A new bimodal generative model is proposed for generating conditional and joint samples, accompanied with a training method with learning a succinct bottleneck representation. The proposed model, dubbed as the variational Wyner model, is designed based on two classical problems in network information theory -- distributed simulation and channel synthesis -- in which Wyner's common information arises as the fundamental limit on the succinctness of the common representation. The model is trained by minimizing the symmetric Kullback--Leibler divergence between variational and model distributions with regularization terms for common information, reconstruction consistency, and latent space matching terms, which is carried out via an adversarial density ratio estimation technique. The utility of the proposed approach is demonstrated through experiments for joint and conditional generation with synthetic and real-world datasets, as well as a challenging zero-shot image retrieval task.
翻译:为了产生有条件的和联合的样本,提出了一个新的双模式遗传模型,并辅之以一种培训方法,学习简明的瓶颈代表制,拟议的模型称为变式韦纳模型,其设计基于网络信息理论的两个古老问题 -- -- 分布式模拟和频道合成 -- -- 网络信息理论,其中Wyner的共同信息是作为对共同代表制简洁性的基本限制而产生的。该模型通过尽量减少对称的Kullback-Leeper分布和模型分布之间的对称差异,并采用统一的信息、重建一致性和潜在空间匹配条件等正规化条件,通过对称密度比率估计技术加以实施。通过与合成和现实世界数据集联合和有条件生成的实验,以及具有挑战性的零光图像检索任务,展示了拟议方法的效用。