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arxiv: 2210.12050 · v1 · pith:DSA7PWZAnew · submitted 2022-10-21 · 💻 cs.CL

Clip-Tuning: Towards Derivative-free Prompt Learning with a Mixture of Rewards

classification 💻 cs.CL
keywords promptlearningderivative-freeclip-tuninginferencelanguagemethodmixture
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Derivative-free prompt learning has emerged as a lightweight alternative to prompt tuning, which only requires model inference to optimize the prompts. However, existing work did not take full advantage of the over-parameterized characteristics of large pre-trained language models (PLMs). In this paper, we propose Clip-Tuning, a simple yet effective method that adopts diverse frozen "thinned" networks of PLMs to obtain a mixture of rewards and thus advance the derivative-free prompt learning. The thinned networks consist of all the hidden units that survive a stationary dropout strategy, whose inference predictions reflect an ensemble of partial views over prompted training samples. Our method outperforms previous gradient-free prompt learning methods and achieves parity with gradient-based counterparts on seven language understanding benchmarks under few-shot settings.

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