LGMLJul 2, 2018

Clustering with Temporal Constraints on Spatio-Temporal Data of Human Mobility

arXiv:1807.00546v16 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately identifying significant locations in human mobility analysis, which is incremental as it builds on existing clustering methods by adding temporal considerations.

The paper tackled the problem of extracting places of interest from human mobility data by introducing a clustering method that incorporates temporal constraints, showing improved granularity and predictability for next place prediction on datasets of 193 individuals.

Extracting significant places or places of interest (POIs) using individuals' spatio-temporal data is of fundamental importance for human mobility analysis. Classical clustering methods have been used in prior work for detecting POIs, but without considering temporal constraints. Usually, the involved parameters for clustering are difficult to determine, e.g., the optimal cluster number in hierarchical clustering. Currently, researchers either choose heuristic values or use spatial distance-based optimization to determine an appropriate parameter set. We argue that existing research does not optimally address temporal information and thus leaves much room for improvement. Considering temporal constraints in human mobility, we introduce an effective clustering approach - namely POI clustering with temporal constraints (PC-TC) - to extract POIs from spatio-temporal data of human mobility. Following human mobility nature in modern society, our approach aims to extract both global POIs (e.g., workplace or university) and local POIs (e.g., library, lab, and canteen). Based on two publicly available datasets including 193 individuals, our evaluation results show that PC-TC has much potential for next place prediction in terms of granularity (i.e., the number of extracted POIs) and predictability.

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