ITLGOct 18, 2022

TEFL: Turbo Explainable Federated Learning for 6G Trustworthy Zero-Touch Network Slicing

arXiv:2210.10147v23 citationsh-index: 46
Originality Incremental advance
AI Analysis

This work addresses the need for transparent and SLA-aware service management in 6G networks, offering an incremental improvement by combining existing XAI tools with federated learning for domain-specific applications.

The paper tackles the problem of achieving trustworthy AI-driven zero-touch management for 6G network slices by proposing TEFL, a novel iterative explainable federated learning approach that integrates feature attributions into optimization, showing superiority over an unconstrained baseline in simulations.

Sixth-generation (6G) networks anticipate intelligently supporting a massive number of coexisting and heterogeneous slices associated with various vertical use cases. Such a context urges the adoption of artificial intelligence (AI)-driven zero-touch management and orchestration (MANO) of the end-to-end (E2E) slices under stringent service level agreements (SLAs). Specifically, the trustworthiness of the AI black-boxes in real deployment can be achieved by explainable AI (XAI) tools to build transparency between the interacting actors in the slicing ecosystem, such as tenants, infrastructure providers and operators. Inspired by the turbo principle, this paper presents a novel iterative explainable federated learning (FL) approach where a constrained resource allocation model and an \emph{explainer} exchange -- in a closed loop (CL) fashion -- soft attributions of the features as well as inference predictions to achieve a transparent and SLA-aware zero-touch service management (ZSM) of 6G network slices at RAN-Edge setup under non-independent identically distributed (non-IID) datasets. In particular, we quantitatively validate the faithfulness of the explanations via the so-called attribution-based \emph{confidence metric} that is included as a constraint in the run-time FL optimization task. In this respect, Integrated-Gradient (IG) as well as Input $\times$ Gradient and SHAP are used to generate the attributions for the turbo explainable FL (TEFL), wherefore simulation results under different methods confirm its superiority over an unconstrained Integrated-Gradient \emph{post-hoc} FL baseline.

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