This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Mahesh, B. (2020). Machine learning algorithms-a review. International Journal of Science and Research (IJSR).[Internet], 9(1), 381-386.MaheshB. (2020). Machine learning algorithms-a review. International Journal of Science and Research (IJSR).[Internet], 9(1), 381-386.Search in Google Scholar
Vartak, M., Subramanyam, H., Lee, W. E., Viswanathan, S., Husnoo, S., Madden, S., & Zaharia, M. (2016, June). ModelDB: a system for machine learning model management. In Proceedings of the Workshop on Human-In-the-Loop Data Analytics (pp. 1-3).VartakM.SubramanyamH.LeeW. E.ViswanathanS.HusnooS.MaddenS.ZahariaM. (2016, June). ModelDB: a system for machine learning model management. In Proceedings of the Workshop on Human-In-the-Loop Data Analytics (pp. 1-3).Search in Google Scholar
Sullivan, E. (2022). Understanding from machine learning models. The British Journal for the Philosophy of Science.SullivanE. (2022). Understanding from machine learning models. The British Journal for the Philosophy of Science.Search in Google Scholar
Song, C., Ristenpart, T., & Shmatikov, V. (2017, October). Machine learning models that remember too much. In Proceedings of the 2017 ACM SIGSAC Conference on computer and communications security (pp. 587-601).SongC.RistenpartT.ShmatikovV. (2017, October). Machine learning models that remember too much. In Proceedings of the 2017 ACM SIGSAC Conference on computer and communications security (pp. 587-601).Search in Google Scholar
Bently, L., Sherman, B., Gangjee, D., & Johnson, P. (2022). Intellectual property law. Oxford university press.BentlyL.ShermanB.GangjeeD.JohnsonP. (2022). Intellectual property law. Oxford university press.Search in Google Scholar
Hall, B., Helmers, C., Rogers, M., & Sena, V. (2014). The choice between formal and informal intellectual property: a review. Journal of Economic Literature, 52(2), 375-423.HallB.HelmersC.RogersM.SenaV. (2014). The choice between formal and informal intellectual property: a review. Journal of Economic Literature, 52(2), 375-423.Search in Google Scholar
Waelde, C., Laurie, G., Brown, A., Kheria, S., & Cornwell, J. (2013). Contemporary intellectual property: law and policy. Oxford University Press, USA.WaeldeC.LaurieG.BrownA.KheriaS.CornwellJ. (2013). Contemporary intellectual property: law and policy. Oxford University Press, USA.Search in Google Scholar
Fang, L. H., Lerner, J., & Wu, C. (2017). Intellectual property rights protection, ownership, and innovation: Evidence from China. The Review of Financial Studies, 30(7), 2446-2477.FangL. H.LernerJ.WuC. (2017). Intellectual property rights protection, ownership, and innovation: Evidence from China. The Review of Financial Studies, 30(7), 2446-2477.Search in Google Scholar
Pattnayak, P., Das, T., Mohanty, A., & Patnaik, S. (2024). Artificial Intelligence in Intellectual Property Protection: Application of Deep Learning Model. EAI Endorsed Transactions on Internet of Things, 10.PattnayakP.DasT.MohantyA.PatnaikS. (2024). Artificial Intelligence in Intellectual Property Protection: Application of Deep Learning Model. EAI Endorsed Transactions on Internet of Things, 10.Search in Google Scholar
Peng, S., Chen, Y., Xu, J., Chen, Z., Wang, C., & Jia, X. (2023). Intellectual property protection of DNN models. World Wide Web, 26(4), 1877-1911.PengS.ChenY.XuJ.ChenZ.WangC.JiaX. (2023). Intellectual property protection of DNN models. World Wide Web, 26(4), 1877-1911.Search in Google Scholar
Cao, X., Jia, J., & Gong, N. Z. (2022). Protecting Intellectual Property of Machine Learning Models via Fingerprinting the Classification Boundary. In Digital Watermarking for Machine Learning Model: Techniques, Protocols and Applications (pp. 73-92). Singapore: Springer Nature Singapore.CaoX.JiaJ.GongN. Z. (2022). Protecting Intellectual Property of Machine Learning Models via Fingerprinting the Classification Boundary. In Digital Watermarking for Machine Learning Model: Techniques, Protocols and Applications (pp. 73-92). Singapore: Springer Nature Singapore.Search in Google Scholar
Singh, S., & Singh, A. (2023, December). Intellectual Property Rights and Artificial Intelligence: Contemporary Convergence and Probable Challenges. In 2023 10th IEEE Uttar Pradesh Section International Conference on Electrical, Electronics and Computer Engineering (UPCON) (Vol. 10, pp. 1279-1286). IEEE.SinghS.SinghA. (2023, December). Intellectual Property Rights and Artificial Intelligence: Contemporary Convergence and Probable Challenges. In 2023 10th IEEE Uttar Pradesh Section International Conference on Electrical, Electronics and Computer Engineering (UPCON) (Vol. 10, pp. 1279-1286). IEEE.Search in Google Scholar
