The 4th IEEE International Conference on Data Science and Advanced Analytics 2017

Event Dates

Oct 19, 2017 - Oct 21, 2017

Location

Tokyo, Japan

Submission Deadline

Jun 08, 2017

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CALL For PAPERS

IEEE DSAA’2017: 2017 International Conference on

Data Science and Advanced Analytics

Tokyo, Japan

October 19-21, 2017

http://www.dslab.it.aoyama.ac.jp/dsaa2017/

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INTRODUCTION

Data driven scientific discovery is an important emerging paradigm for

computing in areas including social computing, services, Internet of

Things, sensor networks, telecommunications, biology, health-care, and

cloud. Under this paradigm, Data Science is the core that drives new

researches in many areas, from environmental to social. There are many

associated scientific challenges, ranging from data capture, creation,

storage, search, sharing, modeling, analysis, and visualization. Among

the complex aspects to be addressed we mention here the integration

across heterogeneous, interdependent complex data resources for

real-time decision making, streaming data, collaboration, and

ultimately value co-creation. Data science encompasses the areas of

data analytics, machine learning, statistics, optimization and

managing big data, and has become essential to glean understanding

from large data sets and convert data into actionable intelligence, be

it data available to enterprises, Government or on the Web.

DSAA takes a strong interdisciplinary approach, features by its strong

engagement with statistics and business, in addition to core areas

including analytics, learning, computing and informatics. DSAA fosters

its unique Trends and Controversies session, Invited Industry Talks

session, Panel discussion, and four keynote speeches from statistics,

business, and analytics. DSAA main tracks maintain a very competitive

acceptance rate (about 10%) for regular papers.

Following the preceeding three editions DSAA’2014 (Shanghai),

DSAA’2015 (Paris), DSAA’2016 (Montreal), the 2017 IEEE International

Conference on Data Science and Advanced Analytics (DSAA’2017) aims to

provide a premier forum that brings together researchers, industry

practitioners, as well as potential users of big data, for discussion

and exchange of ideas on the latest theoretical developments in Data

Science as well as on the best practices for a wide range of

applications.

DSAA is also technically sponsored by ACM through SIGKDD and by the

American Statistics Association.

DSAA’2017 will consist of two main tracks: Research and Applications,

and a series of Special sessions. The Research Track is aimed at

collecting original contributions related to foundations of Data Science

and Data Analytics. The Applications Track is aimed at collecting

original papers (not published nor under consideration at any other

venue) describing substantial contributions related to Data Science and

Data Analytics in real life scenarios. DSAA solicits then both

theoretical and practical works on data science and advanced analytics.

Special sessions replace traditional workshop and are based on call for

proposal. Submission of research on emerging topics is highly

encouraged.

IMPORTANT DATES:

Paper Submission deadline: May 25, 2017=)June, 8th, 2017

Notification of acceptance: July 25, 2017

Final Camera-ready papers due: August 15, 2017

Early Registration dealine: August 31, 2017

PUBLICATIONS:

All accepted papers will be published by IEEE and will be submitted for

inclusion in the IEEE Xplore Digital Library. The conference proceedings

will be submitted for EI indexing through INSPEC by IEEE. Top quality

papers accepted and presented at the conference will be selected for

extension and invited to the special issues of International Journal of

Data Science and Analytics (Springer).

TOPICS OF INTEREST — RESEARCH TRACK

General areas of interest to DSAA’2017 include but are not limited to:

1. Foundations

Mathematical, probabilistic and statistical models and theories

Machine learning theories, models and systems

Knowledge discovery theories, models and systems

Manifold and metric learning

Deep learning

Scalable analysis and learning

Non-iidness learning

Heterogeneous data/information integration

Data pre-processing, sampling and reduction

Dimensionality reduction

Feature selection, transformation and construction

Large scale optimization

High performance computing for data analytics

Architecture, management and process for data science

2. Data analytics, machine learning and knowledge discovery

Learning for streaming data

Learning for structured and relational data

Latent semantics and insight learning

Mining multi-source and mixed-source information

Mixed-type and structure data analytics

Cross-media data analytics

Big data visualization, modeling and analytics

Multimedia/stream/text/visual analytics

Relation, coupling, link and graph mining

Personalization analytics and learning

Web/online/social/network mining and learning

Structure/group/community/network mining

Cloud computing and service data analysis

3. Storage, retrieval and search

Data warehouses, cloud architectures

Large-scale databases

Information and knowledge retrieval, and semantic search

Web/social/databases query and search

Personalized search and recommendation

Human-machine interaction and interfaces

Crowdsourcing and collective intelligence

4. Privacy and security

Security, trust and risk in big data

Data integrity, matching and sharing

Privacy and protection standards and policies

Privacy preserving big data access/analytics

Social impact

TOPICS OF INTEREST — APLICATIONS TRACK

Papers in this track should motivate, describe and analyze the use of Data

Analytics tools and/or techniques in practical application as well as

illustrate their actual impact.

