Chuan-Kang Ting《Technological Classification // AI & Ethics》
Summary | As artificial intelligence rapidly developsenhances human’s quality of life, another cause for concern is the dangerspossible threats to humanity. “Moral judgement” will be a big issue that needs to be addressed as these intelligent machines become moremore prevalent in society. As with any new technologies, the topic of applied ethics often arises. So, the extension of that is AI ethics issues. Since 2018, a website of “AI Ethics has been set up as well as an Artificial Intelligence Ethics Project, co-chaired by Nat’l Tsing Hua Univ. Prof. Chuan-Kang TingNat’l Chung Cheng Univ. Prof. Ser-Min Shei. The website has various scenarios to allow testers to choose what actions to take during various situations, including: self-driving cars, medical care, organ transplants, etc. The main purpose of developing AI is to assist human beings to solve problems more efficiently. Thus, decisions made by AI can hopefully be consistent with human values. Prof. Ting has been selected as Editor in Chief for IEEE Computational Intelligence Magazine for 2020. This project designsdevelops artificial intelligence technology. It has begun to explore the ethical value of human beings, review ethical philosophy theory,create an ethical case library. At present 33,553 data have been collectedcombined with artificial intelligence systems (including evolutionary computing, machine learning, Fuzzy set inference, grouping with data) to establish an ethical system. Through joint research, new directionsopportunities for the research of artificial intelligence ethics modules are opened, making AI judgments more intelligentconsistent with the ethical value of human beings,letting AI help humans move towards a longer-term future together. 【Online Quiz】AI & Ethics:http://www.aiethics.ml/index.php |
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Keyword | AI Center Ethical System AI Ethics Ethics Case Library AIandethics | ||
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