MUSE 2012 - 3rd International Workshop on Mining Ubiquitous and Social Environments (MUSE)
Topics/Call fo Papers
The emergence of ubiquitous computing has started to create new environments consisting of small, heterogeneous, and distributed devices that foster the social interaction of users in several dimensions. Similarly, the upcoming social web also integrates the user interactions in social networking environments. Mining in ubiquitous and social environments is thus an emerging area of research focusing on advanced systems for data mining in such distributed and network-organized systems. It also integrates some related technologies such as activity recognition, social web mining, privacy issues and privacy-preserving mining, predicting user behavior, etc.
In typical ubiquitous settings, the mining system can be implemented inside the small devices and sometimes on central servers, for real-time applications, similar to common mining approaches. However, the characteristics of ubiquitous and social mining are in general quite different from the current mainstream data mining and machine learning. Unlike in traditional data mining scenarios, data does not emerge from a small number of (heterogeneous) data sources, but potentially from hundreds to millions of different sources. Often there is only minimal coordination and thus these sources can overlap or diverge in many possible ways. Steps into this new and exciting application area are the analysis of this new data, the adaptation of well known data mining and machine learning algorithms and finally the development of new algorithms.
The goal of this workshop is to promote an interdisciplinary forum for researchers working in the fields of ubiquitous computing, social web, Web 2.0, and social networks which are interested in utilizing data mining in a ubiquitous setting. The workshop seeks for contributions adopting state-of-the-art mining algorithms on ubiquitous social data. Papers combining aspects of the two fields are especially welcome. In short, we want to accelerate the process of identifying the power of advanced data mining operating on data collected in ubiquitous and social environments, as well as the process of advancing data mining through lessons learned in analyzing these new data.
Topics of Interest
The topics of the workshop are split roughly into four areas which include, but are not limited to the following topics:
Ubiquitous Mining:
Analysis of data from sensors and mobile devices
Resource-aware algorithms for distributed mining
Scalable and distributed classification, prediction, and clustering algorithms
Activity recognition
Mining continuous streams and ubiquitous data
Online methods for mining temporal, spatial and spatio-temporal data
Combining data from different sources
Sensor data preprocessing, transformation, and space-time sampling techniques
Mining Social Data:
Analysis of social networks and social media
Mining techniques for social networks and social media
Algorithms for inferring semantics and meaning from social data
Privacy and security issues in social data
How social data can be used to mine and create collective intelligence
Individual and group behavior in social media and social networks
Social networks for the collaboration of large communities
Ubiquitous and Social Mining
Personalization and recommendation
User models and predicting user behavior
User profiling in ubiquitous and social environments
Network analysis of social systems
Discovering social structures and communities
Analysis of data from crowd-sourcing approaches
Applications:
Discovering misuse and fraud
Usage and presentation interfaces for mining and data collection
Analysis of social and ubiquitous games
Privacy challenges in ubiquitous and social applications
Applications of any of the above methods and technologies
We also encourage submissions which relate research results from other areas to the workshop topics.
Springer Book: As in the previous years, it is planned to publish revised selected papers as a volume in the Springer LNCS/LNAI series.
Workshop Organizers
Martin Atzmueller, Knowledge and Data Engineering Group, Kassel University, Germany
( atzmueller-AT-cs.uni-kassel.de )
Andreas Hotho, Data Mining and Information Retrieval Group, University of Wuerzburg, Germany
( hotho-AT-cs.uni-kassel.de )
Program Committee
Ulf Brefeld, University of Bonn, Germany
Ricardo Cachucho, Leiden University, The Netherlands
Michelangelo Ceci, University of Bari, Italy
Padraig Cunningham, University College Dublin, Ireland
Daniel Gayo-Avello, University of Oviedo, Spain
Ido Guy, IBM Research, USA
Kristian Kersting, University of Bonn, Germany
Matthias Klusch, DFKI GmbH, Germany
Claudia Müller-Birn, FU Berlin, Germany
Alexandre Passant, DERI, Ireland
Giovanni Semeraro, University of Bari, Italy
Maarten van Someren, University of Amsterdam, The Netherlands
Markus Strohmaier, TU Graz, Austria
Ugo Vespier, Leiden University, The Netherlands
In typical ubiquitous settings, the mining system can be implemented inside the small devices and sometimes on central servers, for real-time applications, similar to common mining approaches. However, the characteristics of ubiquitous and social mining are in general quite different from the current mainstream data mining and machine learning. Unlike in traditional data mining scenarios, data does not emerge from a small number of (heterogeneous) data sources, but potentially from hundreds to millions of different sources. Often there is only minimal coordination and thus these sources can overlap or diverge in many possible ways. Steps into this new and exciting application area are the analysis of this new data, the adaptation of well known data mining and machine learning algorithms and finally the development of new algorithms.
