Dynamical systems with interacting agents are universal in nature, commonly modeled by a graph of relationships between their constituents. Recently, various works have been presented to tackle the problem of inferring those relationships from the system trajectories via deep neural networks, but most of the studies assume binary or discrete types of interactions for simplicity. In the real world, the interaction kernels often involve continuous interaction strengths, which cannot be accurately approximated by discrete relations. In this work, we propose the relational attentive inference network (RAIN) to infer continuously weighted interaction graphs without any ground-truth interaction strengths. Our model employs a novel pairwise attention (PA) mechanism to refine the trajectory representations and a graph transformer to extract heterogeneous interaction weights for each pair of agents. We show that our RAIN model with the PA mechanism accurately infers continuous interaction strengths for simulated physical systems in an unsupervised manner. Further, RAIN with PA successfully predicts trajectories from motion capture data with an interpretable interaction graph, demonstrating the virtue of modeling unknown dynamics with continuous weights.
翻译:与互动物剂的动态系统具有普遍性,通常以其组成者之间关系的图表为模型。最近,提出了各种工作以解决通过深神经网络从系统轨迹中推断这些关系的问题,但大多数研究都假定了简单化的二进制或离散的相互作用类型。在现实世界中,互动内核往往涉及连续互动的强项,这些强项无法通过离散关系准确地加以比对。在这项工作中,我们提议建立关注关系推导网络(RAIN),以推断连续加权互动图,而没有任何地面-真相互动强项。我们的模型采用了一种新颖的双向关注机制,以完善轨迹表和图式变异器,为每对物剂提取各异的互动权重。我们表明,我们与PA机制的RAIN模型精确地推断出模拟物理系统的连续互动强项。此外,与PAA研究所成功地用可解释的互动图表预测了运动捕捉数据的轨迹,展示了以连续重量为未知动态模型的优点。