NFT price and sales characteristics prediction by transfer learning of visual attributes

Q1 Mathematics
Mustafa Pala, Emre Sefer
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引用次数: 0

Abstract

Non-fungible tokens (NFTs) are unique digital assets whose possession is defined over a blockchain. NFTs can represent multiple distinct objects such as art, images, videos, etc. There was a recent surge of interest in trading them which makes them another type of alternative investment. The inherent volatility of NFT prices, attributed to factors such as over-speculation, liquidity constraints, rarity, and market volatility, presents challenges for accurate price predictions. For such analysis and forecasting, machine learning methods offer a robust solution framework.
Here, we focus on three related prediction problems over NFTs: Predicting NFTs sale price, inferring whether a given NFT will participate in a secondary sale, and predicting NFT's sale price change over time. We analyze and learn the visual characteristics of NFTs by deep pre-trained models and combine such visual knowledge with additional important non-visual attributes such as the sale history, seller's and buyer's centralities in the trading network, and collection's resale probability. We categorize input NFTs into six categories based on their characteristics. Across detailed experiments, we found visual attributes obtained from deep pre-trained models to increase the prediction performance in all cases, and EfficientNet seems to perform the best. In general, CNN and XGBoost consistently outperformed the rest of them across all categories. We also publish our novel NFT dataset with temporal price knowledge, which is the first dataset to have NFT prices over time rather than at a single time point. Our code and NFT datasets are publicly available at https://github.com/seferlab/deep_nft.
基于视觉属性迁移学习的NFT价格与销售特征预测
不可替代代币(nft)是一种独特的数字资产,其所有权被定义为超过100亿美元。nft可以表示多个不同的对象,如艺术、图像、视频等。最近人们对它们的交易兴趣激增,这使它们成为另一种另类投资。由于过度投机、流动性限制、稀有和市场波动等因素,NFT价格的固有波动性对准确的价格预测提出了挑战。对于这种分析和预测,机器学习方法提供了一个强大的解决方案框架。在这里,我们关注三个相关的NFT预测问题:预测NFT的销售价格,推断给定的NFT是否会参与二次销售,以及预测NFT的销售价格随时间的变化。我们通过深度预训练模型分析和学习nft的视觉特征,并将这些视觉知识与其他重要的非视觉属性(如销售历史、交易网络中卖方和买方的中心性以及收藏品的转售概率)结合起来。我们根据输入nft的特征将其分为六类。通过详细的实验,我们发现从深度预训练模型中获得的视觉属性在所有情况下都能提高预测性能,而effentnet似乎表现最好。总的来说,CNN和XGBoost在所有类别中都表现得比其他产品好。我们还发布了具有时间价格知识的新颖NFT数据集,这是第一个随时间而不是单个时间点具有NFT价格的数据集。我们的代码和NFT数据集可以在https://github.com/seferlab/deep_nft上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
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