AINeutralarXiv โ CS AI ยท 6h ago2
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Rich Insights from Cheap Signals: Efficient Evaluations via Tensor Factorization
Researchers propose a tensor factorization method that combines cheap automated evaluation data with limited human labels to enable fine-grained evaluation of AI generative models. The approach addresses the data bottleneck in model evaluation by using autorater scores to pretrain representations that are then aligned to human preferences with minimal calibration data.