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2nd Call for Papers
International Workshop on Multimodal Crowd Sensing (CrowdSens 2012)
http://sysrun.haifa.il.ibm.com/hrl/crowdsens2012
Held in conjunction with the
21st ACM International Conference on Information and Knowledge Management
(CIKM 2012)
http://www.cikm2012.org
29th October 2012 | Maui, Hawaii, USA
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Important dates
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* Paper submission: 22 June 2012
* Notification of acceptance: 30 July 2012
* Camera-ready version due: 26 August 2012
* Workshop: between 29 October 2012 and 2 November 2012
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Workshop overview
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According to research conducted by the International Data Corporation (IDC),
the size of the ‘digital universe’ in 2010 (i.e., the amount of information
which is stored digitally) surpassed one Zettabyte (ZB) for the first time
in history and it now stands at about 1.8 ZB. This massive expansion in the
size of the amount of information appears to be exceeding Moore’s Law. It is
also estimated that about 70% of this information is generated by
individuals. The ubiquitous availability of computing technology, in
particular smartphones, tablets, laptops and other easily portable devices,
and the adoption of social networking sites, make it possible to be
connected and continuously contribute to this massively distributed
information publishing process.
By doing so, users are (unconsciously) acting as social sensors, whose
sensor readings are their manually generated data. People document their
daily life experiences, report on their physical locations and social
interactions with others, express opinions and provide diverse observations
on both the physical world (sights, sounds, smells, feelings, etc.) and the
online world (news, music, events, etc.). Such massive amounts of ubiquitous
social sensors, if wisely utilized, can provide new forms of valuable
information that are currently not available by any traditional data
collection methods including real physical sensors, and can be used to
enhance decision making processes.
It has been shown over and over that reports on real world events, such as
the Japan’s Earthquake and Tsunami, the Arab Spring uprisings, and the
England’s riots happened in 2011, are much faster propagated within the
network of social sensors (e.g. on Twitter) than they are processed by
traditional means (e.g. seismic sensor reading analysis, police emergency
reports, news media coverage). In these cases, human observers can be
exploited to interpret and enrich such integrated sensor-derived
information. As an example, both journalists and opinion makers now make
increasing usage of massive data collected from social sensors in order to
study public opinions, and discover new perspectives of daily stories. As
another example, within a smart city scenario, social sensors can contribute
important information about the daily city life through various channels,
such as social media, SMS, and reports to the city operation center.
Such social sensors can enrich the existing information currently collected
by the city physical sensors (e.g. traffic and camera sensors), helping to
reduce uncertainty, and leading to a better envision and comprehension of
the magnitude of potential problems and situations.
Effective mining, analyzing, fusing, and exploiting information sourced from
multimodal physical and social sensor data sources is still an open and
exciting challenge. Many factors here add to the complexity of the problem,
including the real-time element of the data processing; the heterogeneity of
the sources, from physical sensors data to posts on social media; and the
ubiquitous and noisy nature of the human-sensor generated information, which
can be written in an informal style, duplicated, incomplete or even
incorrect.
The 1st International Workshop on Multimodal Crowd Sensing (CrowdSens 2012)
will provide an open forum for researchers from various domains such as data
management, data mining, information retrieval, and semantic web, for
discussing the above challenges.
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Workshop objective
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The main goal of CrowdSens 2012 is to become a major international forum for
researchers and practitioners from different research areas such as Social
Web, Semantic Web, Natural Language Processing, Information Extraction, Data
Mining, Information Retrieval, User Modelling, Personalization, Stream
Processing, and Sensor Networks, who focus their work on user-generated
contents.
Our aim is to stimulate discussions about how the knowledge embedded in
human sensor data can be collected, extracted, modelled, analysed,
integrated, summarized, and finally exploited. Ideas for innovation will
extend through different fields, from data mining, user modelling,
personalization, recommendation, information retrieval, and business
intelligence, to name a few. Different research lines, backgrounds,
perspectives, and degrees of expertise will be present at the workshop, and
thus very interesting multidisciplinary discussions, collaborations, and
work synergies between the workshop attendees are expected as one of the
main outcomes of the event.
