English

Toward Time-Continuous Data Inference in Sparse Urban CrowdSensing

Machine Learning 2024-08-30 v1 Artificial Intelligence Networking and Internet Architecture

Abstract

Mobile Crowd Sensing (MCS) is a promising paradigm that leverages mobile users and their smart portable devices to perform various real-world tasks. However, due to budget constraints and the inaccessibility of certain areas, Sparse MCS has emerged as a more practical alternative, collecting data from a limited number of target subareas and utilizing inference algorithms to complete the full sensing map. While existing approaches typically assume a time-discrete setting with data remaining constant within each sensing cycle, this simplification can introduce significant errors, especially when dealing with long cycles, as real-world sensing data often changes continuously. In this paper, we go from fine-grained completion, i.e., the subdivision of sensing cycles into minimal time units, towards a more accurate, time-continuous completion. We first introduce Deep Matrix Factorization (DMF) as a neural network-enabled framework and enhance it with a Recurrent Neural Network (RNN-DMF) to capture temporal correlations in these finer time slices. To further deal with the continuous data, we propose TIME-DMF, which captures temporal information across unequal intervals, enabling time-continuous completion. Additionally, we present the Query-Generate (Q-G) strategy within TIME-DMF to model the infinite states of continuous data. Extensive experiments across five types of sensing tasks demonstrate the effectiveness of our models and the advantages of time-continuous completion.

Keywords

Cite

@article{arxiv.2408.16027,
  title  = {Toward Time-Continuous Data Inference in Sparse Urban CrowdSensing},
  author = {Ziyu Sun and Haoyang Su and Hanqi Sun and En Wang and Wenbin Liu},
  journal= {arXiv preprint arXiv:2408.16027},
  year   = {2024}
}

Comments

11 pages, 11 figures

R2 v1 2026-06-28T18:26:55.571Z