Mobile
Country-scale Exploratory Analysis of Call Detail Records through the Lens of Data Grid Models
Guigourès, Romain, Gay, Dominique, Boullé, Marc, Clérot, Fabrice, Rossi, Fabrice
Call Detail Records (CDRs) are data recorded by telecommunications companies, consisting of basic informations related to several dimensions of the calls made through the network: the source, destination, date and time of calls. CDRs data analysis has received much attention in the recent years since it might reveal valuable information about human behavior. It has shown high added value in many application domains like e.g., communities analysis or network planning. In this paper, we suggest a generic methodology for summarizing information contained in CDRs data. The method is based on a parameter-free estimation of the joint distribution of the variables that describe the calls. We also suggest several well-founded criteria that allows one to browse the summary at various granularities and to explore the summary by means of insightful visualizations. The method handles network graph data, temporal sequence data as well as user mobility data stemming from original CDRs data. We show the relevance of our methodology for various case studies on real-world CDRs data from Ivory Coast.
Tackling Mental Health by Integrating Unobtrusive Multimodal Sensing
Zhou, Dawei (University of Rochester) | Luo, Jiebo (University of Rochester) | Silenzio, Vincent M.B. (University of Rochester Medical Center) | Zhou, Yun (University of Rochester) | Hu, Jile (University of Rochester) | Currier, Glenn (University of Rochester Medical Center) | Kautz, Henry (University of Rochester)
Mental illness is becoming a major plague in modern societies and poses challenges to the capacity of current public health systems worldwide. With the widespread adoption of social media and mobile devices, and rapid advances in artificial intelligence, a unique opportunity arises for tackling mental health problems. In this study, we investigate how users’ online social activities and physiological signals detected through ubiquitous sensors can be utilized in realistic scenarios for monitoring their mental health states. First, we extract a suite of multimodal time-series signals using modern computer vision and signal processing techniques, from recruited participants while they are immersed in online social media that elicit emotions and emotion transitions. Next, we use machine learning techniques to build a model that establishes the connection between mental states and the extracted multimodal signals. Finally, we validate the effectiveness of our approach using two groups of recruited subjects.
Modelling Individual Negative Emotion Spreading Process with Mobile Phones
Du, Zhanwei (Jilin University) | Yang, Yongjian (Jilin Univerisity) | Ma, Chuang (Jilin Univerisity) | Bai, Yuan (Jilin Univerisity)
Individual mood is important for physical and emotional well-being, creativity and working memory. However, due to the lack of long-term real tracking daily data in individual level, most current works focus their efforts on population level and short-term small group. An ignored yet important task is to find the sentiment spreading mechanism in individual level from their daily behavior data. This paper studies this task by raising the following fundamental and summarization question, being not sufficiently answered by the literature so far:Given a social network, how the sentiment spread? The current individual-level network spreading models always assume one can infect others only when he/she has been infected. Considering the negative emotion spreading characters in individual level, we loose this assumption, and give an individual negative emotion spreading model. In this paper, we propose a Graph-Coupled Hidden Markov Sentiment Model for modeling the propagation of infectious negative sentiment locally within a social network. Taking the MIT Social Evolution dataset as an example, the experimental results verify the efficacy of our techniques on real-world data.
Incentivizing Users for Balancing Bike Sharing Systems
Singla, Adish (ETH Zurich) | Santoni, Marco (ElectricFeel Mobility Systems) | Bartók, Gábor (ETH Zurich) | Mukerji, Pratik (ElectricFeel Mobility Systems) | Meenen, Moritz (ElectricFeel Mobility Systems) | Krause, Andreas (ETH Zurich)
Bike sharing systems have been recently adopted by a growing number of cities as a new means of transportation offering citizens a flexible, fast and green alternative for mobility. Users can pick up or drop off the bicycles at a station of their choice without prior notice or time planning. This increased flexibility comes with the challenge of unpredictable and fluctuating demand as well as irregular flow patterns of the bikes. As a result, these systems can incur imbalance problems such as the unavailability of bikes or parking docks at stations. In this light, operators deploy fleets of vehicles which re-distribute the bikes in order to guarantee a desirable service level. Can we engage the users themselves to solve the imbalance problem in bike sharing systems? In this paper, we address this question and present a crowdsourcing mechanism that incentivizes the users in the bike repositioning process by providing them with alternate choices to pick or return bikes in exchange for monetary incentives. We design the complete architecture of the incentives system which employs optimal pricing policies using the approach of regret minimization in online learning. We investigate the incentive compatibility of our mechanism and extensively evaluate it through simulations based on data collected via a survey study. Finally, we deployed the proposed system through a smartphone app among users of a large scale bike sharing system operated by a public transport company, and we provide results from this experimental deployment. To our knowledge, this is the first dynamic incentives system for bikes re-distribution ever deployed in a real-world bike sharing system.
