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Resolving Name Conflicts for Mobile Apps in Twitter Posts

机译:解决Twitter Post中的移动应用程序的名称冲突

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The Twitter platform has emerged as a leading medium of conducting social commentary, where users remark upon all kinds of entities, events and occurrences. As a result, organizations are starting to mine twitter posts to unearth the knowledge encoded in such commentary. Mobile applications, commonly known as mobile apps, are the fastest growing consumer product segment in the history of human merchandizing, with over 600,000 apps on the Apple platform and over 350,000 on Android. A particularly interesting issue is to evaluate the popularity of specific mobile apps by analyzing the social conversation on them. Clearly, twitter posts related to apps are an important segment of this conversation and have been a main area of research for us. In this respect, one particularly important problem arises due to a name conflict of mobile app names and the names that are used to refer the mobile apps in twitter posts. In this paper, we present a strategy to reliably extract twitter posts that are related to specific apps, but discovering the contextual clues that enable effective filtering of irrelevant twitter posts is our concern. While our application is in the important space of mobile apps, our techniques are completely general and may be applied to any entity class. We have evaluated our approach against a popular Bayesian classifier and a commercial solution. We have demonstrated that our approach is significantly more accurate than both of these. These results as well as other theoretical and practical implications are discussed.
机译:Twitter平台已成为进行社会评论的领先媒介,用户在其中介绍各种实体,事件和事件。因此,组织开始挖掘推特员额以解除在此类评论中编码的知识。移动应用程序通常被称为移动应用,是人类商品历史上增长最快的消费产品细分市场,Apple平台上有超过60,000个应用程序,在Android上超过35万。一个特别有趣的问题是通过分析对他们的社交谈话来评估特定移动应用程序的普及。显然,与应用有关的推特员额是这次谈话的重要组成部分,并已成为我们的主要研究领域。在这方面,由于移动应用程序名称的名称和用于在Twitter帖子中引用移动应用程序的名称,因此出现了一个特别重要的问题。在本文中,我们提出了一种可靠地提取与特定应用程序相关的推特员额的策略,但发现能够有效过滤无关的Twitter帖子的上下文线索是我们的担忧。虽然我们的应用是移动应用的重要空间,但我们的技术完全是一般的,并且可以应用于任何实体类。我们已经评估了我们对流行贝叶斯分类器和商业解决方案的方法。我们已经证明,我们的方法明显比这两者更准确。讨论了这些结果以及其他理论和实际意义。

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