BIT-MCS / DRL-freshMCS
[INFOCOM 2021] Mobile Crowdsensing for Data Freshness: A Deep Reinforcement Learning Approach
☆14Updated 2 years ago
Related projects ⓘ
Alternatives and complementary repositories for DRL-freshMCS
- [TMC 2021] Distributed and Energy-Efficient Mobile Crowdsensing with Charging Stations by Deep Reinforcement Learning☆25Updated 2 years ago
- [INFOCOM 2020] Multi-Task-Oriented Vehicular Crowdsensing: A Deep Learning Approach☆14Updated 2 years ago
- [TITS 2021] Social-aware incentive mechanism for vehicular crowdsensing by deep reinforcement learning☆16Updated 2 years ago
- [ICDE 2020] Curiosity-Driven Energy-Efficient Worker Scheduling in Vehicular Crowdsourcing: A Deep Reinforcement Learning Approach☆16Updated 2 years ago
- [INFOCOM 2020] Energy-Efficient UAV Crowdsensing with Multiple Charging Stations by Deep Learning☆14Updated 2 years ago
- [JSAC 2019] Energy-Efficient Distributed Mobile Crowd Sensing: A Deep Learning Approach☆13Updated 2 years ago
- [INFOCOM 2022] AoI-minimal UAV Crowdsensing by Model-based Graph Convolutional Reinforcement Learning☆48Updated last year
- [ICDE 2022] Human-Drone Collaborative Spatial Crowdsourcing by Memory-Augmented Distributed Multi-Agent Deep Reinforcement Learning☆23Updated 2 years ago
- [TMC 2023] Delay-Sensitive Energy-Efficient UAV Crowdsensing by Deep Reinforcement Learning☆40Updated 2 years ago
- [KDD 2021] Energy-Efficient 3D Vehicular Crowdsourcing for Disaster Response by Distributed Deep Reinforcement Learning☆13Updated 2 years ago
- [ToN 2024] Ensuring Threshold AoI for UAV-assisted Mobile Crowdsensing by Multi-Agent Deep Reinforcement Learning with Transformer☆21Updated 9 months ago
- Code for paper Social-Aware Incentive Mechanism for Vehicular Crowdsensing by Deep Reinforcement Learning☆21Updated 2 years ago
- [ICDE 2023] Exploring both Individuality and Cooperation for Air-Ground Spatial Crowdsourcing by Multi-Agent Deep Reinforcement Learning☆17Updated last year
- A framework that exploits the potentials of distributed federated learning and double deep Q-networks to minimize joint energy and delay …☆10Updated 3 years ago
- User allocation in Mobile Edge Computing Environment using Reinforcement Learning☆27Updated 2 years ago
- qiongwu86 / Resource-allocation-for-twin-maintenance-and-computing-tasks-in-digital-twin-mobile-edge-network☆12Updated 5 months ago
- 车联网环境☆16Updated last year
- ☆12Updated 3 years ago
- ☆28Updated 2 years ago
- code☆11Updated last year
- This is the code for paper: Scalable Federated Multi-agent Architecture forNetworked Communication Scenarios☆18Updated 3 years ago
- ☆12Updated last year
- UAV offloading based on QMIX☆10Updated last year
- Simulation code for the paper "Resource Allocation in V2X Networks: From Classical Optimization to Machine Learning-based Solutions"☆12Updated 7 months ago
- Decision making using Reinforcement Learning☆20Updated 5 years ago
- The purpose of this project is to implement machine learning methods to study resource allocation problems, that is how to share limited …☆15Updated 2 years ago
- ☆15Updated 5 years ago
- Deep Reinforcement Learning Environments for User-Centric Mobile Edge Computing☆20Updated 8 months ago
- 一个基于图神经网络的强化学习网络资源分配模型☆24Updated 2 years ago