The International Conference on Intelligent Data Engineering and Automated Learning

Event Dates

Oct 20, 2013 - Oct 23, 2013

Location

Hefei, Anhui, China

Submission Deadline

Jun 10, 2013

======= Call for Papers: IDEAL’13, October 2013, Hefei, China =======

The 14th International Conference on Intelligent Data Engineering and

Automated Learning (IDEAL’2013)

October 20-23, 2013, Hefei, Anhui, China

http://nical.ustc.edu.cn/ideal13/

The International Conference on Intelligent Data Engineering and

Automated Learning (IDEAL) is an annual international conference

dedicated to emerging and challenging topics in intelligent data

analysis, data mining and their associated learning systems and

paradigms. Its core themes include: Big Data challenges, Machine

Learning, Data Mining, Information Retrieval and Management, Bio- and

Neuro-Informatics, Bio-Inspired Models (including Neural Networks,

Evolutionary Computation and Swarm Intelligence), Agents and Hybrid

Intelligent Systems, and Real-world Applications of Intelligent

Techniques. Other related and emerging themes and topics are also

welcome.

The conference provides a unique opportunity and stimulating forum for

presenting and discussing the latest theoretical advances and real-

world applications in Computational Intelligence and Intelligent Data

Analysis. It also features a panel discussion on Big Data chaired by

Prof. Zhi-Hua Zhou. Authors and researchers are warmly invited to

submit their latest findings and research work to the conference.

A number of leader experts in the field will give plenary speeches at

the conference. More details can be found or will appear on the

conference website http://nical.ustc.edu.cn/ideal13/

Instructions for Authors

Authors are invited to submit their manuscripts (in pdf format)

written in English via the conference online submission system

(http://nical.ustc.edu.cn/ideal13/submission.html). All submissions

will be refereed by experts in the field based on originality,

significance, quality and clarity. All contributions must be original,

must not have been published elsewhere and must not be submitted

elsewhere during the review period. Papers should not exceed 8 pages

and must comply with the format of Springer LNCS/LNAI Proceedings.

(see https://www.springer.com/computer/lncs?SGWID=0-164-6-793341-0)

Accepted papers presented at the conference will be included in the

Proceedings of IDEAL 2013, to be published by Springer in its LNCS

series, which is indexed in EI. In addition, selected papers will be

invited for special issues in the folloing leading international

journals in the field:

– International Journal of Neural Systems

– Connection Science

Important Dates:

Paper Submission Deadline: 10 June 2013 (extended)

Notification of Acceptance: 05 July 2013

Camera-Ready Copy Due: 26 July 2013

Early Registration: 26 July 2013

Conference Presentation: 20-23 October 2013

Conference Website: http://nical.ustc.edu.cn/ideal13/

Conference History

In recent years, the IDEAL conference has been held in many countries

or continents such as Brazil (2012), England (2011), Scotland (2010),

Spain (2009), and Korea (2008). The 14th International Conference,

IDEAL 2014, will set foot to Mainland China and will be held from 20th

to 23rd October 2013, in Hefei, China, hosted by the USTC-Birmingham

Joint Research Institute of Intelligent Computation and Its

Applications (UBRI, http://ubri.ustc.edu.cn).

Venue

IDEAL’13 will be held at the Empark Grand Hotel, Anhui in Hefei, China.

Hefei, the capital of the Anhui Province, is a fine historical city

characterized by a green environment and both modern areas and

historical sights. The city is located centrally in China and about

100 miles (160 km) from Nanjing, or 300 miles (500 km) from Shanghai.

Hefei has its own airport and an excellent railway connection to many

cities of China. It is also easy to reach via airplane from Beijing.

Hefei, well known as a historic site famous from the Three Kingdoms

Period and the home town of Lord Bao, is a city with a history of more

than 2500 years. The city of Hefei is also a well-known “Green City”

across the nation. It is a fast developing city which still preserves

historical sights and has many local attractions.

========================== Special Sessions ==========================

We are happy to announce that the following special sessions have been

approved for IDEAL’13:

Special Session on Adaptive and Learning Multi-Agent Systems

Multi-Agent Systems (MAS) have grown into an interdisciplinary field

that includes various tracks and embraces many previously

distinctive research areas. More and more MASs are situated in open

and dynamic environments. The changes of environments that may be

unpredictable, uncontrollable and evolving typically affect the MAS.

Recently, adaptive MAS and MAS learning have become important sub-

areas in the literature of MAS. Particularly, both of them

investigate how multiple intelligent computational agents can work

together to achieve high- level goals by adjusting themselves and

obtaining more information. Various approaches have been applied to

improve the adaptive and learning ability of MAS. MAS are still

facing challenges of scaling to large numbers of entities and real-

world tasks.

This special session on adaptive and learning multi-agent systems

will provide a forum for researchers and practitioners interested in

adaptation and learning for multi-agent systems, and report their

latest findings.

For more information, see the special session web site

http://nical.ustc.edu.cn/ideal13/ss_alms.html.

