Publication | Open Access
The larger the fairer?
16
Citations
13
References
2022
Year
Artificial IntelligenceScaling AnalysisEngineeringMachine LearningData ScienceEdge ComputingAi DemocratizationHardware AlgorithmAlgorithmic FairnessComputer EngineeringFair Resource AllocationEmbedded Machine LearningComputer ScienceNeural NetworksFair DivisionDeep LearningNeural Architecture SearchDermatology Dataset
Along with the progress of AI democratization, neural networks are being deployed more frequently in edge devices for a wide range of applications. Fairness concerns gradually emerge in many applications, such as face recognition and mobile medical. One fundamental question arises: what will be the fairest neural architecture for edge devices? By examining the existing neural networks, we observe that larger networks typically are fairer. But, edge devices call for smaller neural architectures to meet hardware specifications. To address this challenge, this work proposes a novel Fairness- and Hardware-aware Neural architecture search framework, namely FaHaNa. Coupled with a model freezing approach, FaHaNa can efficiently search for neural networks with balanced fairness and accuracy, while guaranteed to meet hardware specifications. Results show that FaHaNa can identify a series of neural networks with higher fairness and accuracy on a dermatology dataset. Target edge devices, FaHaNa finds a neural architecture with slightly higher accuracy, 5.28X smaller size, 15.14% higher fairness score, compared with MobileNetV2; meanwhile, on Raspberry PI and Odroid XU-4, it achieves 5.75X and 5.79X speedup.
| Year | Citations | |
|---|---|---|
Page 1
Page 1