CLCYAug 9, 2024

Examining the Behavior of LLM Architectures Within the Framework of Standardized National Exams in Brazil

arXiv:2408.05035v16 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

This addresses the problem of assessing AI fairness and representativeness in educational testing for Brazilian stakeholders, but it is incremental as it applies existing methods to a new dataset.

The study examined how large language models (LLMs) like GPT-3.5, GPT-4, and MariTalk perform on Brazil's standardized national exam (ENEM), comparing their answers to human students grouped by socioeconomic status, and found no significant biases in multiple-choice tests but notable differences in essays, with LLM outputs being distinct from all human groups.

The Exame Nacional do Ensino Médio (ENEM) is a pivotal test for Brazilian students, required for admission to a significant number of universities in Brazil. The test consists of four objective high-school level tests on Math, Humanities, Natural Sciences and Languages, and one writing essay. Students' answers to the test and to the accompanying socioeconomic status questionnaire are made public every year (albeit anonymized) due to transparency policies from the Brazilian Government. In the context of large language models (LLMs), these data lend themselves nicely to comparing different groups of humans with AI, as we can have access to human and machine answer distributions. We leverage these characteristics of the ENEM dataset and compare GPT-3.5 and 4, and MariTalk, a model trained using Portuguese data, to humans, aiming to ascertain how their answers relate to real societal groups and what that may reveal about the model biases. We divide the human groups by using socioeconomic status (SES), and compare their answer distribution with LLMs for each question and for the essay. We find no significant biases when comparing LLM performance to humans on the multiple-choice Brazilian Portuguese tests, as the distance between model and human answers is mostly determined by the human accuracy. A similar conclusion is found by looking at the generated text as, when analyzing the essays, we observe that human and LLM essays differ in a few key factors, one being the choice of words where model essays were easily separable from human ones. The texts also differ syntactically, with LLM generated essays exhibiting, on average, smaller sentences and less thought units, among other differences. These results suggest that, for Brazilian Portuguese in the ENEM context, LLM outputs represent no group of humans, being significantly different from the answers from Brazilian students across all tests.

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