A Technique of Analyzing Trust Relationships to Facilitate Scientific Service Discovery and Recommendation

Jia Zhang, P. Votava, Tsengdar J. Lee, Shrikant Adhikarla, I. Kulkumjon, Matthew Schlau, Divya Natesan, R. Nemani
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引用次数: 11

Abstract

Most of the existing service discovery methods focus on finding candidate services based on functional and non-functional requirements. However, while the open science community engenders many similar scientific services, how to differentiate them remains a challenge. This paper proposes a trust model that leverages the implicit human factor to help quantify the trustworthiness of candidate services. A hierarchical Knowledge-Social-Trust (KST) network model is established to draw hidden information from various publication repositories (e.g., DBLP) and social networks (e.g., Twitter). As a proof of concept, a prototyping service has been developed to help scientists evaluate and visualize trust of services. The performance factor is studied and experience is reported.
基于信任关系分析的科学服务发现与推荐技术
大多数现有的服务发现方法都侧重于根据功能和非功能需求查找候选服务。然而,虽然开放科学社区产生了许多类似的科学服务,但如何区分它们仍然是一个挑战。本文提出了一种利用隐式人为因素来量化候选服务可信度的信任模型。建立了一个层次知识-社会-信任(KST)网络模型,从各种出版物存储库(如DBLP)和社交网络(如Twitter)中提取隐藏信息。作为概念验证,已经开发了一个原型服务来帮助科学家评估和可视化服务的信任。对性能因素进行了研究,并报告了经验。
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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