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Trace norm regularization and faster inference for embedded speech recognition RNNs

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arxiv 1710.09026 v2 pith:6B23RVQ6 submitted 2017-10-25 cs.LG cs.CLeess.ASstat.ML

Trace norm regularization and faster inference for embedded speech recognition RNNs

classification cs.LG cs.CLeess.ASstat.ML
keywords embeddedlargetrainingconnectedfasterfullyinferencekernels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose and evaluate new techniques for compressing and speeding up dense matrix multiplications as found in the fully connected and recurrent layers of neural networks for embedded large vocabulary continuous speech recognition (LVCSR). For compression, we introduce and study a trace norm regularization technique for training low rank factored versions of matrix multiplications. Compared to standard low rank training, we show that our method leads to good accuracy versus number of parameter trade-offs and can be used to speed up training of large models. For speedup, we enable faster inference on ARM processors through new open sourced kernels optimized for small batch sizes, resulting in 3x to 7x speed ups over the widely used gemmlowp library. Beyond LVCSR, we expect our techniques and kernels to be more generally applicable to embedded neural networks with large fully connected or recurrent layers.

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  1. SLORR: Simple and Efficient In-Training Low-Rank Regularization

    cs.LG 2026-07 accept novelty 6.0

    A stateless, SVD-free regularizer approximates polar factors to induce low-rank weight structure during training, enabling better post-training compression of vision models and LLMs at under 8% overhead.