PASCAL2 Posts

ACML 2012 Workshop Call for Submission

The Asian Conference on Machine Learning (ACML) provides an international forum for the discussion of the latest high quality research results in all areas related to machine learning and knowledge discovery in databases. Encouraged are submissions of workshop proposals that explore the application of machine learning and data mining methods to real-world problems, particularly exploratory research that describes novel learning and mining tasks and applications requiring non-standard techniques. Submissions that demonstrate both theoretical and empirical rigor are especially encouraged.

Submissions should include a information on the workshop background, format and details of the organizers.

ACML will take place on the 4-6 November 2012 in Singapore.
http://acml12.comp.nus.edu.sg/

– Workshop proposal submission deadline is April 27.
– Notification will be May 27.

2nd Call for Workshops, Tutorials and Papers at ECML PKDD 2012

ECML PKDD 2012: The European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases
September 24-28, 2012 – Bristol, UK

Home

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Tutorials and Workshops
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ECML PKDD is the prime European scientific event in the fields of Machine Learning and Data Mining. The first and last day of the program are dedicated to workshops and tutorials on related topics. In this message, we call for proposals for workshops or tutorials. Candidate organizers should submit their proposal to either the workshop chairs or the tutorial chairs before or on March 9, 2012.

For more information, please check the following detailed calls:
– for workshops: http://www.ecmlpkdd2012.net/calls/call-for-workshops/
– for tutorials: http://www.ecmlpkdd2012.net/calls/call-for-tutorials/

Proposal deadline: Friday, March 9, 2012

Proposals for workshops or tutorials should be sent by email to:
– ecmlpkdd2012workshops@cs.bris.ac.uk (workshop proposals)
– ecmlpkdd2012tutorials@cs.bris.ac.uk (tutorial proposals)

Arno Knobbe & Carlos Soares
ECML PKDD 2012 Workshop Chairs

Alessandro Moschitti and Siegfried Nijssen
ECML/PKDD 2012 Tutorial Chairs

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Papers
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The European Conference on “Machine Learning” and “Principles and Practice of Knowledge Discovery in Databases” (ECML-PKDD) provides an international forum for the discussion of the latest high-quality research results in all areas related to machine learning and knowledge discovery in databases and other innovative application domains. Submissions are invited on all aspects of machine learning, knowledge discovery and data mining, including real-world applications.

For more information, please check the following detailed call: http://www.ecmlpkdd2012.net/calls/call-for-papers/

Key Dates
– Abstract submission deadline: Thu 19 April 2012
– Paper submission deadline: Mon 23 April 2012
– Early author notification: Mon 28 May 2012
– Regular author notification: Fri 15 June 2012
– Camera-ready submission: Fri 29 June 2012

Contact
You can contact the Program Committee Chairs at ECMLPKDD2012pcchairs@cs.bris.ac.uk .
Nello Cristianini, Tijl De Bie and Peter Flach (Intelligent Systems Lab, University of Bristol, UK)

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Follow ECML PKDD 2012
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– Twitter: @ECMLPKDD2012
– LinkedIn: http://www.linkedin.com/groups?gid=4257980
– Facebook: http://www.facebook.com/pages/ECML-PKDD-2012/298600073514446

CALL FOR PAPERS – 18th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD-2012)

August 12-16, 2012
Beijing, China

http://www.kdd.org/kdd2012/

Key Dates:
Papers due: February 10, 2012
Acceptance notification: May 4, 2012

Paper submission and reviewing will be handled electronically. Authors should consult the conference Web site for full details regarding paper preparation and submission guidelines.

Papers submitted to KDD 2012 should be original work and substantively different from papers that have been previously published or are under review in a journal or another conference/workshop.

As per KDD tradition, reviews are not double-blind, and author names and affiliations should be listed.

Due to the large number of submissions, papers submitted to the research track will not be considered for publication in the industry/government track and vice-versa. Authors are encouraged to carefully read the conference CFP and choose an appropriate track for their submissions. In case of doubts, authors are encouraged to get in touch with the chairs of the corresponding track at least a week before the submission deadline.

