News Archives

PhD Scholarships on Machine Learning for Neuroscience

The Department of Information Engineering and Computer Science (DISI) at the University of Trento and its research partner Fondazione Bruno Kessler (FBK), invites applications for 2 open PhD positions in the area of Machine Learning for Neuroscience, both of them covered by scholarship.

The deadline for applications is May 15, 2012, before 13:00, CET.

The PhD research program aims at carrying out research activity on machine learning methodologies for neuroscientific data analysis. The main goal is the design and the deployment of machine learning algorithms for neuroimaging-based neuroscience investigations. The research focuses on three specific tasks: brain decoding, brain mapping and brain connectivity. The challenge is to design effective computational methods for multivariate pattern analysis.

The PhD research program will take place at NILab, the Neuroinformatics Laboratory raised as a joint initiative of the Bruno Kessler Foundation and the Center for Mind/Brain Sciences (CIMeC) of the University of Trento.

The grant amount is approximately 13.500 euro per year, before taxes. Students who win the PhD scholarship will also have the tuition fee waived. Additional support from the Province of Trento is available for accomodation, which amounts approximately 1250 euro per year.

Exceptional candidates may obtain an additional internship grant to join NILab earlier, i.e. between notification of acceptance, June 2012, and the beginning of the PhD Scholarship, November 2012.

Details on the PhD School and a link to the online application are provided below. For further information, please contact info.nilab@fbk.eu.

Links
– PhD School: http://ict.unitn.it/
– DISI: http://disi.unitn.it
– FBK: http://www.fbk.eu
– NILab: http://nilab.fbk.eu
– CIMeC: http://www.cimec.unitn.it

ICML 2012 student support (deadline 6 May)

ICML 2012, the 29th International Conference on Machine Learning,
is in Edinburgh, Scotland, from June 26 to July 1, 2012. http://icml.cc

There are two programs that provide financial support for students who
attend ICML. All students may apply. A student does NOT need to have
an accepted paper at the conference in order to participate in the
programs. Both programs have the same deadline.

Applications Due: 6 May 2012, midnight PST.
Absolutely no late applications will be accepted!

You can apply for both programs at once by applying for the travel
scholarship and answering yes to the question that asks about the
volunteer program.

Student Travel Scholarship

The student travel scholarship provides funding for students to
subsidize travel, conference registration, and housing expenses for
ICML 2012. To help students be integrated into the conference, each
sponsored student will have a poster on their research.

For details see http://icml.cc/2012/scholarship-details/

Volunteer Program

In the volunteer program, students receive free registration in exchange
for agreeing to help with the organization of the conference.

For details see http://icml.cc/2012/volunteers

IEEE SMC 2012: Extended Deadline

The 2012 IEEE International Conference on Systems, Man, and Cybernetics

October 14-17 Seoul, Korea

http://www.SMC2012.org

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Coupling Humans and Complex Systems in a Cyber World: Today’s Principles for Tomorrow’s Society

Steady technological progress in all areas of human activity now makes it possible for everyone to access almost limitless amounts of data and to interact in countless ways with their surroundings, as well as with each other. In order for this data to become information and for interactions to become meaningful, however, we need sound principles for the design of complex systems, and ways of how to couple them efficiently to humans. The SMC community has accumulated considerable expertise with such complex systems in all areas of Systems Science and Engineering, Human-Machine Systems, and Cybernetics, which we can now harness. A challenge in this endeavor will be to test the scalability of existing principles and theories to cope with the complexity of tomorrow’s cyber society.
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Important Dates

May 13, 2012 Deadline for submission of full-length papers for Regular and Special Sessions (Extended!)

May 15, 2012 Acceptance/Rejection notification for Tutorial/Workshop Sessions

June 15, 2012 Acceptance/Rejection notification for regular papers and special session papers

July 15, 2012 Deadline for submission of full-length papers for Workshop Sessions

July 31, 2012 Early registration deadline

July 31, 2012 Deadline for final camera-ready papers and tutorial/workshop material submission

Oct. 14-17, 2012 Conference dates

research positions on NLP/ML at dMetrics.com

dMetrics is working on creating the next generation of text-analysis technology.
Its team includes experts on both natural language processing and machine
learning. The company is currently hiring and has openings in both research and
engineering, see: http://dmetrics.com/careers/ for details.

