基于关系数据库理论动态发现函数似然程序不变量

Xiao-Hua Yang, Jie Liu, Tonglan Yu, Yang Luo, Qunyan Wu
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引用次数: 1

摘要

动态似然程序不变量检测技术是一种从大型程序的非形式化描述中发现契约的有效手段。合同技术在节目质量保证中发挥更大的作用是有益的。由于不变检测技术的研究刚刚起步,粗糙检测通常采用假设验证的方法,这种方法依赖于检测器的经验和对被检测程序的理解程度,因此准确性和效率严重不足。在进行不变量检测之前,本文试图根据关系数据理论将不变量分为两类,一类是泛函不变量,另一类是非泛函不变量。本文重点研究了泛函似不变量的检测方法,该方法通过先发现程序变量的函数依赖集,再推导出函数依赖集,检测存在不变量的形式,从而实现对似不变量是否存在的检测。实验表明,与传统的假设验证方法(如Daikon)相比,该方法不仅解决了盲目检测的问题,提高了效率,而且减少了遗漏重要功能不变量的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamically Discovering Functional Likely Program Invariants Based on Relational Database Theory
Dynamic likely program invariant detection technology is an available instrument for discovering contract from large program in non-formal description. It is of benefit to contract technology exerting more influence on program quality assurance. Since the research of invariant detection technology has just started that the rough detection usually use hypothesis verification approach which relies on the experience of the detector and his degree of understanding of the detected program so that there is serious lack of accuracy and efficiency. This paper tempts to divide the invariants into two kinds that one is called functional invariant and the other is non-functional type based on relational data theory before starting the invariant detection. The paper focuses on the approach of detecting functional likely invariant, which accomplish detecting existence of them by discovering functional dependence set of the program variable at first and then detecting the forms of the existent invariants after deducing the function dependence set. Experiments demonstrate that this approach not only solves the problems of blind detection to improve the efficiency but also reduces the possibility of missing important functional invariants compared with the traditional hypothesis verification approach such as Daikon.
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