ACML 2018 Workshop on Multi-output Learning

ACML-MoL 2018


Data Mining & Analysis



Motivation and Objectives
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Multi-output learning aims to predict multiple outputs for an input, where the output values are characterized by diverse data types, such as binary, nominal, ordinal and real-valued variables. Such learning tasks arise in a variety of real-world applications, ranging from document classification, computer emulation, sensor network analysis, concept-based information retrieval, human action/causal induction, to video analysis, image annotation/retrieval, gene function prediction and brain science. Due to its popularity in applications, multi-output learning has also been widely explored in machine learning community, such as multi-label/multi-class classification, multi-target regression, hierarchical classification with class taxonomies, label sequence learning, sequence alignment learning, and supervised grammar learning, and so on.
The theoretical properties of existing approaches for multi-output data are still not well understood. This triggers practitioners to develop novel methodologies and theories to deeply understand multi-output learning tasks. Moreover, the emerging trends of ultrahigh input and output dimensionality, and the complexly structured objects, lead to formidable challenges for multi-output learning. Therefore, it is imperative to propose practical mechanisms and efficient optimization algorithms for large-scale applications. Deep learning has gained much popularity in today’s research, and has been developed in recent years to deal with multi-label and multi-class classification problems. However, it remains non-trivial for practitioners to design novel deep neural networks that are appropriate for more comprehensive multi-output learning domains.
Topics of Interest
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Interested topics include, but are not limited to:
Novel deep learning methods for multi-output learning tasks.
Novel modellings for multi-output learning from new perspectives.
Statistical theory analysis for multiple output learning.
Large-scale optimization algorithms for multiple output learning.
Sparse representation learning for large-scale multiple output learning.
Active learning for multi-output data.
Online learning for multi-output data.
Metric learning for multi-output data.
Multi-output learning with noisy data.
Multi-output learning with imbalanced data.
New applications.
Submission Guidelines
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Workshop submissions and camera ready versions will be handled by EasyChair. Click https://easychair.org/account/signin.cgi?key=68431962.hz3ckGwbTCn9OEgu for submission.
Papers should be formatted according to the ACML formatting instructions for the Conference Track. Submissions need not be anonymous.
AWRL is a non-archival venue and there will be no published proceedings. However, the papers will be posted on the workshop website. Therefore it will be possible to submit to other conferences and journals both in parallel to and after AWRL 2018. Besides, we also welcome submissions to AWRL that are under review at other conferences and workshops. For this reason, please feel free to submit either anonymized or non-anonymized versions of your work. We have enabled anonymous reviewing so EasyChair will not reveal the author’s names unless you chose to do so in your PDF.
At least one author from each accepted paper must register for the workshop. Please see the ACML 2018 Website for information about accommodation and registration.
Tentative Schedule
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8:50 - 9:00 Introduction
9:00 - 10:00 Invited Keynote Talk
===10:00-10:30 Morning tea===
10:30 - 10:55 Paper presentation
10:55 - 11:20 Paper presentation
11:20 - 11:35 Paper presentation
===11:35 - 11:50 Panel discussion===
11:50 - 12:05 Paper presentation
12:05 - 12:20 Paper presentation
12:20 - 12:35 Paper presentation
===12:35 - 12:50 Panel discussion===
Important Dates
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Submission: 20 Aug, 2018.
Notification: 01 Oct, 2018.
Workshop: 14 Nov, 2018.
Organizers
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Weiwei Liu, University of New South Wales, Australia.
Xiaobo Shen, Nanyang Technological University, Singapore.
Yew-Soon Ong, Nanyang Technological University, Singapore.
Ivor W. Tsang, University of Technology Sydney, Australia.
Chen Gong, Nanjing University of Science and Technology, China.