We present a probabilistic model where the latent variable respects both the distances and the topology of the modeled data. The model leverages the Riemannian geometry of the generated manifold to endow the latent space with a well-defined stochastic distance measure, which is modeled locally as Nakagami distributions. These stochastic distances are sought to be as similar as possible to observed distances along a neighborhood graph through a censoring process. The model is inferred by variational inference based on observations of pairwise distances. We demonstrate how the new model can encode invariances in the learned manifolds.
翻译:我们提出了一个概率模型,潜伏变量既尊重模型数据的距离,也尊重模型数据的地形学。模型利用生成的方块的里曼尼方位测量法,用一个明确界定的随机距离测量法给潜伏空间铺平,该方位测量法以纳卡加米分布法为本地模型。这些随机距离力求尽可能类似于通过审查过程在附近图上观测到的距离。该模型通过基于对称距离观测的变异推理推导推导得出。我们演示了新模型如何在所学的方块中编码变量。