程序理解和代码复杂性度量:一项功能磁共振成像研究

Norman Peitek, S. Apel, Chris Parnin, A. Brechmann, J. Siegmund
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引用次数: 34

摘要

背景:几十年来,研究人员和实践者一直在使用代码复杂性度量来预测开发人员如何理解程序。虽然出于这个目的使用代码度量似乎是合理的和诱人的,但它们的有效性是有争议的,因为它们依赖于简单的代码属性,很少考虑人类认知的特殊性。目的:我们研究代码复杂度指标是否以及如何反映程序理解的难度。方法:我们对19名参与者进行了功能磁共振成像(fMRI)研究,观察了不同复杂程度的短代码片段的程序理解。我们剖析了四类代码复杂性度量及其与程序理解的神经元、行为和主观相关的关系,总体分析了超过41个度量。结果:虽然我们的数据证实,复杂性指标可以在一定程度上解释程序员在程序理解方面的认知,但fMRI使我们能够深入了解为什么一些代码属性难以处理。特别是,代码的文本大小会吸引程序员的注意力,而词汇量的大小会增加程序员工作记忆的负担。结论:我们的研究结果提供了神经科学证据,支持先前质疑代码复杂性度量有效性的研究警告,并确定了与程序理解相关的因素。未来工作:我们概述了几个后续实验,研究代码复杂性的细粒度效应,并描述了代码复杂性度量的可能改进。
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Program Comprehension and Code Complexity Metrics: An fMRI Study
Background: Researchers and practitioners have been using code complexity metrics for decades to predict how developers comprehend a program. While it is plausible and tempting to use code metrics for this purpose, their validity is debated, since they rely on simple code properties and rarely consider particularities of human cognition. Aims: We investigate whether and how code complexity metrics reflect difficulty of program comprehension. Method: We have conducted a functional magnetic resonance imaging (fMRI) study with 19 participants observing program comprehension of short code snippets at varying complexity levels. We dissected four classes of code complexity metrics and their relationship to neuronal, behavioral, and subjective correlates of program comprehension, overall analyzing more than 41 metrics. Results: While our data corroborate that complexity metrics can-to a limited degree-explain programmers' cognition in program comprehension, fMRI allowed us to gain insights into why some code properties are difficult to process. In particular, a code's textual size drives programmers' attention, and vocabulary size burdens programmers' working memory. Conclusion: Our results provide neuro-scientific evidence supporting warnings of prior research questioning the validity of code complexity metrics and pin down factors relevant to program comprehension. Future Work: We outline several follow-up experiments investigating fine-grained effects of code complexity and describe possible refinements to code complexity metrics.
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