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Fusion: Practice and Applications
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Title

Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions

  Fabricio Lozada Torres 1 * ,   Sharon Álvarez Gómez 2 ,   Diego Palma Rivero 3 ,   Christian F. Tantaleán Odar 4 ,   Sayfuddinov Shukhrat 5

1  Universidad Regional Autónoma de los Andes (UNIANDES), Ecuador
    (ua.fabriciolozada@uniandes.edu.ec)

2  Universidad Regional Autónoma de los Andes (UNIANDES), Ecuador
    (dirfinanciera@uniandes.edu.ec)

3  Universidad Regional Autónoma de los Andes (UNIANDES), Ecuador
    (us.diegopalma@uniandes.edu.ec u)

4  Universidad Nacional Mayor de San Marcos, Peru
    (christian.tantalean@unmsm.edu)

5  TSUE Marketing department, Uzbekistan
    (s.sayfuddinov@tsue.uz)


Doi   :   https://doi.org/10.54216/FPA.140118

Received: July 24, 2023 Revised: October 17, 2023 Accepted: December 09, 2023

Abstract :

This research focuses on the identification of passengers, in dimensions using information fusion as a tool. We recognize the challenges involved in identifying individuals who have been transferred to alternate dimensions and in this study we make use of CatBoost, an open source machine learning algorithm to address this problem. Our approach includes a preprocessing strategy that involves filling in missing values using techniques like priori distribution terms, which helps ensure the reliability of our dataset. By leveraging CatBoosts ability to handle variables and prevent overfitting we achieve results in accurately predicting passenger movement across dimensions. Our analysis highlights CatBoosts effectiveness in identifying patterns within data leading to more precise predictions for interdimensional passenger transportation. Additionally we incorporate techniques, like Greedy TS augmentation to enhance the adaptability of the algorithm and improve precision while reducing bias in modeling. Proof-of-concept experiments demonstrate that the proposed fusion system not only advances predictive modeling in niche domains but also paves the way for broader applications of machine learning in deciphering complex phenomena beyond traditional realms, marking a significant stride in understanding and addressing unconventional challenges.

Keywords :

Interdimensional Travel; information fusion , Alternate Realms; Predictive Analytics Dimensional Transportation; Machine Learning; Passenger Identification; Parallel Universes; Artificial Intelligence; Multiverse Exploration

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Cite this Article as :
Style #
MLA Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat. "Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions." Fusion: Practice and Applications, Vol. 14, No. 1, 2024 ,PP. 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)
APA Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat. (2024). Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions. Journal of Fusion: Practice and Applications, 14 ( 1 ), 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)
Chicago Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat. "Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions." Journal of Fusion: Practice and Applications, 14 no. 1 (2024): 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)
Harvard Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat. (2024). Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions. Journal of Fusion: Practice and Applications, 14 ( 1 ), 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)
Vancouver Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat. Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions. Journal of Fusion: Practice and Applications, (2024); 14 ( 1 ): 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)
IEEE Fabricio Lozada Torres, Sharon Álvarez Gómez, Diego Palma Rivero, Christian F. Tantaleán Odar, Sayfuddinov Shukhrat, Predictive Modeling Through Fusion of Passengers Information Transferred to Alternate Dimensions, Journal of Fusion: Practice and Applications, Vol. 14 , No. 1 , (2024) : 252-262 (Doi   :  https://doi.org/10.54216/FPA.140118)