A Developmental Approach to Structural Self-Organization in Reservoir Computing
Yin J, Meng Y, Jin Y (2012)
IEEE Transactions on Autonomous Mental Development 4(4): 273-289.
Zeitschriftenaufsatz
| Veröffentlicht | Englisch
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Autor*in
Yin, Jun;
Meng, Yan;
Jin, YaochuUniBi
Abstract / Bemerkung
Reservoir computing (RC) is a computational framework for neural network based information processing. Little work, however, has been conducted on adapting the structure of the neural reservoir. In this paper, we propose a developmental approach to structural self-organization in reservoir computing. More specifically, a recurrent spiking neural network is adopted for building up the reservoir, whose synaptic and structural plasticity are regulated by a gene regulatory network (GRN). Meanwhile, the expression dynamics of the GRN is directly influenced by the activity of the neurons in the reservoir. We term this proposed model as GRN-regulated self-organizing RC (GRN-SO-RC). Contrary to a randomly initialized and fixed structure used in most existing RC models, the structure of the reservoir in the GRN-SO-RC model is self-organized to adapt to the specific task using the GRN-based mechanism. To evaluate the proposed model, experiments have been conducted on several benchmark problems widely used in RC models, such as memory capacity and nonlinear auto-regressive moving average. In addition, we apply the GRN-SO-RC model to solving complex real-world problems, including speech recognition and human action recognition. Our experimental results on both the benchmark and real-world problems demonstrate that the GRN-SO-RC model is effective and robust in solving different types of problems.
Erscheinungsjahr
2012
Zeitschriftentitel
IEEE Transactions on Autonomous Mental Development
Band
4
Ausgabe
4
Seite(n)
273-289
ISSN
1943-0604
eISSN
1943-0612
Page URI
https://pub.uni-bielefeld.de/record/2978578
Zitieren
Yin J, Meng Y, Jin Y. A Developmental Approach to Structural Self-Organization in Reservoir Computing. IEEE Transactions on Autonomous Mental Development. 2012;4(4):273-289.
Yin, J., Meng, Y., & Jin, Y. (2012). A Developmental Approach to Structural Self-Organization in Reservoir Computing. IEEE Transactions on Autonomous Mental Development, 4(4), 273-289. https://doi.org/10.1109/TAMD.2012.2182765
Yin, Jun, Meng, Yan, and Jin, Yaochu. 2012. “A Developmental Approach to Structural Self-Organization in Reservoir Computing”. IEEE Transactions on Autonomous Mental Development 4 (4): 273-289.
Yin, J., Meng, Y., and Jin, Y. (2012). A Developmental Approach to Structural Self-Organization in Reservoir Computing. IEEE Transactions on Autonomous Mental Development 4, 273-289.
Yin, J., Meng, Y., & Jin, Y., 2012. A Developmental Approach to Structural Self-Organization in Reservoir Computing. IEEE Transactions on Autonomous Mental Development, 4(4), p 273-289.
J. Yin, Y. Meng, and Y. Jin, “A Developmental Approach to Structural Self-Organization in Reservoir Computing”, IEEE Transactions on Autonomous Mental Development, vol. 4, 2012, pp. 273-289.
Yin, J., Meng, Y., Jin, Y.: A Developmental Approach to Structural Self-Organization in Reservoir Computing. IEEE Transactions on Autonomous Mental Development. 4, 273-289 (2012).
Yin, Jun, Meng, Yan, and Jin, Yaochu. “A Developmental Approach to Structural Self-Organization in Reservoir Computing”. IEEE Transactions on Autonomous Mental Development 4.4 (2012): 273-289.