Zi Peng, Jinqiu Yang, Tse Hsun Peter Chen, and Lei Ma. A first look at the integration of machine learning models in complex autonomous driving systems: A case study on Apollo. In the 28th ACM Joint Meeting European Software Engineering Conference and Symposium on the Foundations of Software Engineering (ESEC/FSE 2020), pp. 1240–1250, 2020.
D. Sculley, Gary Holt, Daniel Golovin, Eugene Davydov, Todd Phillips, Dietmar Ebner, Vinay Chaudhary, Michael Young, Jean François Crespo, and Dan Dennison. Hidden technical debt in machine learning systems. In Advances in Neural Information Processing Systems, pp. 2503–2511, 2015.
Krzysztof Czarnecki and Rick Salay. Towards a Framework to Manage Perceptual Uncertainty for Safe Automated Driving. In Computer Safety, Reliability, and Security - SAFECOMP 2018 Workshops, WAISE, pp. 439–445, 2018.
Zhiyuan Wan, Xin Xia, David Lo, and Gail C Murphy. How does Machine Learning Change Software Development Practices? IEEE Transactions on Software Engineering, pp. 1–14, 2019.
Andreas Vogelsang and Markus Borg. Requirements Engineering for Machine Learning: Perspectives from Data Scientists. In IEEE 27th International Requirements Engineering Conference Workshop, REW 2019, pp. 245–251. IEEE, 2019.
Mona Rahimi, Jin L.C. Guo, Sahar Kokaly, and Marsha Chechik. Toward Requirements Specification for Machine-Learned Components. In IEEE 27th International Requirements Engineering Conference Workshop, REW 2019, pp. 241–244, 2019.
Sangeeta Dey and Seok-Won Lee. Multilayered Review of Safety Approaches for Machine Learning-based Systems in the Days of AI. Journal of Systems and Software, Vol. 176, , 2021.
妻木俊彦,白銀純子.要求工学概論.近代科学社,2009.
Lucas Bernardi, Themis Mavridis, and Pablo Estevez. 150 successful machine learning models: 6 lessons learned at Booking.com. In Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 1743–1751, 2019.
Jie Lu, Anjin Liu, Fan Dong, Feng Gu, João Gama, and Guangquan Zhang. Learning under concept drift: A review. IEEE Transactions on Knowledge and Data Engineering, Vol. 31, No. 12, pp. 2346–2363, 2019.
Thomas H. Davenport and Rajeev Ronanki. Artificial intelligence for the real world. Harvard Business Review, pp. 108–116, 2018.
Michael Chui, James Manyika, Mehdi Miremadi, Nicolaus Henke, Rita Chung, Pieter Nel, and Sankalp Malhotra. Notes from the AI frontier insights from hundreds of use cases. https://www.mckinsey.com/featured-insights/artificial-intelligence/notes-from-the-ai-frontier-applications-and-value-of-deep-learning, 2018. McKinsey Global Institute.
藤堂健世.最先端のAIの利用と応用.人工知能,Vol. 33, No. 2, pp. 192–196, 2018.
Andrew Josey, Marc Lankhorst, Iver Band, Henk Jonkers, Dick Quartel, and Steve Else. ArchiMate 3.1 Specification - A Pocket Guide. The Open Group, Van Haren Publishing, 2019.
石川冬樹 (編著),丸山宏 (編著) ほか.機械学習工学,講談社,2022.
Knut Hinkelmann, Aurona Gerber, Dimitris Karagiannis, Barbara Thoenssen, Alta Van Der Merwe, and Robert Woitsch. A new paradigm for the continuous alignment of business and IT: Combining enterprise architecture modelling and enterprise ontology. Computers in Industry, Vol. 79, pp. 77–86, 2016.
Hironori Takeuchi and Shuichiro Yamamoto. Business AI Alignment Modeling Based on Enterprise Architecture, In Proceedings of the 11th International Conference of Intelligent Decision Technologies, pp. 155-165, 2019.
山本修一郎.ArchiMate によるビジネスモデル表現能力の検討.信学技報 KBSE2019-4, Vol. 119, No. 56, pp. 25–30, 2019.
Alexander Osterwalder and Yves Pigneur. Business Model Generation: A Handbook for Visionaries, Game Changers, and Challengers. Wiley, 2010.
Lucas O. Meertens, Maria Eugenia Iacob, Lambert J M Nieuwenhuis, Marten J van Sinderen, Henk Jonkers, and Dick A. C. Quartel. Mapping the business model canvas to ArchiMate. In Proceedings of the 27th Annual ACM Symposium on Applied Computing, pp. 1694–1702, 2012.
Shuichiro Yamamoto, Nada Ibrahem Olayan, and Junkyo Fujieda. e-Healthcare Service Design Using Model Based Jobs Theory. In Proceedings of the 11th International Conference on Intelligent Interactive Multimedia Systems and Services, pp. 198–207, 2018.
Hironori Takeuchi, Azuki Ichitsuka, Taketo Iino, Shoki Ishikawa, Miyuki Maeda, and Yuka Miyazawa. Method for Assessing Social Acceptability of AI Service Systems. In Proceedings of the 15th International Conference on Human Centered Intelligent Systems, pp. 217-228, 2022.
北川源四郎 (編),竹村彰通 (編) ほか.教養としてのデータサイエンス,講談社,2021.
Izumi Nitta, Kyoko Ohashi, Satoko Shiga, and Sachiko Onodera. AI Ethics Impact Assessment based on Requirement Engineering. In Proceedings of the IEEE 30th International Requirements Engineering Conference Workshops, pp. 152-161, 2022.
Jie M Zhang, Mark Harman, Lei Ma, and Yang Liu. Machine Learning Testing : Survey , Landscapes and Horizons. IEEE Transactions on Software Engineering, Vol. 48, No. 1, pp. 1–36, 2022.
Khlood Ahmad, Muneera Bano, Mohamed Abdelrazek, Chetan Arora, and John Grundy. What’s up with Requirements Engineering for Artificial Intelligence Systems? In IEEE 29th International Requirements Engineering Conference (RE 2021), pp. 1–12, 2021.
Satoshi Hara and Kohei Hayashi. Making tree ensembles interpretable: A Bayesian model selection approach. In the Twenty-First International Conference on Artificial Intelligence and Statistics (AISTATS 2018), pp. 77–85, 2018.
Takamasa Okudono, Masaki Waga, Taro Sekiyama, and Ichiro Hasuo. Weighted Automata Extraction from Recurrent Neural Networks via Regression on State Spaces. In 34th AAAI Conference on Artificial Intelligence (AAAI 2020), pp. 5306–5314, 2020.