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Speculative Sampling for Parametric Temporal Point Processes

arXiv:2510.20031v1 Announce Type: new Abstract: Temporal point processes are powerful generative models for event sequences that capture complex dependencies in time-series data. They are commonly specified using autoregressive models that learn the distribution of the next event from the previous…

Deep Continuous-Time State-Space Models for Marked Event Sequences

arXiv:2412.19634v2 Announce Type: replace-cross Abstract: Marked temporal point processes (MTPPs) model sequences of events occurring at irregular time intervals, with wide-ranging applications in fields such as healthcare, finance and social networks. We propose the state-space point process (S2P2) model, a…

Compositional Coordination for Multi-Robot Teams with Large Language Models

arXiv:2507.16068v3 Announce Type: replace-cross Abstract: Multi-robot coordination has traditionally relied on a mission-specific and expert-driven pipeline, where natural language mission descriptions are manually translated by domain experts into mathematical formulation, algorithm design, and executable code. This conventional process is labor-intensive,…

Behavioral Biometrics for Automatic Detection of User Familiarity in VR

arXiv:2510.12988v2 Announce Type: replace-cross Abstract: As virtual reality (VR) devices become increasingly integrated into everyday settings, a growing number of users without prior experience will engage with VR systems. Automatically detecting a user’s familiarity with VR as an interaction medium…

Assessing the Probabilistic Fit of Neural Regressors via Conditional Congruence

arXiv:2405.12412v3 Announce Type: replace Abstract: While significant progress has been made in specifying neural networks capable of representing uncertainty, deep networks still often suffer from overconfidence and misaligned predictive distributions. Existing approaches for measuring this misalignment are primarily developed under…