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Topics of interest
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Themes and topics of interest at this workshop include, but are not limited
to:
* Data acquisition methods for crowd sensing
- Physical world crowd data capture
- Multimedia crowd data capture (e.g. SMS, MMS, CDRs, transcripts)
- Real-time data acquisition methods
- Massive scale social sensor monitoring and crawling
- Predictive models for social data acquisition
- Scheduling, prioritization and sampling methods
* Data models for crowd sensing
- Social sensor event models
- Social sensor data representation
- Social sensor context representation
- Spatio-temporal models for crowd sensing
- Multimodal data models for crowd sensing
- Semantic models for crowd sensing
- Uncertainty models for incomplete and noisy social sensors data
- Trust and authorization models for crowd sensing
- Privacy in crowd sensing
* Novel data processing, analysis, and classification methods
- Data cleansing for crowd sensing (e.g. real-time duplicates
detection)
- Feature extraction, Entity analytics and novel NLP methods
- Context extraction and prediction using multimodal sources
- Uncertainty estimation and predictive analytics
- Data mining methods under incomplete and noisy data (e.g. online
clustering, categorization, classification)
- Opinion mining, sentiment analysis methods for crowd sensing
- Trends, bursts, anomalies and outliers detection over large scale
social sensor data
- Network analysis, information propagation and influence detection
methods for crowd sensing
- Crowd behavioural analysis and prediction
- Real-time community detection and analysis
- Social stream processing methods (e.g. top-k querying, filtering,
sampling)
* Event detection, fusion, and summarization methods
- Event detection methods (under uncertainty, incomplete or noisy
settings)
- Event story detection
- Detection of developing events
- Event uncertainty estimation
- Event time and location estimation
- Methods for event data delivery
- Methods for event data reporting, summarization or visualization
- Pattern recognition methods
- Multimodal data fusion methods
* Evaluation methods for crowd-sensing
- Quality metrics and key performance indicators for crowd sensing
- Benchmarks and evaluation methodologies for crowd sensing
* Applications of crowd sensing
- News mining from social sensors (e.g. emerging story detection)
- Infotainment (e.g. event discovery and recommendation)
- Disaster management (e.g. weather monitoring, disaster prediction)
- Public safety (e.g. prediction of developing situation and
sentiments)
- Public health (e.g. epidemic monitoring, infectious disease outbreak
detection)
- Transportation (e.g. prediction of traffic loads, detection of
hazards)
- Finance (e.g. market monitoring)
- Cyber security (e.g. Counter terrorism, dark web monitoring)
- Government and Politics (e.g. Voice of Citizen, opinion mining)
- Retail and consumer products (e.g. Voice of Customer, demand sensing)
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Organizers
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Haggai Roitman, IBM Research - Haifa, Israel
Iván Cantador, Universidad Autónoma de Madrid, Spain
Miriam Fernández, Knowledge Media Institute, UK
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Submission guidelines
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We invite two main types of contributions: full papers (6-8 pages) and short
papers (2-4 pages). Both types of contributions could be new research ideas,
position statements, critiques of existing approaches, or experiment
reports.
Submitted papers will be evaluated according to their originality, technical
content, style, clarity, and relevance to the workshop. Each paper will be
reviewed by at least three independent referees.
Manuscripts should be submitted electronically, in PDF format and formatted
using the ACM camera-ready templates available at:
http://www.acm.org/sigs/publications/proceedings-template
All submissions will be done electronically via the CrowdSens 2012 Web
submission system:
http://www.easychair.org/conferences/?conf=crowdsens2012
Accepted workshop papers will also be published in the CIKM workshop
proceedings, which will be printed on CD only and indexed in the ACM digital
library, together with the main CIKM 2012 proceedings.
At least one author of each accepted paper must register for the conference.
Information about registration is provided at CIKM 2012 Web page:
http://www.cikm2012.org/registration.php