Week Ending 5.10.2020

 

RESEARCH WATCH: 5.10.2020

 
ai-research.png

This week was active for "Computer Science - Artificial Intelligence", with 101 new papers.

Over the past week, 200 new papers were published in "Computer Science - Computer Vision and Pattern Recognition".

This week was active for "Computer Science - Computers and Society", with 36 new papers.

This week was very active for "Computer Science - Human-Computer Interaction", with 43 new papers.

  • The paper shared the most on social media this week is by a team at Pennsylvania State University: "CODA-19: Reliably Annotating Research Aspects on 10,000+ CORD-19 Abstracts Using Non-Expert Crowd" by Ting-Hao 'Kenneth' Huang et al (May 2020) with 57 shares. The authors introduce CODA-19, a human - annotated dataset that denotes the Background, Purpose, Method, Finding/Contribution, and Other for 10,966 English abstracts in the COVID-19 Open Research Dataset. @WilliamWangNLP (William Wang) tweeted "This is very cool: how to leverage the crowd to label scientific literature that may require domain knowledge".

This week was very active for "Computer Science - Learning", with 351 new papers.

Over the past week, 16 new papers were published in "Computer Science - Multiagent Systems".

  • The paper discussed most in the news over the past week was by a team at The University of Sydney: "Modelling transmission and control of the COVID-19 pandemic in Australia" by Sheryl L. Chang et al (Mar 2020), which was referenced 48 times, including in the article Social Distancing Has Become the Norm. What Have We Learned? in Wired News. The paper author, Mikhail Prokopenko (The University of Sydney), was quoted saying "If we want to control the spread of COVID-19 ā€“ rather than letting the disease control us ā€“ at least eighty per cent of the Australian population must comply with strict social distancing measures for at least four months". The paper also got the most social media traction with 674 shares. The researchers develop an agent - based model for a fine - grained computational simulation of the ongoing COVID-19 pandemic in Australia. A Twitter user, @arthaey, commented "This paper models 80-90% social distancing compliance is needed, & only works while we KEEP doing it, until a vaccine: (blue line is 70% compliance, red 80%, yellow 90%; spikes later are when social distancing is lifted)".

  • The paper shared the most on social media this week is "Using Machine Learning to Emulate Agent-Based Simulations" by Claudio Angione et al (May 2020) with 63 shares. The authors evaluate the performance of multiple machine - learning methods in the emulation of agent - based models (ABMs).

Over the past week, 29 new papers were published in "Computer Science - Neural and Evolutionary Computing".

This week was active for "Computer Science - Robotics", with 54 new papers.


EYE ON A.I. GETS READERS UP TO DATE ON THE LATEST FUNDING NEWS AND RELATED ISSUES. SUBSCRIBE FOR THE WEEKLY NEWSLETTER.