This work is licensed under the Creative Commons Attribution 4.0 International License.
Grimaldi, M., Greco, M., & Cricelli, L. (2021). A framework of intellectual property protection strategies and open innovation. Journal of Business Research, 123, 156-164.GrimaldiM.GrecoM.CricelliL. (2021). A framework of intellectual property protection strategies and open innovation. Journal of Business Research, 123, 156-164.Search in Google Scholar
Dong, X., Zhu, H., & Hu, C. Q. (2015). Protection of intellectual property rights and industrial agglomeration: evidence from the creative industries in China. Chinese economy, 48(1), 22-40.DongX.ZhuH.HuC. Q. (2015). Protection of intellectual property rights and industrial agglomeration: evidence from the creative industries in China. Chinese economy, 48(1), 22-40.Search in Google Scholar
Shi, J. (2024). Policies of Model Cities for Intellectual Property Protection and the Digitization Level of Cultural Industries: An Empirical Analysis Based on the DID Model. Finance & Economics, 1(7).ShiJ. (2024). Policies of Model Cities for Intellectual Property Protection and the Digitization Level of Cultural Industries: An Empirical Analysis Based on the DID Model. Finance & Economics, 1(7).Search in Google Scholar
Lee, P. (2019). Reconceptualizing the role of intellectual property rights in shaping industry structure. Vand. L. Rev., 72, 1197.LeeP. (2019). Reconceptualizing the role of intellectual property rights in shaping industry structure. Vand. L. Rev., 72, 1197.Search in Google Scholar
Judijanto, L., Firmansyah, F., Solapari, N., & Raihana, R. (2024). Challenges and Opportunities in Implementing Intellectual Property Rights Protection System for Creative Industry Development in Indonesia. West Science Law and Human Rights, 2(01), 28-35.JudijantoL.FirmansyahF.SolapariN.RaihanaR. (2024). Challenges and Opportunities in Implementing Intellectual Property Rights Protection System for Creative Industry Development in Indonesia. West Science Law and Human Rights, 2(01), 28-35.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
Lee, J. A., Hilty, R., & Liu, K. C. (Eds.). (2021). Artificial intelligence and intellectual property. Oxford University Press.LeeJ. A.HiltyR.LiuK. C. (Eds.). (2021). Artificial intelligence and intellectual property. Oxford University Press.Search in Google Scholar
Aristodemou, L., & Tietze, F. (2018). The state-of-the-art on Intellectual Property Analytics (IPA): A literature review on artificial intelligence, machine learning and deep learning methods for analysing intellectual property (IP) data. World Patent Information, 55, 37-51.AristodemouL.TietzeF. (2018). The state-of-the-art on Intellectual Property Analytics (IPA): A literature review on artificial intelligence, machine learning and deep learning methods for analysing intellectual property (IP) data. World Patent Information, 55, 37-51.Search in Google Scholar
Pearlman, R. (2017). Recognizing artificial intelligence (AI) as authors and investors under US intellectual property law. Rich. JL & Tech., 24, i.PearlmanR. (2017). Recognizing artificial intelligence (AI) as authors and investors under US intellectual property law. Rich. JL & Tech., 24, i.Search in Google Scholar
Cubert, J. A., & Bone, R. G. (2018). The law of intellectual property created by artificial intelligence. In Research handbook on the law of artificial intelligence (pp. 411-427). Edward Elgar Publishing.CubertJ. A.BoneR. G. (2018). The law of intellectual property created by artificial intelligence. In Research handbook on the law of artificial intelligence (pp. 411-427). Edward Elgar Publishing.Search in Google Scholar
Ramli, T. S., Ramli, A. M., Mayana, R. F., Ramadayanti, E., & Fauzi, R. (2023). Artificial intelligence as object of intellectual property in Indonesian law. The Journal of World Intellectual Property, 26(2), 142-154.RamliT. S.RamliA. M.MayanaR. F.RamadayantiE.FauziR. (2023). Artificial intelligence as object of intellectual property in Indonesian law. The Journal of World Intellectual Property, 26(2), 142-154.Search in Google Scholar
Nekit, K., Tokareva, V., & Zubar, V. (2020). Artificial intelligence as a potential subject of property and intellectual property relations. Ius Humani. Revista de Derecho, 9(1), 231-250.NekitK.TokarevaV.ZubarV. (2020). Artificial intelligence as a potential subject of property and intellectual property relations. Ius Humani. Revista de Derecho, 9(1), 231-250.Search in Google Scholar
De Costa, F. A., & Carrano, A. G. (2017). Intellectual property protection for artificial intelligence. Westlaw journal intellectual property.De CostaF. A.CarranoA. G. (2017). Intellectual property protection for artificial intelligence. Westlaw journal intellectual property.Search in Google Scholar
Gurkaynak, G., Yılmaz, I., Doygun, T., & İnce, E. (2017). Questions of intellectual property in the artificial intelligence realm. The Robotics Law Journal, 3(2), 9-11.GurkaynakG.YılmazI.DoygunT.İnceE. (2017). Questions of intellectual property in the artificial intelligence realm. The Robotics Law Journal, 3(2), 9-11.Search in Google Scholar
