Constraint based causal structure learning for point processes require empirical tests of local independence. Existing tests require strong model assumptions, e.g. that the true data generating model is a Hawkes process with no latent confounders. Even when restricting attention to Hawkes processes, latent confounders are a major technical difficulty because a marginalized process will generally not be a Hawkes process itself. We introduce an expansion similar to Volterra expansions as a tool to represent marginalized intensities. Our main theoretical result is that such expansions can approximate the true marginalized intensity arbitrarily well. Based on this we propose a test of local independence and investigate its properties in real and simulated data.
翻译:现有测试需要强有力的模型假设,例如,真正的数据生成模型是一个没有潜在混淆因素的霍克斯过程。即使限制对霍克斯过程的关注,潜在的混淆者也是一种重大技术困难,因为边缘化过程一般不是霍克斯过程本身。我们引入类似于沃尔特拉扩张的扩张,作为代表边缘化强度的工具。我们的主要理论结果是,这种扩张可以任意地接近真正的边缘化强度。在此基础上,我们提议测试当地独立,并以真实和模拟的数据调查其特性。