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Extracting, Mining and Predicting Users' Interests from Social Media

机译:从社交媒体提取,挖掘和预测用户的利益

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The abundance of user generated content on social media provides the opportunity to build models that are able to accurately and effectively extract, mine and predict users' interests with the hopes of enabling more effective user engagement, better quality delivery of appropriate services and higher user satisfaction. While traditional methods for building user profiles relied on AI-based preference elicitation techniques that could have been considered to be intrusive and undesirable by the users, more recent advances are focused on a non-intrusive yet accurate way of determining users' interests and preferences. In this monograph, we will cover five important subjects related to the mining of user interests from social media: (1) the foundations of social user interest modeling, such as information sources, various types of representation models and temporal features, (2) techniques that have been adopted or proposed for mining user interests, (3) different evaluation methodologies and benchmark datasets, (4) different applications that have been taking advantage of user interest mining from social media platforms, and (5) existing challenges, open research questions and opportunities for further work.
机译:对社交媒体上生成的丰富内容提供了建立能够准确和有效地提取的模型,并预测用户利益的机会,希望能够实现更有效的用户参与,更好地提供适当的服务和更高的用户满意度。虽然建立用户简档的传统方法依赖于基于AI的偏好精英技巧,但是可以被认为是具有侵入性和不良的兴趣技术,更新的进展集中在非侵扰性但准确的方式来确定用户的兴趣和偏好。在本专着中,我们将涵盖与社交媒体的用户兴趣挖掘的五个重要科目:(1)社会用户兴趣建模的基础,如信息来源,各种类型的代表模型和时间特征,(2)技术已采用或提出用于采矿用户兴趣,(3)不同的评估方法和基准数据集,(4)一直利用社交媒体平台的用户兴趣的不同应用程序,(5)现有挑战,开放研究问题和进一步工作的机会。

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