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Analyzing, Classifying, and Interpreting Emotions in Software Users' Tweets

机译:在软件用户推文中分析,分类和解释情绪

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Twitter enables software developers to track users' reactions to newly released systems. Such information, oftenexpressed in the form of raw emotions, can be leveraged to enablea more informed software release process. However, automaticallycapturing and interpreting multi-dimensional structures ofhuman emotions expressed in Twitter messages is not a trivialtask. Challenges stem from the scale of the data available, its inherently sparse nature, and the high percentage of domainspecificwords. Motivated by these observations, in this paperwe present a preliminary study aimed at detecting, classifying, and interpreting emotions in software users' tweets. A datasetof 1000 tweets sampled from a broad range of software systems' Twitter feeds is used to conduct our analysis. Our results showthat supervised text classifiers (Naive Bayes and Support vectorMachines) are more accurate than general-purpose sentimentanalysis techniques in detecting general and specific emotionsexpressed in software-relevant Tweets.
机译:Twitter使软件开发人员能够跟踪用户对新发布的系统的反应。这种信息以原始情绪的形式估计,可以利用Enablea更明智的软件发布过程。但是,在Twitter消息中表达的人类情绪的自动调整和解释多维结构不是一个琐事。挑战源于可用数据的规模,其固有的稀疏性质,以及高百分比的圆锥特殊唱片。这些观察结果的激励,在本文中,我们展示了旨在检测​​,分类和解释软件用户推文中的情绪的初步研究。从广泛的软件系统的Twitter Feed中采样的DataSetOf 1000推文用于进行我们的分析。我们的结果显示,监督文本分类器(天真贝叶斯和支持Vectormachines)比普通目的的SentimeNalysicate在软件相关推文中检测到一般和特定情感表达的通用Sensimalysics技术更准确。

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