Stock Price Forecasting Through Symbolic Dynamics and State Transition Graphs With a Convolutional Recurrent Neural Network Architecture

dc.authorscopusid 58641292900
dc.authorscopusid 35479982700
dc.authorscopusid 57193505462
dc.authorscopusid 24328990900
dc.contributor.author Mirza, F.K.
dc.contributor.author Pekcan, Ö.
dc.contributor.author Hekimoğlu, M.
dc.contributor.author Baykaş, T.
dc.date.accessioned 2025-06-15T21:48:54Z
dc.date.available 2025-06-15T21:48:54Z
dc.date.issued 2025
dc.department Kadir Has University en_US
dc.department-temp [Mirza F.K.] Faculty of Engineering and Natural Sciences, Kadir Has University, Cibali, Istanbul, 34083, Turkey; [Pekcan Ö.] Faculty of Engineering and Natural Sciences, Kadir Has University, Cibali, Istanbul, 34083, Turkey; [Hekimoğlu M.] Faculty of Engineering and Natural Sciences, Kadir Has University, Cibali, Istanbul, 34083, Turkey; [Baykaş T.] Faculty of Engineering and Natural Sciences, Kadir Has University, Cibali, Istanbul, 34083, Turkey en_US
dc.description.abstract Accurate stock price forecasting remains a critical challenge in financial analytics due to volatile market conditions, non-stationary dynamics, and abrupt regime shifts that often defy traditional modeling techniques. This study proposes a comprehensive framework for stock price forecasting that integrates symbolic dynamics, graph-based state representations, and deep learning. By converting continuous-valued stock prices into discrete symbolic states representing amplitude and trend information, the method constructs transition matrices capturing probabilistic relationships within financial time series. These transition matrices are then processed by a convolutional recurrent neural network (CRNN), in which convolutional layers isolate local spatial dependencies in the symbolic-state domain, while recurrent LSTM layers capture multi-scale temporal dynamics extending across multiple time horizons. Experimental evaluations are conducted over prediction horizons of 1 day, 10 days, and 100 days, spanning pre-COVID, COVID, and post-COVID market regimes. The results indicate that while longer prediction horizons naturally incur greater forecasting uncertainty due to compounding variability, the integration of symbolic-state preprocessing with deep temporal modeling demonstrates significant robustness in handling non-stationary financial environments. During the stable pre-COVID period, the proposed methodology achieves reductions in mean squared error (MSE) of up to 98% relative to the volatile COVID phase, highlighting its capability to effectively leverage well-defined market patterns in stable economic conditions. Furthermore, the model consistently delivers competitive forecasting performance across all prediction horizons and market regimes. Collectively, these findings emphasize the potential of symbolic-state-based deep learning architectures as a viable pathway to address the complexity and volatility characteristic of modern financial markets. © The Author(s) 2025. en_US
dc.description.sponsorship Türkiye Bilimsel ve Teknolojik Araştırma Kurumu, TUBITAK en_US
dc.identifier.doi 10.1007/s00521-025-11325-z
dc.identifier.issn 0941-0643
dc.identifier.scopus 2-s2.0-105006886555
dc.identifier.scopusquality Q1
dc.identifier.uri https://doi.org/10.1007/s00521-025-11325-z
dc.identifier.uri https://hdl.handle.net/20.500.12469/7364
dc.identifier.wosquality Q2
dc.language.iso en en_US
dc.publisher Springer Science and Business Media Deutschland GmbH en_US
dc.relation.ispartof Neural Computing and Applications en_US
dc.relation.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı en_US
dc.rights info:eu-repo/semantics/closedAccess en_US
dc.scopus.citedbyCount 0
dc.subject Convolutional Recurrent Neural Network en_US
dc.subject Graph Signal Processing en_US
dc.subject Non-Stationary Time Series en_US
dc.subject Stock Price Forecasting en_US
dc.subject Symbolic Dynamics en_US
dc.title Stock Price Forecasting Through Symbolic Dynamics and State Transition Graphs With a Convolutional Recurrent Neural Network Architecture en_US
dc.type Article en_US
dspace.entity.type Publication

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