An Efficient Recommendation Filtering-based Trust Model for Securing Internet of Things
Muhammad Ibn Ziauddin, Rownak Rahad Rabbi, SM Mehrab, Fardin Faiyaz, Mosarrat Jahan

TL;DR
This paper introduces a dynamic trust model for IoT that improves trust computation accuracy, resists various attacks, and significantly reduces recommendation filtering time.
Contribution
It proposes a novel trust model with dynamic window length, harmonic mean trust scoring, and efficient clustering, enhancing security and performance in IoT trust management.
Findings
Improves attack detection accuracy by approximately 44%.
Reduces recommendation filtering time by 95%.
Maintains effectiveness against multiple simultaneous attacks.
Abstract
Trust computation is crucial for ensuring the security of the Internet of Things (IoT). However, current trust-based mechanisms for IoT have limitations that impact data security. Sliding window-based trust schemes cannot ensure reliable trust computation due to their inability to select appropriate window lengths. Besides, recent trust scores are emphasized when considering the effect of time on trust. This can cause a sudden change in overall trust score based on recent behavior, potentially misinterpreting an honest service provider as malicious and vice versa. Moreover, clustering mechanisms used to filter recommendations in trust computation often lead to slower results. In this paper, we propose a robust trust model to address these limitations. The proposed approach determines the window length dynamically to guarantee accurate trust computation. It uses the harmonic mean of…
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