RESEARCH TRACK

We invite submission of papers describing innovative research on all aspects of knowledge discovery and data mining. Examples of topic of interest include (but are not limited to): association analysis, classification and regression methods, semi-supervised learning, clustering, factorization, transfer and multi-task learning, feature selection, social networks, mining of graph data, temporal and spatial data analysis, scalability, privacy, security, visualization, text analysis, Web mining, mining mobile data, recommender systems, bioinformatics, e-commerce, online advertising, anomaly detection, and knowledge discovery from big data, including the data on the cloud. Papers emphasizing theoretical foundations, novel modeling and algorithmic approaches to specific data mining problems in scientific, business, medical, and engineering applications are particularly encouraged. We welcome submissions by authors who are new to the KDD conference, as well as visionary papers on new and emerging topics. Authors are explicitly discouraged from submitting papers that contain only incremental results and that do not provide significant advances over existing approaches. Application oriented papers that make innovative technical contributions to research are welcome.

Submitted papers will be assessed based on their novelty, technical quality, potential impact, and clarity of writing. For papers that rely heavily on empirical evaluations, the experimental methods and results should be clear, well executed, and repeatable. Authors are strongly encouraged to make data and code publicly available whenever possible.

INDUSTRY & GOVERNMENT TRACK

The Industrial/Government Applications Track solicits papers describing implementations of KDD solutions relevant to industrial or government settings. The primary emphasis is on papers that advance the understanding of practical, applied, or pragmatic issues related to the use of KDD technologies in industry and government and highlight new research challenges arising from attempts to create such real KDD applications. Applications can be in any field including, but not limited to: e-commerce, medical and pharmaceutical, defense, public policy, finance, engineering, environment, manufacturing, telecommunications, and government.

The Industrial/Government Applications Track will consist of competitively-selected contributed papers. Submitters must clearly identify in which of the following three sub-areas their paper should be evaluated as distinct review criteria will be used to evaluate each category of submission.

· Deployed KDD systems that are providing real value to industry, Government, or other organizations or professions. These deployed systems could support ongoing knowledge discovery or could be applications that employ discovered knowledge, or some combination of the two.

· Discoveries of knowledge with demonstrable value to Industry, Government, or other users (e.g., scientific or medical professions). This knowledge must be “externally validated” as interesting and useful; it can not simply be a model that has better performance on some traditional KDD metric such as accuracy or area under the curve.

· Emerging applications and technology that provide insight relevant to the above value propositions. These emerging applications must have clear user interest and support to distinguish them from KDD research papers, or they must provide insight into issues and factors that affect the successful use of KDD technology and methods. Papers that describe infrastructure that enables the large-scale deployment of KDD techniques also are in this area.

ON BEHALF OF THE KDD-2012 ORGANIZERS

Research Program Co-chairs:
· Deepak Agarwal, Yahoo! Research
· Jian Pei, Simon Fraser University

Industry and Government Program Co-chairs:
· Michael Zeller, Zementis
· Hui Xiong, Rutgers University

General Chair:
· Qiang Yang, HKUST

Associate General Chair
· Dou Shen, CityGrid Media

PhD studentships in Complex and Disordered Systems

King’s College London
Department of Mathematics

The Disordered Systems group at King’s College London expects to have several openings for entry into the PhD programme in autumn 2012. The group (see http://www.kcl.ac.uk/schools/nms/maths/research/dissys) has broad-ranging research interests in the application of tools from statistical mechanics to complex and disordered systems, including

– physics: soft matter (phase behaviour and flow), fracture and packing, non-equilibrium and glassy systems
– mathematics: sparse random matrix spectra, localization
– biology: metabolic and protein interaction networks, random graph ensembles, DNA stretching, survival statistics
– econophysics: collective effects in operational risk, time series analysis
– machine learning: learning and statistical inference on graphs

Funding is available through various sources (see http://www.kcl.ac.uk/study/pg/funding/sources/index.aspx), including competitive departmental (DTA) studentships which cover a stipend and fees for UK residents or fees for EU residents, and a range of funding schemes provided by King’s Graduate School (see
http://www.kcl.ac.uk/study/pg/school/index.aspx). Most funding application deadlines are on 1 Feb 2012 or shortly thereafter, and supporting references need to be received by the deadline, so interested candidates are encouraged to apply as soon as possible.

All applications for PhD study should be made online at https://myapplication.kcl.ac.uk/
Further information on admissions can be found at http://www.kcl.ac.uk/study/pg/admissions/TypesofProgrammes.aspx
Note that Graduate School funding requires a separate funding application form and case for support (see http://www.kcl.ac.uk/study/pg/school/index.aspx).

