您现在的位置:首页 > 教案模板 > 正文

【一点资讯】中国指挥与控制学会(2)

2019-08-22 23:40 网络整理 教案网

27 Jing S S, Yu A L, Liang X, et al. Uniform belief propagation processor for massive MIMO detection and GF (2n) LDPC decoding. In: Proceedings of IEEE International Conference on ASIC (ASICON), 2017: 961-964

28 Gandhi V S, Maheswaran B. A cross layer design for performance enhancements in LTE-A system. In: Proceedings of IEEE International Conference on Wireless Communications, Signal Processing and Networking (WiSPNET), 2016: 905-909

29 Kuen J, Kong X F, Wang G, et al. DelugeNets: Deep networks with efficient and flexible cross-layer information inflows. In: Proceedings of IEEE International Conference on Computer Vision Workshop (ICCVW), 2017: 958-966

30 Farsad N, Rao M, Goldsmith A. Deep learning for joint source-channel coding of text. arXiv preprint, 2018.

neural networks and deep learning ch3。[21] krizhevsky, alex. “imagenet classification with deep convolutional neural networks”. retrieved 17 november 2013.。参考文献《neural networks and deep learing》。

32 Wang X F, Li X H, Leung V C M. Artificial intelligence-based techniques for emerging heterogeneous network: State of the arts, opportunities, and challenges. IEEE Access, 2015, 3: 1379-1391

* apply machine learning techniques to alpha discovery and portfolio construction。for more information on regularization techniques, please see statistics and machine learning toolbox.。knowledge discovery in databases ( kdd ) is a multidisciplinary field , drawing work from areas including database technology , artificial intelligence , machine learning , statistics , neural networks , and pattern recognition。

34 P`erez-Romero J, Sallent O, Ferr ú s R, et al. Knowledge-based 5G radio access network planning and optimization. In: Proceedings of IEEE International Symposium on Wireless Communication Systems (ISWCS), 2016: 359-365

尤肖虎又未评上院士_尤肖虎 上海无线中心_尤肖虎 举报

35 G′omez-Andrades A, Munoz P, Serrano I, et al. Automatic root cause analysis for LTE networks based on unsupervised techniques. IEEE T Veh Technol, 2016, 65(4): 2369-2386

36 Wang J H, Guan W, Huang Y M, et al. Distributed optimization of hierarchical small cell networks: A GNEP framework. IEEE J Sel Area Comm, 2017, 35(2): 249-264

37 Ren Y R, Zhang C, Liu X, et al. Efficient early termination schemes for belief-propagation decoding of polar codes. In: Proceedings of IEEE International Conference on ASIC (ASICON), 2015: 1-4

the advantage of this method is the halving of the number of partial products. this is important in circuit design as it relates to the propagation delay in the running of the circuit, and the complexity and power consumption of its implementation.。4. takaki m, misawa h, matsuyoshi h, kawahara i, goto k, zhang gx, obata k, kuniyasu h. in vitro enhanced differentiation of neural networks in es gut-like organ from mouse es cells by a 5-ht(4)-receptor activation. biochem biophys res commun. 2011。s organizational structure, reduce complexity and costs, the corporation has reduced and intends to continue to reduce the number of its corporate subsidiaries, including through intercompany mergers。

39 Yang J M, Song W Q, Zhang S Q, et al. Low-complexity belief propagation detection for correlated large-scale MIMO systems. J Signal Process Sys, 2018, 90(4): 585-599

40 Liu L, Yuen C, Guan Y L, et al. Gaussian message passing iterative detection for MIMO-NOMA systems with massive access. In: Proceedings of IEEE Global Communications Conference (GLOBECOM), 2016: 1-6

41 Yang J M, Zhang C, Zhou H Y, et al. Pipelined belief propagation polar decoders. In: Proceedings of IEEE International Symposium on Circuits and Systems (ISCAS), 2016: 413-416

42 Tan X S, Xu W H, Be’ery Y, et al. Improving massive MIMO belief propagation detector with deep neural network.

43 Liang F, Shen C, Wu F. An iterative BP-CNN architecture for channel decoding. IEEE J Sel Top Signa, 2018, 12(1): 144-159

44 Lv X Z, Wei P, Xiao X C. Automatic identification of digital modulation signals using high order cumulants. Electronic Warfare, 2004, 6:1

45 Wang T Q, Wen C K, Wang H Q, et al. Deep learning for wireless physical layer: Opportunities and challenges. China Commun, 2017, 14(11): 92-111

46 O’Shea T, Hoydis J. An introduction to deep learning for the physical layer. IEEE Trans on Cogn Commun Netw, 2017, 3(4): 563-575

fang, hao et al. “from captions to visual concepts and back.” arxiv preprint arxiv:1411.4952 (2014).。venugopalan, subhashini et al. “sequence to sequence–video to text.” arxiv preprint arxiv:1505.00487 (2015).。【lloyd s. the universe as quantum computer[j]. arxiv preprint arxiv:1312.4455, 2013.】。