Algorithmic Bias in BERT for Response Accuracy Prediction: A Case Study for Investigating Population Validity
Guher Gorgun,
Seyma N. Yildirim‐Erbasli
Abstract:Pretrained large language models (LLMs) have gained popularity in recent years due to their high performance in various educational tasks such as learner modeling, automated scoring, automatic item generation, and prediction. Nevertheless, LLMs are black box approaches where models are less interpretable, and they may carry human biases and prejudices because historical human data have been used for pretraining these large‐scale models. For these reasons, the prediction tasks based on LLMs require scrutiny to … Show more
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