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Erschienen in: Cognitive Computation 3/2017

13.01.2017

Training Echo State Networks with Regularization Through Dimensionality Reduction

verfasst von: Sigurd Løkse, Filippo Maria Bianchi, Robert Jenssen

Erschienen in: Cognitive Computation | Ausgabe 3/2017

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Abstract

In this paper, we introduce a new framework to train a class of recurrent neural network, called Echo State Network, to predict real valued time-series and to provide a visualization of the modeled system dynamics. The method consists in projecting the output of the internal layer of the network on a lower dimensional space, before training the output layer to learn the target task. Notably, we enforce a regularization constraint that leads to better generalization capabilities. We evaluate the performances of our approach on several benchmark tests, using different techniques to train the readout of the network, achieving superior predictive performance when using the proposed framework. Finally, we provide an insight on the effectiveness of the implemented mechanics through a visualization of the trajectory in the phase space and relying on the methodologies of nonlinear time-series analysis. By applying our method on well-known chaotic systems, we provide evidence that the lower dimensional embedding retains the dynamical properties of the underlying system better than the full-dimensional internal states of the network.

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Literatur
1.
Zurück zum Zitat Alexandre LA, Embrechts MJ, Linton J. Benchmarking reservoir computing on time-independent classification tasks. IJCNN International Joint Conference on Neural Networks, 2009. IEEE; 2009. p. 2009. Alexandre LA, Embrechts MJ, Linton J. Benchmarking reservoir computing on time-independent classification tasks. IJCNN International Joint Conference on Neural Networks, 2009. IEEE; 2009. p. 2009.
2.
Zurück zum Zitat Baker CT. The numerical treatment of integral equations. Clarendon Press, Israel Program for Scientific Translations, 1973. ISBN 019853406X. Baker CT. The numerical treatment of integral equations. Clarendon Press, Israel Program for Scientific Translations, 1973. ISBN 019853406X.
3.
Zurück zum Zitat Balmforth N, Craster R. Synchronizing moore and spiegel. Chaos: An Interdisciplinary Journal of Nonlinear Science. 1997;7(4):738–752.CrossRef Balmforth N, Craster R. Synchronizing moore and spiegel. Chaos: An Interdisciplinary Journal of Nonlinear Science. 1997;7(4):738–752.CrossRef
4.
Zurück zum Zitat Belkin M, Niyogi P, Sindhwani V. Manifold regularization: a geometric framework for learning from labeled and unlabeled examples. J Mach Learn Res. 2006;7:2399–2434. Belkin M, Niyogi P, Sindhwani V. Manifold regularization: a geometric framework for learning from labeled and unlabeled examples. J Mach Learn Res. 2006;7:2399–2434.
5.
Zurück zum Zitat Bengio Y, Paiement J-F, Vincent P, Delalleau O, Le Roux N, Ouimet M. Out-of-sample extensions for lle, isomap, mds, eigenmaps, and spectral clustering. Adv Neural Inf Proces Syst. 2004;16:177–184. Bengio Y, Paiement J-F, Vincent P, Delalleau O, Le Roux N, Ouimet M. Out-of-sample extensions for lle, isomap, mds, eigenmaps, and spectral clustering. Adv Neural Inf Proces Syst. 2004;16:177–184.
8.
Zurück zum Zitat Bianchi FM, Livi L, Alippi C. Investigating echo state networks dynamics by means of recurrence analysis. 2016. arXiv:1601.07381. Bianchi FM, Livi L, Alippi C. Investigating echo state networks dynamics by means of recurrence analysis. 2016. arXiv:1601.​07381.
9.
Zurück zum Zitat Boedecker J, Obst O, Lizier JT, Mayer NM, Asada M. Information processing in echo state networks at the edge of chaos. Theory Biosci. 2012;131(3):205–213.CrossRefPubMed Boedecker J, Obst O, Lizier JT, Mayer NM, Asada M. Information processing in echo state networks at the edge of chaos. Theory Biosci. 2012;131(3):205–213.CrossRefPubMed
10.
