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Sentiment based approval prediction for enhancement reports

机译:基于情感的批准报告,用于增强报告

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摘要

The maintenance and evolution of the software application is a continuous phase in the industry. Users are frequently proposing enhancement requests for further functionalities. However, although only a small part of these requests are finally adopted, developers have to go through all of such requests manually, which is tedious and time consuming. To this end, in this paper we propose a sentiment based approach to predict how likely enhancement reports would be approved or rejected so that developers can first handle likely-to-be-approved requests. This could help the software applications to compete in the industry by upgrading their features in time as per user's requirements. First, we preprocess enhancement reports using natural language preprocessing techniques. Second, we identify the words having positive and negative sentiments in the summary attribute of the enhancements reports and calculate the sentiment of each enhancement report. Finally, with the history data of real software application, we train a machine learning based classifier to predict whether a given enhancement report would be approved. The proposed approach has been evaluated with the history data from real software applications. The cross-application validation suggests that the proposed approach outperforms the state-of-the-art. The evaluation results suggest that the proposed approach increases the accuracy from 70.94% to 77.90% and improves the F-measure significantly from 48.50% to 74.53%. (C) 2019 Elsevier Inc. All rights reserved.
机译:软件应用程序的维护和发展在行业中是一个连续的阶段。用户经常提出对进一步功能的增强请求。但是,尽管最终只接受了这些请求的一小部分,但是开发人员必须手动处理所有这些请求,这既繁琐又耗时。为此,在本文中,我们提出了一种基于情感的方法来预测增强报告被批准或拒绝的可能性,以便开发人员可以首先处理可能被批准的请求。通过根据用户要求及时升级其功能,可以帮助软件应用程序在行业中竞争。首先,我们使用自然语言预处理技术对增强报告进行预处理。其次,我们在增强报告的摘要属性中识别具有正面和负面情绪的单词,并计算每个增强报告的情绪。最后,利用真实软件应用程序的历史数据,我们训练了基于机器学习的分类器,以预测给定的增强报告是否将被批准。已使用来自实际软件应用程序的历史数据对提出的方法进行了评估。跨应用程序验证表明,所提出的方法优于最新技术。评估结果表明,该方法将准确度从70.94%提高到77.90%,并将F度量从48.50%显着提高到74.53%。 (C)2019 Elsevier Inc.保留所有权利。

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