Layer-based Composite Reputation Bootstrapping

ACM Transactions on Internet Technology(2022)

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摘要
AbstractWe propose a novel generic reputation bootstrapping framework for composite services. Multiple reputation-related indicators are considered in a layer-based framework to implicitly reflect the reputation of the component services. The importance of an indicator on the future performance of a component service is learned using a modified Random Forest algorithm. We propose a topology-aware Forest Deep Neural Network (fDNN) to find the correlations between the reputation of a composite service and reputation indicators of component services. The trained fDNN model predicts the reputation of a new composite service with the confidence value. Experimental results with real-world dataset prove the efficiency of the proposed approach.
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关键词
Reputation bootstrapping, composite services, reputation indicators, composition topology, Random Forest, Deep Neural Network, bootstrapping confidence
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