Visible to the public Data centric trust evaluation and prediction framework for IOT

TitleData centric trust evaluation and prediction framework for IOT
Publication TypeConference Paper
Year of Publication2017
AuthorsJayasinghe, U., Otebolaku, A., Um, T. W., Lee, G. M.
Conference Name2017 ITU Kaleidoscope: Challenges for a Data-Driven Society (ITU K)
ISBN Number978-9-2612-4281-7
Keywordscollaborative filtering, composability, Computational modeling, cyber physical systems, Data models, data trust, decision making, Ensemble Learning, Experience, knowledge, Measurement, Numerical models, pubcrawl, reputation, Resiliency, standardization, Trustworthy Systems
Abstract

Application of trust principals in internet of things (IoT) has allowed to provide more trustworthy services among the corresponding stakeholders. The most common method of assessing trust in IoT applications is to estimate trust level of the end entities (entity-centric) relative to the trustor. In these systems, trust level of the data is assumed to be the same as the trust level of the data source. However, most of the IoT based systems are data centric and operate in dynamic environments, which need immediate actions without waiting for a trust report from end entities. We address this challenge by extending our previous proposals on trust establishment for entities based on their reputation, experience and knowledge, to trust estimation of data items [1-3]. First, we present a hybrid trust framework for evaluating both data trust and entity trust, which will be enhanced as a standardization for future data driven society. The modules including data trust metric extraction, data trust aggregation, evaluation and prediction are elaborated inside the proposed framework. Finally, a possible design model is described to implement the proposed ideas.

URLhttp://ieeexplore.ieee.org/document/8246999/
DOI10.23919/ITU-WT.2017.8246999
Citation Keyjayasinghe_data_2017