Methodology for Mining, Discovering and Analyzing Semantic Human
Mobility Behaviors
- URL: http://arxiv.org/abs/2012.04767v2
- Date: Sun, 20 Dec 2020 17:23:48 GMT
- Title: Methodology for Mining, Discovering and Analyzing Semantic Human
Mobility Behaviors
- Authors: Clement Moreau and Thomas Devogele and Laurent Etienne and Veronika
Peralta and Cyril de Runz
- Abstract summary: We propose a novel methodological pipeline called simba for mining and analyzing semantic mobility sequences.
A framework for semantic sequence mobility analysis and clustering explicability is implemented.
- Score: 0.3499870393443268
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Various institutes produce large semantic datasets containing information
regarding daily activities and human mobility. The analysis and understanding
of such data are crucial for urban planning, socio-psychology, political
sciences, and epidemiology. However, none of the typical data mining processes
have been customized for the thorough analysis of semantic mobility sequences
to translate data into understandable behaviors. Based on an extended
literature review, we propose a novel methodological pipeline called simba
(Semantic Indicators for Mobility and Behavior Analysis), for mining and
analyzing semantic mobility sequences to identify coherent information and
human behaviors. A framework for semantic sequence mobility analysis and
clustering explicability based on integrating different complementary
statistical indicators and visual tools is implemented. To validate this
methodology, we used a large set of real daily mobility sequences obtained from
a household travel survey. Complementary knowledge is automatically discovered
in the proposed method.
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