Dynamic Tensor Decomposition via Neural Diffusion-Reaction Processes
Zheng Wang, Shikai Fang, Shibo Li, Shandian Zhe

TL;DR
This paper introduces DEMOTE, a neural diffusion-reaction process-based method for dynamic tensor decomposition that effectively captures temporal evolution and structural information in sparse, multiway data.
Contribution
DEMOTE leverages a neural diffusion-reaction process to model dynamic embeddings, integrating graph-based correlation and nonlinear entry modeling for improved tensor analysis.
Findings
Demonstrates superior performance in simulation studies.
Shows effectiveness in real-world applications.
Offers an efficient stochastic mini-batch learning algorithm.
Abstract
Tensor decomposition is an important tool for multiway data analysis. In practice, the data is often sparse yet associated with rich temporal information. Existing methods, however, often under-use the time information and ignore the structural knowledge within the sparsely observed tensor entries. To overcome these limitations and to better capture the underlying temporal structure, we propose Dynamic EMbedIngs fOr dynamic Tensor dEcomposition (DEMOTE). We develop a neural diffusion-reaction process to estimate dynamic embeddings for the entities in each tensor mode. Specifically, based on the observed tensor entries, we build a multi-partite graph to encode the correlation between the entities. We construct a graph diffusion process to co-evolve the embedding trajectories of the correlated entities and use a neural network to construct a reaction process for each individual entity. In…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Tensor decomposition and applications · Functional Brain Connectivity Studies
