SMART INCENTIVIZATION FOR ACHIEVING COLLABORATIVE MACHINE LEARNING

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United States of America Patent

APP PUB NO 20240037234A1
SERIAL NO

17954563

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Abstract

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Systems and methods for smart incentivization for achieving collaborative machine learning are disclosed. A system receives local model parameters from plurality of client devices in a network, for global model corresponding to collaborative machine learning. The system determines an optimum score for each client device using pre-trained Conditional Variational Auto Encoder (CVAE), based on local model parameter. The system computes contribution score for each client device by determining relative distance value of optimum score corresponding to each client device with optimum score corresponding to another client device from the plurality of client devices, and a global model optimum score of global model. The system updates global model with local model parameter received from the selected set of client devices of the plurality of client devices corresponding to good class, average class, and bad class. The system outputs grading score, an incentive, importance score for each of selected client devices, and a performance of the global model.

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Patent Owner(s)

Patent OwnerAddress
ACCENTURE GLOBAL SOLUTIONS LIMITED3 GRAND CANAL PLAZA GRAND CANAL STREET UPPER DUBLIN 4

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Inventor(s)

Inventor Name Address # of filed Patents Total Citations
DEGIOANNI, Laura Wendy Hélène Sylvie Angèle Roquefort-Les-Pins, FR 6 4
FRABONI, Yann Nice, FR 3 1
KAMENI, Laetitia Juan-Les-Pins, FR 7 11
VIDAL, Richard Antibes, FR 17 85

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