Daily Stress Recognition from Mobile Phone Data, Weather Conditions and Individual Traits
Bogomolov, Andrey, Lepri, Bruno, Ferron, Michela, Pianesi, Fabio, Alex, null, Pentland, null
Research has proven that stress reduces quality of life and causes many diseases. For this reason, several researchers devised stress detection systems based on physiological parameters. However, these systems require that obtrusive sensors are continuously carried by the user. In our paper, we propose an alternative approach providing evidence that daily stress can be reliably recognized based on behavioral metrics, derived from the user's mobile phone activity and from additional indicators, such as the weather conditions (data pertaining to transitory properties of the environment) and the personality traits (data concerning permanent dispositions of individuals). Our multifactorial statistical model, which is person-independent, obtains the accuracy score of 72.28% for a 2-class daily stress recognition problem. The model is efficient to implement for most of multimedia applications due to highly reduced low-dimensional feature space (32d). Moreover, we identify and discuss the indicators which have strong predictive power.
Computational Sustainability and Artificial Intelligence in the Developing World
Quinn, John (Makerere University) | Frias-Martinez, Vanessa (University of Maryland) | Subramanian, Lakshminarayan (New York Universit)
The developing regions of the world contain most of the human population and the planet's natural resources, and hence are particularly important to the study of sustainability. Despite some difficult problems in such places, a period of enormous technology-driven change has created new opportunities to address poor management of resources and improve human well-being.
Announcing the New App for AI Magazine
Leake, David (Indiana University)
I'm delighted to announce that this issue his spring, AI Magazine launched its digital edition, which inaugurates another major delivery advance, the launch of the AI Magazine app. The app delivers access to the magazine in a device-tailored form for the iPhone, iPad, Android smartphone, Android table, or Amazon Kindle Fire. In addition to providing easy interaction with the magazine's content, the app contains a library of issues (including all of 2013), which will enable reading the magazine anywhere, even offline in airplane mode. It supports searching within and across issues, saving content, and sharing by email or social media. Push notifications will inform users of new issues, and an RSS feed (coming soon) will inform readers of AAAI announcements.
Video: Urine-powered mobile phone charger lets you spend a penny to make a call
A group of researchers from the University of the West of England have invented a method of charging mobile phones using urine. Key to the breakthrough is the creation of a new microbial fuel cell (MFC) that turns organic matter – in the case, urine – into electricity. The MFCs are full of specially-grown bacteria that break down the chemicals in urine as part of their normal metabolic process. The bacteria produce electrons as they consume the matter and it this natural process that creates a small electrical charge to be stored in the MFC. "No one has harnessed power from urine to do this so it's an exciting discovery," said Dr Ioannis Ieropoulos, an engineer at the Bristol Robotics Laboratory where the fuel cells were developed.
Announcing the Digital Edition of AI Magazine
Leake, David (Indiana University)
I am delighted to announce that this project has come to fruition with the launch of the digital edition of AI Magazine. As each issue of the magazine is published, its digital edition will be delivered to subscribers by email. The digital edition is browser-based, making it accessible via the web, smartphone, or any modern web-enabled device. It provides the ability to quickly search, save, and share articles, as well as convenient options for navigating the magazine and seamlessly linking to other resources. The digital edition will enable substantial advances in the magazine's future design, such as the use of color throughout and the inclusion of embedded video, and over time the magazine will increasingly exploit this potential.