LGAIMLMay 7, 2024

xLSTM: Extended Long Short-Term Memory

arXiv:2405.04517v2603 citationsh-index: 66NIPS
AI Analysis

This addresses the problem of outdated LSTM technology for large-scale language modeling, offering a competitive alternative to Transformers.

The paper tackles the scaling limitations of LSTMs in language modeling by introducing xLSTM with exponential gating and modified memory structures, achieving performance and scaling comparable to state-of-the-art Transformers and State Space Models.

In the 1990s, the constant error carousel and gating were introduced as the central ideas of the Long Short-Term Memory (LSTM). Since then, LSTMs have stood the test of time and contributed to numerous deep learning success stories, in particular they constituted the first Large Language Models (LLMs). However, the advent of the Transformer technology with parallelizable self-attention at its core marked the dawn of a new era, outpacing LSTMs at scale. We now raise a simple question: How far do we get in language modeling when scaling LSTMs to billions of parameters, leveraging the latest techniques from modern LLMs, but mitigating known limitations of LSTMs? Firstly, we introduce exponential gating with appropriate normalization and stabilization techniques. Secondly, we modify the LSTM memory structure, obtaining: (i) sLSTM with a scalar memory, a scalar update, and new memory mixing, (ii) mLSTM that is fully parallelizable with a matrix memory and a covariance update rule. Integrating these LSTM extensions into residual block backbones yields xLSTM blocks that are then residually stacked into xLSTM architectures. Exponential gating and modified memory structures boost xLSTM capabilities to perform favorably when compared to state-of-the-art Transformers and State Space Models, both in performance and scaling.

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