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Towards an On-device Agent for Text Rewriting

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arxiv 2308.11807 v1 pith:AISRR3EH submitted 2023-08-22 cs.CL

Towards an On-device Agent for Text Rewriting

classification cs.CL
keywords modelrewritingtextapproachdatalanguageon-deviceperformance
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Large Language Models (LLMs) have demonstrated impressive capabilities for text rewriting. Nonetheless, the large sizes of these models make them impractical for on-device inference, which would otherwise allow for enhanced privacy and economical inference. Creating a smaller yet potent language model for text rewriting presents a formidable challenge because it requires balancing the need for a small size with the need to retain the emergent capabilities of the LLM, that requires costly data collection. To address the above challenge, we introduce a new instruction tuning approach for building a mobile-centric text rewriting model. Our strategies enable the generation of high quality training data without any human labeling. In addition, we propose a heuristic reinforcement learning framework which substantially enhances performance without requiring preference data. To further bridge the performance gap with the larger server-side model, we propose an effective approach that combines the mobile rewrite agent with the server model using a cascade. To tailor the text rewriting tasks to mobile scenarios, we introduce MessageRewriteEval, a benchmark that focuses on text rewriting for messages through natural language instructions. Through empirical experiments, we demonstrate that our on-device model surpasses the current state-of-the-art LLMs in text rewriting while maintaining a significantly reduced model size. Notably, we show that our proposed cascading approach improves model performance.

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  1. Short-form Text Rewriting with Phi Silica

    cs.CL 2026-05 unverdicted novelty 3.0

    Finetuning Phi Silica on curated short presentation text improves semantic fidelity, reduces hallucinations, and raises preference win rates over GPT-5-chat rewrites.