The 12th Asian Conference on Machine Learning

Event Dates

Nov 18, 2020 - Nov 22, 2020

Location

Bangkok, Thailand

Submission Deadline

Jun 15, 2020

ACML 2020 Call for Paper (Bangkok, Thailand):

Deadline: June 15, 2020,

Conference date: November 18 – 22, 2020

If you are interested (FYI)

Call for Paper

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The 12th Asian Conference on Machine Learning

ACML 2020

November 18 – 22, 2020

Bangkok, Thailand

http://www.acml-conf.org/2020/calls

http://acml-conf.org/2020/files/ACML2020-fullcall-v1.pdf

Important Dates:

Submission: June 15, 2020

Author Rebuttal: July 20-August 3, 2020:

Notification: August 12, 2020

Camera-Ready: August 31, 2020

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AI Week 2020

November 18 – 22, 2020

Bangkok, Thailand

https://aiweek.aiat.or.th/

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The 12th Asian Conference on Machine Learning, Bangkok, Thailand (ACML 2020) aims to provide a leading international forum for researchers in machine learning and related fields to share their new ideas, progress, and achievements. Submissions from regions other than the Asia-Pacific are also highly encouraged. It is planned to take place during November 18-20, 2020 in Bangkok, Thailand, and is co-located with ICONIP2020. The conference calls for high-quality, original research papers in the theory and practice of machine learning. The conference also solicits proposals focusing on frontier research, new ideas and paradigms in machine learning.

ACML has taken place annually since 2009 in locations throughout the Asia-Pacific region. The series of the conferences were held in Nagoya, Japan (2019), Beijing, China (2018), Seoul, Korea (2017), Hamilton, New Zealand (2016), Hong Kong, China (2015), Nha Trang, Vietnam (2014), Canberra, Australia (2013), Singapore (2012), Taoyuan, Taiwan (2011), Tokyo, Japan (2010), and Nanjing, China (2009). As usual, the committee plans to execute two publication tracks this year: Authors may submit either to the conference track, for which the proceedings will be published as a volume of Proceedings of Machine Learning Research (PMLR) series or to the journal track for which accepted papers will appear in a special issue of the Springer journal Machine Learning.

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*******Topic*********

General machine learning methodologies

Active learning ⬩ Bayesian machine learning ⬩ Dimensionality reduction ⬩ Feature selection ⬩ Graphical models ⬩ Latent variable models ⬩ Learning for big data ⬩ Learning in graphs ⬩ Multi-objective learning ⬩ Multiple instances learning ⬩ Multi-task learning ⬩ Online learning ⬩ Optimization ⬩ Reinforcement Learning ⬩ Semi-supervised learning ⬩ Sparse learning ⬩ Structured output learning ⬩ Supervised learning ⬩ Transfer learning ⬩ Unsupervised learning ⬩ Other machine learning methodologies

Learning in knowledge-intensive systems

Knowledge refinement and theory revision ⬩ Multi-strategy learning ⬩ Other learning systems

Applications

Bioinformatics ⬩ Biomedical informatics ⬩ Collaborative filtering ⬩ Computer vision ⬩Healthcare ⬩ Human activity recognition ⬩ Information retrieval ⬩ Natural language processing ⬩ Social networks ⬩ Web search ⬩ Other applications

Deep learning

Deep learning theory ⬩ Generative model ⬩ Reinforcement learning ⬩ Supervised learning ⬩ Other topics in deep learning

Theory

Computational learning theory ⬩ Optimization ⬩ Reproducible research ⬩ Statistical learning theory ⬩ Other theories

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AI Association of Thailand

SIIT, Thammasat University

General Co-chairs

Thanaruk Theeramunkong, Sirindhorn International Institute of Technology

Wray Buntine, Monash University

Program Co-chairs

Sinno Jialin Pan, Nanyang Technological University

Masashi Sugiyama, RIKEN/The University of Tokyo

Journal Track Co-chairs

Kee-Eung Kim, KAIST

Vineeth N Balasubramanian, IIT Hyderabad

Local Arrangement Co-chairs

Boonserm Kijsirikul, Chulalongkorn University

Thepchai Supnithi, NECTEC

Sponsorship Co-chairs

Sarana Nutanong, VISTEC

Ekapol Chuangsuwanich, Chulalongkorn University

Tutorial Co-chairs

Sanparith Marukatat, NECTEC

Ivor Tsang, University of Technology, Sydney

Workshop Co-chairs

Prachya Boonkwan, NECTEC

Taiji Suzuki, University of Tokyo