ColChain: Collaborative Linked Data Networks

Christian Aebeloe, Gabriela Montoya, K. Hose
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引用次数: 14

Abstract

One of the major obstacles that currently prevents the Semantic Web from exploiting its full potential is that the data it provides access to is sometimes not available or outdated. The reason is rooted deep within its architecture that relies on data providers to keep the data available, queryable, and up-to-date at all times – an expectation that many data providers in reality cannot live up to for an extended (or infinite) period of time. Hence, decentralized architectures have recently been proposed that use replication to keep the data available in case the data provider fails. Although this increases availability, it does not help keeping the data up-to-date or allow users to query and access previous versions of a dataset. In this paper, we therefore propose ColChain (COLlaborative knowledge CHAINs), a novel decentralized architecture based on blockchains that not only lowers the burden for the data providers but at the same time also allows users to propose updates to faulty or outdated data, trace updates back to their origin, and query older versions of the data. Our extensive experiments show that ColChain reaches these goals while achieving query processing performance comparable to the state of the art.
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ColChain:协作关联数据网络
目前阻碍语义网充分发挥其潜力的主要障碍之一是,它提供访问的数据有时不可用或过时。其原因深深植根于它的体系结构中,该体系结构依赖于数据提供者来保持数据的可用性、可查询性和随时更新——这是许多数据提供者在长时间(或无限时间)内无法实现的期望。因此,最近有人提出使用复制来保持数据可用的分散架构,以防数据提供者出现故障。虽然这增加了可用性,但它无助于保持数据的最新或允许用户查询和访问数据集的以前版本。因此,在本文中,我们提出了ColChain(协作知识链),这是一种基于区块链的新型去中心化架构,它不仅降低了数据提供者的负担,同时还允许用户对错误或过时的数据提出更新建议,追溯更新的来源,并查询旧版本的数据。我们的大量实验表明,ColChain达到了这些目标,同时实现了与最先进的查询处理性能相当的性能。
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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