Saputra, R., Tiolince, T., Iswantoro, I., & Sigh, S. K. (2023). Artificial intelligence and intellectual property protection in Indonesia and Japan. Journal of Human Rights, Culture and Legal System, 3(2), 210-235.SaputraR.TiolinceT.IswantoroI.SighS. K. (2023). Artificial intelligence and intellectual property protection in Indonesia and Japan. Journal of Human Rights, Culture and Legal System, 3(2), 210-235.Search in Google Scholar
Abbott, R. (2022). Intellectual property and artificial intelligence: an introduction. In Research Handbook on Intellectual Property and Artificial Intelligence (pp. 2-21). Edward Elgar Publishing.AbbottR. (2022). Intellectual property and artificial intelligence: an introduction. In Research Handbook on Intellectual Property and Artificial Intelligence (pp. 2-21). Edward Elgar Publishing.Search in Google Scholar
Cowan, P., & Hinton, J. (2018). Intellectual property and artificial intelligence: what does the future hold?[J]. Intellectual Asset Management Magazine, 88, 24-29.CowanP.HintonJ. (2018). Intellectual property and artificial intelligence: what does the future hold?[J]. Intellectual Asset Management Magazine, 88, 24-29.Search in Google Scholar
Kop, M. (2019). AI & intellectual property: Towards an articulated public domain. Tex. Intell. Prop. LJ, 28, 297.KopM. (2019). AI & intellectual property: Towards an articulated public domain. Tex. Intell. Prop. LJ, 28, 297.Search in Google Scholar
Calvin, N., & Leung, J. (2020). Who owns artificial intelligence? A preliminary analysis of corporate intellectual property strategies and why they matter. Future of Humanity Institute, February.CalvinN.LeungJ. (2020). Who owns artificial intelligence? A preliminary analysis of corporate intellectual property strategies and why they matter. Future of Humanity Institute, February.Search in Google Scholar
Davies, C. R. (2011). An evolutionary step in intellectual property rights–Artificial intelligence and intellectual property. Computer Law & Security Review, 27(6), 601-619.DaviesC. R. (2011). An evolutionary step in intellectual property rights–Artificial intelligence and intellectual property. Computer Law & Security Review, 27(6), 601-619.Search in Google Scholar
Ubaydullayeva, A. (2023). Artificial intelligence and intellectual property: navigating the complexities of cyber law. International Journal of Law and Policy, 1(4).UbaydullayevaA. (2023). Artificial intelligence and intellectual property: navigating the complexities of cyber law. International Journal of Law and Policy, 1(4).Search in Google Scholar
Mathias Valla. (2024). Time-penalised trees (TpT): introducing a new tree-based data mining algorithm for time-varying covariates. Annals of Mathematics and Artificial Intelligence(prepublish),1-53.MathiasValla (2024). Time-penalised trees (TpT): introducing a new tree-based data mining algorithm for time-varying covariates. Annals of Mathematics and Artificial Intelligence(prepublish),1-53.Search in Google Scholar
Hyukjun Gweon & Jiaxuan Lu. (2024). A nearest neighbor-based approach for improving the reliability of multiclass probabilistic classifiers. International Journal of Data Science and Analytics(prepublish),1-9.HyukjunGweonJiaxuanLu (2024). A nearest neighbor-based approach for improving the reliability of multiclass probabilistic classifiers. International Journal of Data Science and Analytics(prepublish),1-9.Search in Google Scholar
Bagherzadeh Sara, Norouzi Mohammad Reza, Bahri Hampa Sepideh, Ghasri Amirhesam, Tolou Kouroshi Pouya, Hosseininasab Saman… & Nasrabadi Ali Motie. (2024). A subject-independent portable emotion recognition system using synchrosqueezing wavelet transform maps of EEG signals and ResNet-18. Biomedical Signal Processing and Control105875-.BagherzadehSaraNorouzi MohammadRezaBahri HampaSepidehGhasriAmirhesamTolou KouroshiPouyaHosseininasabSaman…Nasrabadi AliMotie (2024). A subject-independent portable emotion recognition system using synchrosqueezing wavelet transform maps of EEG signals and ResNet-18. Biomedical Signal Processing and Control105875-.Search in Google Scholar
Rajeshwari M.R. & Kavitha K.S.. (2023). Enhanced tolerance-based intuitionistic fuzzy rough set theory feature selection and ResNet-18 feature extraction model for arrhythmia classification. Multiagent and Grid Systems(3-4),241-261.RajeshwariM.R.KavithaK.S.. (2023). Enhanced tolerance-based intuitionistic fuzzy rough set theory feature selection and ResNet-18 feature extraction model for arrhythmia classification. Multiagent and Grid Systems(3-4),241-261.Search in Google Scholar
Jintang Bian, Xiaohua Xie, Jian Huang Lai & Feiping Nie. (2024). Multi-view contrastive clustering via integrating graph aggregation and confidence enhancement. Information Fusion102393-.JintangBianXiaohuaXieJian HuangLaiFeipingNie (2024). Multi-view contrastive clustering via integrating graph aggregation and confidence enhancement. Information Fusion102393-.Search in Google Scholar