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    SIMBAD 2011 - SIMBAD 2011 1st International Workshop on Similarity-Based Pattern Analysis and Recognition

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    Category SIMBAD 2011

    Deadline: May 15, 2011 | Date: September 28, 2011-October 02, 2011

    Venue/Country: Venice, Italy

    Updated: 2011-02-22 12:18:32 (GMT+9)

    Call For Papers - CFP

    SIMBAD 2011

    1st International Workshop on Similarity-Based Pattern Analysis and Recognition

    28-30 September, 2011

    Venice, Italy

    http://www.dsi.unive.it/~simbad

    MOTIVATIONS AND OBJECTIVES

    Traditional pattern recognition techniques are intimately linked to

    the notion of "feature spaces." Adopting this view, each object is

    described in terms of a vector of numerical attributes and is

    therefore mapped to a point in a Euclidean (geometric) vector space so

    that the distances between the points reflect the observed

    (dis)similarities between the respective objects. This kind of

    representation is attractive because geometric spaces offer powerful

    analytical as well as computational tools that are simply not

    available in other representations. Indeed, classical pattern

    recognition methods are tightly related to geometrical concepts and

    numerous powerful tools have been developed during the last few

    decades, starting from the maximal likelihood method in the 1920's, to

    perceptrons in the 1960's, to kernel machines in the 1990's.

    However, the geometric approach suffers from a major intrinsic

    limitation, which concerns the representational power of vectorial,

    feature-based descriptions. In fact, there are numerous application

    domains where either it is not possible to find satisfactory features

    or they are inefficient for learning purposes. This modeling

    difficulty typically occurs in cases when experts cannot define

    features in a straightforward way (e.g., protein descriptors vs.

    alignments), when data are high dimensional (e.g., images), when

    features consist of both numerical and categorical variables (e.g.,

    person data, like weight, sex, eye color, etc.), and in the presence

    of missing or inhomogeneous data. But, probably, this situation arises

    most commonly when objects are described in terms of structural

    properties, such as parts and relations between parts, as is the case

    in shape recognition.

    In the last few years, interest around purely similarity-based

    techniques has grown considerably. For example, within the supervised

    learning paradigm (where expert-labeled training data is assumed to be

    available), the well-established kernel-based methods shift the focus from the

    choice of an appropriate set of features to the choice of a suitable

    kernel, which is related to object similarities. However, this shift

    of focus is only partial, as the classical interpretation of the

    notion of a kernel is that it provides an implicit transformation of

    the feature space rather than a purely similarity-based

    representation. Similarly, in the unsupervised domain, there has been

    an increasing interest around pairwise or even multiway algorithms,

    such as spectral and graph-theoretic clustering methods, which avoid

    the use of features altogether.

    By departing from vector-space representations one is confronted with

    the challenging problem of dealing with (dis)similarities that do not

    necessarily possess the Euclidean behavior or not even obey the

    requirements of a metric. The lack of the Euclidean and/or metric

    properties undermines the very foundations of traditional pattern

    recognition theories and algorithms, and poses totally new

    theoretical/computational questions and challenges.

    The workshop will mark the end of the EU FP7 Projects SIMBAD

    (http://simbad-fp7.eu), which was devoted precisely to these themes,

    and is a follow-up of the ICML 2010 Workshop on "Learning in

    non-(geo)metric spaces" (http://www.dsi.unive.it/~icml2010lngs). Its

    aim is to consolidate research efforts in this area, and to provide an

    informal discussion forum for researchers and practitioners interested

    in this important yet diverse subject. The discussion will revolve

    around two main themes, which basically correspond to the two

    fundamental questions that arise when abandoning the realm of

    vectorial, feature-based representations, namely:

    - How can one obtain suitable similarity information from data

    representations that are more powerful than, or simply different from,

    the vectorial?

    - How can one use similarity information in order to perform learning

    and classification tasks?

