Long Short-term Cognitive Networks: An Empirical Performance Study

被引:0
|
作者
Napoles, Gonzalo [1 ]
Grau, Isel [2 ]
机构
[1] Tilburg Univ, Cognit Sci & Artificial Intelligence, Tilburg, Netherlands
[2] Eindhoven Univ Technol, Informat Syst Grp, Eindhoven, Netherlands
关键词
time series; recurrent neural networks; fuzzy cognitive maps; long short-term cognitive networks; MAPS;
D O I
10.1109/EAIS58494.2024.10570005
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Long Short-term Cognitive Networks (LSTCNs) are recurrent neural networks for univariate and multivariate time series forecasting. This interpretable neural system is rooted in cognitive mapping formalism in the sense that both neural concepts and weights have a precise meaning for the problem being modeled. However, its weights are not constrained to any specific interval, therefore conferring to the model improved approximation capabilities. Originally designed for handling very long time series, the model's performance remains unexplored when it comes to shorter time series that often describe realworld applications. In this paper, we conduct an empirical study to assess both the efficacy and efficiency of the LSTCN model using 25 time series datasets and different prediction horizons. The numerical simulations have concluded that after performing hyper-parameter tuning, LSTCNs are as powerful as state-ofthe-art deep learning algorithms, such as the Long Short-term Memory and the Gated Recurrent Unit, in terms of forecasting error. However, in terms of training time, the LSTCN model largely outperforms the remaining recurrent neural networks, thus emerging as the winner in our study.
引用
收藏
页码:395 / 402
页数:8
相关论文
共 50 条
  • [31] Short-term variability in cognitive performance and the calibration of longitudinal change
    Salthouse, TA
    Nesselroade, JR
    Berish, DE
    [J]. JOURNALS OF GERONTOLOGY SERIES B-PSYCHOLOGICAL SCIENCES AND SOCIAL SCIENCES, 2006, 61 (03): : P144 - P151
  • [32] Mental performance during short-term and long-term spaceflight
    Manzey, D
    Lorenz, B
    [J]. BRAIN RESEARCH REVIEWS, 1998, 28 (1-2) : 215 - 221
  • [33] Combining fuzzy clustering and improved long short-term memory neural networks for short-term load forecasting
    Liu, Fu
    Dong, Tian
    Liu, Qiaoliang
    Liu, Yun
    Li, Shoutao
    [J]. ELECTRIC POWER SYSTEMS RESEARCH, 2024, 226
  • [34] Short-term Individual Electric Vehicle Charging Behavior Prediction Using Long Short-term Memory Networks
    Khwaja, Ahmed S.
    Venkatesh, Bala
    Anpalagan, Alagan
    [J]. 2020 IEEE 25TH INTERNATIONAL WORKSHOP ON COMPUTER AIDED MODELING AND DESIGN OF COMMUNICATION LINKS AND NETWORKS (CAMAD), 2020,
  • [35] All sky imaging-based short-term solar irradiance forecasting with Long Short-Term networks
    Hendrikx, N. Y.
    Barhmi, K.
    Visser, L. R.
    de Bruin, T. A.
    Po, M.
    Salah, A. A.
    van Sark, W. G. J. H. M.
    [J]. SOLAR ENERGY, 2024, 272
  • [36] Short-term Load Forecasting by Long- and Short-term Temporal Networks With Attention Based on Modal Decomposition
    Qiao, Shi
    Wang, Lei
    Zhang, Pengchao
    Yan, Qunmin
    Wang, Guibao
    [J]. Dianwang Jishu/Power System Technology, 2022, 46 (10): : 3940 - 3951
  • [37] A New Delay Connection for Long Short-Term Memory Networks
    Wang, Jianyong
    Zhang, Lei
    Chen, Yuanyuan
    Yi, Zhang
    [J]. INTERNATIONAL JOURNAL OF NEURAL SYSTEMS, 2018, 28 (06)
  • [38] CCG supertagging with bidirectional long short-term memory networks
    Kadari, Rekia
    Zhang, Yu
    Zhang, Weinan
    Liu, Ting
    [J]. NATURAL LANGUAGE ENGINEERING, 2018, 24 (01) : 77 - 90
  • [39] Deep Long Short-Term Memory Networks for Speech Recognition
    Chien, Jen-Tzung
    Misbullah, Alim
    [J]. 2016 10TH INTERNATIONAL SYMPOSIUM ON CHINESE SPOKEN LANGUAGE PROCESSING (ISCSLP), 2016,
  • [40] Dialogue Intent Classification with Long Short-Term Memory Networks
    Meng, Lian
    Huang, Minlie
    [J]. NATURAL LANGUAGE PROCESSING AND CHINESE COMPUTING, NLPCC 2017, 2018, 10619 : 42 - 50