Zurück zum Zitat Bradley E, Kantz H. Nonlinear time-series analysis revisited. Chaos: An Interdisciplinary Journal of Nonlinear Science. 2015;25(9):097610.CrossRef Bradley E, Kantz H. Nonlinear time-series analysis revisited. Chaos: An Interdisciplinary Journal of Nonlinear Science. 2015;25(9):097610.CrossRef
11.
Zurück zum Zitat Burges CJ. A tutorial on support vector machines for pattern recognition. Data Min Knowl Disc. 1998;2(2): 121–167.CrossRef Burges CJ. A tutorial on support vector machines for pattern recognition. Data Min Knowl Disc. 1998;2(2): 121–167.CrossRef
12.
Zurück zum Zitat Cao L. Practical method for determining the minimum embedding dimension of a scalar time series. Physica D: Nonlinear Phenomena.s 1997;110(1):43–50.CrossRef Cao L. Practical method for determining the minimum embedding dimension of a scalar time series. Physica D: Nonlinear Phenomena.s 1997;110(1):43–50.CrossRef
13.
Zurück zum Zitat Charles A, Yin D, Rozell C. Distributed sequence memory of multidimensional inputs in recurrent networks. 2016. arXiv:1605.08346. Charles A, Yin D, Rozell C. Distributed sequence memory of multidimensional inputs in recurrent networks. 2016. arXiv:1605.​08346.
14.
Zurück zum Zitat Davenport MA, Duarte MF, Wakin MB, Laska JN, Takhar D, Kelly KF, Baraniuk RG. The smashed filter for compressive classification and target recognition. Electronic Imaging 2007, pages 64980H–64980H. International Society for Optics and Photonics; 2007. Davenport MA, Duarte MF, Wakin MB, Laska JN, Takhar D, Kelly KF, Baraniuk RG. The smashed filter for compressive classification and target recognition. Electronic Imaging 2007, pages 64980H–64980H. International Society for Optics and Photonics; 2007.
15.
Zurück zum Zitat Deihimi A, Showkati H. Application of echo state networks in short-term electric load forecasting. Energy. 2012;39(1):327–340.CrossRef Deihimi A, Showkati H. Application of echo state networks in short-term electric load forecasting. Energy. 2012;39(1):327–340.CrossRef
16.
Zurück zum Zitat Deihimi A, Orang O, Showkati H. Short-term electric load and temperature forecasting using wavelet echo state networks with neural reconstruction. Energy. 2013;57:382–401.CrossRef Deihimi A, Orang O, Showkati H. Short-term electric load and temperature forecasting using wavelet echo state networks with neural reconstruction. Energy. 2013;57:382–401.CrossRef
17.
Zurück zum Zitat Dutoit X, Schrauwen B, Campenhout JV, Stroobandt D, Brussel HV, Nuttin M. Pruning and regularization in reservoir computing. Neurocomputing. 2009;72(7–9):1534 – 1546. ISSN 0925-2312. doi:10.1016/j.neucom.2008.12.020 Advances in Machine Learning and Computational Intelligence16th European Symposium on Artificial Neural Networks 200816th European Symposium on Artificial Neural Networks 2008.CrossRef Dutoit X, Schrauwen B, Campenhout JV, Stroobandt D, Brussel HV, Nuttin M. Pruning and regularization in reservoir computing. Neurocomputing. 2009;72(7–9):1534 – 1546. ISSN 0925-2312. doi:10.​1016/​j.​neucom.​2008.​12.​020 Advances in Machine Learning and Computational Intelligence16th European Symposium on Artificial Neural Networks 200816th European Symposium on Artificial Neural Networks 2008.CrossRef
18.
Zurück zum Zitat Fodor IK. A survey of dimension reduction techniques Technical report. 2002. Fodor IK. A survey of dimension reduction techniques Technical report. 2002.
19.