To potential applicants: If you attend EACL-2012 and are interested in knowing
more about job opportunities at dMetrics please contact Ariadna Quattoni or Xavier
Carreras.

——————————————————————————-

RESEARCH OPENINGS

dMetrics develops machine learning and natural language processing techniques to
meet both high-precision and high-recall information needs. Staffed with six
research scientists, and supported by software engineers, we offer opportunities
for applied research on a variety of projects related to language understanding,
ranging from solving classification and structure prediction problems for
fine-grained information extraction to building robust natural language processing
(NLP) architectures integrating syntactic and semantic components for processing
very large noisy data sets to mining and validating information extracted from
natural language data to annotating and curating text data.

Successful candidates will initiate and execute applied research projects, develop
innovative algorithms to analyze data, coauthor patents, and stay current with the
academic state-of-the-art.

The candidates will have a strong background in machine learning, data mining,
and/or NLP. Experience in processing large data sets is desirable. A solid
research publication record in these areas is a plus.

POSITION DESCRIPTIONS

RESEARCH SCIENTIST

We offer research scientist and internship positions to address challenging
problems including but not limited to:

DISCOURSE PROCESSING
Our research targets complex semantic tasks spanning multiple sentences and
involving first-order as well as higher-order relations. Research work in
discourse processing will focus on enlarging the scope and improving the recall of
information extraction by modeling discourse constructs. The ideal candidate will
be an expert in structure prediction for relation extraction, have a working
knowledge of syntactic and shallow semantic parsing, and experience in weakly
supervised structure prediction.

DATA MINING
Validating pieces of information extracted from our data is business-critical.
Research work in data mining will focus on assessing both the predictive power and
the novelty of extracted information. In addition to validating extracted
information, the ideal candidate will provide feedback to the natural language
processing research team as to which pieces of information to extract in order to
gain further statistical insights.

DATA ANNOTATION AND CURATION
Achieving consistent annotation needed for training target statistical models is
one of our core research tasks. The ideal candidate will implement annotation
procedures, possibly relying on crowd or community sourcing. Additional tasks
include curating linguistic resources relevant to information extraction tasks. A
background in linguistic analysis of real-world text data is required. Working
knowledge of NLP tools is a plus.

SEMANTIC PARSING
Mapping textual data to representations of meaning suitable for data aggregation
is one of our core objectives. The ideal candidate will design broad-coverage
semantic representations deep enough for capturing linguistic phenomena relevant
to data aggregation, and build statistical models to learn these representations
given limited supervision.

ALGORITHMS ENGINEER
We take great pride in running our machine learning and NLP algorithms on real
world datasets at real world speeds. A successful candidate should be able to help
the researchers to implement and optimize their algorithms for near real-time
performance over terabytes of data, and integrate these algorithms into our
overall NLP pipeline. Candidates should be comfortable working heavily with our
application development team and coordinating research work with product
development. The ideal candidate will have a Masters in CS (or equivalent), with
experience in distributed systems and/or high-performance algorithms.

Note: If you are an NLP, ML, or data mining researcher interested in joining our
team and your profile does not fit the positions listed below, don’t hesitate to
contact us anyway. We have tons of extraordinary challenges! We look forward to
hearing from you!

Summer School – 11th-15th June 2012

School of Computing Science, University of Glasgow
11th-15th June 2012

—Overview—

This summer school will focus on the use of inference and dynamical
modelling in human-computer interaction. The combination of modern
statistical inference and real-time closed loop modelling offers rich
possibilities in building interactive systems, but there is a
significant gap between the techniques commonly used in HCI and the
mathematical tools available in other fields of computing science.
This school aims to illustrate how to bring these mathematical tools
to bear on interaction problems.

The opportunities for interaction with computer systems are rapidly
expanding beyond traditional input and output paradigms: full-body
motion sensors, brain-computer interfaces, 3D displays, touch panels
are now commonplace commercial items. The profusion of new sensing
devices for human input and the new display channels which are
becoming available offer the potential to create more involving,
expressive and efficient interactions in a much wider range of
contexts. Dealing with these complex sources of human intention
requires appropriate mathematical methods; modelling and analysis of
interactions requires sophisticated methods which can transform
streams of data from complex sensors into estimates of human
intention.

The programme will consist of a set of lectures delivered by experts
of international standing combined with hands-on practical sessions
for constructing and working with the techniques covered in the course
material.

—Audience—

This school will be suitable for PhD students from a range of fields,
especially machine learning, HCI, interaction design and inference.

