This work is licensed under the Creative Commons Attribution 4.0 International License.
Vereshchahina-Biliavska, O. Y., Cherkashyna, O. V., Moskvichova, Y. O., Yakymchuk, O. M., & Lys, O. V. (2021). Anthropological view on the history of musical art. Linguistics and Culture Review, 5(S2), 108-120.Vereshchahina-BiliavskaO. Y.CherkashynaO. V.MoskvichovaY. O.YakymchukO. M.LysO. V. (2021). Anthropological view on the history of musical art. Linguistics and Culture Review, 5(S2), 108-120.Search in Google Scholar
Faure-Carvallo, A., Gustems-Carnicer, J., & Guaus Termens, E. (2022). Music education in the digital age: Challenges associated with sound homogenization in music aimed at adolescents. International Journal of Music Education, 40(4), 598-612.Faure-CarvalloA.Gustems-CarnicerJ.Guaus TermensE. (2022). Music education in the digital age: Challenges associated with sound homogenization in music aimed at adolescents. International Journal of Music Education, 40(4), 598-612.Search in Google Scholar
Bourreau, M., Moreau, F., & Wikström, P. (2022). Does digitization lead to the homogenization of cultural content?. Economic Inquiry, 60(1), 427-453.BourreauM.MoreauF.WikströmP. (2022). Does digitization lead to the homogenization of cultural content?. Economic Inquiry, 60(1), 427-453.Search in Google Scholar
Siwen, Q., Punvaratorn, M., & Jamnongsarn, S. (2024). The Relationship Between Popular and Traditional Chinese Music in the Context of Cultural Appropriation. Journal of Multidisciplinary in Humanities and Social Sciences, 7(5), 2629-2645.SiwenQ.PunvaratornM.JamnongsarnS. (2024). The Relationship Between Popular and Traditional Chinese Music in the Context of Cultural Appropriation. Journal of Multidisciplinary in Humanities and Social Sciences, 7(5), 2629-2645.Search in Google Scholar
Utz, C. (2021). Musical Composition in the Context of Globalization. New Perspectives on Music History in the 20th and 21st Century.UtzC. (2021). Musical Composition in the Context of Globalization. New Perspectives on Music History in the 20th and 21st Century.Search in Google Scholar
Wong, J. Y. (2020). Chinese musical culture in the global context–modernization and internationalization of traditional Chinese music in twenty-first century. Chinese culture in the 21st century and its global dimensions: Comparative and interdisciplinary perspectives, 105-122.WongJ. Y. (2020). Chinese musical culture in the global context–modernization and internationalization of traditional Chinese music in twenty-first century. Chinese culture in the 21st century and its global dimensions: Comparative and interdisciplinary perspectives, 105-122.Search in Google Scholar
Scharinger, M. (2022). Melody in speech and music. How language speaks to music: Prosody from a cross-domain perspective, Berlin: De Gruyter.ScharingerM. (2022). Melody in speech and music. How language speaks to music: Prosody from a cross-domain perspective, Berlin: De Gruyter.Search in Google Scholar
Chikkamath, S., & Nirmala, S. R. (2021, November). Melody generation using LSTM and BI-LSTM Network. In 2021 International Conference on Computational Intelligence and Computing Applications (ICCICA) (pp. 1-6). IEEE.ChikkamathS.NirmalaS. R. (2021, November). Melody generation using LSTM and BI-LSTM Network. In 2021 International Conference on Computational Intelligence and Computing Applications (ICCICA) (pp. 1-6). IEEE.Search in Google Scholar
Déguernel, K., Giraud, M., Groult, R., & Gulluni, S. (2022). Personalizing AI for co-creative music composition from melody to structure. In Sound and Music Computing (SMC 2022) (pp. 314-321).DéguernelK.GiraudM.GroultR.GulluniS. (2022). Personalizing AI for co-creative music composition from melody to structure. In Sound and Music Computing (SMC 2022) (pp. 314-321).Search in Google Scholar
Rohrmeier, M. (2020). Towards a Formalization of Musical Rhythm. In ISMIR (pp. 621-629).RohrmeierM. (2020). Towards a Formalization of Musical Rhythm. In ISMIR (pp. 621-629).Search in Google Scholar
Shukla, S., & Banka, H. (2022). Monophonic music composition using genetic algorithm and Bresenham’s line algorithm. Multimedia Tools and Applications, 81(18), 26483-26503.ShuklaS.BankaH. (2022). Monophonic music composition using genetic algorithm and Bresenham’s line algorithm. Multimedia Tools and Applications, 81(18), 26483-26503.Search in Google Scholar
Hernandez-Olivan, C., & Beltran, J. R. (2022). Music composition with deep learning: A review. Advances in speech and music technology: computational aspects and applications, 25-50.Hernandez-OlivanC.BeltranJ. R. (2022). Music composition with deep learning: A review. Advances in speech and music technology: computational aspects and applications, 25-50.Search in Google Scholar
