Towards Reliable Neural Optimizers: A Permutation Equivariant Neural Approximation for Information Processing Applications
Meiyi Li, Javad Mohammadi

TL;DR
This paper introduces LOOP-PE, a permutation equivariant neural optimizer that enhances decision-making in sensor networks by adapting to data heterogeneity and failures, leading to more reliable and efficient real-time information processing.
Contribution
The paper presents a novel permutation equivariant neural approximation model, LOOP-PE, that improves robustness and adaptability of neural optimizers in heterogeneous sensor network environments.
Findings
LOOP-PE outperforms traditional methods in real-time sensor data management.
The model maintains near-optimal solutions despite sensor failures and data variability.
Physical constraints integration enhances decision feasibility.
Abstract
The complexities of information processing across Dynamic Data Driven Applications Systems drive the development and adoption of Artificial Intelligence-based optimization solutions. Traditional solvers often suffer from slow response times and an inability to adapt swiftly to real-time input variations. To address these deficiencies, we will expand on our previous research in neural-based optimizers by introducing a machine learning-enabled neural approximation model called LOOP-PE (Learning to Optimize the Optimization Process -- Permutation Equivariance version). This model not only enhances decision-making efficiency but also dynamically adapts to variations of data collections from sensor networks. In this work, we focus on mitigating the heterogeneity issues of data collection from sensor networks, including sensor dropout and failures, communication delays, and the complexities…
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Taxonomy
TopicsNeural Networks and Applications
MethodsFocus · Dropout