Although the course will have substantial technical content, no
prerequisites are required beyond a background in computer science.

—Speakers—

The following speakers are confirmed for the summer school:

Simon Rogers (University of Glasgow)
John Williamson (University of Glasgow)
Thomas Hermann (Bielefeld University)
Per Ola Kristensson (University of St. Andrews)
Lars Kai Hansen (Technical University of Denmark)
Mirco Musolesi (University of Birmingham)

—Application/Registration—

Registration is £250, not including accommodation.

Registration *and* accommodation are free for computing science PhD
students from SICSA institutions.

To apply for a position at the Summer School, please go to:
http://idisummerschool.eventbrite.com/

CALL FOR CONTRIBUTIONS: Object, functional, structured data : towards next generation kernel-based methods

ICML 2012 Workshop, June 30, 2012, Edinburgh, UK.

https://sites.google.com/site/nextgenkernels/

Important dates

Submission due by May 7, 2012.

Author Notification, May 21, 2012.

Workshop, June 30, 2012.

Topic

This workshop concerns analysis and prediction of complex data such as objects, functions and structures. It aims to discuss various ways to extend machine learning and statistical inference to these data and especially to complex outputs prediction. A special attention will be paid to operator-valued kernels and tools for prediction in infinite dimensional space.

Context and motivation

Complex data occur in many fields such as bioinformatics, information retrieval, speech recognition, image reconstruction, econometrics, biomedical engineering. In this workshop, we will consider two kinds of data: functional data and object or structured data. Functional data refers to data collected under the form of sampled curves or surfaces (longitudinal studies, time series, images). Analysis of these data as samples of random functions rather that a collection of individual observations is called Functional Data Analysis (FDA). FDA involves statistics in infinite-dimensional spaces and is closely associated to operatorial statistics. Its main approaches include functional principal component analysis and functional regression. Many theoretical challenges remain open in FDA and attract an increasing number of researchers.

Object and structure data exhibit an explicit structure like trees, graphs or sequences. For instance, documents, molecules, social networks and again images can be easily encoded as objet structured data. For the two last decades, both machine learning and statistics communities have developed various approaches such as graphical probabilistic models as well as kernel methods to take into account the structure of the data. In the meantime, FDA has been extended to Object Data Analysis which deals with samples of object data.

However, most of the efforts have been concentrated so far on dealing with complex inputs. In this workshop, we would like to emphasize the problem of complex outputs prediction which is involved for instance in multi-task learning, structured classification and regression, and network inference. All these tasks share a common feature: they can be viewed as approximation of vector-valued functions instead of scalar-valued functions and in the most general case, the output space is an Hilbert space. A promising direction first developed in (Micchelli and Pontil, 2005) consists in working with Reproducing Kernel Hilbert Spaces with operator-valued kernels in order to get an appropriate framework for regularization. There is thus a strong link between recent works in machine learning about prediction of multiple or complex outputs and functional and operatorial statistics.

This workshop aims at bringing together researchers from both communities to 1) provide an overview of existing concepts and methods, 2) identify theoretical challenges and (3) discuss practical applications and new tasks.

Invited speakers

Yasemin Altun (Google)

Frédéric Ferraty (University of Toulouse, France)

Arthur Gretton (Gatsby Unit, UCL MPI for Intelligent Systems, UK)

Neil Lawrence (University of Sheffield, UK)

Steve Marron (University of North Carolina, USA)

Charles Micchelli (University of Albany, USA)

Call for contributions

We invite short, high-quality submissions on the following topics:

* complex output learning
* structured output prediction
* functional data analysis

* object data analysis
* operator-valued kernels

* operator-based statistics

* joint-kernel maps
* statistical dynamics
* applications (non exhaustive list) : signal and image processing, bioinformatics, natural language processing, time series modeling …

Submission guidelines

Submissions should be written as extended abstracts, no longer than 4 pages in the ICML latex style. ICML style files and formatting instructions can be found at The submissions should include the authors’ name and affiliation since the review process will not be double blind. The extended abstract may be accompanied by an unlimited appendix and other supplementary material, with the understanding that anything beyond 4 pages may be ignored by the program committee. Please send your submission by email to nextgenkernelicml2012@gmail.com before May 7, 2102 at midnight PDT. Recently-published work is allowed.

We expect to select contributions for the spotlight and poster sessions. Authors will receive a notification by May 21, 2012.

