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- Title
Cryptocurrency returns prediction using candlestick patterns analysis and multi-layer deep LSTM neural networks.
- Authors
VAHIDPOUR, Mohammad; DANESHVAR, Amir; KHOUZANI, Mohsen AMINI; HOMAYOUNFAR, Mahdi
- Abstract
Financial markets are characterised by their dynamic, non-linear, and fluctuating nature. Analysing financial time series in these contexts is a complex and challenging task. Candlestick patterns are recognised as among the most widely used financial tools and offer invaluable insights into market sentiment and psychology. However, manual analysis of these patterns presents significant challenges. Therefore, leveraging machine learning methods becomes a necessity for overcoming these challenges. In this study, a four-step framework was introduced in which the data preparation process is executed on the price data of the 20 cryptocurrencies. Forty-eight candlestick patterns were extracted alongside returns. Employing the long shortterm memory (LSTM) neural network, structured with multiple layers, each specialising in a specific cryptocurrency, enables individualised prediction of market returns. Evaluation of model accuracy and sensitivity is conducted via the confusion matrix, and two distinct trading strategies assess the capital portfolio. The research findings underscore the profitability of the proposed model across all scenarios. Candlestick patterns serve as powerful tools for understanding market sentiments and identifying shifts in market trends. However, their standalone efficacy is limited. Integrating them with other technical analysis tools facilitates more informed decision-making and fosters a deeper understanding of market dynamics.
- Subjects
CRYPTOCURRENCIES; CANDLESTICKS; MARKET sentiment; MACHINE learning; PRICES; DEEP learning
- Publication
Romanian Journal of Information Technology & Automatic Control / Revista Română de Informatică și Automatică, 2024, Vol 34, Issue 1, p109
- ISSN
1220-1758
- Publication type
Article
- DOI
10.33436/v34i1y202410