论文概要
研究领域: NLP 作者: Ming Yang, Zhiwei Zhang, Jiahang Li 发布时间: 2025-05-15 arXiv: 2505.10892
中文摘要
演示文稿是学术交流的主要媒介,然而大多数AI幻灯片生成器只优化产物(视觉上可信的幻灯片组),却忽略了交付过程(节奏、叙事和演讲准备)。我们提出DeepSlide,一种人在回路的多智能体系统,支持完整的演示准备流程,从需求获取、时间预算的叙事规划,到基于证据的幻灯片-脚本生成、注意力增强和排练支持。DeepSlide集成了(i)带节点时间预算的可控逻辑链规划器,(ii)轻量级内容树检索器用于 grounding,(iii)带样式继承的马尔可夫式顺序渲染,以及(iv)沙箱执行与最小修复以确保可渲染性。我们进一步引入双记分牌基准,将静态产物质量与动态交付表现 cleanly 分离。跨越20个领域和多样化受众,DeepSlide在产物质量上匹敌强基线,同时在交付指标上持续取得更大提升,改善叙事流畅度、节奏精度和幻灯片-脚本协同。
原文摘要
Presentations are a primary medium for scholarly communication, yet most AI slide generators optimize the artifact (a visually plausible deck) while under-optimizing the delivery process (pacing, narrative, and presentation preparation). We present DeepSlide, a human-in-the-loop multi-agent system that supports preparing the full presentation process, from requirement elicitation and time-budgeted narrative planning, to evidence-grounded slide--script generation, attention augmentation, and rehearsal support. DeepSlide integrates (i) a controllable logical-chain planner with per-node time budgets, (ii) a lightweight content-tree retriever for grounding, (iii) Markov-style sequential rendering with style inheritance, and (iv) sandboxed execution with minimal repair to ensure renderability. ...
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