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A Mahalanobis distance based algorithm for assigning rank to the predicted fault prone software modules

机译:基于Mahalanobis距离的距离为预测故障的等级倾向易一软件模块

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摘要

This article proposes a methodology based on Artificial Neural Network(ANN) and type-2 fuzzy logic system (FLS) for detecting the fault prone software modules at early development phase. The present research concentrates on software metrics from requirement analysis and design phase of software life cycle. A new approach has been developed to sort out degree of fault proneness (DFP) of the software modules through type-2 FLS. ANN is used to prepare the rule base for inference engine. Furthermore, the proposed model has induced an order relation among the fault prone modules (FPMs) with the help of Mahalanobis distance (MD) metric. During software development process, a project manager needs to recognize the fault prone software modules with their DFP. Hence, the present study is of great importance to the project personnel to develop more cost-effective and reliable software. KC2 dataset of NASA has been applied for validating the model. Performance analysis clearly indicates the better prediction capability of the proposed model compared to some existing similar models. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于人工神经网络(ANN)和2型模糊逻辑系统(FLS)的方法,用于在早期开发阶段检测故障易于的软件模块。本研究专注于软件生命周期要求分析和设计阶段的软件指标。已经开发出一种新的方法,以通过2级整理软件模块的故障透明度(DFP)。 ANN用于准备推理引擎的规则基础。此外,在Mahalanobis距离(MD)度量的帮助下,所提出的模型在故障易于模块(FPMS)之间引起了订单关系。在软件开发过程中,项目管理器需要使用DFP识别故障易于的软件模块。因此,本研究对项目人员具有重要的意义,以开发更具成本效益和可靠的软件。 NASA的KC2数据集已应用于验证模型。性能分析清楚地表明,与一些现有的类似模型相比,所提出的模型的更好预测能力。 (c)2018 Elsevier B.v.保留所有权利。

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