Organizers

Florence d’Alché-Buc (University of Evry & INRIA-Saclay, France)
Hachem Kadri (INRIA-Lille, France)
Massimiliano Pontil (University College London, UK)
Alain Rakotomamonjy (University of Rouen, France)

Website admin: Céline Brouard (University of Evry, France)
Contact: nextgenkernelicml2012@gmail.com

European Workshop on RL 2012 – Extended Deadline: April 18

Key Facts:

EWRL 2012: The 10th European Workshop on Reinforcement Learning
2-days ICML Workshop
Location: Edinburgh, Scotland

Dates:
EWRL 2012: June 30-July 1
Submission Deadline: April 18, 2012 (23:59 American Samoa Time)
Notification Due: May 15, 2012

Proceedings published in JMLR W&C, Vol. 24

URL: http://ewrl.wordpress.com/ewrl10-2012/

Organizers: Marc Deisenroth, Csaba Szepesvari, Jan Peters
***************************************************************

EWRL 2012 aims to serve as a forum to discuss the current
state-of-the-art and future research directions in the continuously
growing field of reinforcement learning. We intend to make this an
exciting event not only for the European RL community but also
international researchers from related areas with many opportunities to
share new knowledge and encourage collaborative work.

The main question of this workshop is to discuss, how other statistical
learning techniques may be used to developed new RL approaches in order
to achieve properties including higher numerical robustness, easier use
in terms of open parameters, probabilistic and Bayesian interpretations,
better scalability, the inclusions of prior knowledge, etc.

We are calling for papers from the entire reinforcement learning
spectrum, with the option of either 2 page short papers or longer 8 page
JMLR W&C Proceedings format research papers. We encourage a range of
submissions to encourage broad discussion. We will publish selected
papers in the prestigious JMLR W&C Proceedings, Vol. 24.

Double submissions are allowed but must be clearly indicated. However in
the event that an EWRL
paper is accepted to another conference proceedings or journal, it will
not be reprinted in the official EWRL proceedings. The paper would still
be considered, however, for acceptance and presentation at EWRL.
Double submissions must be clearly labelled as such (e.g., add a
footnote on the first page). In case your ICML submission exceeds EWRL’s
page limit, don’t worry too much about it: submit the ICML paper.

We encourage submissions from a range of sub-topics including
(but not limited to):

– Reinforcement Learning Theory
– Function Approximation in Reinforcement Learning
– Current Progress in Bandit Regret Bounds
– MDPs, POMDPs
– Exploration vs Exploration Tradeoff
– Multi-Agent Reinforcement Learning
– Policy Search
– Actor-Critic Methods
– Bayesian Control Approaches
– RL Benchmark Problems
– Real-world Applications
– Robot RL

Keynote Speakers:

Richard Sutton (University of Alberta)
Shie Mannor (Technion)
Martin Riedmiller (University of Freiburg)
Drew Bagnell (CMU) (tentative)

Submission deadline: April 18, 2012 (23:59 American Samoa Time)
Page limit: 2 pages for short papers and 8 pages for regular
papers.
Paper format: JMLR W&C, Vol. 24
Style file:
http://www.tex.ac.uk/tex-archive/help/Catalogue/entries/jmlr.html

For more information, see http://ewrl.wordpress.com/ewrl10-2012/

Registration site open: VISION AND SPORTS SUMMER SCHOOL

Prague, 27-31 August 2012

http://cmp.felk.cvut.cz/summerschool2012/
email: vs3@cmp.felk.cvut.cz

application deadline: 15 May 2012

Organized in collaboration with NIFTi
http://www.nifti.eu

OVERVIEW

Vision and Sports is a special special kind of summer school. In
addition to a broad-range of lectures on state-of-the-art Computer
Vision techniques, it offers exciting sport activities, such as
Tennis, Archery, Kung-Fu and Ultimate Freesbee. Sports are organized
by the same internationally renowned experts who deliver the lectures.
The school offers the best of both worlds to participants:
high-quality teaching on Computer Vision, and lots of fun with a
variety of attractive sports. This offers plenty of opportunity for
personal contact between students and teachers.

The Vision and Sports Summer School covers a broad range of subjects,
reflecting the diversity of Computer Vision. Each lecture will cover
both basic aspects and state-of-the-art research. Every day there are
two Computer Vision classes and one sports session. The classes
include both lectures and practical exercises.

