Python临界精度级别的典型类型推断

Jonathan Elkobi, Bernd Gruner, Tim Sonnekalb, C. Brust
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引用次数: 0

摘要

基于深度学习的类型推断方法正变得越来越流行,因为它们旨在弥补静态和动态分析方法的缺点,例如高不确定性。然而,它们的实际应用仍然是有争议的,因为一些内在的问题,如来自不同软件领域的代码将涉及类型推断系统未知的数据类型。为了克服这些问题并获得高置信度的预测,我们提出了一种结合深度相似学习和新颖性检测的方法TIPICAL。通过成功过滤掉未知和不准确的预测数据类型,我们的方法可以在高置信度下更好地预测数据类型,并获得比最先进的类型推断方法Type4Py更高的F1分数。此外,我们研究了不同的软件域和数据类型频率如何影响我们方法的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TIPICAL - Type Inference for Python In Critical Accuracy Level
Type inference methods based on deep learning are becoming increasingly popular as they aim to compensate for the drawbacks of static and dynamic analysis approaches, such as high uncertainty. However, their practical application is still debatable due to several intrinsic issues such as code from different software domains will involve data types that are unknown to the type inference system.In order to overcome these problems and gain high-confidence predictions, we thus present TIPICAL, a method that combines deep similarity learning with novelty detection. We show that our method can better predict data types in high confidence by successfully filtering out unknown and inaccurate predicted data types and achieving higher F1 scores to the state-of-the-art type inference method Type4Py. Additionally, we investigate how different software domains and data type frequencies may affect the results of our method.
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