Lehr, D., & Ohm, P. (2017). Playing with the data: what legal scholars should learn about machine learning. UCDL Rev., 51, 653.LehrD.OhmP. (2017). Playing with the data: what legal scholars should learn about machine learning. UCDL Rev., 51, 653.Search in Google Scholar
Drexl, J., Hilty, R., Beneke, F., Desaunettes-Barbero, L., Finck, M., Globocnik, J., & Thonemann, J. (2019). Technical aspects of artificial intelligence: an understanding from an intellectual property law perspective. Max Planck Institute for Innovation & Competition Research Paper, (19-13).DrexlJ.HiltyR.BenekeF.Desaunettes-BarberoL.FinckM.GlobocnikJ.ThonemannJ. (2019). Technical aspects of artificial intelligence: an understanding from an intellectual property law perspective. Max Planck Institute for Innovation & Competition Research Paper, (19-13).Search in Google Scholar
Pappachan, P., & Rahaman, M. (2024). Conceptualising the Role of Intellectual Property and Ethical Behaviour in Artificial Intelligence. In Handbook of Research on AI and ML for Intelligent Machines and Systems (pp. 1-26). IGI Global.PappachanP.RahamanM. (2024). Conceptualising the Role of Intellectual Property and Ethical Behaviour in Artificial Intelligence. In Handbook of Research on AI and ML for Intelligent Machines and Systems (pp. 1-26). IGI Global.Search in Google Scholar
Chakraborty, A., Mondai, A., & Srivastava, A. (2020, July). Hardware-assisted intellectual property protection of deep learning models. In 2020 57th ACM/IEEE Design Automation Conference (DAC) (pp. 1-6). IEEE.ChakrabortyA.MondaiA.SrivastavaA. (2020, July). Hardware-assisted intellectual property protection of deep learning models. In 2020 57th ACM/IEEE Design Automation Conference (DAC) (pp. 1-6). IEEE.Search in Google Scholar
Kazimi, J., & Thalwal, H. (2024, July). Legal Implications of Artificial Intelligence and Machine Learning Algorithms in Intellectual Property Protection: A Comparative Analysis. In 2024 7th International Conference on Green Technology and Sustainable Development (GTSD) (pp. 32-38). IEEE.KazimiJ.ThalwalH. (2024, July). Legal Implications of Artificial Intelligence and Machine Learning Algorithms in Intellectual Property Protection: A Comparative Analysis. In 2024 7th International Conference on Green Technology and Sustainable Development (GTSD) (pp. 32-38). IEEE.Search in Google Scholar
Jiang, B. (2023). Intellectual property protection of green manufacturing forming technology based on machine learning and internet of things. The International Journal of Advanced Manufacturing Technology, 1-11.JiangB. (2023). Intellectual property protection of green manufacturing forming technology based on machine learning and internet of things. The International Journal of Advanced Manufacturing Technology, 1-11.Search in Google Scholar
Kapusta, K., Thouvenot, V., & Bettan, O. (2020). Watermarking at the service of intellectual property rights of ML models. In Actes de la conférence CAID 2020 (p. 75).KapustaK.ThouvenotV.BettanO. (2020). Watermarking at the service of intellectual property rights of ML models. In Actes de la conférence CAID 2020 (p. 75).Search in Google Scholar
Amanda Heidt. (2024). Intellectual property and data privacy: the hidden risks of AI.. Nature.AmandaHeidt (2024). Intellectual property and data privacy: the hidden risks of AI. Nature.Search in Google Scholar
Tauhid Ashraful,Xu Lei,Rahman Mostafizur & Tomai Emmett. (2023). A survey on security analysis of machine learning-oriented hardware and software intellectual property. High-Confidence Computing(2).TauhidAshrafulXuLeiRahmanMostafizurTomaiEmmett (2023). A survey on security analysis of machine learning-oriented hardware and software intellectual property. High-Confidence Computing(2).Search in Google Scholar
Deng Xiaoyi & Li Chaoming. (2014). An AHP-GA-BP Algorithm for Evaluation of Enterprise Collaborative Innovation Management of Intellectual Property Rights. International Journal of u- and e-Service, Science and Technology(1),91-102.DengXiaoyiLiChaoming (2014). An AHP-GA-BP Algorithm for Evaluation of Enterprise Collaborative Innovation Management of Intellectual Property Rights. International Journal of u- and e-Service, Science and Technology(1),91-102.Search in Google Scholar
Chemical Week Group. (2005). Court Rules in Favor of BP in China Intellectual Property Case. Chemical Week(29),11.Chemical Week Group (2005). Court Rules in Favor of BP in China Intellectual Property Case. Chemical Week(29),11.Search in Google Scholar