NIPS 2017 Workshop on ML4D -- travel grants, paper awards, extended deadline!
Maria De Arteaga Gonzalez
mdeartea at andrew.cmu.edu
Wed Oct 18 10:36:03 EDT 2017
Hi all,
The NIPS 2017 workshop Machine Learning for the Developing World is now announcing best paper awards, travel awards, and even workshop registration awards for those who were not able to register before NIPS sold out! To allow for potential participants to take advantage of this, the deadline has been extended. We would greatly appreciate your help spreading the word, and we are looking forward to your submissions!
William & Maria
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Workshop on Machine Learning for the Developing World, NIPS 2017
Date: December 8th, 2017
Location: Long Beach, California, USA
https://sites.google.com/site/ml4development/
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Now available:
* Best paper awards!
* Travel awards! (apply here<https://docs.google.com/forms/d/e/1FAIpQLSfsD1GWzVt399LvZTig4xiT0nDie4qDdszFT3Q5av4KgcA8Ug/viewform>)
* Workshop registration awards! (apply here<https://docs.google.com/forms/d/e/1FAIpQLSeIg8JJb8NVK5gl6Z1gZ5-QujUQFr1qcJeZ1N5V0vwYC5m8og/viewform>)
* Deadline: October 30
Call for papers:
This one-day workshop is focussed on machine learning for the developing world (ML4D). We will discuss impactful applications of machine learning to address core global development concerns, as well as limitations to ML in developing countries and novel algorithms inspired by development challenges, such as limited computational capacity.
We invite researchers to submit their recent work on this topic, including:
* Applications of ML to development issues including health, education, institutional integrity, violence mitigation, economics, societal analysis, and environment.
* Novel ML techniques inspired by limitations in developing countries.
* Limitations and risks of data science and ML for development.
* Practical systems using ML in developing regions.
Please submit 2-4 page extended abstracts to ml4d.nips at gmail.com, following the NIPS style<https://nips.cc/Conferences/2017/PaperInformation/StyleFiles> guidelines. Accepted papers will be presented as posters or contributed talks, and may optionally be published in an arXiv proceedings.
Key dates:
Submission deadline: October 30, 2017
Travel/registration award deadline: October 30, 2017
Acceptance notification: November 6, 2017
Workshop: December 8, 2017
Speakers:
-- Emma Brunskill (Stanford)
-- Stefano Ermon (Stanford)
-- Daniel Neill (CMU)
-- Jake Porway (DataKind)
-- Jen Ziemke (International Network of Crisis Mappers)
-- Ernest Mwebaze (Makerere University | UN Global Pulse)
Workshop overview:
Six billion people live in developing world countries. The unique development challenges faced by these regions have long been studied by researchers ranging from sociology to statistics and ecology to economics. With the emergence of mature machine learning methods in the past decades, researchers from many fields - including core machine learning - are increasingly turning to machine learning to study and address challenges in the developing world. This workshop is about delving into the intersection of machine learning and development research.
Machine learning present tremendous potential to development research and practice. Supervised methods can provide expert telemedicine decision support in regions with few resources; deep learning techniques can analyze satellite imagery to create novel economic indicators; NLP algorithms can preserve and translate obscure languages, some of which are only spoken. Yet, there are notable challenges with machine learning in the developing world. Data cleanliness, computational capacity, power availability, and internet accessibility are more limited than in developed countries. Additionally, the specific applications differ from what many machine learning researchers normally encounter. The confluence of machine learning's immense potential with the practical challenges posed by developing world settings has inspired a growing body of research at the intersection of machine learning and the developing world.
This one-day workshop is focussed on machine learning for the developing world, with an emphasis on developing novel methods and technical applications that address core concerns of developing regions. We will consider a wide range of development areas including health, education, institutional integrity, violence mitigation, economics, societal analysis, and environment. >From the machine learning perspective we are open to all methodologies with an emphasis on novel techniques inspired by particular use cases in the developing world.
Invited speakers will address particular areas of interest, while poster sessions and a guided panel discussion will encourage interaction between attendees. We wish to review the current approaches to machine learning in the developing world, and inspire new approaches and paradigms that can lay the groundwork for substantial innovation.
María De Arteaga
PhD Student in Machine Learning and Public Policy
Carnegie Mellon University
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