You are cordially invited to submit your research paper to a special issue
on manifold learning to be published in International Journal of Software
and Informatics (IJSI) (URL: http://www.ijsi.org). IJSI is a peer-reviewed
international journal with focuses on theoretical foundation and practical
research of software techniques. It has an editorial board consisting of
internationally well-known experts.

1. Theme and topics

In many information analysis tasks, one is often confronted with thousands
to millions-dimensional data, such as images, documents, videos, web data,
bioinformatics data, etc. Conventional statistical and computational tools
are often severely inadequate for processing and analysing high-dimensional
data due to the curse of dimensionality, where we often need to conduct
inference with a limited number of samples in a very high-dimensional
space. There is a strong intuition that the data may have a lower
dimensional intrinsic representation with low intrinsic complexity.
Recently, various work have considered the case when the data is sampled
from a submanifold embedded in the much higher dimensional Euclidean space.
Learning with full consideration of the low dimensional manifold structure,
or specifically the intrinsic topological and geometrical properties of the
data manifold is referred to as manifold learning, which is receiving
growing attention in the community in recent years.

This special issue is to attract articles that (a) address the frontier
problems in the scientific principles of manifold learning, and (b) report
empirical studies and applications of manifold learning algorithms,
including but not limited to pattern recognition, computer vision, web
mining, image processing, bioinformatics and so on.

Below is an incomplete list of potential topics to be covered in the
special issue:
1. Dimensionality reduction based on manifold learning
2. Supervised manifold learning (e.g., classification)
3. Unsupervised manifold learning (e.g., clustering)
4. Semi-supervised manifold learning
5. Manifold regularization
6. Manifold ranking
7. Manifold alignment
8. Manifold learning theory
9. Kernel methods based on manifold learning
10. Manifold learning with noisy and incomplete data
11. Efficiency issues in manifold learning
12. Algebraic, geometric, and topological methods for manifold learning
13. Empirical study of the performance of manifold learning algorithms
14. Applications of manifold learning

2. Requirements of submissions

All submissions must meet the following requirements.
(a) The paper must be written in English.
(b) All submissions must be typeset in the journal's format. A format
template can be downloaded from the journal's website at the following URL:
http://www.ijsi.org/IJSI/ch/first_menu.aspx?parent_id=2009042384852001
(c) There is no strict restriction on the length of a submission. All the
submissions will be evaluated based on the quality of the work.
(d) The submission must be the authors' own original work and it must have
not been formally published or submitted for the consideration of
publication anywhere else.
(e) If a submission is an extension of a workshop or conference paper, it
must contain a substantial amount of new material. As a guideline, it
should contain at least 30% of new material. In that case, the author must
state the differences of the submission from existing publications in a
cover letter, and include the workshop/conference paper(s) together with
the submission for the editor to check if the extension and revision is
satisfactory.

4. How to submit

All submissions must be in the pdf format and uploaded to the special
issue's online submission system at the following URL:
https://www.easychair.org/account/signin.cgi?conf=ijsiml2013

5. Review of the papers

All the submissions will be peer reviewed by at least two experienced
active researchers in the related subject area. The review process and
quality criteria will follow the journal's review process protocol and
standard. The decisions on acceptance of each paper will be based on the
reviewers' reports on the quality of the submission.

6. Important dates

November 30, 2012: Deadline for paper submission.
March 15, 2013: Notification of the first round of review results.
May 15, 2013: Deadline for submitting the revised versions.
August 1, 2013: Notification of the final decision of acceptance.
September 1, 2013: Deadline for camera-ready submission.

6. Contact details of the guest editor

Prof. Xiaofei He,
State Key Lab of CAD&CG, Zhejiang University, Hangzhou 310058, China.
Tel: +86 -571-88206681
Fax: +86 -571-88206680
Email: [email protected] , [email protected]



-- 
Ming Ji
Data Mining Research Group
Data and Information Systems Research Laboratory
Department of Computer Science
University of Illinois at Urbana-Champaign
[email protected]
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