Interested candidates are welcome to contact Prof Peter Sollich (peter.sollich@kcl.ac.uk) or any other member of the research group with questions regarding research interests, application procedures etc.

Post-doc in machine learning for semantic composition at the University of Trento

One (RENEWABLE) 2-YEAR POST-DOC POSITION IN MACHINE LEARNING AVAILABLE

The CIMeC-CLIC laboratory of the University of Trento, an
interdisciplinary group of researchers studying language and
conceptualization using both computational and cognitive methods
(clic.cimec.unitn.it) announces the availability of a 2-year Post-Doc
position in machine learning, renewable up to a maximum of 4 years.

The scholarship is funded by a 5-year European Research Council
Starting Grant awarded to the COMPOSES (COMPositional Operations in
SEmantic SPACE) project (clic.cimec.unitn.it/composes), that aims to
model the meaning of phrases and sentences with computational methods.

* Research Goals and Desired Profile *

Distributional semantics is a general framework to induce vector-based
meaning representations of words from collections of naturally
occurring text (corpora) on a large scale. The successful candidate
will develop, in collaboration with the COMPOSES project team, novel
machine learning techniques to derive distributional semantic
representations of phrases and sentences from distributional
representations of words and other corpus data (e.g., deriving “red
dog” from corpus-based representations of “red” and “dog”). To achieve
this goal, we face the hard challenge to learn output representations
that are very high-dimensional vectors from inputs that are also
high-dimensional vectors, that might in turn be the output of other
empirically-learned functions.

The successful candidate should have experience in one or more of the
following areas: regularization methods, hierarchical regression,
dimensionality reduction and/or feature selection for multidimensional
multiple regression learning, scaling machine learning to large
multivariate and multi-level problems, dealing with very sparse data,
efficient large-scale implementation of regression methods, learning
algorithms for deep architectures. The research fellow must also have
a strong interest in working in an interdisciplinary environment.

* The Research Environment *

The CLIC lab (clic.cimec.unitn.it) is a unit of the University of
Trento’s Center for Mind/Brain Sciences (CIMeC,
www.unitn.it/en/cimec), an English-speaking, interdisciplinary center
for research on brain and cognition whose staff includes
neuroscientists, psychologists, (computational) linguists, computer
scientists and physicists.

CLIC consists of researchers from the Departments of Computer Science
(DISI) and Cognitive Science (DISCoF) carrying out research on a range
of topics including concept acquisition, corpus-based computational
semantics, combining NLP and computer vision, combining brain and
corpus data to study cognition, formal semantics and theoretical
linguistics. Modeling composition in distributional semantics is
increasingly a focus point of CLIC, and activity in this area will
grow considerably thanks to COMPOSES funds.

CLIC is part of the larger network of research labs focusing on
Natural Language Processing and related domains in the Trento region,
that is quickly becoming one of the areas with the highest
concentration of researchers in NLP and related fields anywhere in
Europe.

The CLIC/CIMeC laboratories are located in beautiful Rovereto, a
lively town in the middle of the Alps, famous for its contemporary art
museum, the quality of its wine, and the range of outdoors sport and
relax opportunities it offers:

http://en.wikipedia.org/wiki/Rovereto

* Application Information *

For further information, please send an expression of interest to
marco.baroni@unitn.it, attaching a CV. The position is available
immediately and open until filled.

CALL FOR PAPERS (INDUSTRY & GOVERNMENT TRACK)

CALL FOR PAPERS (INDUSTRY & GOVERNMENT TRACK)
18th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD-2012)
August 12-16, 2012
Beijing, China

http://www.kdd.org/kdd2012/

Key Dates:
Papers due: February 10, 2012
Acceptance notification: May 4, 2012

Paper submission and reviewing will be handled electronically. Authors should consult the conference Web site for full details regarding paper preparation and submission guidelines.

Papers submitted to KDD 2012 should be original work and substantively different from papers that have been previously published or are under review in a journal or another conference/workshop.
As per KDD tradition, reviews are not double-blind, and author names and affiliations should be listed.

