HSTFL: A Heterogeneous Federated Learning Framework for Misaligned Spatiotemporal Forecasting
Shuowei Cai, Hao Liu

TL;DR
HSTFL introduces a federated learning framework that enables privacy-preserving, multi-party collaborative spatiotemporal forecasting across heterogeneous data sources and locations, improving accuracy over existing methods.
Contribution
The paper proposes a novel HSTFL framework combining vertical federated learning with cross-client knowledge fusion to handle heterogeneity and privacy in multi-source spatiotemporal data.
Findings
HSTFL effectively resists inference attacks.
It significantly outperforms baseline methods in accuracy.
The framework preserves local data privacy.
Abstract
Spatiotemporal forecasting has emerged as an indispensable building block of diverse smart city applications, such as intelligent transportation and smart energy management. Recent advancements have uncovered that the performance of spatiotemporal forecasting can be significantly improved by integrating knowledge in geo-distributed time series data from different domains, \eg enhancing real-estate appraisal with human mobility data; joint taxi and bike demand predictions. While effective, existing approaches assume a centralized data collection and exploitation environment, overlooking the privacy and commercial interest concerns associated with data owned by different parties. In this paper, we investigate multi-party collaborative spatiotemporal forecasting without direct access to multi-source private data. However, this task is challenging due to 1) cross-domain feature…
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Taxonomy
TopicsData Management and Algorithms · Traffic Prediction and Management Techniques · Spatial and Panel Data Analysis