Organizers: Dong, Hongbin. Harbin Engineering University, China

He, Jun. Aberystwyth University, UK

Mao, Xinjun. National University of Defense Tech., China

Tong, Xiangrong. Yantai University, China

Special Session on Big Data

Recent years have witnessed the unprecedented prevalence of “Big

Data”. Big Data is transforming science, engineering, medicine,

healthcare, finance, business, and ultimately, the society itself.

This year IDEAL’2013 is pleased to introduce a Special Session on

Big Data. We wish to encourage researcher to submit high-quality

original papers (including significant work-in-progress) in any

aspect of Big Data with emphasis on 5Vs (Volume, Velocity, Variety,

Value and Veracity): big data science and foundations, big data

infrastructure, big data management, big data searching and mining,

big data privacy/security, and big data applications.

For more information, see the special session web site

http://web.utk.edu/~wzhou4/ideal13bigdata.htm.

Oranizers: Hui Xiong. Rutgers University, USA

Wenjun Zhou. University of Tennessee, USA

Special Session on Soft-Computing Algorithms in Renewable Energy

Problems

In the current context of world economic crisis, Renewable Energies

are of crucial importance towards a cleaner and more sustainable

future. Several factors have recently pushed Renewable Energies,

such as recent proofs of the direct connection between global

warming and CO2 emissions from fossil fuels, the intended reduction

of greenhouse gasses thanks to the Kyoto protocol or the growing of

the risk perception after the nuclear accident in Japan in December

2011, among others.

Nevertheless, the establishment and maximum exploitation of

Renewable Energy still need a lot of work and research effort. Many

of the problems that arise in Renewable Energy are so difficult,

that traditional mathematical methods do not obtain good results.

The design of new renewable energy facilities (wind farms, solar

plants, smart and micro-grids with renewable generation, or stand-

alone systems, etc.), the correct estimation of the renewable energy

resource (wind, radiation, reservoir levels) or the optimization of

technologies to obtain more productive systems (wind turbine design,

solar panels design), are just some examples of these hard problems

related to renewable energy.

In these problems, the use of Soft-Computing approaches has been

massive in the last few years, as powerful computational methods

that obtain good results, with moderate computational effort. This

Special Session is focused on Soft-Computing approaches in Renewable

Energy problems, in a broad sense. We consider all Renewable Energy

technologies where Soft-Computing approaches can be used to improve

the final systems. Real problems and case studies are particularly

welcome.

For more information, see the special session web site

http://nical.ustc.edu.cn/ideal13/ss_scarep.html.

Organizers: Sancho Salcedo Sanz. Universidad de Alcalá, Spain.

Jose Antonio Portilla-Figueras. Univ. de Alcalá, Spain.

Special Session on Swarm Intelligence and Data Mining (SIDM 2013)

Swarm intelligence is a recent trend in computational intelligence

and popular for the simplicity of its realizations, such as particle

swarm optimization (PSO), ant colony optimization (ACO), bee colony

optimization (BCO), and the like. As optimization techniques,

methods in swarm intelligence have been applied to many aspects in

the fields of data engineering and automated learning. For example,

as reported in the literature, PSO has been adopted to handle data

clustering, and ACO has been employed to solve the problem of

classification. On the other hand, advances in data mining, an

important section in data engineering and automated learning, also

assist optimization algorithm designers to develop better methods.

For instance, Apriori algorithm has been utilized for finding the

relationship among decision variables for optimizers. In order to

bridge the concepts and methodologies from the two ends, this

special session concentrates on the related topics of integrating

and utilizing algorithms in swarm intelligence and data mining. It

provides the opportunity for practitioners handling their data

mining issues by using swarm intelligence methodologies and for

researchers investigating swarm intelligence with data mining

approaches to share findings and look into future directions.

For more information, see the special session web site

http://sidm2013.nclab.tw (or under

http://nical.ustc.edu.cn/ideal13/ss_sidm.html).

Organizers: Jing Liang, Zhengzhou University, China

Chuan-Kang Ting, National Chung Cheng Univ., Taiwan

Ying-ping Chen, National Chiao Tung Univ., Taiwan

Special Session on Text Data Learning

Tremendous efforts have been devoted to developing and applying

different machine learning technologies to natural language text

data, greatly expanding the fields of information retrieval and

natural language processing, creating new areas of research.

However, many challenges remain, such as:

o how we can successfully process different natural language

related tasks with machine learning: ranking documents,

classifying text, clustering, summarizing, analyzing, extracting

information, and so on?

o how we can circumvent the barrier of lacking enough annotated

data, despite the vast quantities of unannotated data?

o how we can adapt machine learning solutions across domains,

genres, and languages?

o how we can make full use of the characteristics of text data in

building machine learning based solutions?

o how we can create text learning systems to process Big Data in

distributed and parallel environments?

This special session within IDEAL2013 on text data learning will

provide a forum for researchers and practitioners interested in

information retrieval and natural language processing to exchange

and report their latest findings in applying machine learning to

understanding and mining natural language text data.

For more information, see the special session web site

http://www.scss.tcd.ie/IDEAL2013-TDL/.

