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http://dx.doi.org/10.9716/KITS.2020.19.6.131

Development of Deep Learning Ensemble Modeling for Cryptocurrency Price Prediction : Deep 4-LSTM Ensemble Model  

Choi, Soo-bin (연세대학교 정보대학원)
Shin, Dong-hoon (연세대학교 정보대학원)
Yoon, Sang-Hyeak (스마트미디어렙)
Kim, Hee-Woong (연세대학교 정보대학원)
Publication Information
Journal of Information Technology Services / v.19, no.6, 2020 , pp. 131-144 More about this Journal
Abstract
As the blockchain technology attracts attention, interest in cryptocurrency that is received as a reward is also increasing. Currently, investments and transactions are continuing with the expectation and increasing value of cryptocurrency. Accordingly, prediction for cryptocurrency price has been attempted through artificial intelligence technology and social sentiment analysis. The purpose of this paper is to develop a deep learning ensemble model for predicting the price fluctuations and one-day lag price of cryptocurrency based on the design science research method. This paper intends to perform predictive modeling on Ethereum among cryptocurrencies to make predictions more efficiently and accurately than existing models. Therefore, it collects data for five years related to Ethereum price and performs pre-processing through customized functions. In the model development stage, four LSTM models, which are efficient for time series data processing, are utilized to build an ensemble model with the optimal combination of hyperparameters found in the experimental process. Then, based on the performance evaluation scale, the superiority of the model is evaluated through comparison with other deep learning models. The results of this paper have a practical contribution that can be used as a model that shows high performance and predictive rate for cryptocurrency price prediction and price fluctuations. Besides, it shows academic contribution in that it improves the quality of research by following scientific design research procedures that solve scientific problems and create and evaluate new and innovative products in the field of information systems.
Keywords
Deep Learning; Ensemble Modeling; Cryptocurrency; Design Science; Price Prediction;
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Times Cited By KSCI : 2  (Citation Analysis)
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