English

Knowledge Adaption for Demand Prediction based on Multi-task Memory Neural Network

Artificial Intelligence 2020-09-15 v1

Abstract

Accurate demand forecasting of different public transport modes(e.g., buses and light rails) is essential for public service operation.However, the development level of various modes often varies sig-nificantly, which makes it hard to predict the demand of the modeswith insufficient knowledge and sparse station distribution (i.e.,station-sparse mode). Intuitively, different public transit modes mayexhibit shared demand patterns temporally and spatially in a city.As such, we propose to enhance the demand prediction of station-sparse modes with the data from station-intensive mode and designaMemory-Augmented Multi-taskRecurrent Network (MATURE)to derive the transferable demand patterns from each mode andboost the prediction of station-sparse modes through adaptingthe relevant patterns from the station-intensive mode. Specifically,MATUREcomprises three components: 1) a memory-augmentedrecurrent network for strengthening the ability to capture the long-short term information and storing temporal knowledge of eachtransit mode; 2) a knowledge adaption module to adapt the rele-vant knowledge from a station-intensive source to station-sparsesources; 3) a multi-task learning framework to incorporate all theinformation and forecast the demand of multiple modes jointly.The experimental results on a real-world dataset covering four pub-lic transport modes demonstrate that our model can promote thedemand forecasting performance for the station-sparse modes.

Keywords

Cite

@article{arxiv.2009.05777,
  title  = {Knowledge Adaption for Demand Prediction based on Multi-task Memory Neural Network},
  author = {Can Li and Lei Bai and Wei Liu and Lina Yao and S Travis Waller},
  journal= {arXiv preprint arXiv:2009.05777},
  year   = {2020}
}

Comments

10 pages, 6 figures

R2 v1 2026-06-23T18:29:26.263Z