Xiguang Zhang, Yuxi Ma, and Longfei Zhang
[1] S. Huang, Y. Huang, Y. Bu , W. Lu, J. Qian, and D. Wang, Fine-grained citation count prediction via a transformer-based modelwith among-attention mechanism, Information Processing &Management, 59(2), 2022, 102799–102814. [2] Z. Tian, C. Wang, Y. Xiao, and Y. Lin, Flexible scene textrecognition based on dual attention mechanism, Concurrencyand Computation Practice and Experience, 33(22), 2020,5863.1–5863.12. [3] Z. Wang, C. Hou, G. Yue, and Q. Yang, Dynamic-boostingattention for self-supervised video representation learning,Applied Intelligence, 52(3), 2022, 3143–3155. [4] B. Marks and J. Thoma, Adoption of virtual reality technologyin higher education: An evaluation of five teaching semestersin a purpose-designed laboratory, Education and informationtechnologies, 27(1), 2022, 1287–1305. [5] A. Parmaxi, Virtual reality in language learning: A systematicreview and implications for research and practice, InteractiveLearning Environments, 31(1), 2023, 172–184. [6] A. Lassagne, A. Kemeny, J. Posselt, and F. Merienne,Evaluation of spatial filtering algorithms for visual interactionsin CAVEs, IEEE Computer Graphics and Applications, 39(1),2019, 53–63. [7] J. Xu, X. Wu, Z. Zhu, Q. Huang, Y. Yang, H. Bao, andW. Xu, Scalable image-based indoor scene rendering withreflections, ACM Transactions on Graphics, 40(4), 2021,60.1–60.14. [8] K. Li, Q. Zhang, and J. Jia, CEB-collaboratively multi-granularity interest scheduling algorithm for loading largeWebBIM scene, Journal of Computer-Aided Design &Computer Graphics, 33(9), 2021, 1388–1397. [9] M. Hasan, D. Perez, Y. Shen, and H. Yang, Distributedmicroscopic traffic simulation with human-in-the-loop enabledby virtual reality technologies, Advances in EngineeringSoftware, 154(3), 2021, 102985–103000. [10] R. Pinkham, A. Berkovich, and Z. Zhang, Near-sensordistributed DNN processing for augmented and virtual reality,IEEE Journal on Emerging and Selected Topics in Circuitsand Systems, 11(4), 2021, 663–676. [11] G. Yang, and M. Xu, Research on network architecture andcommunication protocol of network virtual reality based onimage rendering, IOP Conference Series: Materials Scienceand Engineering, 740(1), 2020, 12119–12124. [12] J. Ma, Supervised and semi-supervised twin parametric-marginregularized extreme learning machine, Pattern Analysis andApplications, 23(4), 2020, 1603–1626. [13] J. Chen, M. Yang, and J. Ling, Attention-based labelconsistency for semi-supervised deep learning based imageclassification, Neurocomputing, 453(11), 2021, 731–741. [14] M. Tian, Y. Cui, H. Long, and J. Li, Improving noveltydetection by self-supervised learning and channel attentionmechanism, Industrial Robot, 48(5), 2021, 673–679. [15] J. Chang and H. Weng, Fully used reliable data and attentionconsistency for semi-supervised learning, Knowledge-BasedSystems, 249(5), 2022, 108837.1–108837.14. [16] J. Hu and Y. Zhang, NGAT: Attention in breadth and depthexploration for semi-supervised graph representation learning,Frontiers of Information Technology & Electronic Engineering,23(3), 2022, 409–421. [17] Y. Wang, P. Yan, and M. Gai, Dynamic soft sensor for anaerobicdigestion of kitchen waste based on SGSTGAT, IEEE SensorsJournal, 21(17), 2021, 19198–19208. [18] N.N.P. Deb and N.N.S.K. Pal, Interaction behavior and loadsharing pattern of piled raft using nonlinear regression andLM algorithm-based artificial neural network, Frontiers ofStructural& Civil Engineering, 15(5), 2021, 1181–1198. [19] D. Shin, How do users interact with algorithm recommendersystems? The interaction of users, algorithms, and performance,Computers in Human Behavior, 109(8), 2020, 106344.1–106344.10. [20] F. Zhou, H. Wu, G. Trajcevski, A. Khokhar, and K. Zhang,Semi-supervised trajectory understanding with POI attentionfor end-to-end trip recommendation, ACM Transactions onSpatial Algorithms and Systems, 6(2), 2020, 13.1–13.25. [21] Y. Ha, Z. Du, and J. Tian, Fine-grained interactive attentionlearning for semi-supervised white blood cell classification,Biomedical Signal Processing and Control, 75(5), 2022,103611.1–103611.10. [22] Y. Yang, N. Zhu, Y. Wu, J. Cao, D. Zhan, and X. Hui, A semi-supervised attention model for identifying authentic sneakers,Big Data Mining and Analytics, 3(1), 2020, 29–40. [23] S. Debnath, Fuzzy quadripartitioned neutrosophic softmatrix theory and its decision-making approach, Journal ofComputational and Cognitive Engineering, 1(2), 2022, 88–93.
Important Links:
Go Back