The generation of personalized dialogue is vital to natural and human-like conversation. Typically, personalized dialogue generation models involve conditioning the generated response on the dialogue history and a representation of the persona/personality of the interlocutor. As it is impractical to obtain the persona/personality representations for every interlocutor, recent works have explored the possibility of generating personalized dialogue by finetuning the model with dialogue examples corresponding to a given persona instead. However, in real-world implementations, a sufficient number of corresponding dialogue examples are also rarely available. Hence, in this paper, we propose a Dual Latent Variable Generator (DLVGen) capable of generating personalized dialogue in the absence of any persona/personality information or any corresponding dialogue examples. Unlike prior work, DLVGen models the latent distribution over potential responses as well as the latent distribution over the agent's potential persona. During inference, latent variables are sampled from both distributions and fed into the decoder. Empirical results show that DLVGen is capable of generating diverse responses which accurately incorporate the agent's persona.
翻译:个人化对话的产生对于自然和人式对话至关重要,通常,个性化对话的产生模式涉及以对话历史和对话者个人/个性代表的方式对产生的反应进行限定,由于为每个对话者获得个性/个性代表不切实际,最近的工作探索了个人化对话的可能性,通过对模式进行微调,以与特定人相对应的对话实例对模式进行相应调整,然而,在现实世界的实施中,也很少有足够数量的对应对话实例。因此,在本文件中,我们提议,在没有任何个人/个性信息或任何相应对话实例的情况下,可产生个性化对话的双重隐性变数生成器(DLVGen ) 。与以前的工作不同,DLVGen对潜在反应的潜在分布以及代理人潜在人性的潜在分布进行了模型。在推断中,潜在变数从分布中抽样并输入到解码器中。Epirical结果显示,DLVGen能够产生各种反应,从而准确地将代理人的个人纳入。