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In Case You Missed It: ARC 'Challenge' Is Not That Challenging

Łukasz Borchmann

TL;DR

It is revealed how evaluation shapes perceived difficulty and guidelines to ensure that multiple-choice evaluations accurately reflect actual model capabilities are offered, and how fairer methods dramatically reduce performance gaps.

Abstract

ARC Challenge appears more difficult than ARC Easy for modern LLMs primarily due to an evaluation setup that prevents direct comparison of answer choices rather than inherent complexity. Although some researchers have quietly shifted to a more appropriate scheme over the last year, the implications of this change have yet to be widely acknowledged. We highlight this overlooked shift, show how similar evaluation practices falsely imply reasoning deficits in other benchmarks, and demonstrate that fairer methods dramatically reduce performance gaps (e.g. on SIQA) and even yield superhuman results (OpenBookQA). In doing so, we reveal how evaluation shapes perceived difficulty and offer guidelines to ensure that multiple-choice evaluations accurately reflect actual model capabilities.

In Case You Missed It: ARC 'Challenge' Is Not That Challenging

TL;DR

It is revealed how evaluation shapes perceived difficulty and guidelines to ensure that multiple-choice evaluations accurately reflect actual model capabilities are offered, and how fairer methods dramatically reduce performance gaps.

Abstract

ARC Challenge appears more difficult than ARC Easy for modern LLMs primarily due to an evaluation setup that prevents direct comparison of answer choices rather than inherent complexity. Although some researchers have quietly shifted to a more appropriate scheme over the last year, the implications of this change have yet to be widely acknowledged. We highlight this overlooked shift, show how similar evaluation practices falsely imply reasoning deficits in other benchmarks, and demonstrate that fairer methods dramatically reduce performance gaps (e.g. on SIQA) and even yield superhuman results (OpenBookQA). In doing so, we reveal how evaluation shapes perceived difficulty and offer guidelines to ensure that multiple-choice evaluations accurately reflect actual model capabilities.