# Analyzing privacy-aware mobility behavior using the evolution of   spatio-temporal entropy

**Authors:** Arielle Moro, Beno\^it Garbinato, Val\'erie Chavez-Demoulin

arXiv: 1906.07537 · 2019-07-08

## TL;DR

This paper introduces a privacy-preserving method to analyze user mobility behavior using a novel spatio-temporal entropy metric, studying its evolution with various factors and improving prediction accuracy with GAMs.

## Contribution

It proposes a new entropy-based metric for privacy-aware mobility analysis and demonstrates the effectiveness of GAMs in modeling and predicting mobility behavior.

## Key findings

- Spatio-temporal entropy effectively quantifies mobility levels.
- GAMs outperform ARIMA in predicting entropy evolution.
- The method preserves user privacy while enabling detailed mobility analysis.

## Abstract

Analyzing mobility behavior of users is extremely useful to create or improve existing services. Several research works have been done in order to study mobility behavior of users that mainly use users' significant locations. However, these existing analysis are extremely intrusive because they require the knowledge of the frequently visited places of users, which thus makes it fairly easy to identify them. Consequently, in this paper, we present a privacy-aware methodology to analyze mobility behavior of users. We firstly propose a new metric based on the well-known Shannon entropy, called spatio-temporal entropy, to quantify the mobility level of a user during a time window. Then, we compute a sequence of spatio-temporal entropy from the location history of the user that expresses user's movements as rhythms. We secondly present how to study the effects of several groups of additional variables on the evolution of the spatio-temporal entropy of a user, such as spatio-temporal, demographic and mean of transportation variables. For this, we use Generalized Additive Models (GAMs). The results firstly show that the spatio-temporal entropy and GAMs are an ideal combination to understand mobility behavior of an individual user or a group of users. We also evaluate the prediction accuracy of a global GAM compared to individual GAMs and individual AutoRegressive Integrated Moving Average (ARIMA) models. These last results highlighted that the global GAM gives more accurate predictions of spatio-temporal entropy by checking the Mean Absolute Error (MAE). In addition, this research work opens various threads, such as the prediction of demographic data of users or the creation of personalized mobility prediction models by using movement rhythm characteristics of a user.

## Full text

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## Figures

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## References

23 references — full list in the complete paper: https://tomesphere.com/paper/1906.07537/full.md

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Source: https://tomesphere.com/paper/1906.07537