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Auxiliary Gibbs Sampling for Inference in Piecewise-Constant Conditional Intensity Models

机译:分段恒定条件强度模型中用于推理的辅助吉布斯采样

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A piecewise-constant conditional intensity model (PCIM) is a non-Markovian model of temporal stochastic dependencies in continuous-time event streams. It allows efficient learning and forecasting given complete trajectories. However, no general inference algorithm has been developed for PCIMs. We propose an effective and efficient auxiliary Gibbs sampler for inference in PCIM, based on the idea of thinning for inhomogeneous Poisson processes. The sampler alternates between sampling a finite set of auxiliary virtual events with adaptive rates, and performing an efficient forward-backward pass at discrete times to generate samples. We show that our sampler can successfully perform inference tasks in both Markovian and non-Markovian models, and can be employed in Expectation-Maximization PCIM parameter estimation and structural learning with partially observed data.
机译:分段恒定条件强度模型(PCIM)是连续时间事件流中时间随机依存关系的非马尔可夫模型。它可以在给定完整轨迹的情况下进行有效的学习和预测。但是,尚未为PCIM开发通用的推理算法。我们基于细化非均匀泊松过程的思想,提出了一种有效且高效的辅助Gibbs采样器,用于PCIM推理。采样器交替进行以下两种操作:以自适应速率对一组有限的辅助虚拟事件进行采样,以及在离散时间执行有效的前后移动以生成采样。我们证明了我们的采样器可以在马尔可夫模型和非马尔可夫模型中成功执行推理任务,并且可以用于期望最大化PCIM参数估计和具有部分观测数据的结构学习中。

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