Forecasting NFT coin prices using machine learning: Insights into feature significance and portfolio strategies
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DOI: 10.1016/j.gfj.2023.100904
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Cited by:
- Mingxuan He, 2023. "Deep Learning for Dynamic NFT Valuation," Papers 2312.05346, arXiv.org.
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Keywords
Forecasting NFT coin prices; Machine learning; Random forests; Technical indicators; Portfolio analysis;All these keywords.
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