Zurück zum Zitat Fraser AM, Swinney HL. Independent coordinates for strange attractors from mutual information. Phys Rev A. 1986;33(2):1134.CrossRef Fraser AM, Swinney HL. Independent coordinates for strange attractors from mutual information. Phys Rev A. 1986;33(2):1134.CrossRef
20.
Zurück zum Zitat Friedman JH. On bias, variance, 0/1—loss, and the curse-of-dimensionality. Data Min Knowl Disc. 1997;1(1): 55–77.CrossRef Friedman JH. On bias, variance, 0/1—loss, and the curse-of-dimensionality. Data Min Knowl Disc. 1997;1(1): 55–77.CrossRef
21.
Zurück zum Zitat Gao J, Cao Y, Tung W-w, Hu J. Multiscale analysis of complex time series: integration of chaos and random fractal theory, and beyond: John Wiley & Sons; 2007. ISBN 978-0-471-65470-4. Gao J, Cao Y, Tung W-w, Hu J. Multiscale analysis of complex time series: integration of chaos and random fractal theory, and beyond: John Wiley & Sons; 2007. ISBN 978-0-471-65470-4.
22.
Zurück zum Zitat Grassberger P, Procaccia I. Measuring the strangeness of strange attractors. The Theory of Chaotic Attractors. Springer; 2004. p. 170–189. Grassberger P, Procaccia I. Measuring the strangeness of strange attractors. The Theory of Chaotic Attractors. Springer; 2004. p. 170–189.
23.
Zurück zum Zitat Hai-yan D, Wen-jiang P, Zhen-ya H. A multiple objective optimization based echo state network tree and application to intrusion detection. Proceedings of 2005 IEEE International Workshop on VLSI Design and Video Technology, 2005; 2005. p. 443–446. doi:10.1109/IWVDVT.2005.1504645. Hai-yan D, Wen-jiang P, Zhen-ya H. A multiple objective optimization based echo state network tree and application to intrusion detection. Proceedings of 2005 IEEE International Workshop on VLSI Design and Video Technology, 2005; 2005. p. 443–446. doi:10.​1109/​IWVDVT.​2005.​1504645.
24.
Zurück zum Zitat Han S, Lee J. Fuzzy echo state neural networks and funnel dynamic surface control for prescribed performance of a nonlinear dynamic system. IEEE Trans Ind Electron. 2014a;61(2):1099–1112. ISSN 0278-0046. doi:10.1109/TIE.2013.2253072.CrossRef Han S, Lee J. Fuzzy echo state neural networks and funnel dynamic surface control for prescribed performance of a nonlinear dynamic system. IEEE Trans Ind Electron. 2014a;61(2):1099–1112. ISSN 0278-0046. doi:10.​1109/​TIE.​2013.​2253072.CrossRef
25.
Zurück zum Zitat Han SI, Lee JM. Fuzzy echo state neural networks and funnel dynamic surface control for prescribed performance of a nonlinear dynamic system. IEEE Trans Ind Electron. 2014b;61(2):1099–1112.CrossRef Han SI, Lee JM. Fuzzy echo state neural networks and funnel dynamic surface control for prescribed performance of a nonlinear dynamic system. IEEE Trans Ind Electron. 2014b;61(2):1099–1112.CrossRef
27.
Zurück zum Zitat Hotelling H. Analysis of a complex of statistical variables into principal components. J Educ Psychol. 1933;24 (6):417–441.CrossRef Hotelling H. Analysis of a complex of statistical variables into principal components. J Educ Psychol. 1933;24 (6):417–441.CrossRef
28.
Zurück zum Zitat Huang C-M, Huang C-J, Wang M-L. A particle swarm optimization to identifying the armax model for short-term load forecasting. IEEE Trans Power Syst. 2005;20(2):1126–1133.CrossRef Huang C-M, Huang C-J, Wang M-L. A particle swarm optimization to identifying the armax model for short-term load forecasting. IEEE Trans Power Syst. 2005;20(2):1126–1133.CrossRef
29.