INDUSTRY & GOVERNMENT TRACK

The Industrial/Government Applications Track solicits papers describing implementations of KDD solutions relevant to industrial or government settings. The primary emphasis is on papers that advance the understanding of practical, applied, or pragmatic issues related to the use of KDD technologies in industry and government and highlight new research challenges arising from attempts to create such real KDD applications. Applications can be in any field including, but not limited to: e-commerce, medical and pharmaceutical, defense, public policy, finance, engineering, manufacturing, telecommunications, and government.

The Industrial/Government Applications Track will consist of competitively-selected contributed papers. Submitters must clearly identify in which of the following three sub-areas their paper should be evaluated as distinct review criteria will be used to evaluate each category of submission.

– Deployed KDD systems that are providing real value to industry, Government, or other organizations or professions. These deployed systems could support ongoing knowledge discovery or could be applications that employ discovered knowledge, or some combination of the two.

– Discoveries of knowledge with demonstrable value to Industry, Government, or other users (e.g., scientific or medical professions). This knowledge must be “externally validated” as interesting and useful; it can not simply be a model that has better performance on some traditional KDD metric such as accuracy or area under the curve.

– Emerging applications and technology that provide insight relevant to the above value propositions. These emerging applications must have clear user interest and support to distinguish them from KDD research papers, or they must provide insight into issues and factors that affect the successful use of KDD technology and methods. Papers that describe infrastructure that enables the large-scale deployment of KDD techniques also are in this area.

MACHINE LEARNING SUMMER SCHOOL, LA PALMA, SPAIN, APRIL 11-20, 2012

The 19th Machine Learning Summer School will be held in La Palma, Canary Islands, Spain, from April 11 till April 20 2012 and will be collocated with AISTATS 2012.

The school will provide tutorials and lectures on basic and advanced core topics of machine learning by leading researchers in the field. The summer school is intended for students, researchers and industry practitioners with an interest in machine learning.

The school will address the following topics: Learning Theory, Kernel Methods, Bayesian Machine Learning, Monte Carlo Methods, Bayesian Nonparametrics, Optimization, Graphical Models, Information theory and Dimensionality Reduction.

Key Information
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URL: http://mlss2012.tsc.uc3m.es
Dates: Wednesday 11 April to Friday 20 April, 2012
Application deadline: 31 January 2012
Location: La Palma, Spain
Email contact: mlss2012[at]tsc.uc3m.es

Confirmed Speakers
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– Zoubin Ghahramani (University of Cambridge)
– Mark Girolami (University College London)
– Neil Lawrence (University of Sheffield)
– Gabor Lugosi (Universitat Pompeu Fabra)
– Peter Orbanz (University of Cambridge)
– Fernando Perez-Cruz (Universidad Carlos III de Madrid)
– Bernhard Schölkopf (Max Plank Institute Tübingen)
– Robert Vanderbei (Princeton University)

Organizers
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Fernando Perez-Cruz, Bernhard Schölkopf, Neil Lawrence and Emilio Parrado-Hernandez

MLSS La Palma is co-organized by Universidad Carlos III de Madrid, University of Sheffield, Max Plank Institute Tübingen and PASCAL2.

See http://mlss2012.tsc.uc3m.es for details.

SLDS2012 – Registration now open

Symposium on Learning and Data Science

For registrations and submissions:

http://www.ceremade.dauphine.fr/SLDS2012

The Symposium will be held at Villa Finaly, Florence, Italy, on 7-9 May 2012.

Aims

Great progress has been made in the past 20 years in Machine Learning and Statistical Learning, Data Analysis and Data Mining. From the statistical analysis of data to data mining, from machine learning to knowledge discovery, the development of data exploration and modeling has overcome numerous challenges and has benefited greatly from varied, often overlapping, paradigms. By uniting specialists with different expertise and from different disciplines, the objectives of this conference are to compare approaches to data, to deepen understanding of different methodologies, and to focus on the Grand Challenges that must be addressed in the coming years.

The previous edition of the symposium, SLDS2009, presented the most noteworthy foundations of these domains from the past century: http://www.crcpress.com/product/isbn/9781439867631. The SLDS2012 symposium focuses on contemporary and future theoretical problems as well as on efficient practical solutions for applied domains which involve Data Analysis, Data Mining, Machine Learning and Statistical Learning contributions. This Symposium is important for researchers and all who want to keep abreast of future developments in data handling and of the consequent results that can be imagined in various applied domains.

