Apriori和频繁模式树算法在软件工程数据挖掘中的有效性分析

M. Asif, Jamil Ahmed
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引用次数: 10

摘要

软件开发是一个非常关键和复杂的过程。IT专业人员一直面临着软件项目开发的困难和风险。本文主要研究了Apriori算法和FP-Tree算法在软件工程领域的有效性。这两种算法都显示了在软件工程数据中生成关联规则的能力。使用这些算法发现了软件风险因素与风险缓解之间的关联,这是一个独特的想法。这两种算法的方法不同,但在规则生成的形式上具有相同的目标。这篇研究论文有三个目标。将这两种算法应用到给定的数据集上,比较两种算法的优缺点以及两者的结合,新颖的自适应架构清晰可见。嵌入式数据挖掘技术在软件工程中显示出了火花,并取得了丰硕的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Effectiveness of Apriori and Frequent Pattern Tree Algorithm in Software Engineering Data Mining
Development of software is a very crucial and complex process. IT professionals have been facing difficulties and risks for the development of software projects. This research focuses on the effectiveness of two data mining algorithms that are Apriori algorithm and FP-Tree Algorithm in Software Engineering domain. These two algorithms have shown the capability of generating association rules in software engineering data. Associations between software risk factors and risk mitigation have been found using these algorithms which is a unique idea. Both the algorithms have different methodologies but with the same goals in the form of rules generation. This research paper targeted three things. Tracing of these two algorithms applied to the given dataset, Comparison in terms of pros and cons of both the algorithms and the combination of the two, novel adaptive architecture in a clear way. Embedding data mining techniques in software engineering have shown spark and generates fruitful results.
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