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Combining Spreadsheet Smells for Improved Fault Prediction

机译:结合电子表格气味以改进故障预测

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摘要

Spreadsheets are commonly used in organizations as a programming tool for business-related calculations and decision making. Since faults in spreadsheets can have severe business impacts, a number of approaches from general software engineering have been applied to spreadsheets in recent years, among them the concept of code smells. Smells can in particular be used for the task of fault prediction. An analysis of existing spreadsheet smells, however, revealed that the predictive power of individual smells can be limited. In this work we therefore propose a machine learning based approach which combines the predictions of individual smells by using an AdaBoost ensemble classifier. Experiments on two public datasets containing real-world spreadsheet faults show significant improvements in terms of fault prediction accuracy.
机译:电子表格通常在组织中用作与业务相关的计算和决策的编程工具。由于电子表格中的错误可能会对业务产生严重影响,因此近年来,来自通用软件工程的许多方法已应用于电子表格,其中包括代码气味的概念。气味尤其可以用于故障预测的任务。但是,对现有电子表格气味的分析表明,单个气味的预测能力可能会受到限制。因此,在这项工作中,我们提出了一种基于机器学习的方法,该方法通过使用AdaBoost集成分类器将单个气味的预测结合在一起。在两个包含实际电子表格故障的公共数据集上进行的实验表明,在故障预测准确性方面有显着提高。

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