Organizers: Baoli Li. Henan University of Technology, China

Carl Vogel. Trinity College Dublin, Ireland

Special Session on Coevolution

Bio-Inspired methodologies that are based on the natural

coevolutionary process have been applied successfully to solve a

variety of machine learning problems. In particular, competitive

coevolution is used to solve difficult adversarial problems such as

games whereby the target functions are unknown and that training

samples are unavailable for supervised learning methods. Competitive

coevolution seeks to solve these problems naturally with one

population consisting of candidate solutions (e.g. game strategies)

and another population consisting of test cases (e.g. test

strategies) that interact and undergo adaptation in a manner that

promotes the search for problem solutions while using typically a

small number of representative test cases that are discovered. Other

research studies have been made in the framework of cooperative

coevolution and its novel use to solve complex real-world learning

problems that are amenable to divide-and-conquer approaches.

Examples include ensemble learning for classification tasks and data

mining through Bayesian networks. Furthermore, recent theoretical

studies have been made for coevolutionary learning. These include

quantitative performance analysis of coevolutionary algorithms

through the generalization framework from machine learning, which

provide the means for in-depth analysis how specific designs of

components (e.g., selection and variation operators) can affect the

performance of coevolutionary learning. This special session aims to

bring together researchers in theoretical aspects and practitioners

in the real-world problem solving applications of coevolution.

For more information, see the special session web site

http://baggins.nottingham.edu.my/~khczcsy/ideal2013coevo.html.

Organizers: Siang Yew Chong, University of Nottingham, Malaysia

Zhenyu Yang, National University of Defense Tech., China

Xiaodong Li, Royal Melbourne Inst. of Techn., Australia

Special Session on Combining Learning and Optimisation for Intelligent

Data Engineering

Techniques of Machine Learning and Optimisation are workhorses in

intelligent data engineering and in today’s emerging data science.

Finding ways to combine learning with optimisation has tremendous

potential to provide powerful computational intelligence techniques.

In fact, optimisation is a key in many machine learning and data

mining algorithms; at the same time optimisation methods that

incorporate some form of learning strategy have an added level of

sophistication and ability to explore large search spaces.

This special session aims at exploring new synergies and multi-

disciplinary perspectives between optimisation and machine learning

in the context of intelligent data engineering and large scale data

mining problems.

For more information, see the special session web site

http://www.cs.bham.ac.uk/~axk/ss_IDEAL13_Opt+Learning.htm

Organizer: Ata Kaban, The University of Birmingham, UK

================== Organizing Committee and Contact ==================

Contact

Programme Chair: Hujun Yin

School of Electrical and Electronic Engineering,

The University of Manchester,

Manchester, M13 9PL, UK.

Tel: +44 161 306 8714

Email: h.yin@manchester.ac.uk

Programme Co-Chair: Ke Tang

USTC-Birmingham Joint Research Institute of Intelligent Computation and

Its Applications (UBRI), School of Computer Science and Technology,

University of Science and Technology of China,

Hefei, Anhui, China, 230027

Tel: +86 551 3600 547

Email: ketang@ustc.edu.cn

Conference Chairs and Organizers

o General Chair: Xin Yao (X.Yao@cs.bham.ac.uk)

o Programme Chair: Hujun Yin (h.yin@manchester.ac.uk)

o Programme Co-Chairs:

– Ke Tang (ketang@ustc.edu.cn)

– Yang Gao (gaoy@nju.edu.cn)

– Frank Klawonn (f.klawonn@ostfalia.de)

– Min-ho Lee (mholee@knu.ac.kr)

o Publicity Co-Chairs:

– Emilio Corchado (escorchado@ubu.es)

– Jose A. Costa (jafcosta@gmail.com)

– Thomas Weise (tweise@ustc.edu.cn)

o Organizing Committee:

– Bin Li (Chair) (binli@ustc.edu.cn)

– Kaiming Chen (chenkm@ustc.edu.cn)

– Jinlong Li (jlli@ustc.edu.cn)

– Thomas Weise (tweise@ustc.edu.cn)

– Rui Xu (rxu@ustc.edu.cn)

o International Liaisons:

– China/Visa: Jinlong Li (jlli@ustc.edu.cn)

– Europe: David Camacho (david.camacho@uam.es)

– America: Guilherme Barreto (guilherme@deti.ufc.br)

– Australasia: Brijesh Verma (b.verma@cqu.edu.au)

o International Advisory Committee

– Lei Xu (Chair) – Yaser Abu-Mostafa

– Shun-ichi Amari – Michael Dempster

– Nick Jennings – Soo-Young Lee

– Erkki Oja – Latit M. Patnaik

– Burkhard Rost – Xin Yao

o Steering Committee

– Hujun Yin (Co-chair) – Laiwan Chan (Co-chair)

– Guilherme Barreto – Yiu-ming Cheung

– Emilio Corchado – Jose A. Costa

– Colin Fyfe – Marc van Hulle

– Samuel Kaski – John Keane

– Jimmy Lee – Malik Magdon-Ismail

– Vic Rayward-Smith – Peter Tino

– Zheng Rong Yang – Ning Zhong