Neural graph features (GRAF) provide fast and interpretable performance prediction that outperforms zero-cost proxies and other common encodings. The combination of GRAF and zero-cost proxies achieves the best performance at a fraction of the cost.
A novel graph-based performance predictor that leverages both forward and reverse representations of neural architectures to enhance prediction accuracy, especially in data-limited settings.