通过对误差模式的早期预测来提高基于案例的估计模型的准确性

Ekbal Rashid, S. Patnaik, V. Bhattacharya
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引用次数: 7

摘要

本文试图通过对易出错模块的深入了解,探讨软件故障预测的重要性,并将其最小化,从而提高软件质量。为了评估一个新的项目成果,基于案例的推理被用来通过检查软件模块并预测它是否有缺陷来预测系统的软件质量。在本研究中,我们提出了一个利用过去数据进行预测的模型。使用欧几里得和曼哈顿两种不同的相似性度量从知识库中检索匹配案例。这些度量用于计算新记录集或案例与知识库中存储的每个记录集的距离。匹配的情况是那些与新记录集的距离最小的情况。这可以扩展到各种系统,如基于web的应用程序,实时系统等。在本文中,我们使用了错误和错误这两个术语,并没有对错误和错误进行明确的区分。为了得到结果,我们使用了MATLAB 7.10.0版本作为分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing the Accuracy of Case-Based Estimation Model through Early Prediction of Error Patterns
The paper tries to explore the importance of software fault prediction and to minimize them thoroughly with the advanced knowledge of the error-prone modules, so as to enhance the software quality. For estimating a new project effort, case-based reasoning is used to predict software quality of the system by examining a software module and predicting whether it is faulty or non faulty. In this research we have proposed a model with the help of past data which is used for prediction. Two different similarity measures namely, Euclidean and Manhattan are used for retrieving the matching case from the knowledge base. These measures are used to calculate the distance of the new record set or case from each record set stored in the knowledge base. The matching case(s) are those that have the minimum distance from the new record set. This can be extended to variety of system like web based applications, real time system etc. In this paper we have used the terms errors and faults, and no explicit distinction made between errors and faults. In order to obtain results we have used MATLAB 7.10.0 version as an analyzing tool.
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