Applying Trust Patterns to Model Complex Trustworthiness in the Internet of Things

Author:

Messina Fabrizio1ORCID,Rosaci Domenico2,Sarnè Giuseppe M. L.3ORCID

Affiliation:

1. Department of Mathematics and Informatics (DMI), University of Catania, 95124 Catania, Italy

2. Department of Information Engineering, Infrastructure and Sustainable Energy (DIIES), University “Mediterranea” of Reggio Calabria, 89122 Reggio Calabria, Italy

3. Department of Psychology, Università Degli Studi of Milano Bicocca, 20126 Milan, Italy

Abstract

Key aspects of communities of the Internet of Things (IoT) smart objects presenting social aspects are represented by trust and reputation relationships between the objects. Several trustworthiness models have been presented in the literature in the context of multi-smart object community that could be adopted in the IoT scenario; however, most of these approaches represent the different dimensions of trust using scalar measures, then integrating these measures in a global trustworthiness value. In this paper, we discuss the limitation of this approach in the IoT context, highlighting the necessity of modeling complex trust relationships that cannot be captured by a vector-based model, and we propose a new trust model in which the trust perceived by an object with respect to another object is modeled by a directed, weighted graph whose vertices are trust dimensions and whose arcs represent relationships between trust dimensions. By using this new model, we provide the IoT community with the possibility of representing also situations in which an object does not know a trust dimension, e.g., reliability, but it is able to derive it from another one, e.g., honesty. The introduced model can represent any trust structure of the type illustrated above, in which several trust dimensions are mutually dependent.

Funder

Italian Ministry of University and Research (MUR) Project “T-LADIES”

University of Catania

Italian Ministry of Health

Publisher

MDPI AG

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