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Addressing Challenges in Spatial and Temporal Tasks
PhD Thesis Proposal Defence Title: "Addressing Challenges in Spatial and Temporal Tasks" by Miss Jia LI Abstract: With the rise of data-collection technologies and tools, we are accumulating vast data on human society and the natural world, e.g., financial transactions, traffic flow, precipitation, and air quality. The data collected is inherently spatial and temporal, as it is associated with the spatial location and the time of observation. Effective analysis of such data fosters an enhanced understanding of the evolving physical world around us. In this thesis proposal, we are motivated by real-world applications and develop data-driven methodologies for spatial and temporal mining. Specifically, this proposal studies two types of tasks, i.e., time series anomaly detection and spatial interpolation. The first work aims to discover anomalies during each temporal data collection process. We proposed FluxEV, a fast and effective unsupervised anomaly detection framework for time-series data. By converting data with periodic patterns into a stationary distribution and expanding the gap between normal and abnormal values, FluxEV significantly improves detection accuracy. Moreover, the Method of Moments is adopted to speed up the parameter estimation in the automatic thresholding. Extensive experiments show that FluxEV greatly outperforms the state-of-the-art baselines on two large public datasets while ensuring high efficiency. In the second work, we aim to infer fine-grained spatial information using the observation data to address the data sparsity of limited data collection devices. The existing spatial interpolation methods rely on some unrealistic pre-settings to capture spatial correlations, which limits their performance in real scenarios. To tackle this issue, we propose the SSIN, which is a novel data-driven self-supervised learning framework for spatial interpolation by mining latent spatial patterns from historical observation data. Inspired by the Cloze task, we fully consider the characteristics of spatial interpolation and design the SpaFormer model based on the Transformer architecture as the core of SSIN. The experimental results on real-life raingauge and traffic datasets verify the effectiveness and generality of our proposed solution. Date: Friday, 22 March 2024 Time: 2:00pm - 4:00pm Venue: Room 4472 Lifts 25/26 Committee Members: Prof. Lei Chen (Supervisor) Prof. Xiaofang Zhou (Chairperson) Prof. Ke Yi Prof. Qiong Luo