2,731 research outputs found
Managing big data experiments on smartphones
The explosive number of smartphones with ever growing sensing and computing capabilities have brought a paradigm shift to many traditional domains of the computing field. Re-programming smartphones and instrumenting them for application testing and data gathering at scale is currently a tedious and time-consuming process that poses significant logistical challenges. Next generation smartphone applications are expected to be much larger-scale and complex, demanding that these undergo evaluation and testing under different real-world datasets, devices and conditions. In this paper, we present an architecture for managing such large-scale data management experiments on real smartphones. We particularly present the building blocks of our architecture that encompassed smartphone sensor data collected by the crowd and organized in our big data repository. The given datasets can then be replayed on our testbed comprising of real and simulated smartphones accessible to developers through a web-based interface. We present the applicability of our architecture through a case study that involves the evaluation of individual components that are part of a complex indoor positioning system for smartphones, coined Anyplace, which we have developed over the years. The given study shows how our architecture allows us to derive novel insights into the performance of our algorithms and applications, by simplifying the management of large-scale data on smartphones
Emotion classification and crowd source sensing; a lexicon based approach
In today's world, social media provides a valuable platform for conveying expressions, thoughts, point-of-views, and communication between people, from diverse walks of life. There are currently approximately 2.62 billion active users' social networks, and this is expected to exceed 3 billion users by 2021. Social networks used to share ideas and information, allowing interaction across communities, organizations, and so forth. Recent studies have found that the typical individual uses these platforms between 2 and 3 h a day. This creates a vast and rich source of data that can play a critical role in decision-making for companies, political campaigns, and administrative management and welfare. Twitter is one of the important players in the social network arena. Every scale of companies, celebrities, different types of organizations, and leaders use Twitter as an instrument for communicating and engaging with their followers. In this paper, we build upon the idea that Twitter data can be analyzed for crowd source sensing and decision-making. In this paper, a new framework is presented that uses Twitter data and performs crowd source sensing. For the proposed framework, real-time data are obtained and then analyzed for emotion classification using a lexicon-based approach. Previous work has found that weather, understandably, has an impact on mood, and we consider these effects on crowd mood. For the experiments, weather data are collected through an application-programming-interface in R and the impact of weather on human sentiments is analyzed. Visualizations of the data are presented and their usefulness for policy/decision makers in different applications is discussed
Multiple multimodal mobile devices: Lessons learned from engineering lifelog solutions
For lifelogging, or the recording of one’s life history through digital means, to be successful, a range of separate multimodal mobile devices must be employed. These include smartphones such as the N95, the Microsoft SenseCam – a wearable passive photo capture device, or
wearable biometric devices. Each collects a facet of the bigger picture, through, for example, personal digital photos, mobile messages and documents access history, but unfortunately, they operate independently and unaware of each other. This creates significant challenges for the practical application of these devices, the use and integration of their data and their operation by a user. In this chapter we discuss the software engineering challenges and their implications for individuals working on integration of data from multiple ubiquitous mobile devices drawing on our experiences working with such technology over the past several years for the development of integrated personal lifelogs. The chapter serves as an engineering guide to those considering working in the domain of lifelogging and more generally to those working with multiple multimodal devices and integration of their data
From Information to Affirmation: An Investigation on the Echo Chamber Effect from YouTube Comments under Technology Product Reviews
Social media may create echo chambers that reaffirm users' beliefs and
opinions through repeated exposure of similar notions. Whilst the formation and
effect of echo chambers have been intensively examined in thread-based
platforms such as Twitter, Facebook and Reddit, we shift our focus on product
review discussions on YouTube. This paper examines YouTube comments (n=2500)
through a combined approach of quantitative content analysis (QCA) and
sentiment analysis (SA) under selected selected YouTube videos (n=10). We
conclude this paper by highlighting the formation of echo chamber effect in
relation to comment argumentation and sentiments.Comment: 13 pages, 3 figures and 3 table
Debunking in a World of Tribes
Recently a simple military exercise on the Internet was perceived as the
beginning of a new civil war in the US. Social media aggregate people around
common interests eliciting a collective framing of narratives and worldviews.
However, the wide availability of user-provided content and the direct path
between producers and consumers of information often foster confusion about
causations, encouraging mistrust, rumors, and even conspiracy thinking. In
order to contrast such a trend attempts to \textit{debunk} are often
undertaken. Here, we examine the effectiveness of debunking through a
quantitative analysis of 54 million users over a time span of five years (Jan
2010, Dec 2014). In particular, we compare how users interact with proven
(scientific) and unsubstantiated (conspiracy-like) information on Facebook in
the US. Our findings confirm the existence of echo chambers where users
interact primarily with either conspiracy-like or scientific pages. Both groups
interact similarly with the information within their echo chamber. We examine
47,780 debunking posts and find that attempts at debunking are largely
ineffective. For one, only a small fraction of usual consumers of
unsubstantiated information interact with the posts. Furthermore, we show that
those few are often the most committed conspiracy users and rather than
internalizing debunking information, they often react to it negatively. Indeed,
after interacting with debunking posts, users retain, or even increase, their
engagement within the conspiracy echo chamber
Integrated survey for the reconstruction of the Papal Basilica and the Sacred Convent of St. Francis in Assisi, Italy
The Papal Basilica and the Sacred Convent of Saint Francis in Assisi in Italy are characterized by unique and composite particularities that need an exhaustive knowledge of the sites themselves to guarantee visitor's security and safety, considering all the people and personnel normally present in the site, visitors with disabilities and finally the needs for cultural heritage preservation and protection. This aim can be reached using integrated systems and innovative technologies, such as Internet of Everything (IoE), which can connect people, things (smart sensors, devices and actuators; mobile terminals; wearable devices; etc.), data/information/knowledge and processes to reach the wanted objectives. The IoE system must implement and support an Integrated Multidisciplinary Model for Security and Safety Management (IMMSSM) for the specific context, using a multidisciplinary approach. The purpose of the paper is to illustrate the integrated survey for the reconstruction of the considered site that was necessary to obtain all the necessary information to start to set up the considered IMMSSM and the related IoE based technological system
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