Forecasting NFT Prices on Web3 Blockchain Using Machine Learning to Provide SAAS NFT Collectors

R. Almajed, A. Abualkishik, Amera Ibrahim, Nahia Mourad
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引用次数: 1

Abstract

Non-Fungible Tokens (NFTs) are one-of-a-kind digital items with static or continuous visual and audio content. NFTs digitally represent any assets that may hold photos, gifs, audio, videos, or any other data-based storable material. These assets may come under a variety of asset groups, including art, in-game goods, and entertainment collecting units. What makes them appealing is their exclusivity, in the sense that each NFT is unique to itself, and ownership is determined by a digital certificate. In the first half of 2021, NFT sales totaled more than a billion. The NFT Software as a service (SAAS) based system is a one-of-a-kind offering and concept for thinking outside the box and presenting intellectuals and creative treasures and exhibiting these objects to ensure the security and integrity of digital assets. The existence of core decentralized networks allows for unrestricted access to this material as well as further analysis. Based on the Web3 Blockchain technology, these assets may be traded and represent next-generation ownership. In this paper, Adaptive Improved Convolutional Neural Networks (AICNN) are used to forecast NFT to provide a SAAS NFT collector. We also introduce Tree-seed Chaotic Atom Search Optimization (TSC-ASO) algorithm to optimize the forecasting process. The proposed method of NFT price forecasting is evaluated and compared with the existing forecasting methods. To produce an accurate report for NFT price forecasting, the proposed method will be effective.
利用机器学习预测Web3区块链上的NFT价格,提供SAAS NFT收集器
不可替代令牌(nft)是具有静态或连续视觉和音频内容的独一无二的数字项目。nft以数字方式表示可能包含照片,gif,音频,视频或任何其他基于数据的可存储材料的任何资产。这些资产可能属于各种资产组,包括美术、游戏内商品和娱乐收集单位。它们吸引人的地方在于它们的排他性,也就是说每个NFT都是独一无二的,所有权由数字证书决定。在2021年上半年,NFT的销售总额超过10亿。基于NFT软件即服务(SAAS)的系统是一种独一无二的产品和概念,用于跳出常规思维,展示知识分子和创意宝藏,并展示这些对象,以确保数字资产的安全性和完整性。核心分散网络的存在允许不受限制地访问这些材料以及进一步分析。基于Web3区块链技术,这些资产可以进行交易,代表下一代所有权。本文采用自适应改进卷积神经网络(AICNN)对NFT进行预测,提供了一个SAAS NFT收集器。我们还引入了树种子混沌原子搜索优化算法(TSC-ASO)来优化预测过程。对所提出的NFT价格预测方法进行了评价,并与现有的预测方法进行了比较。为了产生准确的NFT价格预测报告,所提出的方法是有效的。
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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