The school is open to about 60 participants, and is targeted mainly to
young researchers (Master students and PhD students in particular).

Following the 5-day summer school, there will be a robotic workshop
organized by the EU project NIFTi (www.nifti.eu). The participants
will apply vision algorithms on the NIFTi mobile robot(s) and move the
robot around using the Ladybug3 camera the robot is equipped with.
Attendance to this workshop is optional and limited to a small number
of attendees. http://cmp.felk.cvut.cz/niftivisionworkshop2012/

TEACHERS

Jiri Matas
Czech Technical University

Phil Torr
Oxford Brookes University

Carsten Rother
Microsoft Research Cambridge

Christoph Lampert
IST Austria

Patrick Perez
Technicolor Research and Innovation

Silvio Savarese
University of Michigan

Vittorio Ferrari
University of Edinburgh

Bastian Leibe
RWTH Aachen University

Ondrej Chum
Czech Technical University

COMPUTER VISION LECTURES

Current list of topics:

Local feature extraction
Large-scale specific object recognition
Single-view and multi-view object categorization
MRF/CRF in Computer Vision
Semantic segmentation
Weakly supervised learning of visual models
Kernel Methods in Computer Vision
Tracking in video

SPORT ACTIVITIES

Tennis, Volleyball, Unihockey, Archery, Table Tennis, Soccer, Archery,
Ultimate Freesbee, Kung-Fu, Basketball, Tai chi, Badminton

APPLICATION

The school is open to about 60 participants. Please apply online at

http://cmp.felk.cvut.cz/summerschool2012/

Although priority will be given to young researchers (Master/PhD
students in particular), applications from senior researchers and
industrial professionals are welcome as well. The registration fee for
PhD students is only 300 Euro. This fee includes all classes, sports
activities, coffee breaks, lunches, and a social dinner. For hotel
accommodation, students will get discount rates on hotels affiliated
with the school.

Applicants should apply before 15 May 2012.
Notification of acceptance will be sent by 31 May 2012.

MORE INFORMATION

http://cmp.felk.cvut.cz/summerschool2012/

2nd Call For Papers – Special Issue on Learning Semantics in Machine Learning

**Overview**
A key ambition of AI is to render computers able to evolve and interact
with the real world. This can be made possible only if the machine is able
to produce an interpretation of its available modalities (image, audio,
text, etc.) which can be used to support reasoning and taking appropriate
actions. Computational linguists use the term “semantics” to refer to the
possible interpretations of natural language expressions and there is
recent work in “learning semantics” – finding (in an automated way) these
interpretations. However, “semantics” are not restricted to the natural
language (and speech) modality, and are also pertinent to visual
modalities. Hence, knowing visual concepts and common relationships
between them would certainly provide a leap forward in scene analysis and
in image parsing akin to the improvement that language phrase
interpretations would bring to data mining, information extraction or
automatic translation, to name a few.

Progress in learning semantics has been slow mainly because this involves
sophisticated models which are hard to train, especially since they seem
to require large quantities of precisely annotated training data. However,
recent advances in learning with weak, limited and indirect supervision
led to the emergence of a new body of research in semantics based on
multi-task/transfer learning, on learning with semi/ambiguous/indirect
supervision or even with no supervision at all. Hence, this special issue
invites paper submissions on recent work for learning semantics of natural
language, vision, speech, etc.

Papers should address at least some of the following questions:
– How should meaning representations be structured to be easily
interpretable by a computer and still express rich and complex knowledge?
– What is a realistic supervision setting for learning semantics?
– How can we learn sophisticated representations with limited supervision?
– How can we jointly infer semantics from several modalities?

**Dates**
Submission deadline: May 1, 2012
First review results: July 30, 2012
Final drafts: September 30, 2012

**Submissions**
Papers must be submitted online, selecting the article type that indicates
this special issue. Peer reviews will follow the standard Machine Learning
journal review process. It is the policy of the Machine Learning journal
that no submission, or substantially overlapping submission, be published
or be under review at another journal or conference at any time during the
review process. Papers extending previously published conference papers
are acceptable, as long as the journal submission provides a significant
contribution beyond the conference paper, and the overlap is described
clearly at the beginning of the journal submission. Complete manuscripts
of full length are expected, following the MLJ guidelines in
http://www.springer.com/computer/ai/journal/10994 .

