Mobile phone usage provides a wealth of information, which can be used to better understand the demographic structure of a population. In this paper, we focus on the population of Mexican mobile phone users. We first present an observational study of mobile phone usage according to gender and age groups. We are able to detect significant differences in phone usage among different subgroups of the population. We then study the performance of different machine learning (ML) methods to predict demographic features (namely, age and gender) of unlabeled users by leveraging individual calling patterns, as well as the structure of the communication graph. We show how a specific implementation of a diffusion model, harnessing the graph structure, h...
Mobile phone datasets allow for the analysis of human behavior on an unprecedented scale. The social...
The massive amounts of geolocation data collected from mobile phone records have sparked an ongoing ...
<div><p>Social networks can be organized into communities of closely connected nodes, a property kno...
Based on a dataset provided by a telecommunications operator with fully anonymized information about...
Machine learning algorithms have started having an unprecedented impact on human society due to thei...
With the proliferation of electronic modes of communication (e.g., e-mails, phone calls and short me...
International audienceIn this paper, we address some sociological and topological issues associated...
We present a link-centric approach to study variation in the mobile phone communication patterns of ...
Demographics are widely used in marketing to characterize differ-ent types of customers. However, in...
In this paper we predict outgoing mobile phone calls using machine learning and time clusters based ...
We present a link-centric approach to study variation in the mobile phone communication patterns of ...
In this paper, we describe how we use the mobile phone usage of users to predict their demographic a...
The ubiquitous presence of cell phones in emerging economies has brought about a wide range of cell ...
In this work, we examine the socio-economic correlations present among users in a mobile phone netwo...
Abstract—Patterns of mobile phone communications, coupled with the information of the social network...
Mobile phone datasets allow for the analysis of human behavior on an unprecedented scale. The social...
The massive amounts of geolocation data collected from mobile phone records have sparked an ongoing ...
<div><p>Social networks can be organized into communities of closely connected nodes, a property kno...
Based on a dataset provided by a telecommunications operator with fully anonymized information about...
Machine learning algorithms have started having an unprecedented impact on human society due to thei...
With the proliferation of electronic modes of communication (e.g., e-mails, phone calls and short me...
International audienceIn this paper, we address some sociological and topological issues associated...
We present a link-centric approach to study variation in the mobile phone communication patterns of ...
Demographics are widely used in marketing to characterize differ-ent types of customers. However, in...
In this paper we predict outgoing mobile phone calls using machine learning and time clusters based ...
We present a link-centric approach to study variation in the mobile phone communication patterns of ...
In this paper, we describe how we use the mobile phone usage of users to predict their demographic a...
The ubiquitous presence of cell phones in emerging economies has brought about a wide range of cell ...
In this work, we examine the socio-economic correlations present among users in a mobile phone netwo...
Abstract—Patterns of mobile phone communications, coupled with the information of the social network...
Mobile phone datasets allow for the analysis of human behavior on an unprecedented scale. The social...
The massive amounts of geolocation data collected from mobile phone records have sparked an ongoing ...
<div><p>Social networks can be organized into communities of closely connected nodes, a property kno...