从分析图中可以分析得到,主要有四种颜色,代表目前Echo State Network(ESN)的研究方向主要分为4个。
(1)Echo State Network:强相关的关键词是reservoir computing、echo state network、esn、prediction、model、machines learning、algorithm、design、neural network、system、framework、genetic algorithm、regression、memory capacity。
通过询问GPT就可以得到结论,prompts
通过对论文的关键词聚类,聚类得到得到以下关键词,这些关键词根据权重的高低按照先后顺序排列,请说明这些论文在研究什么样的问题,用一句话来总结:
Echo State Network、reservoir computing、echo state network、esn、prediction、model、machines learning、algorithm、design、neural network、system、framework、genetic algorithm、regression、memory capacity。
根据这些关键词,分析得到这些论文是,在研究Echo State Network和reservoir computing(储层计算)的预测模型设计、机器学习算法应用、神经网络系统框架构建以及遗传算法在回归分析和记忆容量方面的应用等问题。
天蓝色簇:katzman,joanna g、alchbli,amal、bhatt snehal r、katzman,william g
## 4.3 引用量分析
可以看到有一些重要论文强相关:
Luko?evi?ius, Mantas, and Herbert Jaeger. “Reservoir computing approaches to recurrent neural network training.” Computer science review 3.3 (2009): 127-149. 引用量2799
Tanaka, Gouhei, et al. “Recent advances in physical reservoir computing: A review.” Neural Networks 115 (2019): 100-123. 引用量1297
Luko?evi?ius, Mantas, Herbert Jaeger, and Benjamin Schrauwen. “Reservoir computing trends.” KI-Künstliche Intelligenz 26 (2012): 365-371. 应用量426
Gonon, Lukas, and Juan-Pablo Ortega. “Reservoir computing universality with stochastic inputs.” IEEE transactions on neural networks and learning systems 31.1 (2019): 100-112. 引用量99
Crone, Sven F., Michele Hibon, and Konstantinos Nikolopoulos. “Advances in forecasting with neural networks? Empirical evidence from the NN3 competition on time series prediction.” International Journal of forecasting 27.3 (2011): 635-660. 引用量365
Ribeiro, Gabriel Trierweiler, et al. “Novel hybrid model based on echo state neural network applied to the prediction of stock price return volatility.” Expert Systems with Applications 184 (2021): 115490. 引用量57
Wang, Jianzhou, Chunying Wu, and Tong Niu. “A novel system for wind speed forecasting based on multi-objective optimization and echo state network.” Sustainability 11.2 (2019): 526. 引用量36
Qin, Lan, Weide Li, and Shijia Li. “Effective passenger flow forecasting using STL and ESN based on two improvement strategies.” Neurocomputing 356 (2019): 244-256. 应用量80
Schwedersky, Bernardo Barancelli, Rodolfo César Costa Flesch, and Hiago Antonio Sirino Dangui. “Nonlinear MIMO system identification with echo-state networks.” Journal of Control, Automation and Electrical Systems 33.3 (2022): 743-754. 引用量9
Wang, Tzai-Der, Xiaochuan Wu, and Colin Fyfe. “Factors important for good visualisation of time series.” International Journal of Computational Science and Engineering 12.1 (2016): 17-28. 引用量 5
Georgopoulos, Spyros P., et al. “Reservoir computing vs. neural networks in financial forecasting.” International Journal of Computational Economics and Econometrics 13.1 (2023): 1-22. 引用量0
Yang, Xiaojian, et al. “An improved deep echo state network inspired by tissue-like P system forecasting for non-stationary time series.” Journal of Membrane Computing 4.3 (2022): 222-231. 引用量3
Tanaka, Gouhei, et al. “Reservoir computing with diverse timescales for prediction of multiscale dynamics.” Physical Review Research 4.3 (2022): L032014.引用量13