**Guest Editors**
Antoine Bordes (antoine.bordes@utc.fr)
Léon Bottou (leon@bottou.org)
Ronan Collobert (ronan@collobert.com)
Dan Roth (danr@illinois.edu)
Jason Weston (jweston@google.com)
Luke Zettlemoyer (lsz@cs.washington.edu)

CALL FOR CONTRIBUTIONS: Object, functional and structured data : towards next generation kernel-based methods

ICML 2012 Workshop, June 30, 2012, Edinburgh, UK.

https://sites.google.com/site/nextgenkernels/
========================================================================
Important dates
Submission due by May 7, 2012.
Author Notification, May 21, 2012.
Workshop, June 30, 2012.

Topic
This workshop concerns analysis and prediction of complex data such as objects, functions and structures. It aims to discuss various ways to extend machine learning and statistical inference to these data and especially to complex outputs prediction. A special attention will be paid to operator-valued kernels and tools for prediction in infinite dimensional space.

Context and motivation
Complex data occur in many fields such as bioinformatics, information retrieval, speech recognition, image reconstruction, econometrics, biomedical engineering. In this workshop, we will consider two kinds of data: functional data and object or structured data. Functional data refers to data collected under the form of sampled curves or surfaces (longitudinal studies, time series, images). Analysis of these data as samples of random functions rather that a collection of individual observations is called Functional Data Analysis (FDA). FDA involves statistics in infinite-dimensional spaces and is closely associated to operatorial statistics. Its main approaches include functional principal component analysis and functional regression. Many theoretical challenges remain open in FDA and attract an increasing number of researchers.
Object and structure data exhibit an explicit structure like trees, graphs or sequences. For instance, documents, molecules, social networks and again images can be easily encoded as objet structured data. For the two last decades, both machine learning and statistics communities have developed various approaches such as graphical probabilistic models as well as kernel methods to take into account the structure of the data. In the meantime, FDA has been extended to Object Data Analysis which deals with samples of object data.
However, most of the efforts have been concentrated so far on dealing with complex inputs. In this workshop, we would like to emphasize the problem of complex outputs prediction which is involved for instance in multi-task learning, structured classification and regression, and network inference. All these tasks share a common feature: they can be viewed as approximation of vector-valued functions instead of scalar-valued functions and in the most general case, the output space is an Hilbert space. A promising direction first developed in (Micchelli and Pontil, 2005) consists in working with Reproducing Kernel Hilbert Spaces with operator-valued kernels in order to get an appropriate framework for regularization. There is thus a strong link between recent works in machine learning about prediction of multiple or complex outputs and functional and operatorial statistics.
This workshop aims at bringing together researchers from both communities to 1) provide an overview of existing concepts and methods, 2) identify theoretical challenges and (3) discuss practical applications and new tasks.

Invited speakers
Yasemin Altun (Google)
Frédéric Ferraty (University of Toulouse, France)
Arthur Gretton (Gatsby Unit, UCL MPI for Intelligent Systems, UK)
Neil Lawrence (University of Sheffield, UK)
Steve Marron (University of North Carolina, USA)
Charles Micchelli (University of Albany, USA)

Call for contributions
We invite short, high-quality submissions on the following topics:

* complex output learning
* structured output prediction
* functional data analysis
* object data analysis
* operator-valued kernels
* operator-based statistics
* joint-kernel maps
* statistical dynamics
* applications (non exhaustive list) : signal and image processing, bioinformatics, natural language processing, time series modeling …

Submission guidelines
Submissions should be written as extended abstracts, no longer than 4 pages in the ICML latex style. ICML style files and formatting instructions can be found at The submissions should include the authors’ name and affiliation since the review process will not be double blind. The extended abstract may be accompanied by an unlimited appendix and other supplementary material, with the understanding that anything beyond 4 pages may be ignored by the program committee. Please send your submission by email to nextgenkernelicml2012@gmail.com before May 7, 2102 at midnight PDT. Recently-published work is allowed.
We expect to select contributions for the spotlight and poster sessions. Authors will receive a notification by May 21, 2012.

Organizers
Florence d’Alché-Buc (University of Evry & INRIA-Saclay, France)
Hachem Kadri (INRIA-Lille, France)
Massimiliano Pontil (University College London, UK)
Alain Rakotomamonjy (University of Rouen, France)

Website admin: Céline Brouard (University of Evry, France)

Contact: nextgenkernelicml2012@gmail.com