The goal of this workshop is to promote an interdisciplinary forum for researchers working in the fields of ubiquitous computing, social web, Web 2.0, and social networks which are interested in utilizing data mining in a ubiquitous setting. The workshop seeks for contributions adopting state-of-the-art mining algorithms on ubiquitous social data. Papers combining aspects of the two fields are especially welcome. In short, we want to accelerate the process of identifying the power of advanced data mining operating on data collected in ubiquitous and social environments, as well as the process of advancing data mining through lessons learned in analyzing these new data.
Topics of Interest
The topics of the workshop are split roughly into four areas which include, but are not limited to the following topics:
Ubiquitous Mining:
Analysis of data from sensors and mobile devices
Resource-aware algorithms for distributed mining
Scalable and distributed classification, prediction, and clustering algorithms
Activity recognition
Mining continuous streams and ubiquitous data
Online methods for mining temporal, spatial and spatio-temporal data
Combining data from different sources
Sensor data preprocessing, transformation, and space-time sampling techniques
Mining Social Data:
Analysis of social networks and social media
Mining techniques for social networks and social media
Algorithms for inferring semantics and meaning from social data
Privacy and security issues in social data
How social data can be used to mine and create collective intelligence
Individual and group behavior in social media and social networks
Social networks for the collaboration of large communities
Ubiquitous and Social Mining
Personalization and recommendation
User models and predicting user behavior
User profiling in ubiquitous and social environments
Network analysis of social systems
Discovering social structures and communities
Analysis of data from crowd-sourcing approaches
Applications:
Discovering misuse and fraud
Usage and presentation interfaces for mining and data collection
Analysis of social and ubiquitous games
Privacy challenges in ubiquitous and social applications
Applications of any of the above methods and technologies
We also encourage submissions which relate research results from other areas to the workshop topics.
Springer Book: As in the previous years, it is planned to publish revised selected papers as a volume in the Springer LNCS/LNAI series.
Workshop Organizers
Martin Atzmueller, Knowledge and Data Engineering Group, Kassel University, Germany
( atzmueller-AT-cs.uni-kassel.de )
Andreas Hotho, Data Mining and Information Retrieval Group, University of Wuerzburg, Germany
( hotho-AT-cs.uni-kassel.de )
Program Committee
Ulf Brefeld, University of Bonn, Germany
Ricardo Cachucho, Leiden University, The Netherlands
Michelangelo Ceci, University of Bari, Italy
Padraig Cunningham, University College Dublin, Ireland
Daniel Gayo-Avello, University of Oviedo, Spain
Ido Guy, IBM Research, USA
Kristian Kersting, University of Bonn, Germany
Matthias Klusch, DFKI GmbH, Germany
Claudia Müller-Birn, FU Berlin, Germany
Alexandre Passant, DERI, Ireland
Giovanni Semeraro, University of Bari, Italy
Maarten van Someren, University of Amsterdam, The Netherlands
Markus Strohmaier, TU Graz, Austria
Ugo Vespier, Leiden University, The Netherlands
Other CFPs
- SIGIR 2012 Workshop on Time-aware Information Access
- 2012 International Conference On Networked Embedded Systems For Every Application
- International Workshop On Optical Wireless Communications
- 2013 IEEE Wireless Communications and Networking Conference (WCNC)
- 2012 International Conference on Power Science and Engineering
Last modified: 2012-05-20 21:11:12