-SSM, a multi-scale state space model designed to improve sequence modeling efficiency and long-range dependency capture. It addresses limitations of traditional SSMs by incorporating multi-resolution processing and a dynamic scale-mixer. The research is significant because it offers a novel approach to enhance memory efficiency and model complex structures in various data types, potentially improving performance in tasks like time series analysis, image recognition, and natural language processing.
Key Takeaways
- •MS-SSM is a multi-scale state space model.
- •It addresses limitations of traditional SSMs.
- •It uses multi-resolution processing and a dynamic scale-mixer.
- •It improves sequence modeling, especially in long-range and hierarchical tasks.
- •It outperforms prior SSM-based models on various benchmarks.
Reference
“MS-SSM enhances memory efficiency and long-range modeling.”