Flow-based reputation with uncertainty: Evidence-Based Subjective Logic
Boris Skoric, Sebastiaan J.A. de Hoogh, Nicola Zannone

TL;DR
This paper introduces a new evidence-based discounting operator for Subjective Logic, enabling reliable reputation assessment in trust networks while explicitly handling uncertainty and avoiding information loss.
Contribution
It proposes a novel discounting operator that improves Subjective Logic, combining the strengths of flow-based reputation and uncertainty modeling in a consistent framework.
Findings
The new operator resolves basic problems in existing discounting methods.
Reputation calculation becomes independent of network structure.
No information needs to be discarded during computation.
Abstract
The concept of reputation is widely used as a measure of trustworthiness based on ratings from members in a community. The adoption of reputation systems, however, relies on their ability to capture the actual trustworthiness of a target. Several reputation models for aggregating trust information have been proposed in the literature. The choice of model has an impact on the reliability of the aggregated trust information as well as on the procedure used to compute reputations. Two prominent models are flow-based reputation (e.g., EigenTrust, PageRank) and Subjective Logic based reputation. Flow-based models provide an automated method to aggregate trust information, but they are not able to express the level of uncertainty in the information. In contrast, Subjective Logic extends probabilistic models with an explicit notion of uncertainty, but the calculation of reputation depends on…
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Taxonomy
TopicsAccess Control and Trust · Cryptography and Data Security · Privacy-Preserving Technologies in Data
