LGSIJan 16, 2024

Predicting Next Useful Location With Context-Awareness: The State-Of-The-Art

arXiv:2401.08081v13 citationsACM Trans Intell Syst Technol
AI Analysis

It addresses the problem of predicting mobile object locations for applications like traffic control and location-aware services, but it is incremental as it reviews existing work rather than presenting new research.

This survey provides a comprehensive overview of the next useful location prediction problem with context-awareness, analyzing nearly thirty studies to discuss methods, challenges, and future directions, including potential use cases in the automotive industry.

Predicting the future location of mobile objects reinforces location-aware services with proactive intelligence and helps businesses and decision-makers with better planning and near real-time scheduling in different applications such as traffic congestion control, location-aware advertisements, and monitoring public health and well-being. The recent developments in the smartphone and location sensors technology and the prevalence of using location-based social networks alongside the improvements in artificial intelligence and machine learning techniques provide an excellent opportunity to exploit massive amounts of historical and real-time contextual information to recognise mobility patterns and achieve more accurate and intelligent predictions. This survey provides a comprehensive overview of the next useful location prediction problem with context-awareness. First, we explain the concepts of context and context-awareness and define the next location prediction problem. Then we analyse nearly thirty studies in this field concerning the prediction method, the challenges addressed, the datasets and metrics used for training and evaluating the model, and the types of context incorporated. Finally, we discuss the advantages and disadvantages of different approaches, focusing on the usefulness of the predicted location and identifying the open challenges and future work on this subject by introducing two potential use cases of next location prediction in the automotive industry.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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