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Phrase-Level Adversarial Training for Mitigating Bias in Neural Network-based Automatic Essay Scoring

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arxiv 2409.04795 v1 pith:77MUHPID submitted 2024-09-07 cs.CL cs.AIcs.LG

Phrase-Level Adversarial Training for Mitigating Bias in Neural Network-based Automatic Essay Scoring

classification cs.CL cs.AIcs.LG
keywords scoringadversarialdataessaysamplesattackautomaticevaluate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatic Essay Scoring (AES) is widely used to evaluate candidates for educational purposes. However, due to the lack of representative data, most existing AES systems are not robust, and their scoring predictions are biased towards the most represented data samples. In this study, we propose a model-agnostic phrase-level method to generate an adversarial essay set to address the biases and robustness of AES models. Specifically, we construct an attack test set comprising samples from the original test set and adversarially generated samples using our proposed method. To evaluate the effectiveness of the attack strategy and data augmentation, we conducted a comprehensive analysis utilizing various neural network scoring models. Experimental results show that the proposed approach significantly improves AES model performance in the presence of adversarial examples and scenarios without such attacks.

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