CLAILGSep 29, 2020

Utility is in the Eye of the User: A Critique of NLP Leaderboards

arXiv:2009.13888v41045 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental opinion piece highlighting a misalignment in evaluation for NLP practitioners, urging better transparency in benchmarks.

The paper critiques NLP leaderboards for focusing solely on accuracy at the expense of practical qualities like compactness and energy efficiency, proposing a microeconomic framework to show this divergence and advocating for more transparent reporting of such statistics.

Benchmarks such as GLUE have helped drive advances in NLP by incentivizing the creation of more accurate models. While this leaderboard paradigm has been remarkably successful, a historical focus on performance-based evaluation has been at the expense of other qualities that the NLP community values in models, such as compactness, fairness, and energy efficiency. In this opinion paper, we study the divergence between what is incentivized by leaderboards and what is useful in practice through the lens of microeconomic theory. We frame both the leaderboard and NLP practitioners as consumers and the benefit they get from a model as its utility to them. With this framing, we formalize how leaderboards -- in their current form -- can be poor proxies for the NLP community at large. For example, a highly inefficient model would provide less utility to practitioners but not to a leaderboard, since it is a cost that only the former must bear. To allow practitioners to better estimate a model's utility to them, we advocate for more transparency on leaderboards, such as the reporting of statistics that are of practical concern (e.g., model size, energy efficiency, and inference latency).

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