Zurück zum Zitat Indyk P, Motwani R. Approximate nearest neighbors: towards removing the curse of dimensionality. Proceedings of the thirtieth annual ACM symposium on Theory of computing. ACM; 1998. p. 604–613. Indyk P, Motwani R. Approximate nearest neighbors: towards removing the curse of dimensionality. Proceedings of the thirtieth annual ACM symposium on Theory of computing. ACM; 1998. p. 604–613.
30.
Zurück zum Zitat Jaeger H. The echo state approach to analysing and training recurrent neural networks-with an erratum note. Bonn, Germany: German National Research Center for Information Technology GMD Technical Report. 2001;148:34. Jaeger H. The echo state approach to analysing and training recurrent neural networks-with an erratum note. Bonn, Germany: German National Research Center for Information Technology GMD Technical Report. 2001;148:34.
31.
Zurück zum Zitat Jaeger H. Adaptive nonlinear system identification with echo state networks. Advances in neural information processing systems; 2002. p. 593–600. Jaeger H. Adaptive nonlinear system identification with echo state networks. Advances in neural information processing systems; 2002. p. 593–600.
32.
Zurück zum Zitat Jaeger H, Haas H. Harnessing nonlinearity: predicting chaotic systems and saving energy in wireless communication. science. 2004;304(5667):78–80.CrossRefPubMed Jaeger H, Haas H. Harnessing nonlinearity: predicting chaotic systems and saving energy in wireless communication. science. 2004;304(5667):78–80.CrossRefPubMed
33.
Zurück zum Zitat Jan van Oldenborgh G, Balmaseda MA, Ferranti L, Stockdale TN, Anderson DL. Did the ecmwf seasonal forecast model outperform statistical enso forecast models over the last 15 years? J Clim. 2005;18(16): 3240–3249.CrossRef Jan van Oldenborgh G, Balmaseda MA, Ferranti L, Stockdale TN, Anderson DL. Did the ecmwf seasonal forecast model outperform statistical enso forecast models over the last 15 years? J Clim. 2005;18(16): 3240–3249.CrossRef
35.
37.
Zurück zum Zitat Li D, Han M, Wang J. Chaotic time series prediction based on a novel robust echo state network. IEEE Transactions on Neural Networks and Learning Systems. 2012;23(5):787–799.CrossRefPubMed Li D, Han M, Wang J. Chaotic time series prediction based on a novel robust echo state network. IEEE Transactions on Neural Networks and Learning Systems. 2012;23(5):787–799.CrossRefPubMed
38.
Zurück zum Zitat Liebert W, Schuster H. Proper choice of the time delay for the analysis of chaotic time series. Phys Lett A. 1989;142(2-3):107–111.CrossRef Liebert W, Schuster H. Proper choice of the time delay for the analysis of chaotic time series. Phys Lett A. 1989;142(2-3):107–111.CrossRef
39.
Zurück zum Zitat Livi L, Bianchi FM, Alippi C. Determination of the edge of criticality in echo state networks through fisher information maximization. 2016. arXiv:1603.03685. Livi L, Bianchi FM, Alippi C. Determination of the edge of criticality in echo state networks through fisher information maximization. 2016. arXiv:1603.​03685.
42.
44.
Zurück zum Zitat Malik ZK, Hussain A, Wu QJ. Multilayered echo state machine: A novel architecture and algorithm. 2016b. Malik ZK, Hussain A, Wu QJ. Multilayered echo state machine: A novel architecture and algorithm. 2016b.
45.
Zurück zum Zitat Marwan N, Romano MC, Thiel M, Kurths J. Recurrence plots for the analysis of complex systems. Phys Rep. 2007;438(5):237–329.CrossRef Marwan N, Romano MC, Thiel M, Kurths J. Recurrence plots for the analysis of complex systems. Phys Rep. 2007;438(5):237–329.CrossRef
46.
