On the Evaluation of NLP-based Models for Software Engineering

M. Izadi, Matin Nili Ahmadabadi
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引用次数: 6

Abstract

NLP-based models have been increasingly incorporated to address SE problems. These models are either employed in the SE domain with little to no change, or they are greatly tailored to source code and its unique characteristics. Many of these approaches are considered to be outperforming or complementing existing solutions. However, an important question arises here: Are these models evaluated fairly and consistently in the SE community?. To answer this question, we reviewed how NLP-based models for SE problems are being evaluated by researchers. The findings indicate that currently there is no consistent and widely-accepted protocol for the evaluation of these models. While different aspects of the same task are being assessed in different studies, metrics are defined based on custom choices, rather than a system, and finally, answers are collected and interpreted case by case. Consequently, there is a dire need to provide a methodological way of evaluating NLP-based models to have a consistent assessment and preserve the possibility of fair and efficient comparison.
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基于nlp的软件工程模型评价研究
基于nlp的模型已经越来越多地用于解决SE问题。这些模型要么在SE域中使用,几乎没有变化,要么根据源代码及其独特的特征进行了大量的调整。许多这些方法被认为是优于或补充现有的解决方案。然而,这里出现了一个重要的问题:这些模型在SE社区中是否得到了公平和一致的评估?为了回答这个问题,我们回顾了研究人员如何评估基于nlp的SE问题模型。研究结果表明,目前还没有一致和广泛接受的方案来评估这些模型。虽然在不同的研究中评估同一任务的不同方面,但度量标准是基于自定义选择而不是系统来定义的,最后,答案是逐例收集和解释的。因此,迫切需要提供一种评估基于nlp的模型的方法学方法,以获得一致的评估并保持公平和有效比较的可能性。
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