Poster
in
Workshop: Synthetic Data Generation with Generative AI
Conditional Generative Modeling for High-dimensional Marked Temporal Point Processes
Zheng Dong · Zekai Fan · Shixiang Zhu
Keywords: [ conditional generative models ] [ marked temporal point processes ] [ asynchronous high-dimensional synthetic content ]
Recent advancements in generative modeling have made it possible to generate high-quality content from context information, but a key question remains: how to teach models to know when to generate content? To answer this question, this study proposes a novel event generative model that draws its statistical intuition from marked temporal point processes, and offers a clean, flexible, and computationally efficient solution for a wide range of applications involving the generation of asynchronous events with high-dimensional marks. We use a conditional generator that takes the history of events as input and generates the high-quality subsequent event that is likely to occur given the prior observations. The proposed framework offers a host of benefits, including considerable representational power to capture intricate dynamics in multi- or even high-dimensional event space, as well as exceptional efficiency in learning the model and generating samples. Our numerical results demonstrate superior performance compared to other state-of-the-art baselines.