Trust-Based Cloud Machine Learning Model Selection For Industrial IoT and Smart City Services
Basheer Qolomany, Ihab Mohammed, Ala Al-Fuqaha, Mohsen Guizan, Junaid, Qadir

TL;DR
This paper introduces a trust-maximizing heuristic for selecting and switching ML models in cloud-based IoT and smart city services, balancing trustworthiness, reconfiguration costs, and communication overhead.
Contribution
It proposes a polynomial-time heuristic for optimal ML model selection that enhances trust in mission-critical IoT and smart city applications, outperforming traditional ILP methods.
Findings
Trust level within 0.49% to 3.17% of ILP in IIoT case
Trust level within 0.7% to 2.53% of ILP in smart city case
Heuristic achieves optimal competitive ratio in polynomial time
Abstract
With Machine Learning (ML) services now used in a number of mission-critical human-facing domains, ensuring the integrity and trustworthiness of ML models becomes all-important. In this work, we consider the paradigm where cloud service providers collect big data from resource-constrained devices for building ML-based prediction models that are then sent back to be run locally on the intermittently-connected resource-constrained devices. Our proposed solution comprises an intelligent polynomial-time heuristic that maximizes the level of trust of ML models by selecting and switching between a subset of the ML models from a superset of models in order to maximize the trustworthiness while respecting the given reconfiguration budget/rate and reducing the cloud communication overhead. We evaluate the performance of our proposed heuristic using two case studies. First, we consider Industrial…
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