SteemOps:基于区块链的Steemit社交媒体平台中关键操作的提取和分析

Chao Li, Balaji Palanisamy, Runhua Xu, Jinlai Xu, Jingzhe Wang
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引用次数: 10

摘要

分布式账本技术的进步正在推动基于区块链的社交媒体平台(如Steemit)的兴起,在这些平台上,用户之间的互动方式与传统社交网络类似。这些平台由用户在加密货币生态系统中使用分散的共识协议自主管理。社交网络和区块链在这些平台上的深度整合为研究社区感兴趣的许多跨领域研究提供了潜力。然而,处理和分析大量原始Steemit数据具有挑战性,因为它需要软件工程和区块链系统的专业技能,并且需要在提取和过滤各种类型的操作方面付出大量努力。为了应对这一挑战,我们收集了2016/03年至2019/11年45个月期间在Steemit生成的3800多万个区块,并提取了用户执行的十种关键操作类型。结果生成了SteemOps,这是一个新的数据集,将来自Steemit的9亿多个操作组织成三个子数据集,即(i)社交网络操作数据集(SOD), (ii)证人选举操作数据集(WOD)和(iii)价值转移操作数据集(VOD)。我们详细描述了数据集模式及其用法,并概述了使用SteemOps的可能的未来研究。SteemOps旨在促进未来的研究,旨在为新兴的基于区块链的社交媒体平台提供更深入的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SteemOps: Extracting and Analyzing Key Operations in Steemit Blockchain-based Social Media Platform
Advancements in distributed ledger technologies are driving the rise of blockchain-based social media platforms such as Steemit, where users interact with each other in similar ways as conventional social networks. These platforms are autonomously managed by users using decentralized consensus protocols in a cryptocurrency ecosystem. The deep integration of social networks and blockchains in these platforms provides potential for numerous cross-domain research studies that are of interest to both the research communities. However, it is challenging to process and analyze large volumes of raw Steemit data as it requires specialized skills in both software engineering and blockchain systems and involves substantial efforts in extracting and filtering various types of operations. To tackle this challenge, we collect over 38 million blocks generated in Steemit during a 45 month time period from 2016/03 to 2019/11 and extract ten key types of operations performed by the users. The results generate SteemOps, a new dataset that organizes more than 900 million operations from Steemit into three sub-datasets namely (i) social-network operation dataset (SOD), (ii) witness-election operation dataset (WOD) and (iii) value-transfer operation dataset (VOD). We describe the dataset schema and its usage in detail and outline possible future research studies using SteemOps. SteemOps is designed to facilitate future research aimed at providing deeper insights on emerging blockchain-based social media platforms.
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