On special issue “Latest Reinforcement Learning and Robotics”

2021 ◽  
Vol 39 (7) ◽  
pp. 570-571
Author(s):  
Yuka Ariki
2020 ◽  
Author(s):  
Than Le

<p>In this chapter, we address the competent Autonomous Vehicles should have the ability to analyze the structure and unstructured environments and then to localize itself relative to surrounding things, where GPS, RFID or other similar means cannot give enough information about the location. Reliable SLAM is the most basic prerequisite for any further artificial intelligent tasks of an autonomous mobile robots. The goal of this paper is to simulate a SLAM process on the advanced software development. The model represents the system itself, whereas the simulation represents the operation of the system over time. And the software architecture will help us to focus our work to realize our wish with least trivial work. It is an open-source meta-operating system, which provides us tremendous tools for robotics related problems.</p> <p>Specifically, we address the advanced vehicles should have the ability to analyze the structured and unstructured environment based on solving the search-based planning and then we move to discuss interested in reinforcement learning-based model to optimal trajectory in order to apply to autonomous systems.</p>


2021 ◽  
pp. 074391562110423
Author(s):  
Brennan Davis ◽  
Dhruv Grewal ◽  
Steve Hamilton

The purpose of this special issue is to encourage the emerging role of analytics in marketing and public policy research. We draw attention to a multitude of comprehensive data sources and analytical techniques that tackle important public policy and marketing issues. We highlight six key domains that provide fruitful avenues for such pursuit: retail analytics, social media analytics, marketing mix analytics, services including healthcare, nonprofits and politics, and artificial intelligence and robotics. We also offer an overview of the various articles and commentaries that are included in this special issue, and we encourage future research building on the underlying analytics approaches, substantive findings, and theoretical discoveries.


2018 ◽  
Vol 10 (4) ◽  
pp. 333-335 ◽  
Author(s):  
I.-C. Wu ◽  
C.-S. Lee ◽  
Y. Tian ◽  
M. Muller

Author(s):  
Kazuteru Miyazaki ◽  
◽  
Keiki Takadama ◽  

Recently, the tailor-made system that grants an individual request has been recognized as the important approach. Such a system requires the ggoal-directed learningh through interaction between user and system, which is mainly addressed in greinforcement learningh domain. This special issue on gNew Trends in Reinforcement Learningh called for papers on the cuttingedge research exploring the goal-directed learning, which represents reinforcement learning. Many contributions were forthcoming, but we finally selected 12 works for publication. Although greinforcement learningh is included in the title of this special issue, the research works do not necessarily have to be on reinforcement learning itself, so long as the theme coincides with that of this special issue. In making our final selections, we gave special consideration to the kinds of research which can actively lead to new trends in reinforcement learning. Of the 12 papers in this special issue, the first four mainly deal with the expansion of the reinforcement learning method in single agent environments. These cover a broad range of research, from works based on dynamic programming to exploitation-oriented methods. The next two works deal with the Learning Classifier System (LCS), which applies the rule discovery mechanism to reinforcement learning. LCS is a technique with a long history, but for this issue, we were able to publish two theoretical works. We are also grateful to Prof. Toshio Fukuda, Nagoya University, and Prof. Kaoru Hirota, Tokyo Institute of Technology, the editors-in-chief, and the NASTEC 2008 conference staff for inviting us to guest-edit this Journal. The next four papers mainly deal with multi agent environments. We were able to draw from a wide range of research: from measuring interaction, through the expansion of techniques incorporating simultaneous learning, to research leading to application in multi agent environments. The last two contributions mainly deal with application. We publish one paper on exemplar generalization and another detailing the successful application to government bond trading. Each of these researches can be considered to be at the cutting-edge of reinforcement learning. We would like to end by saying that we hope this special issue constitutes a large contribution to the development of the field while holding a wide international appeal.


Cognition ◽  
2009 ◽  
Vol 113 (3) ◽  
pp. 259-261 ◽  
Author(s):  
Nathaniel D. Daw ◽  
Michael J. Frank

2007 ◽  
Vol 74 (3) ◽  
pp. 217-218 ◽  
Author(s):  
Greg Hager ◽  
Martial Hebert ◽  
Seth Hutchinson

2013 ◽  
Vol 21 (4) ◽  
pp. 217-221 ◽  
Author(s):  
Alessandro Di Nuovo ◽  
Vivian M De La Cruz ◽  
Davide Marocco

Sign in / Sign up

Export Citation Format

Share Document