TL;DR
This paper presents a comprehensive framework for analyzing human mobility using telco data, introducing novel methods for location extraction, classification, and diversity measurement to better understand individual movement patterns.
Contribution
It introduces a new trajectory summarization technique, a location taxonomy based on attractiveness and frequency, and entropy-based metrics for mobility analysis, applied to large-scale telco data.
Findings
Effective reduction of data complexity in mobility analysis
High-quality insights into individual movement behavior
Successful classification of visited locations based on attractiveness and frequency
Abstract
The theme of human mobility is transversal to multiple fields of study and applications, from ad-hoc networks to smart cities, from transportation planning to recommendation systems on social networks. Despite the considerable efforts made by a few scientific communities and the relevant results obtained so far, there are still many issues only partially solved, that ask for general and quantitative methodologies to be addressed. A prominent aspect of scientific and practical relevance is how to characterize the mobility behavior of individuals. In this article, we look at the problem from a location-centric perspective: we investigate methods to extract, classify and quantify the symbolic locations specified in telco trajectories, and use such measures to feature user mobility. A major contribution is a novel trajectory summarization technique for the extraction of the locations of…
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