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Financial forecasting through unsupervised clustering and neural networks

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Financial forecasting through unsupervised clustering and neural networks. / Pavlidis, Nicos; Plagianakos, Vassilis P.; Tasoulis, Dimitrios K et al.
In: Operational Research, Vol. 6, No. 2, 05.2006, p. 103-127.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Pavlidis, N, Plagianakos, VP, Tasoulis, DK & Vrahatis, MN 2006, 'Financial forecasting through unsupervised clustering and neural networks', Operational Research, vol. 6, no. 2, pp. 103-127. https://doi.org/10.1007/BF02941227

APA

Pavlidis, N., Plagianakos, V. P., Tasoulis, D. K., & Vrahatis, M. N. (2006). Financial forecasting through unsupervised clustering and neural networks. Operational Research, 6(2), 103-127. https://doi.org/10.1007/BF02941227

Vancouver

Pavlidis N, Plagianakos VP, Tasoulis DK, Vrahatis MN. Financial forecasting through unsupervised clustering and neural networks. Operational Research. 2006 May;6(2):103-127. doi: 10.1007/BF02941227

Author

Pavlidis, Nicos ; Plagianakos, Vassilis P. ; Tasoulis, Dimitrios K et al. / Financial forecasting through unsupervised clustering and neural networks. In: Operational Research. 2006 ; Vol. 6, No. 2. pp. 103-127.

Bibtex

@article{d81957babe724cf1925bf56ba83b8c32,
title = "Financial forecasting through unsupervised clustering and neural networks",
abstract = "In this paper, we review our work on a time series forecasting methodology based on the combination of unsupervised clustering and artificial neural networks. To address noise and non-stationarity, a common approach is to combine a method for the partitioning of the input space into a number of subspaces with a local approximation scheme for each subspace. Unsupervised clustering algorithms have the desirable property of deciding on the number of partitions required to accurately segment the input space during the clustering process, thus relieving the user from making this ad hoc choice. Artificial neural networks, on the other hand, are powerful computational models that have proved their capabilities on numerous hard real-world problems. The time series that we consider are all daily spot foreign exchange rates of major currencies. The experimental results reported suggest that predictability varies across different regions of the input space, irrespective of clustering algorithm. In all cases, there are regions that are associated with a particularly high forecasting performance. Evaluating the performance of the proposed methodology with respect to its profit generating capability indicates that it compares favorably with that of two other established approaches. Moving from the task of one-step-ahead to multiple-step-ahead prediction, performance deteriorates rapidly.",
keywords = "Time Series Modeling and Prediction, Unsupervised Clustering , Neural Networks",
author = "Nicos Pavlidis and Plagianakos, {Vassilis P.} and Tasoulis, {Dimitrios K} and Vrahatis, {Michael N.}",
year = "2006",
month = may,
doi = "10.1007/BF02941227",
language = "English",
volume = "6",
pages = "103--127",
journal = "Operational Research",
issn = "1866-1505",
publisher = "Springer Verlag",
number = "2",

}

RIS

TY - JOUR

T1 - Financial forecasting through unsupervised clustering and neural networks

AU - Pavlidis, Nicos

AU - Plagianakos, Vassilis P.

AU - Tasoulis, Dimitrios K

AU - Vrahatis, Michael N.

PY - 2006/5

Y1 - 2006/5

N2 - In this paper, we review our work on a time series forecasting methodology based on the combination of unsupervised clustering and artificial neural networks. To address noise and non-stationarity, a common approach is to combine a method for the partitioning of the input space into a number of subspaces with a local approximation scheme for each subspace. Unsupervised clustering algorithms have the desirable property of deciding on the number of partitions required to accurately segment the input space during the clustering process, thus relieving the user from making this ad hoc choice. Artificial neural networks, on the other hand, are powerful computational models that have proved their capabilities on numerous hard real-world problems. The time series that we consider are all daily spot foreign exchange rates of major currencies. The experimental results reported suggest that predictability varies across different regions of the input space, irrespective of clustering algorithm. In all cases, there are regions that are associated with a particularly high forecasting performance. Evaluating the performance of the proposed methodology with respect to its profit generating capability indicates that it compares favorably with that of two other established approaches. Moving from the task of one-step-ahead to multiple-step-ahead prediction, performance deteriorates rapidly.

AB - In this paper, we review our work on a time series forecasting methodology based on the combination of unsupervised clustering and artificial neural networks. To address noise and non-stationarity, a common approach is to combine a method for the partitioning of the input space into a number of subspaces with a local approximation scheme for each subspace. Unsupervised clustering algorithms have the desirable property of deciding on the number of partitions required to accurately segment the input space during the clustering process, thus relieving the user from making this ad hoc choice. Artificial neural networks, on the other hand, are powerful computational models that have proved their capabilities on numerous hard real-world problems. The time series that we consider are all daily spot foreign exchange rates of major currencies. The experimental results reported suggest that predictability varies across different regions of the input space, irrespective of clustering algorithm. In all cases, there are regions that are associated with a particularly high forecasting performance. Evaluating the performance of the proposed methodology with respect to its profit generating capability indicates that it compares favorably with that of two other established approaches. Moving from the task of one-step-ahead to multiple-step-ahead prediction, performance deteriorates rapidly.

KW - Time Series Modeling and Prediction

KW - Unsupervised Clustering

KW - Neural Networks

U2 - 10.1007/BF02941227

DO - 10.1007/BF02941227

M3 - Journal article

VL - 6

SP - 103

EP - 127

JO - Operational Research

JF - Operational Research

SN - 1866-1505

IS - 2

ER -