ARM: Efficient Guided Decoding with Autoregressive Reward Models
Abstract
An efficient parameterization for the autoregressive reward model improves guided decoding performance in language models for tasks like detoxification and sentiment control.
Language models trained on large amounts of data require careful tuning to be safely deployed in real world. We revisit the guided decoding paradigm, where the goal is to augment the logits of the base language model using the scores from a task-specific reward model. We propose a simple but efficient parameterization of the autoregressive reward model enabling fast and effective guided decoding. On detoxification and sentiment control tasks, we show that our efficient parameterization performs on par with RAD, a strong but less efficient guided decoding approach.
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