Study of Distractors in Neural Models of Code

Md Rafiqul Islam Rabin, Aftab Hussain, Sahil Suneja, Mohammad Amin Alipour
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引用次数: 2

Abstract

Finding important features that contribute to the prediction of neural models is an active area of research in explainable AI. Neural models are opaque and finding such features sheds light on a better understanding of their predictions. In contrast, in this work, we present an inverse perspective of distractor features: features that cast doubt about the prediction by affecting the model's confidence in its prediction. Understanding distractors provide a complementary view of the features' relevance in the predictions of neural models. In this paper, we apply a reduction-based technique to find distractors and provide our preliminary results of their impacts and types. Our experiments across various tasks, models, and datasets of code reveal that the removal of tokens can have a significant impact on the confidence of models in their predictions and the categories of tokens can also play a vital role in the model's confidence. Our study aims to enhance the transparency of models by emphasizing those tokens that significantly influence the confidence of the models.
代码神经模型中干扰物的研究
寻找有助于神经模型预测的重要特征是可解释人工智能的一个活跃研究领域。神经模型是不透明的,找到这样的特征有助于更好地理解它们的预测。相比之下,在这项工作中,我们提出了干扰物特征的反向视角:通过影响模型对其预测的置信度而对预测产生怀疑的特征。理解干扰物为神经模型预测中特征的相关性提供了补充观点。在本文中,我们采用了一种基于约简的技术来寻找干扰物,并提供了它们的影响和类型的初步结果。我们对各种任务、模型和代码数据集的实验表明,删除令牌会对模型的预测置信度产生重大影响,令牌的类别也会在模型的置信度中发挥至关重要的作用。我们的研究旨在通过强调那些显著影响模型置信度的令牌来提高模型的透明度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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