As an important sequential model, the temporal point process (TPP) plays a central role in real-world sequence modeling and analysis, whose learning is often based on the maximum likelihood estimation (MLE). However, due to imperfect observations, such as incomplete and sparse sequences that are common in practice, the MLE of TPP models often suffers from overfitting and leads to unsatisfactory generalization power. In this work, we develop a novel hierarchical contrastive (HCL) learning method for temporal point processes, which provides a new regularizer of MLE. In principle, our HCL considers the noise contrastive estimation (NCE) problem at the event-level and at the sequence-level jointly. Given a sequence, the event-level NCE maximize...
<p>Point process data are commonly observed in fields like healthcare and social science. Designing ...
Determinantal Point Processes (DPPs) are random point processes well-suited for modelling repulsion....
Temporal Point Processes (TPP) are probabilistic generative frameworks. They model discrete event se...
This work addresses the problem of robustly learning precise temporal point event detection despite ...
Estimating the future event sequence conditioned on current observations is a long-standing and chal...
Significant progress has been made in representation learning, especially with recent success on sel...
We present a new self-supervised paradigm on point cloud sequence understanding. Inspired by the dis...
Learning semantic-rich representations from raw unlabeled time series data is critical for downstrea...
Abstract. The Hierarchical Hidden Markov Model (HHMM) is a well formalized tool suitable to model co...
Event sequences in continuous time space are ubiquitous across applications and have been intensivel...
Maximum-likelihood estimation (MLE) is widely used in sequence to sequence tasks for model training....
Temporal point process (TPP) is commonly used to model the asynchronous event sequence featuring occ...
Determinantal Point Processes (DPPs) are random point processes well-suited for modelling repulsion....
Temporal dynamical systems are pervasively used in data science to model high-dimensional data gener...
We propose an unbounded-depth, hierarchical, Bayesian nonparametric model for discrete sequence data...
<p>Point process data are commonly observed in fields like healthcare and social science. Designing ...
Determinantal Point Processes (DPPs) are random point processes well-suited for modelling repulsion....
Temporal Point Processes (TPP) are probabilistic generative frameworks. They model discrete event se...
This work addresses the problem of robustly learning precise temporal point event detection despite ...
Estimating the future event sequence conditioned on current observations is a long-standing and chal...
Significant progress has been made in representation learning, especially with recent success on sel...
We present a new self-supervised paradigm on point cloud sequence understanding. Inspired by the dis...
Learning semantic-rich representations from raw unlabeled time series data is critical for downstrea...
Abstract. The Hierarchical Hidden Markov Model (HHMM) is a well formalized tool suitable to model co...
Event sequences in continuous time space are ubiquitous across applications and have been intensivel...
Maximum-likelihood estimation (MLE) is widely used in sequence to sequence tasks for model training....
Temporal point process (TPP) is commonly used to model the asynchronous event sequence featuring occ...
Determinantal Point Processes (DPPs) are random point processes well-suited for modelling repulsion....
Temporal dynamical systems are pervasively used in data science to model high-dimensional data gener...
We propose an unbounded-depth, hierarchical, Bayesian nonparametric model for discrete sequence data...
<p>Point process data are commonly observed in fields like healthcare and social science. Designing ...
Determinantal Point Processes (DPPs) are random point processes well-suited for modelling repulsion....
Temporal Point Processes (TPP) are probabilistic generative frameworks. They model discrete event se...