How Reliable are Model Diagnostics?
2021-05-12Findings (ACL) 2021Unverified0· sign in to hype
Vamsi Aribandi, Yi Tay, Donald Metzler
Unverified — Be the first to reproduce this paper.
ReproduceAbstract
In the pursuit of a deeper understanding of a model's behaviour, there is recent impetus for developing suites of probes aimed at diagnosing models beyond simple metrics like accuracy or BLEU. This paper takes a step back and asks an important and timely question: how reliable are these diagnostics in providing insight into models and training setups? We critically examine three recent diagnostic tests for pre-trained language models, and find that likelihood-based and representation-based model diagnostics are not yet as reliable as previously assumed. Based on our empirical findings, we also formulate recommendations for practitioners and researchers.