反应生成经验的反思

Chenchen Ye, Lizi Liao, Suyu Liu, Tat-seng Chua
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引用次数: 3

摘要

多模态对话系统最近备受关注,但它们与以下技能相距甚远:1)自动生成特定于上下文的响应,而不是安全但通用的响应;2)在不同的信息形式(如文本和图像)之间自然协调;3)直观地解释产生响应的原因,在不重新训练整个模型的情况下改进特定响应。为了达到这些目标,我们提出了一个不同的任务角度——反应生成的反思经验(RERG)。这是因为从头开始生成响应可能很困难,但如果我们可以访问其他类似的对话上下文和相应的响应,则会容易得多。特别地,RERG首先使用多模态对比学习增强检索模型来请求相似的对话实例。然后,它使用基于交叉复制的重用模型来探索当前对话上下文(垂直)和类似对话实例的响应(水平),以同时生成响应。实验结果表明,我们的模型在自动度量和人工评估方面都优于其他最先进的模型。此外,RERG自然地为更好的可解释性提供了支持对话实例。它还具有很强的适应未见对话设置的能力,只需将相关样本添加到检索数据存储中,而无需重新训练整个模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reflecting on Experiences for Response Generation
Multimodal dialogue systems attract much attention recently, but they are far from skills like: 1) automatically generate context- specific responses instead of safe but general responses; 2) naturally coordinate between the different information modalities (e.g. text and image) in responses; 3) intuitively explain the reasons for generated responses and improve a specific response without re-training the whole model. To approach these goals, we propose a different angle for the task - Reflecting Experiences for Response Generation (RERG). This is supported by the fact that generating a response from scratch can be hard, but much easier if we can access other similar dialogue contexts and the corresponding responses. In particular, RERG first uses a multimodal contrastive learning enhanced retrieval model for soliciting similar dialogue instances. It then employs a cross copy based reuse model to explore the current dialogue context (vertical) and similar dialogue instances' responses (horizontal) for response generation simultaneously. Experimental results demonstrate that our model outperforms other state-of-the-art models on both automatic metrics and human evaluation. Moreover, RERG naturally provides supporting dialogue instances for better explainability. It also has a strong capability in adapting to unseen dialogue settings by simply adding related samples to the retrieval datastore without re-training the whole model.
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