Zurück zum Zitat Mazumdar J, Harley R. Utilization of echo state networks for differentiating source and nonlinear load harmonics in the utility network. IEEE Trans Power Electron. 2008;23(6):2738–2745. ISSN 0885-8993. doi:10.1109/TPEL.2008.2005097.CrossRef Mazumdar J, Harley R. Utilization of echo state networks for differentiating source and nonlinear load harmonics in the utility network. IEEE Trans Power Electron. 2008;23(6):2738–2745. ISSN 0885-8993. doi:10.​1109/​TPEL.​2008.​2005097.CrossRef
47.
Zurück zum Zitat Packard NH, Crutchfield JP, Farmer JD, Shaw RS. Geometry from a time series. Phys Rev Lett. 1980;45(9):712.CrossRef Packard NH, Crutchfield JP, Farmer JD, Shaw RS. Geometry from a time series. Phys Rev Lett. 1980;45(9):712.CrossRef
49.
Zurück zum Zitat Peng Y, Lei M, Li J-B, Peng X-Y. A novel hybridization of echo state networks and multiplicative seasonal ARIMA model for mobile communication traffic series forecasting. Neural Comput & Applic. 2014;24(3-4): 883–890.CrossRef Peng Y, Lei M, Li J-B, Peng X-Y. A novel hybridization of echo state networks and multiplicative seasonal ARIMA model for mobile communication traffic series forecasting. Neural Comput & Applic. 2014;24(3-4): 883–890.CrossRef
50.
Zurück zum Zitat Rényi A. On the dimension and entropy of probability distributions. Acta Mathematica Academiae Scientiarum Hungarica. 1959;10(1-2):193–215.CrossRef Rényi A. On the dimension and entropy of probability distributions. Acta Mathematica Academiae Scientiarum Hungarica. 1959;10(1-2):193–215.CrossRef
51.
Zurück zum Zitat Rhodes C, Morari M. The false nearest neighbors algorithm: An overview. Comput Chem Eng. 1997;21: S1149–S1154.CrossRef Rhodes C, Morari M. The false nearest neighbors algorithm: An overview. Comput Chem Eng. 1997;21: S1149–S1154.CrossRef
52.
Zurück zum Zitat Scardapane S, Comminiello D, Scarpiniti M, Uncini A. Significance-Based Pruning for Reservoir’s Neurons in Echo State Networks: Springer International Publishing, Cham; 2015, pp. 31–38. ISBN 978-3-319-18164-6. doi:10.1007/978-3-319-18164-6_4. Scardapane S, Comminiello D, Scarpiniti M, Uncini A. Significance-Based Pruning for Reservoir’s Neurons in Echo State Networks: Springer International Publishing, Cham; 2015, pp. 31–38. ISBN 978-3-319-18164-6. doi:10.​1007/​978-3-319-18164-6_​4.
53.
Zurück zum Zitat Schölkopf B, Smola A, Müller K-R. Kernel principal component analysis. International Conference on Artificial Neural Networks. Springer; 1997. p. 583–588. Schölkopf B, Smola A, Müller K-R. Kernel principal component analysis. International Conference on Artificial Neural Networks. Springer; 1997. p. 583–588.
54.
Zurück zum Zitat Schölkopf B, Smola AJ, Williamson RC, Bartlett PL. New support vector algorithms. Neural Comput. 2000;12(5):1207– 1245.CrossRefPubMed Schölkopf B, Smola AJ, Williamson RC, Bartlett PL. New support vector algorithms. Neural Comput. 2000;12(5):1207– 1245.CrossRefPubMed
55.
Zurück zum Zitat Skowronski MD, Harris JG. Automatic speech recognition using a predictive echo state network classifier. Neural Netw. 2007;20(3):414–423.CrossRefPubMed Skowronski MD, Harris JG. Automatic speech recognition using a predictive echo state network classifier. Neural Netw. 2007;20(3):414–423.CrossRefPubMed
57.
Zurück zum Zitat Takens F. Detecting strange attractors in turbulence. Berlin, Heidelberg: Springer Berlin Heidelberg; 1981, pp. 366–381. ISBN 978-3-540-38945-3. doi:10.1007/BFb0091924. Takens F. Detecting strange attractors in turbulence. Berlin, Heidelberg: Springer Berlin Heidelberg; 1981, pp. 366–381. ISBN 978-3-540-38945-3. doi:10.​1007/​BFb0091924.
