Semi-decentralized Inference in Heterogeneous Graph Neural Networks for Traffic Demand Forecasting: An Edge-Computing Approach

02/28/2023
by   Mahmoud Nazzal, et al.
0

Accurate and timely prediction of transportation demand and supply is essential for improving customer experience and raising the provider's profit. Recently, graph neural networks (GNNs) have been shown promising in predicting traffic demand and supply in small city regions. This awes their capability in modeling both a node's historical features and its relational information with other nodes. However, more efficient taxi demand and supply forecasting can still be achieved by following two main routes. First, is extending the scale of the prediction graph to include more regions. Second, is the simultaneous exploitation of multiple node and edge types to better expose and exploit the complex and diverse set of relations in a traffic system. Nevertheless, the applicability of both approaches is challenged by the scalability of system-wide GNN training and inference. An immediate remedy to the scalability challenge is to decentralize the GNN operation. However, decentralizing GNN operation creates excessive node-to-node communication overhead which hinders the potential of this approach. In this paper, we propose a semi-decentralized approach based on the use of multiple, moderately sized, and high-throughout cloudlet communication networks on the edge. This approach combines the best features of the centralized and decentralized settings; it may minimize the inter-cloudlet communication thereby alleviating the communication overhead of the decentralized approach while promoting scalability due to cloudlet-level decentralization. Also, we propose a heterogeneous GNN-LSTM algorithm for improved taxi-level demand and supply forecasting. This approach allows for handling dynamic taxi graphs where nodes are taxis. Through a set of experiments over real data, we show the advantage of the semi-decentralized approach as tested over our GNN-LSTM algorithm for taxi demand and supply prediction.

READ FULL TEXT

page 1

page 9

research
03/24/2023

IMA-GNN: In-Memory Acceleration of Centralized and Decentralized Graph Neural Networks at the Edge

In this paper, we propose IMA-GNN as an In-Memory Accelerator for centra...
research
03/01/2022

Equivariant and Stable Positional Encoding for More Powerful Graph Neural Networks

Graph neural networks (GNN) have shown great advantages in many graph-ba...
research
02/18/2019

Grids versus Graphs: Partitioning Space for Improved Taxi Demand-Supply Forecasts

Accurate taxi demand-supply forecasting is a challenging application of ...
research
08/06/2023

Communication-Free Distributed GNN Training with Vertex Cut

Training Graph Neural Networks (GNNs) on real-world graphs consisting of...
research
06/11/2021

Breaking the Limit of Graph Neural Networks by Improving the Assortativity of Graphs with Local Mixing Patterns

Graph neural networks (GNNs) have achieved tremendous success on multipl...
research
03/04/2022

TransMUSE: Transferable Traffic Prediction in MUlti-Service EdgeNetworks

The Covid-19 pandemic has forced the workforce to switch to working from...
research
03/06/2021

Decentralized Langevin Dynamics over a Directed Graph

The prevalence of technologies in the space of the Internet of Things an...

Please sign up or login with your details

Forgot password? Click here to reset