Dokumentdetails
ID

oai:arXiv.org:2403.15360

Thema
Computer Science - Computer Vision... Computer Science - Machine Learnin... Electrical Engineering and Systems... Electrical Engineering and Systems...
Autor
Patro, Badri N. Agneeswaran, Vijay S.
Kategorie

Computer Science

Jahr

2024

Auflistungsdatum

01.05.2024

Schlüsselwörter
state-of-the-art benchmarks learning mamba networks systems sequence science
Metrisch

Zusammenfassung

Transformers have widely adopted attention networks for sequence mixing and MLPs for channel mixing, playing a pivotal role in achieving breakthroughs across domains.

However, recent literature highlights issues with attention networks, including low inductive bias and quadratic complexity concerning input sequence length.

State Space Models (SSMs) like S4 and others (Hippo, Global Convolutions, liquid S4, LRU, Mega, and Mamba), have emerged to address the above issues to help handle longer sequence lengths.

Mamba, while being the state-of-the-art SSM, has a stability issue when scaled to large networks for computer vision datasets.

We propose SiMBA, a new architecture that introduces Einstein FFT (EinFFT) for channel modeling by specific eigenvalue computations and uses the Mamba block for sequence modeling.

Extensive performance studies across image and time-series benchmarks demonstrate that SiMBA outperforms existing SSMs, bridging the performance gap with state-of-the-art transformers.

Notably, SiMBA establishes itself as the new state-of-the-art SSM on ImageNet and transfer learning benchmarks such as Stanford Car and Flower as well as task learning benchmarks as well as seven time series benchmark datasets.

The project page is available on this website ~\url{https://github.com/badripatro/Simba}.

Patro, Badri N.,Agneeswaran, Vijay S., 2024, SiMBA: Simplified Mamba-Based Architecture for Vision and Multivariate Time series

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