    We aim at covering a wide range of problems and perspectives, from

    supervised to unsupervised learning, from generative to discriminative

    models, and from theoretical issues to real-world practical

    applications.

    Accordingly, topics of interest include (but are not limited to):

    - Embedding and embeddability

    - Graph spectra and spectral geometry

    - Indefinite and structural kernels

    - Game-theoretic models of pattern recognition

    - Characterization of non-(geo)metric behaviour

    - Foundational issues

    - Measures of (geo)metric violations

    - Learning and combining similarities

    - Multiple-instance learning

    - Applications

    FORMAT

    The workshop will feature contributed talks and posters as well as

    invited presentations. We feel that the more informal the better, and

    we would like to solicit open and lively discussions and exchange of

    ideas from researchers with different backgrounds and perspectives.

    Plenty of time will be allocated to questions, discussions, and

    breaks.

    We plan to get videolectures coverage.

    ORGANIZATION

    Program Chairs

    Marcello Pelillo, University of Venice, Italy

    Edwin Hancock, University of York, UK

    Steering Committee

    Joachim Buhmann, ETH Zurich, Switzerland

    Robert Duin, Delft University of Technology, The Netherlands

    Mario Figueiredo, Technical University of Lisbon, Portugal

    Edwin Hancock, University of York, UK

    Vittorio Murino, University of Verona, Italy

    Marcello Pelillo (chair), University of Venice, Italy

    Program Committee

    Maria-Florina Balcan, Georgia Institute of Technology, USA

    Joachim Buhmann, ETH Zurich, Switzerland

    Horst Bunke, University of Bern, Switzerland

    Tiberio Caetano, NICTA, Australia

    Umberto Castellani, University of Verona, Italy

    Luca Cazzanti, University of Washington, Seattle, USA

    Nicolo' Cesa-Bianchi, University of Milan, Italy

    Robert Duin, Delft University of Technology, The Netherlands

    Francisco Escolano, University of Alicante, Spain

    Mario Figueiredo, Technical University of Lisbon, Portugal

    Ana Fred, Technical University of Lisbon, Portugal

    Bernard Haasdonk, University of Stuttgart, Germany

    Edwin Hancock, University of York, UK

    Anil Jain, Michigan State University, USA

    Robert Krauthgamer, Weizmann Institute of Science, Israel

    Marco Loog, Delft University of Technology, The Netherlands

    Vittorio Murino, University of Verona, Italy

    Elzbieta Pekalska, University of Manchester, UK

    Marcello Pelillo, University of Venice, Italy

    Massimiliano Pontil, University College London, UK

    Antonio Robles-Kelly, NICTA, Australia

    Volker Roth, University of Basel, Switzerland

    Amnon Shashua, Hebrew University of Jerusalem, Israel

    Andrea Torsello, University of Venice, Italy

    Richard Wilson, University of York, UK

    Organization Committee

    Samuel Rota Bulo' (chair), University of Venice, Italy

    Nicola Rebagliati, University of Venice, Italy

    Luca Rossi, University of Venice, Italy

    Teresa Scantamburlo, University of Venice, Italy

    IMPORTANT DATES

    Paper submission: May 15, 2011

    Notifications: June 19, 2011

    Camera-ready due: July 2011

    Conference: September 28-30, 2011

    PAPER SUBMISSION

    Papers must be submitted electronically at the conference website

    using the EasyChair submission system. Manuscripts should be in pdf

    and formatted according to Springer's Lecture Notes in Computer

    Science (LNCS) style. Information concerning typesetting can be

    obtained directly from Springer at:

    http://www.springer.com/comp/lncs/authors.html.

    Papers must not exceed 16 pages and should report original work.

    All submitted papers will be subject to a rigorous peer-review

    process. Accepted papers will appear in the workshop proceedings,

    which will be published in Springer's Lecture Notes in Computer

    Science (LNCS) series.

    Submission implies the willingness of at least one of the authors to

    register and present the paper, if accepted.


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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