Model Shapley: Equitable Model Valuation with Black-box Access
–Neural Information Processing Systems
Valuation methods of data and machine learning (ML) models are essential to the establishment of AI marketplaces. Also, existing marketplaces that involve trading of pre-trained ML models call for an equitable model valuation method to price them. In particular, we investigate the black-box access setting which allows querying a model (to observe predictions) without disclosing model-specific information (e.g., architecture and parameters). By exploiting a Dirichlet abstraction of a model's predictions, we propose a novel and equitable model valuation method called model Shapley. We also leverage a Lipschitz continuity of model Shapley to design a learning approach for predicting the model Shapley values (MSVs) of many vendors' models (e.g., 150) in a large-scale marketplace.
Neural Information Processing Systems
Jan-19-2025, 13:07:21 GMT