Aristidou, A., Yiannakidis, A., Aberman, K., Cohen-Or, D., Shamir, A., & Chrysanthou, Y. (2022). Rhythm is a dancer: Music-driven motion synthesis with global structure. IEEE Transactions on Visualization and Computer Graphics, 29(8), 3519-3534.AristidouA.YiannakidisA.AbermanK.Cohen-OrD.ShamirA.ChrysanthouY. (2022). Rhythm is a dancer: Music-driven motion synthesis with global structure. IEEE Transactions on Visualization and Computer Graphics, 29(8), 3519-3534.Search in Google Scholar
Briot, J. P., & Pachet, F. (2020). Deep learning for music generation: challenges and directions. Neural Computing and Applications, 32(4), 981-993.BriotJ. P.PachetF. (2020). Deep learning for music generation: challenges and directions. Neural Computing and Applications, 32(4), 981-993.Search in Google Scholar
Elbir, A., & Aydin, N. (2020). Music genre classification and music recommendation by using deep learning. Electronics Letters, 56(12), 627-629.ElbirA.AydinN. (2020). Music genre classification and music recommendation by using deep learning. Electronics Letters, 56(12), 627-629.Search in Google Scholar
Pandeya, Y. R., & Lee, J. (2021). Deep learning-based late fusion of multimodal information for emotion classification of music video. Multimedia Tools and Applications, 80(2), 2887-2905.PandeyaY. R.LeeJ. (2021). Deep learning-based late fusion of multimodal information for emotion classification of music video. Multimedia Tools and Applications, 80(2), 2887-2905.Search in Google Scholar
Dang, C. N., Moreno-García, M. N., & De la Prieta, F. (2021). Hybrid deep learning models for sentiment analysis. Complexity, 2021(1), 9986920.DangC. N.Moreno-GarcíaM. N.De la PrietaF. (2021). Hybrid deep learning models for sentiment analysis. Complexity, 2021(1), 9986920.Search in Google Scholar
Sharafi, M., Yazdchi, M., Rasti, R., & Nasimi, F. (2022). A novel spatio-temporal convolutional neural framework for multimodal emotion recognition. Biomedical Signal Processing and Control, 78, 103970.SharafiM.YazdchiM.RastiR.NasimiF. (2022). A novel spatio-temporal convolutional neural framework for multimodal emotion recognition. Biomedical Signal Processing and Control, 78, 103970.Search in Google Scholar
Liu, Q., Meng, X., Shao, F., & Li, S. (2022). PSTAF-GAN: Progressive spatio-temporal attention fusion method based on generative adversarial network. IEEE Transactions on Geoscience and Remote Sensing, 60, 1-13.LiuQ.MengX.ShaoF.LiS. (2022). PSTAF-GAN: Progressive spatio-temporal attention fusion method based on generative adversarial network. IEEE Transactions on Geoscience and Remote Sensing, 60, 1-13.Search in Google Scholar
Fu, X., & Zhang, L. (2021). Spatio-temporal feature fusion for real-time prediction of TBM operating parameters: A deep learning approach. Automation in Construction, 132, 103937.FuX.ZhangL. (2021). Spatio-temporal feature fusion for real-time prediction of TBM operating parameters: A deep learning approach. Automation in Construction, 132, 103937.Search in Google Scholar
Wenjun Xu,Yongming Li,Jinzhou Zhao,Xiyu Chen & Sheik S. Rahman. (2020). Simulation of a Hydraulic Fracture Interacting with a Cemented Natural Fracture Using Displacement Discontinuity Method and Finite Volume Method. Rock Mechanics and Rock Engineering(7),1-10.XuWenjunLiYongmingZhaoJinzhouChenXiyuRahmanSheik S. (2020). Simulation of a Hydraulic Fracture Interacting with a Cemented Natural Fracture Using Displacement Discontinuity Method and Finite Volume Method. Rock Mechanics and Rock Engineering(7),1-10.Search in Google Scholar
Alejo Camilo,Meyer Chris,Walker Wayne S,Gorelik Seth R,Josse Carmen,AragonOsejo Jose Luis… & Potvin Catherine. (2021). Are indigenous territories effective natural climate solutions? A neotropical analysis using matching methods and geographic discontinuity designs. PloS one(7),e0245110-e0245110.CamiloAlejoChrisMeyerWalkerWayne SGorelikSeth RCarmenJosseLuisAragonOsejo JoseCatherinePotvin (2021). Are indigenous territories effective natural climate solutions? A neotropical analysis using matching methods and geographic discontinuity designs. PloS one(7),e0245110-e0245110.Search in Google Scholar
Burke,Kiedrowski & Martin. (2017). Kernel Density Estimation of Reaction Rates in Neutron Transport Simulations of Nuclear Reactors. Nuclear Science and Engineering(2),109-139.BurkeKiedrowskiMartin (2017). Kernel Density Estimation of Reaction Rates in Neutron Transport Simulations of Nuclear Reactors. Nuclear Science and Engineering(2),109-139.Search in Google Scholar
Noritaka Shimizu,Yutaka Utsuno,Yasunori Futamura,Tetsuya Sakurai,Takahiro Mizusaki & Takaharu Otsuka. (2016). Stochastic estimation of nuclear level density in the nuclear shell model: An application to parity-dependent level density in 58Ni. Physics Letters B13-17.ShimizuNoritakaUtsunoYutakaFutamuraYasunoriSakuraiTetsuyaMizusakiTakahiroOtsukaTakaharu (2016). Stochastic estimation of nuclear level density in the nuclear shell model: An application to parity-dependent level density in 58Ni. Physics Letters B13-17.Search in Google Scholar