58.
Zurück zum Zitat Van Der Maaten L, Postma E, Van den Herik J. Dimensionality reduction: a comparative. J Mach Learn Res. 2009;10:66–71. Van Der Maaten L, Postma E, Van den Herik J. Dimensionality reduction: a comparative. J Mach Learn Res. 2009;10:66–71.
59.
Zurück zum Zitat Varshney S, Verma T. Half Hourly Electricity Load Prediction using Echo State Network. International Journal of Science and Research. 2014;3(6):885–888. Varshney S, Verma T. Half Hourly Electricity Load Prediction using Echo State Network. International Journal of Science and Research. 2014;3(6):885–888.
60.
Zurück zum Zitat Verstraeten D, Schrauwen B. On the quantification of dynamics in reservoir computing. Artificial Neural Networks – ICANN 2009. In: Alippi C, Polycarpou M, Panayiotou C, and Ellinas G, editors. Heidelberg: Springer Berlin; 2009. p. 985–994. ISBN 978-3-642-04273-7. doi:10.1007/978-3-642-04274-4_101. Verstraeten D, Schrauwen B. On the quantification of dynamics in reservoir computing. Artificial Neural Networks – ICANN 2009. In: Alippi C, Polycarpou M, Panayiotou C, and Ellinas G, editors. Heidelberg: Springer Berlin; 2009. p. 985–994. ISBN 978-3-642-04273-7. doi:10.​1007/​978-3-642-04274-4_​101.
61.
Zurück zum Zitat Wierstra D, Gomez FJ, Schmidhuber J. Modeling systems with internal state using evolino. Proceedings of the 7th annual conference on Genetic and evolutionary computation. ACM; 2005. p. 1795–1802. Wierstra D, Gomez FJ, Schmidhuber J. Modeling systems with internal state using evolino. Proceedings of the 7th annual conference on Genetic and evolutionary computation. ACM; 2005. p. 1795–1802.
62.
Zurück zum Zitat Wolf A, Swift JB, Swinney HL, Vastano JA. Determining lyapunov exponents from a time series. Physica D: Nonlinear Phenomena. 1985;16(3):285–317.CrossRef Wolf A, Swift JB, Swinney HL, Vastano JA. Determining lyapunov exponents from a time series. Physica D: Nonlinear Phenomena. 1985;16(3):285–317.CrossRef
63.
Zurück zum Zitat Zhou S, Lafferty J, Wasserman L. Compressed and privacy-sensitive sparse regression. IEEE Trans Inf Theory. 2009;55(2):846–866.CrossRef Zhou S, Lafferty J, Wasserman L. Compressed and privacy-sensitive sparse regression. IEEE Trans Inf Theory. 2009;55(2):846–866.CrossRef
65.
Zurück zum Zitat Cover TM. Geometrical and statistical properties of systems of linear inequalities with applications in pattern recognition. IEEE Transactions on Electronic Computers. 1965;EC-14(3):326–334. ISSN 0367-7508. doi:10.1109/PGEC.1965.264137.CrossRef Cover TM. Geometrical and statistical properties of systems of linear inequalities with applications in pattern recognition. IEEE Transactions on Electronic Computers. 1965;EC-14(3):326–334. ISSN 0367-7508. doi:10.​1109/​PGEC.​1965.​264137.CrossRef
Metadaten
Titel
Training Echo State Networks with Regularization Through Dimensionality Reduction
verfasst von
Sigurd Løkse
Filippo Maria Bianchi
Robert Jenssen
Publikationsdatum
13.01.2017
Verlag
Springer US
Erschienen in
Cognitive Computation / Ausgabe 3/2017
Print ISSN: 1866-9956
Elektronische ISSN: 1866-9964
DOI
https://doi.org/10.1007/s12559-017-9450-z

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