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Distribution-Free Conformal Joint Prediction Regions for Neural Marked Temporal Point Processes

Machine Learning(2024)

University of Mons

Cited 1|Views11
Abstract
Sequences of labeled events observed at irregular intervals in continuous time are ubiquitous across various fields. Temporal Point Processes (TPPs) provide a mathematical framework for modeling these sequences, enabling inferences such as predicting the arrival time of future events and their associated label, called mark. However, due to model misspecification or lack of training data, these probabilistic models may provide a poor approximation of the true, unknown underlying process, with prediction regions extracted from them being unreliable estimates of the underlying uncertainty. This paper develops more reliable methods for uncertainty quantification in neural TPP models via the framework of conformal prediction. A primary objective is to generate a distribution-free joint prediction region for an event’s arrival time and mark, with a finite-sample marginal coverage guarantee. A key challenge is to handle both a strictly positive, continuous response and a categorical response, without distributional assumptions. We first consider a simple but overly conservative approach that combines individual prediction regions for the event’s arrival time and mark. Then, we introduce a more effective method based on bivariate highest density regions derived from the joint predictive density of arrival times and marks. By leveraging the dependencies between these two variables, this method excludes unlikely combinations of the two, resulting in sharper prediction regions while still attaining the pre-specified coverage level. We also explore the generation of individual univariate prediction regions for events’ arrival times and marks through conformal regression and classification techniques. Moreover, we evaluate the stronger notion of conditional coverage. Finally, through extensive experimentation on both simulated and real-world datasets, we assess the validity and efficiency of these methods.
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Key words
Temporal point processes,Conformal prediction,Bivariate prediction region,Highest density regions
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要点】:本文提出了一种基于神经标记时间点过程模型的分布无关的符合预测方法,用于生成事件到达时间和标记的联合预测区域,并具有有限的样本边缘覆盖保证。

方法】:研究采用符合预测框架,通过处理事件到达时间和标记的联合预测密度,创建了一种无需分布假设的更有效的双变量最高密度区域方法。

实验】:作者在模拟数据和真实世界数据集上进行了实验,评估了所提出方法的有效性和效率,但未具体提及数据集名称。