TraceFL: Interpretability-Driven Debugging in Federated Learning via Neuron Provenance
Waris Gill (1), Ali Anwar (2), Muhammad Ali Gulzar (1) ((1) Virginia Tech, (2) University of Minnesota Twin Cities)

TL;DR
TraceFL introduces a neuron provenance method for interpretable debugging in federated learning, accurately identifying responsible clients across diverse models and datasets, enhancing trust and accountability.
Contribution
It presents the first neuron provenance-based approach for client attribution in federated learning, enabling cross-domain interpretability and debugging.
Findings
Achieves 99% accuracy in localizing responsible clients
Works effectively across image and text classification tasks
Applicable to advanced models like GPT
Abstract
In Federated Learning, clients train models on local data and send updates to a central server, which aggregates them into a global model using a fusion algorithm. This collaborative yet privacy-preserving training comes at a cost. FL developers face significant challenges in attributing global model predictions to specific clients. Localizing responsible clients is a crucial step towards (a) excluding clients primarily responsible for incorrect predictions and (b) encouraging clients who contributed high-quality models to continue participating in the future. Existing ML debugging approaches are inherently inapplicable as they are designed for single-model, centralized training. We introduce TraceFL, a fine-grained neuron provenance capturing mechanism that identifies clients responsible for a global model's prediction by tracking the flow of information from individual clients to…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Explainable Artificial Intelligence (XAI) · Advanced Graph Neural Networks
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Sparse Evolutionary Training · Cosine Annealing · Softmax · Linear Layer · Attention Dropout · Dense Connections · Dropout · Linear Warmup With Cosine Annealing
