Zhiyang Wang
University of Pennsylvania
30 Papers
67 Citations
Zhiyang Wang is an academic researcher from University of Pennsylvania. The author has contributed to research in topics: Computer science & Artificial neural network. The author has an hindex of 6, co-authored 20 publications. Previous affiliations of Zhiyang Wang include University of Science and Technology of China.
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Papers
•Posted Content
Learning Decentralized Wireless Resource Allocations with Graph Neural Networks
TL;DR: In this paper, Aggregation Graph Neural Networks (Agg-GNNs) are used to process a sequence of delayed and potentially asynchronous graph aggregated state information obtained locally at each transmitter from multi-hop neighbors.
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Regional Multi-Armed Bandits With Partial Informativeness
TL;DR: An efficient algorithm is proposed, UCB-g, that solves the regional bandit model by combining the Upper Confidence Bound (UCB) and greedy principles, and both parameter-dependent and parameter-free regret upper bounds are derived.
20
Small Cell Transmit Power Assignment Based on Correlated Bandit Learning
Zhiyang Wang,Cong Shen +1 more
TL;DR: This paper addresses the small base station (SBS) transmit power assignment problem based on stochastic bandit theory, and incorporates the performance correlation among similar power values, and establishes an algorithm that exploits the correlation structure to recover majority of the degraded performance.
19
•Posted Content
Learning for Dose Allocation in Adaptive Clinical Trials with Safety Constraints
TL;DR: In this article, the authors present a novel adaptive clinical trial methodology, called Safe Efficacy Exploration Dose Allocation (SEEDA), that aims at maximizing the cumulative efficacies while satisfying the toxicity safety constraint with high probability.
17
Graphon and Graph Neural Network Stability
Luana Ruiz,Zhiyang Wang,Alejandro Ribeiro +2 more
- 06 Jun 2021
TL;DR: In this article, the authors define graphon neural networks and analyze their stability to graphon perturbations and show that GNNs are stable to perturbation with a stability bound that decreases asymptotically with the size of the graph.
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