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Discovering Knowledge-Sharing Communities in Question-Answering Forums

机译:在问题解答论坛中发现知识共享社区

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In this article, we define a knowledge-sharing community in a question-answering forum as a set of askers and authoritative users such that, within each community, askers exhibit more homogeneous behavior in terms of their interactions with authoritative users than elsewhere. A procedure for discovering members of such a community is devised. As a case study, we focus on Yahoo! Answers, a large and diverse online question-answering service. Our contribution is twofold. First, we propose a method for automatic identification of authoritative actors in Yahoo! Answers. To this end, we estimate and then model the authority scores of participants as a mixture of gamma distributions. The number of components in the mixture is determined using the Bayesian Information Criterion (BIC), while the parameters of each component are estimated using the Expectation-Maximization (EM) algorithm. This method allows us to automatically discriminate between authoritative and nonauthoritative users. Second, we represent the forum environment as a type of transactional data such that each transaction summarizes the interaction of an asker with a specific set of authoritative users. Then, to group askers on the basis of their interactions with authoritative users, we propose a parameter-free transaction data clustering algorithm which is based on a novel criterion function. The identified clusters correspond to the communities that we aim to discover. To evaluate the suitability of our clustering algorithm, we conduct a series of experiments on both synthetic data and public real-life data. Finally, we put our approach to work using data from Yahoo! Answers which represent users' activities over one full year.
机译:在本文中,我们在一个问答论坛中将知识共享社区定义为一组询问者和权威用户,这样,在每个社区中,询问者在与权威用户的交互方面表现出比其他地方更多的同类行为。设计了发现这种社区成员的程序。作为案例研究,我们关注Yahoo!答案,大型多样的在线问答服务。我们的贡献是双重的。首先,我们提出了一种自动识别Yahoo!中权威角色的方法。答案。为此,我们估算参与者的权威分数,然后将其建模为伽玛分布的混合。使用贝叶斯信息准则(BIC)确定混合物中的组分数,而使用期望最大化(EM)算法估算每个组分的参数。这种方法使我们能够自动区分权威用户和非权威用户。其次,我们将论坛环境表示为一种交易数据,这样,每笔交易都可以总结询问者与一组特定的权威用户之间的互动。然后,根据问询者与权威用户的交互作用,对问询者进行分组,提出了一种基于新颖准则函数的无参数交易数据聚类算法。识别出的集群对应于我们旨在发现的社区。为了评估我们的聚类算法的适用性,我们对合成数据和公共现实数据进行了一系列实验。最后,我们将我们的方法用于使用Yahoo!的数据。代表用户一年以上活动的答案。

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