The focus of the Symposium includes, but is not limited to, the following themes: Knowledge Discovery by Modeling, Performance Guaranteed Machine Learning Algorithms, Challenges in Text Mining, Social Networks, Complex/Symbolic Data Analysis, Geometric Data Analysis towards Sociology Challenges, Visual Decision Aids, Challenges in Astronomy, Data Mining, Mining and Learning for Neuroscience Challenges, Mining and Learning for Omics Challenges, Open Data

Important Dates

February 6, 2012 Paper Submission

February 15, 2012 Poster & Demo Submission

March 1, 2012 Paper Notification of Acceptance

March 8, 2012 Poster & Demo Notification of Acceptance

19 Mars 2012 Standard Registration Deadline

Opening Plenary Lectures

Professor Giuseppe LONGO (Italy)
Professor Vladimir VAPNIK (USA)

All accepted presentations will be distributed through USB keys to all participants. At least one author of accepted papers/posters/software demonstrations is required to register. Authors of selected papers from the SLDS 2012 conference will be invited to submit an extended version of their papers for possible inclusion in a special issue of a journal.

Special registration rate for Classification Society members.

The Scientific Committee and Local Organising Committee of SLDS2012

Call for Demonstrations & Call for NECTAR-track submissions – ECML PKDD 2012

ECML PKDD 2012 solicits submissions for demos. Submissions must describe working systems and be based on state-of-the-art machine learning and data mining technology. These systems may be innovative prototype implementations or mature systems that use machine learning techniques and knowledge discovery processes in a real setting. We particularly welcome demos that use open-source software. For more information, please check http://www.ecmlpkdd2012.net/calls/call-for-demos/

Submission deadline: Friday, May 18, 2012

All aspects of the submission and notification process will be handled online via the CMT conference management toolkit at https://cmt.research.microsoft.com/ECMLPKDD2012/

For inquiries please contact us at ECMLPKDD2012demos@cs.bris.ac.uk

Bettina Berendt & Myra Spiliopoulou
ECML PKDD 2012 Demo Track Chairs

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Call for NECTAR-track submissions
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For the first time, ECML PKDD 2012 will have a NECTAR-track, featuring significant machine learning and data mining results published or disseminated no earlier than 2010 at a different conference or in a journal. One goal of this track is to offer conference attendees the opportunity to learn about machine learning and/or data mining related results published in other communities. Papers describing innovative applications of state-of-the-art machine learning and/or data mining algorithms are also welcome, but should be different from demonstration papers; the latter are to be submitted to the demos track. We also invite submissions presenting compactly well-founded results which appeared in a series of publications that advanced a single novel influential idea or vision. For more information, please check: http://www.ecmlpkdd2012.net/calls/call-for-nectar-talks/

Submission deadline: Friday, May 18, 2012

All aspects of the submission and notification process will be handled online via the CMT conference management toolkit at https://cmt.research.microsoft.com/ECMLPKDD2012/

For inquiries please contact us at ECMLPKDD2012nectar@cs.bris.ac.uk

Thomas Gaertner & Gemma Garriga
ECML PKDD 2012 NECTAR Track Chairs

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Follow ECML PKDD 2012
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– Twitter: @ECMLPKDD2012
– LinkedIn: http://www.linkedin.com/groups?gid=4257980
– Facebook: http://www.facebook.com/pages/ECML-PKDD-2012/298600073514446

Machine Learning Competiton – Aspiring Minds (www.aspiringminds.in)

Aspiring Minds (www.aspiringminds.in) has launched a Machine Learning Competiton. This is an attempt to collaboratively solving socially-relevant problems using computer science. It is also a means to expose young engineers to machine learning and encourage them to apply it to various problems around us.

We pitch a real-world labour-market prediction problem, for which applicants need to learn a model based on known inputs. One key differentiator of the competition is the preference for interpretable models. The goal is not only to have a model with high accuracy, but to also learn about the problem space through the model. Another interesting feature is that the competition asks for multiple models, which are solutions for different cost functions, as informed by real world requirements. See details here: http://www.aspiringminds.in/mlCompetition/

The competition has attractive prizes, the first prize being $2000 (INR 100K), two second prizes of $1000 (INR 50K) and some others.