Variational Predictive Routing with Nested Subjective Timescales
Alexey Zakharov, Qinghai Guo, Zafeirios Fountas

TL;DR
Variational Predictive Routing (VPR) is a hierarchical neural model that dynamically organizes latent representations of video features based on their temporal change rates, enabling event detection, feature disentanglement, and adaptable future predictions.
Contribution
The paper introduces VPR, a novel neural probabilistic inference system that models spatiotemporal hierarchies and adapts representations dynamically without external event detectors.
Findings
VPR detects event boundaries in video data.
VPR disentangles spatiotemporal features across hierarchy levels.
VPR produces accurate, time-agnostic future predictions.
Abstract
Discovery and learning of an underlying spatiotemporal hierarchy in sequential data is an important topic for machine learning. Despite this, little work has been done to explore hierarchical generative models that can flexibly adapt their layerwise representations in response to datasets with different temporal dynamics. Here, we present Variational Predictive Routing (VPR) - a neural probabilistic inference system that organizes latent representations of video features in a temporal hierarchy, based on their rates of change, thus modeling continuous data as a hierarchical renewal process. By employing an event detection mechanism that relies solely on the system's latent representations (without the need of a separate model), VPR is able to dynamically adjust its internal state following changes in the observed features, promoting an optimal organisation of representations across the…
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Taxonomy
TopicsNeural dynamics and brain function · Generative Adversarial Networks and Image Synthesis · Embodied and Extended Cognition
