LGAICLDec 26, 2024

On the Expressiveness and Length Generalization of Selective State-Space Models on Regular Languages

arXiv:2412.19350v212 citationsh-index: 14Has CodeAAAI
Originality Incremental advance
AI Analysis

This work addresses a formal analysis problem for researchers in sequence modeling, offering incremental improvements in understanding SSM limitations.

The paper tackled the underexplored expressiveness and length generalization of selective state-space models (SSMs) on regular language tasks by introducing the Selective Dense State-Space Model (SD-SSM), which achieved perfect length generalization on various regular language tasks using a single layer.

Selective state-space models (SSMs) are an emerging alternative to the Transformer, offering the unique advantage of parallel training and sequential inference. Although these models have shown promising performance on a variety of tasks, their formal expressiveness and length generalization properties remain underexplored. In this work, we provide insight into the workings of selective SSMs by analyzing their expressiveness and length generalization performance on regular language tasks, i.e., finite-state automaton (FSA) emulation. We address certain limitations of modern SSM-based architectures by introducing the Selective Dense State-Space Model (SD-SSM), the first selective SSM that exhibits perfect length generalization on a set of various regular language tasks using a single layer. It utilizes a dictionary of dense transition matrices, a softmax selection mechanism that creates a convex combination of dictionary matrices at each time step, and a readout consisting of layer normalization followed by a linear map. We then proceed to evaluate variants of diagonal selective SSMs by considering their empirical performance on commutative and non-commutative automata. We explain the experimental results with theoretical considerations. Our code is available at https://github.com/IBM/selective-dense-state-space-model.

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