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Conference programme schedule

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Conference programme schedule

1 Conference venue and some instructions

Within the framework of the ECML PKDD 2015 Conference, the AALTD Work- shop will take place from 15:00 to 18:00 on Friday, September 11, at the Alfˆandega Congress Centre, Rua Nova de Alfˆandega, 4050-430 Porto. The invited talk and the oral communications will take place at the roomPorto, on the second floor of the Congress Centre (see partial site plan below).

The lecture roomPortowill be equipped with a PC and a computer projector, which will be used for presentations. Before the session starts, presenters must provide to the session chair with the files for the presentation in PDF (Acrobat) or PPT (Powerpoint) format on a USB memory stick. Alternatively, the talks can be submitted by e-mail to Jos´e A. Vilar (jose.vilarf@udc.es) prior to the start of the conference. Time planned for each presentation is fifteen minutes with five additional minutes for discussion.

With regard to the poster session, the authors will be responsible for placing the posters in the poster panel, which should be carried out well in advance. The maximum size of the poster is A0.

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2 Schedule

Invited talk Chair: Ahlame Douzal

15:00 - 15:30 Capturing Time-Structures in Earth Observation Data with Gaussian Processes

Gustavo Camps-Valls

Oral communication Chair: Jos´e A. Vilar

15:30 - 15:50 Time Series Classification in Dissimilarity Spaces Brijnesh J. Jain, Stephan Spiegel

Poster session Chairs: Maria-Irina Nicolae, Saeid Soheily 15:50 - 16:15 See table on next page.

16:00 - 16:15 COFFEE BREAK

Oral communications Chair: Pierre-Fran¸cois Marteau 16:15 - 16:35 Fuzzy Clustering of Series Using Quantile Autocovariances

Borja R. Lafuente-Rego, Jos´e A. Vilar 16:35 - 16:55 Temporal Density Extrapolation

Georg Krempl

16:55 - 17:15 Coarse-DTW: Exploiting Sparsity in Gesture Time Series Marc Dupont, Pierre-Fran¸cois Marteau

17:15 - 17:35 Symbolic Representation of Time Series: A Hierarchical Coclustering Formalization

Alexis Bondu, Marc Boull´e, Antoine Cornu´ejols

17:35 - 17:55 Monitoring Short Term Changes of Malaria Incidence in Uganda with Gaussian Processes

Ricardo Andrade Pacheco, Martin Mubangizi, John Quinn, Neil Lawrence

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Communications in poster session

P1 Bag-of-Temporal-SIFT-Words for Time Series Classification

Adeline Bailly, Simon Malinowski, Romain Tavenard, Thomas Guyet, Lætitia Chapel

P2 An Exploratory Analysis of Multiple Multivariate Time Series Lynne Billard, Ahlame Douzal-Chouakria, Seyed Yaser Samadi P3 Temporal and Frequential Metric Learning for Time SerieskNN Clas-

sification

Cao-Tri Do, Ahlame Douzal-Chouakria, Sylvain Marie, Michele Rombaut

P4 Preliminary Experimental Analysis of Reservoir Computing Ap- proach for Balance Assessment

Claudio Gallicchio, Alessio Micheli, Luca Pedrelli, Federico Vozzi, Oberdan Parodi

P5 Estimating Dynamic Graphical Models from Multivariate Time-series Data

Alexander J. Gibberd, James D.B. Nelson P6 Sequential Pattern Mining on Multimedia Data

Corentin Hardy, Laurent Amsaleg, Guillaume Gravier, Simon Mali- nowski, Ren´e Quiniou

P7 Causality on Longitudinal Data: Stable Specification Search in Con- strained Structural Equation Modeling

Ridho Rahmadi, Perry Groot, Marianne Heins, Hans Knoop, Tom Heskes

P8 CourboSpark: Decision Tree for Time-series on Spark

Christophe Salperwyck, Simon Maby, J´erˆome Cubill´e, Matthieu La- gacherie

P9 Anomaly Detection in Temporal Graph Data: An Iterative Tensor Decomposition and Masking Approach

Anna Sapienza, Andr´e Panisson, Joseph Wu, Læaetitia Gauvin, Ciro Cattuto

P10 Progressive and Iterative Approaches for Time Series Averaging Saeid Soheily-Khah, Ahlame Douzal-Chouakria, Eric Gaussier P11 Classification Factored Gated Restricted Boltzmann Machine

Ivan Sorokin

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