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CFP (June 30): IEEE TNNLS Special Issue on "Recent Advances in Theory, Methodology and Applications of Imbalanced Learning"
Extended Submission Deadline: June 30, 2018.

Learning from imbalanced/unbalanced data (aka imbalanced learning or class-imbalance learning) is a challenging task faced by practitioners from a wide variety of communities. In the last two decades, researchers from various disciplines including data mining, machine learning, pattern recognition and statistics have intensively investigated this theme. However, as pointed out in the 2013 book “Imbalanced Learning: Foundations, Algorithms, and Applications” collectively authored by experts in this field, many if not the most approaches to imbalanced learning are very heuristic and ad hoc, and thus many open questions remain there: “What is the assurance that algorithms specifically designed for imbalanced learning could really help, and how and why?”; “Is there a way we could develop a theoretical guidance on which based learning algorithm is most appropriate for a particular type of imbalanced data?”; “What is the relationship between data-imbalanced ratio and learning model complexity?”, for example. Moreover, in recent years the datasets that practitioners are concerned have grown increasingly rapidly and complexly; many new applications, and thus new types of data and new learning paradigms, have emerged. Therefore, this special issue aims to call for the state-of-the-art research work in the theory, methodology and applications of imbalanced learning, and aims to demonstrate the recent efforts made by the relevant researchers from a wide range of disciplines. 
   We welcome all the original work on topics regarding new theory, methodology and applications of imbalanced learning, including but not limited to:
* Deep learning for large-scale imbalanced data
* Representation learning for imbalanced data
* Reinforcement learning for imbalanced data
* Active learning and passive learning for imbalanced data
* Transfer learning and concept drift for imbalanced data
* Imbalanced learning in non-stationary environments
* Online learning and incremental learning for imbalanced data
* Statistical modelling for (non-Gaussian) imbalanced data
* Statistical machine learning for imbalanced data
* Discriminative learning and generative learning for imbalanced data
* Similarity/metric learning for imbalanced data
* Ensemble learning for imbalanced data
* Related learning problems: one-class classification, novelty/outlier/anomaly detection
* Theoretical analysis of models and algorithms for imbalanced learning
* New evaluation metrics for imbalanced learning
* New applications of imbalanced learning: 1) Object detection, classification, recognition; 2) Image retrieval, segmentation, understanding; 3) Speech recognition, synthesis, anti-spoofing; 4) Document retrieval, categorization, topic model; 5) Biomedical signal processing, medical image analysis, bioinformatics; 6) Fault detection/diagnosis, fraud detection, cyber-security; and 7) Other related novel applications

IMPORTANT DATES
30 June 2018 -- Deadline for manuscript submission
31 August 2018 -- Notification of authors
31 October 2018 -- Deadline for submission of revised manuscripts
31 December 2018 -- Final decision of acceptance
February 2019 -- Tentative publication date

SUBMISSION INSTRUCTIONS
1. Read the information for Authors at http://cis.ieee.org/tnnls.
2. Submit your manuscript at the TNNLS webpage (http://mc.manuscriptcentral.com/tnnls) and follow the submission procedure. Please, clearly indicate on the first page of the manuscript and in the cover letter that the manuscript is submitted to this special issue. Send an email to the leading editor Dr. Jing-Hao Xue (jinghao.xue@ucl.ac.uk) with subject “TNNLS special issue submission” to notify about your submission.
3. Early submissions are welcome. We will start the review process as soon as we receive your contributions.

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Forwarded from Apply Time
#Course #TOEFL #IELTS #TESOL #Essay #Conversation #English #Writing #Listening #Grammar #ApplyTime


⚠️ از بین کورس‌های زبان انگلیسی معرفی شده در پُست فوق، کورس‌های #تافل و #آیلتس توسط تیم اپلای‌تایم پیشتر دانلود شده و از طریق همین کانال در اختیار شما قرار گرفت.

