Enhancing financial time series forecasting through topological data analysis
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Springer Nature
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Abstract
Topological data analysis (TDA) is increasingly acknowledged within financial markets for its capacity to manage
complexity and discern nuanced patterns and structures. It has been applied effectively to uncover intricate relationships
and capture non-linear dependencies inherent in market data. This manuscript presents a groundbreaking study that delves
into integrating features derived from TDA to improve the performance of forecasting models for univariate time series
prediction. The research specifically examines whether incorporating features extracted from TDA-such as entropy,
amplitude, and the number of points obtained from persistent diagrams can provide valuable supplementary information to
the baseline forecasting model. Thus, the aim is to determine if these TDA-derived features can boost forecasting accuracy
by offering additional insights that existing models might overlook. The N-BEATS model serves as the baseline forecasting model due to its robust generalization capabilities and flexibility in incorporating additional features into the model.
The proposed methodology is compared against a univariate N-BEATS model without additional features and other
strategies incorporating supplementary features such as temporal decomposition and time delay embeddings. The evaluation includes forecasting for six cryptocurrencies across four distinct time scenarios and four traditional financial
instruments across two scenarios each, resulting in 32 datasets. The results obtained were promising, as the proposed
method, N - BEATS +TDA, achieved the best results in mean performance and mean ranking for the three metrics considered
(MAPE, MAE, and RMSE). Significant differences were observed with the rest of the proposed methods using a significance level of a α = 0:10, highlighting the effectiveness of integrating TDA features to enhance forecasting models.
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de Jesus, L.C., Fernández-Navarro, F. & Carbonero-Ruz, M. Enhancing financial time series forecasting through topological data analysis. Neural Comput & Applic (2025). https://doi.org/10.1007/s00521-024-10787-x
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Except where otherwised noted, this item's license is described as Atribución 4.0 Internacional









