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      <dc:title>Enhancing financial time series forecasting through topological data analysis</dc:title>
      <dc:creator>De Jesús, luiz Carlos</dc:creator>
      <dc:creator>Fernández-Navarro, Francisco de Asís</dc:creator>
      <dc:creator>Carbonero-Ruz, Mariano</dc:creator>
      <dc:subject>Análisis de datos</dc:subject>
      <dc:description>Topological data analysis (TDA) is increasingly acknowledged within financial markets for its capacity to manage&#xd;
complexity and discern nuanced patterns and structures. It has been applied effectively to uncover intricate relationships&#xd;
and capture non-linear dependencies inherent in market data. This manuscript presents a groundbreaking study that delves&#xd;
into integrating features derived from TDA to improve the performance of forecasting models for univariate time series&#xd;
prediction. The research specifically examines whether incorporating features extracted from TDA-such as entropy,&#xd;
amplitude, and the number of points obtained from persistent diagrams can provide valuable supplementary information to&#xd;
the baseline forecasting model. Thus, the aim is to determine if these TDA-derived features can boost forecasting accuracy&#xd;
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.&#xd;
The proposed methodology is compared against a univariate N-BEATS model without additional features and other&#xd;
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&#xd;
instruments across two scenarios each, resulting in 32 datasets. The results obtained were promising, as the proposed&#xd;
method, N - BEATS +TDA, achieved the best results in mean performance and mean ranking for the three metrics considered&#xd;
(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.</dc:description>
      <dc:date>2025-01-21T08:24:06Z</dc:date>
      <dc:date>2025-01-21T08:24:06Z</dc:date>
      <dc:date>2025-01-17</dc:date>
      <dc:type>journal article</dc:type>
      <dc:identifier>de Jesus, L.C., Fernández-Navarro, F. &amp; Carbonero-Ruz, M. Enhancing financial time series forecasting through topological data analysis. Neural Comput &amp; Applic (2025). https://doi.org/10.1007/s00521-024-10787-x</dc:identifier>
      <dc:identifier>https://hdl.handle.net/10630/36603</dc:identifier>
      <dc:identifier>10.1007/s00521-024-10787-x</dc:identifier>
      <dc:language>eng</dc:language>
      <dc:rights>http://creativecommons.org/licenses/by/4.0/</dc:rights>
      <dc:rights>open access</dc:rights>
      <dc:rights>Atribución 4.0 Internacional</dc:rights>
      <dc:publisher>Springer Nature</dc:publisher>
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