微博活动分类的协同提升

Yangqiu Song, Zhengdong Lu, C. Leung, Qiang Yang
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引用次数: 22

摘要

用户的日常活动,如就餐、购物等,本质上反映了用户的习惯、意图和偏好,为个性化信息推荐、定向广告等服务提供了宝贵的信息。尽管用户的活动信息在社交媒体上无处不在,但在很大程度上尚未得到利用。本文研究了微博中用户活动分类的问题,用户可以在微博中发布短消息并在线维护社交网络。我们认识到对用户个性建模的重要性,以及利用用户朋友的意见进行准确的活动分类的重要性。鉴于此,我们提出了一个新的协作提升框架,该框架包括每个用户的文本到活动分类器,以及具有社会联系的用户分类器之间的协作机制。两个分类器之间的协作包括交换它们自己的训练实例和它们动态变化的标记决策。我们提出了一种迭代学习过程,该过程在学习函数空间中被表述为梯度下降,而分类器之间的意见交换在每次学习迭代中通过加权投票实现。我们通过实验表明,在新浪微博的真实数据上,我们的方法优于现有的现成算法,这些算法不考虑用户的个性或社会关系。
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Collaborative boosting for activity classification in microblogs
Users' daily activities, such as dining and shopping, inherently reflect their habits, intents and preferences, thus provide invaluable information for services such as personalized information recommendation and targeted advertising. Users' activity information, although ubiquitous on social media, has largely been unexploited. This paper addresses the task of user activity classification in microblogs, where users can publish short messages and maintain social networks online. We identify the importance of modeling a user's individuality, and that of exploiting opinions of the user's friends for accurate activity classification. In this light, we propose a novel collaborative boosting framework comprising a text-to-activity classifier for each user, and a mechanism for collaboration between classifiers of users having social connections. The collaboration between two classifiers includes exchanging their own training instances and their dynamically changing labeling decisions. We propose an iterative learning procedure that is formulated as gradient descent in learning function space, while opinion exchange between classifiers is implemented with a weighted voting in each learning iteration. We show through experiments that on real-world data from Sina Weibo, our method outperforms existing off-the-shelf algorithms that do not take users' individuality or social connections into account.
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