Modeling Trust Context in Networks Modeling Trust Context in Networks
SpringerBriefs in Computer Science

Modeling Trust Context in Networks

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Descripción editorial

We make complex decisions every day, requiring trust in many different entities for different reasons. These decisions are not made by combining many isolated trust evaluations. Many interlocking factors play a role, each dynamically impacting the others.  In this brief, "trust context" is defined as the system level description of how the trust evaluation process unfolds.

Networks today are part of almost all human activity, supporting and shaping it. Applications increasingly incorporate new interdependencies and new trust contexts. Social networks connect people and organizations throughout the globe in cooperative and competitive activities. Information is created and consumed at a global scale. Systems, devices, and sensors create and process data, manage physical systems, and participate in interactions with other entities, people and systems alike.  To study trust in such applications, we need a multi-disciplinary approach.  This book reviews the components of the trust context through a broad review of recent literature in many different fields of study. Common threads relevant to the trust context across many application domains are also illustrated.

Illustrations in the text © 2013 Aaron Hertzmann. www.dgp.toronto.edu/~hertzman

GÉNERO
Informática e Internet
PUBLICADO
2014
8 de julio
IDIOMA
EN
Inglés
EXTENSIÓN
89
Páginas
EDITORIAL
Springer New York
VENDEDOR
Springer Nature B.V.
TAMAÑO
782.3
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