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When Sentiment Analysis Meets Social Network: A Holistic User Behavior Modeling in Opinionated Data

机译:当情意分析符合社交网络时:在自以为期数据中的整体用户行为建模

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摘要

User modeling is critical for understanding user intents, while it is also challenging as user intents are so diverse and not directly observable. Most existing works exploit specific types of behavior signals for user modeling, e.g., opinionated data or network structure; but the dependency among different types of user-generated data is neglected. We focus on self-consistence across multiple modalities of usergenerated data to model user intents. A probabilistic generative model is developed to integrate two companion learning tasks of opinionated content modeling and social network structure modeling for users. Individual users are modeled as a mixture over the instances of paired learning tasks to realize their behavior heterogeneity, and the tasks are clustered by sharing a global prior distribution to capture the homogeneity among users. Extensive experimental evaluations on large collections of Amazon and Yelp reviews with social network structures confirm the effectiveness of the proposed solution. The learned user models are interpretable and predictive: they enable more accurate sentiment classification and item/friend recommendations than the corresponding baselines that only model a singular type of user behaviors.
机译:用户建模对于了解用户意图至关重要,而当用户意图是如此多样化而不是直接可观察到,它也是具有挑战性的。大多数现有工程利用特定类型的特定类型的行为信号,用于用户建模,例如自以为是的数据或网络结构;但是忽略了不同类型的用户生成数据之间的依赖性。我们专注于跨越用户的多种方式的自我支持,以模拟用户意图。开发了一种概率的生成模型,用于为用户集成分类内容建模和社交网络结构建模的两个伴随学习任务。各个用户在成对的学习任务的情况下被建模为混合,以实现其行为异质性,并且通过共享全局先前分发来捕获用户之间的同质性来聚类任务。在社交网络结构的大量亚马逊和yelp评论中对大型亚马逊和yelp评论进行了广泛的实验评估,证实了提出的解决方案的有效性。学习的用户模型是可解释和预测的:它们能够比仅模拟单个用户行为的相应基线来实现更准确的情感分类和项目/朋友的建议。

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