Developing a risk-adaptive technology roadmap using a Bayesian network and topic modeling under deep uncertainty

Yujin Jeong1, Hye-Jin Jang1, Boram Yoon1
1Department of Industrial and Systems Engineering, College of Engineering, Dongguk University, 3-26, Pil-dong 3ga, Chung-gu, Seoul, 100-715, South Korea

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