Point process data are becoming ubiquitous in modern applications, such as social networks, health care, and finance. Despite the powerful expressiveness of the popular recurrent neural network (RNN) models for point process data, they may not successfully capture sophisticated non-stationary dependencies in the data due to their recurrent structures. Another popular type of deep model for point process data is based on representing the influence kernel (rather than the intensity function) by neural networks. We take the latter approach and develop a new deep non-stationary influence kernel that can model non-stationary spatio-temporal point processes. The main idea is to approximate the influence kernel with a novel and general low-rank decomposition, enabling efficient representation through deep neural networks and computational efficiency and better performance. We also take a new approach to maintain the non-negativity constraint of the conditional intensity by introducing a log-barrier penalty. We demonstrate our proposed method's good performance and computational efficiency compared with the state-of-the-art on simulated and real data.
翻译:尽管流行的中枢神经网络(RNN)模型对点进程数据具有强烈的外观性,但由于其经常结构,这些模型可能无法成功地捕捉到数据中复杂的非静止依赖性;另一个流行的点进程数据深层模型是以神经网络的影响内核(而不是强度功能)为根据的;我们采取后一种方法,并开发一种新的非静止的深度内核影响内核,以模拟非静止的时空点进程;主要的想法是将影响内核与新颖的和一般的低级分解相近,通过深层神经网络和计算效率及更好的性能,使影响内核具有高效率的代表性;我们还采取新的办法,通过引入记录屏障惩罚来保持条件性强度的非高度限制。我们展示了我们所提议的方法的良好性能和计算效率,与模拟和真实数据的状态相比。