Browse > Article
http://dx.doi.org/10.22156/CS4SMB.2019.9.8.009

A Study on the Autonomous Decision Right of Emotional AI based on Analysis of 4th Wave Technology Availability in the Hyper-Linkage  

Seo, Dae-Sung (Division of Paideia, Sungkyul University)
Publication Information
Journal of Convergence for Information Technology / v.9, no.8, 2019 , pp. 9-19 More about this Journal
Abstract
The effects of artificial intelligence technology is social science research as research on the impact on industry and changes in daily life, etc. This means that developing 'emotion AI' will prepare 'next-generation 3D-vector-sensitive AI'. This suggests the main keywords of the tertiary AI decision-making power. Particularly important results will be achieved because of the importance of current unethical learning and the implementation of decision-making systems that reflect ethical value judgments. This is a data based simulation, and required (1)Available data, (2)the technology for the goal of simulation. This takes into account the general content of the intended simulation based research. Currently, existing researches focus on meaningful research motivation, but this study presents the direction of technology. So, empirical analysis is consistent with the decision-making power of each country vs. new technology firms for AI on ehtic responsibility. As a result, there is a need for a concrete contribution and interpretation that can be achieved for the ethic Responsibility, on the technical side of AI / ML. In AI decision making, analytic power of human empathy should be included tech own trust.
Keywords
Vector emotion; Autonomous decision; Social-reliability; 4th-wave; AI Ethic; Empathy;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 D. S. Seo. (2018). Strategy of Market Spread-Commercialization in EVs Industry: Visegrad and Nordic Countries. The International Journal of Industrial Distribution & Business, 9(3), 57-68.   DOI
2 D. S. Seo. (2017). The investment point on cooperative innovation in EVs for the spoke-smart cities: focused on Nordic countries and Korea. The Journals of Economics, Marketing & Management, 5(3), 1-11.
3 D. S. Seo. (2016). The Role of Innovative Energy Public Firms' Channels according to Shale Gas for E-Convergence Economy. The Journal of Distribution Science, 14(5), 17-26.   DOI
4 C. Peter. (2006). The Role of Emotion in Human-Computer Interaction. The workshop's website is: http://www.emotion-in-hci.net.
5 Deloitte. (2019). Global Automotive Consumer Study. https://www2.deloitte.com/us/en/pages/manufacturing/articles/automotive-trends-millennials-consumer-study.html(2019/3/1).
6 H. K. Sim. (2008). Neural networks and machine learning. The Age of Artificial Intelligence, Pearson Prentice Hall.
7 Atomico (2017). State of European Tech.
8 EU center. (2018). Towards a European Strategy for Human- Centric Machines. November 30, 2018. https://ec.europa.eu/epsc/sites/epsc/files/epsc_strategicnote_ai.pdf.
9 European Parliament. (2017). Commission's report on Saving Lives: Boosting Car Safety in the EU. November 30, 2018 retrieved from (COM(2016) 0787 final).
10 D. S. Seo. (2016). The Commerce Strategy towards Pan-European Innovation and Consumption: Spokes Partnership for FDI of Korea. Journal of Internet Banking and Commerce, 21(S2), 1-7.
11 S. V. Valentin. (2018). Multivariate analytics of chromatographic data: Visual computing based on moving window factor models. Journal of Chromatography B, 1092, 179-190.   DOI
12 J. Velasque. (1997). Modeling emotions and other motivations in synthetic agents. In: Proceedings of AAAI-97, MIT Press, 10-15.
13 D. H. Kim. & D. S. Seo. (2019). Vector based 3D Emotion Expression for Emotion Robot. ACM International Conference Proceeding Series, 113-117. DOI : 10.1145/3314493.3314499   DOI
14 D. S. Seo. (2017). Vehicle occupant safety confirmation system. Seoul : Korean Intellectual Porperty Office (KIPO).
15 D. H. Kim. (2017). Tuning Innovation with Biotechnology. Panstanford Publishing Co. - ISBN 978-981-4745-55-2.
16 D. H. Kim. & Baranyi P. (2011). Novel emotional dynamic express for robot. SAMI2011, Jan, 27-30.
17 McKinsey Global Institute. (2013). Disruptive technologies: Advances that will transform life, business, and the global economy.
18 A. M. Yazdani. (2012). Brain emotional learning based intelligent controller for stepper motor trajectory tracking. Int. J. of Physical sciences, 7(15), 2364-2386.   DOI
19 European Commission. (2018). Responsible Research and Innovation workstream. retrieved from https://ec.europa.eu/programmes/horizon2020/en/h2020-section/responsible-research-innovation.
20 S. Moran, D. Cropley & J. Kaufman. (2014). The Ethics of Creativity. London: Palgrave Macmillan UK.
21 W. J. BELL. (1991). Searching Behavior: The Behavioral Ecology of Finding Resources. Chapman and Hall, London, England.
22 M. M. Cohen. & D. Massaro. (1993). Modelling co-articulation in synthetic visual speech. Springer-Verlag , 139-156.