🖇 شما می‌توانید از طریق لینک‌های زیر، اطلاعات لازم در مورد آن دو کورس‌ را بدست آورده و آن‌ها را دانلود کنید:

#TOEFL:

Info: https://t.me/ApplyTime/959

File: https://t.me/ApplyTime/960


#IELTS:

Info: https://t.me/ApplyTime/1026

Files:
https://t.me/ApplyTime/1027

https://t.me/ApplyTime/1028

https://t.me/ApplyTime/1029

https://t.me/ApplyTime/1030

https://t.me/ApplyTime/1031

https://t.me/ApplyTime/1032


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It's learning time. Let's go!
http://eaia2018.dcc.fc.up.pt/

Note: EAIA Scholarships for participation available:
http://eaia2018.dcc.fc.up.pt/pdfs/SoBigData.pdf

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Call for papers

2nd International Workshop on the ApplicatioN of Semantic WEb technologies in Robotics

http://answer.kmi.open.ac.uk/

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2nd International Workshop on Learning with Imbalanced Domains: Theory and Applications
10-14 September, Dublin, Ireland

Website: http://lidta.dcc.fc.up.pt/

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THE 12TH INTERNATIONAL SYMPOSIUM ON LINEAR DRIVES FOR INDUSTRY APPLICATIONS LDIA2019

Neuchâtel, Switzerland, July 1-3, 2019

https://ldia2019.epfl.ch/

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🔰 معرفی موقعیت‌های تحصیلی بیشتر در:👇

🏁 https://t.me/ApplyTime_Positions
Dear All,

We are happy to announce that the program for the 14th International Conference on Latent Variable Analysis and Signal Separation (LVA/ICA
2018) is now available at:
http://cvssp.org/events/lva-ica-2018/program/

LVA/ICA 2018 will be the held at the University of Surrey, Guildford, UK from July 2-6, 2018.

Early registration is available until 31 May 2018.

We look forward to welcoming you to Surrey!

Best wishes,

Mark Plumbley
Co-Chair, LVA/ICA 2018

--
Prof Mark D Plumbley
Professor of Signal Processing Centre for Vision, Speech and Signal Processing (CVSSP) 
University of Surrey, Guildford, Surrey, GU2 7XH, UK
Email: m.plumbley@surrey.ac.uk

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PhD Position in Machine Learning: Early detection of epidemiological hazards (TU Darmstadt)

https://www.ke.tu-darmstadt.de/staff/jobs/ESEG

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Workshop on Computational Biology (https://sites.google.com/view/wcb2018) in Stockholmsmässan, Stockholm SWEDEN (http://icml.cc/ and https://www.ijcai-18.org/) (July 10-15, 2018).

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Postdoc: multiview learning and neuroimaging, Marseille

Understanding individual differences in neuroimaging using multi-view machine learning. Methods and applications.


We are seeking candidates for a two years postdoctoral, for developping new machine learning methods to deal with heterogeneous data such as anatomical, functional and diffusion MRI. This post-doc will be funded by the newly established Institute for Language, Communication and the Brain in Marseille, France (http://www.ilcb.fr), and will be awarded through a competitive selection process. The laureate will work in both the Institut de Neurosciences de la Timone (http://www.int.univ-amu.fr/) and the Laboratoire d'Informatique et Systèmes (http://www.lis-lab.fr/).
In brain imaging, traditional group analyses rely on averaging data collected in different individuals. This averaging offers a summary representation of the studied group, thus providing a way to perform inference at the population level. However, it discards the specificities of each individual, which have recently proved to carry critical information to develop diagnosis and prognosis tools for neurological and psychiatric diseases or to understand high level cognitive processes.

Estimating robust population-wise invariants while preserving individual specificities is a challenge that can be addressed by integrating the information offered by different neuroimaging modalities, such as anatomical, functional and diffusion MRI, which respectively allow assessing brain shape, activity and connectivity. This can therefore be framed as a multi-view machine learning question. The tasks of the post-doctoral fellow will consist in 1. finding adequate representations of data (e.g. graph, stack of images, …) that preserve structural information, 2. designing and implementing machine learning algorithms that exploit both the representations and the multiple views using kernel methods and/or neural networks, and 3. evaluating them on a variety of MRI datasets dedicated to studying language and communication.

The candidate should have completed a PhD in computer science, applied mathematics or electrical engineering, with a focus on machine learning. He/she should also have a strong motivation to work in neuroscience, as the working environment will be truly inter-disciplinary. Interested candidates should imperatively contact sylvain.takerkart@univ-amu.fr, francois-xavier.dupe@lis-lab.fr and hachem.kadri@lis-lab.fr before May 25 2018 for a first contact.

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phd_OTDL-@ApplyTime.pdf
177.1 KB
We propose a PhD funding for a student willing to work on optimal transport and deep learning.
Deadline: 4th June 2018
Nicolas Courty
Associate Professor in IRISA
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Relational Artificial Intelligence Days
August 27th - September 4th 2018
Ferrara, Italy

http://raid2018.unife.it/

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Researchers, Optimization methods for on-demand planning of public buses, Faculty of Applied Economics, University of Antwerp,

https://goo.gl/Tb5932

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