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Initial coin offering prediction comparison using Ridge regression, artificial neural network, random forest regression, and hybrid ANN-Ridge

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dc.title Initial coin offering prediction comparison using Ridge regression, artificial neural network, random forest regression, and hybrid ANN-Ridge en
dc.contributor.author Tran, Toai Kim
dc.contributor.author Šenkeřík, Roman
dc.contributor.author Hanh, Vo Thi Xuan
dc.contributor.author Huan, Vo Minh
dc.contributor.author Ulrich, Adam
dc.contributor.author Musil, Marek
dc.contributor.author Zelinka, Ivan
dc.relation.ispartof Mendel
dc.identifier.issn 1803-3814 Scopus Sources, Sherpa/RoMEO, JCR
dc.date.issued 2023
utb.relation.volume 29
utb.relation.issue 2
dc.citation.spage 283
dc.citation.epage 294
dc.type article
dc.language.iso en
dc.publisher Brno University of Technology
dc.identifier.doi 10.13164/mendel.2023.2.283
dc.relation.uri https://mendel-journal.org/index.php/mendel/article/view/282
dc.relation.uri https://mendel-journal.org/index.php/mendel/article/view/282/224
dc.relation.uri https://doi.org/10.13164/mendel.2023.2.283
dc.subject artificial neural network en
dc.subject ICO en
dc.subject linear regression en
dc.subject multi-correlation en
dc.subject one-hot encoding en
dc.subject prediction en
dc.subject random forest regression en
dc.subject Ridge regression en
dc.description.abstract Can machine learning take a prediction to win an investment in ICO (Initial Coin Offering)? In this research work, our objective is to answer this question. Four popular and lower computational demanding approaches including Ridge regression (RR), Artificial neural network (ANN), Random forest regression (RFR), and a hybrid ANN-Ridge regression are compared in terms of accuracy metrics to predict ICO value after six months. We use a dataset collected from 109 ICOs that were obtained from the cryptocurrency websites after data preprocessing. The dataset consists of 12 fields covering the main factors that affect the value of an ICO. One-hot encoding technique is applied to convert the alphanumeric form into a binary format to perform better predictions; thus, the dataset has been expanded to 128 columns and 109 rows. Input data (variables) and ICO value are non-linear dependent. The Artificial neural network algorithm offers a bio-inspired mathematical model to solve the complex non-linear relationship between input variables and ICO value. The linear regression model has problems with overfitting and multicollinearity that make the ICO prediction inaccurate. On the contrary, the Ridge regression algorithm overcomes the correlation problem that independent variables are highly correlated to the output value when dealing with ICO data. Random forest regression does avoid overfitting by growing a large decision tree to minimize the prediction error. Hybrid ANN-Ridge regression leverages the strengths of both algorithms to improve prediction accuracy. By combining ANN’s ability to capture complex non-linear relationships with the regularization capabilities of Ridge regression, the hybrid can potentially provide better predictive performance compared to using either algorithm individually. After the training process with the cross-validation technique and the parameter fitting process, we obtained several models but selected three of the best in each algorithm based on metrics of RMSE (Root Mean Square Error), R2 (R-squared), and MAE (Mean Absolute Error). The validation results show that the presented Ridge regression approach has an accuracy of at most 99% of the actual value. The Artificial neural network predicts the ICO value with an accuracy of up to 98% of the actual value after six months. Additionally, the Random forest regression and the hybrid ANN-Ridge regression improve the predictive accuracy to 98% actual value. en
utb.faculty Faculty of Applied Informatics
dc.identifier.uri http://hdl.handle.net/10563/1011893
utb.identifier.obdid 43885306
utb.identifier.scopus 2-s2.0-85183121384
utb.source j-scopus
dc.date.accessioned 2024-02-14T13:51:56Z
dc.date.available 2024-02-14T13:51:56Z
dc.rights Attribution-NonCommercial-ShareAlike 4.0 International
dc.rights.uri https://creativecommons.org/licenses/by-nc-sa/4.0/
dc.rights.access openAccess
utb.contributor.internalauthor Šenkeřík, Roman
utb.contributor.internalauthor Ulrich, Adam
utb.contributor.internalauthor Musil, Marek
utb.fulltext.affiliation Toai Kim Tran a, Roman Senkerik b, Hanh Thi Xuan Vo a, Huan Minh Vo a, Adam Ulrich c, Marek Musil c,Ivan Zelinka b a Ho Chi Minh University of Technology and Education, Vietnam b VSB-Technical University of Ostrava, Ostrava-Poruba, Czech Repulic c Tomas Bata University, Zlin, Czech Republic
utb.fulltext.dates Received:10 November 2023 Accepted:14 December 2023 Online:14 December 2023 Published:20 December 2023
utb.fulltext.sponsorship Supported by Internal Grant Agency of Tomas Bata University under project no. IGA/CebiaTech/2023/004, and by the resources of A.I.Lab at the Faculty of Applied Informatics, Tomas Bata University in Zlin, Czech Republic. Further supported by the European Union under the REFRESH — Research Excellence For Region Sustainability and High-tech Industries project number CZ.10.03.01/00/22-003/0000048 via the Operational Programme Just Transition. The following grants are also acknowledged for the financial support provided for this research: grant of SGS No. SP2023/050, VŠB-Technical University of Ostrava, Czech Republic.
utb.scopus.affiliation Ho Chi Minh University of Technology and Education, Viet Nam; VSB-Technical University of Ostrava, Poruba, Ostrava, Czech Republic; Tomas Bata University, Zlin, Czech Republic
utb.fulltext.projects IGA/CebiaTech/2023/004
utb.fulltext.projects CZ.10.03.01/00/22-003/0000048
utb.fulltext.projects SP2023/050
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