We seek contributions that address topics such as (but not limited to)

the following:

Best practices and lessons learned from both success and failure

Data-intensive organizations, business and economy

Quality assessment and interestingness metrics

Complexity, efficiency and scalability

Big data representation and visualization

Business intelligence, data-lakes, big-data technologies

Large scale application case studies and domain-specific

applications, such as but not[-1mm] limited to:

Online/social/living/environment data analysis

Mobile analytics for hand-held devices

Anomaly/fraud/exception/change/drift/event/crisis analysis

Large-scale recommender and search systems

Data analytics applications in cognitive systems, planning and decision support

End-user analytics, data visualization, human-in-the-loop, prescriptive analytics

Business/government analytics, such as for financial services,

manufacturing, [-1mm] retail, utilities, telecom, national security,

cyber-security, e-governance, etc.

PAPER SUBMISSION

Submissions to the main conference, including Research Track,

Applications Track, and Special Sessions should be made through the IEEE

DSAA’2017 Submission Web site.

The paper length allowed is a maximum of ten (10) pages, in 2-column US-Letter

style using IEEE Conference template (see the IEEE Proceedings Author Guidelines:

http://www.ieee.org/conferences_events/conferences/publishing/templates.html.

To help ensure correct formatting, please use the style files for

U.S. letter size found at the link above as templates for your

submission, which include both LaTeX and Word.

All submissions will be blind reviewed by the Program Committee on the

basis of technical quality, relevance to conference topics of interest,

originality, significance, and clarity. Author names and affiliations

must not appear in the submissions, and bibliographic references must be

adjusted to preserve author anonymity.

ORGANIZING COMMITTEE

General Chairs:

Hiroshi Motoda, Osaka University, Japan

Fosca Giannotti, Information Science and Technology Institute of the

National Research Council at Pisa, Italy

Tomoyuki Higuchi, Institute of Statistical Mathematics, Japan

Program Chairs — Research Track

Takashi Washio, Osaka University, Japan

Joao Gama, University of Porto, Portugal

Program Chairs — Application Track

Ying Li, EV Analysis Corp., also with Jobaline.com, USA

Rajesh Parekh, Facebook, also with KDD2016 and The Hive, USA

Special Session Chairs

Huan Liu, Arizona State University, USA

Albert Bifet, Telecom ParisTech, France

Trends & Controversies Chairs

Philip S. Yu, University of Illinois at Chicago, USA

Pau-Choo (Julia) Chung, National Cheng Kung University, Taiwan

Award Chair

Bamshad Mobasher, DePaul University, USA

Tutorial Chairs

Zhi-Hua Zhou, Nanjing University, China

Vincent Tseng, National Chiao Tung University, Taiwan

Panel Chairs

Geoff Webb, Monash University, Australia

Bart Goethals, University of Antwerp, Belgium

Invited Industry Talk Chairs

Yutaka Matsuo, University of Tokyo, Japan

Hang Li, Huawei Technologies, Hong Kong

Publicity Chairs

Tu Bao Ho, Japan Advanced Institute of Science & Technology, Japan

Diane J. Cook, Washington State University

Marzena Kryszkiewicz, Warsaw University of Technology, Poland

Local Organizing Chairs

Satoshi Kurihara, University of Electro-Communications, Japan

Hiromitsu Hattori, Ritsumeikan University, Japan

Publication Chair

Toshihiro Kamishima, National Institute of Advanced Industrial

Science and Technology, Japan

Web Chair

Kozo Ohara, Aoyama Gakuin University, Japan

Sponsorship Chairs

Yoji Kiyota, NEXT Co., Ltd, Japan

Kiyoshi Izumi, University of Tokyo, Japan

Tadashi, Yanagihara, KDDI Corp., KDDI R&D Laboratory, Japan

CONTACT INFORMATION

Hiroshi Motoda motoda [AT] ar.sanken.osaka-u.ac.jp

Satoshi Kurihara skurihara [AT] uec.ac.jp