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A comparative analysis of recommender systems based on item aspect opinions extracted from user reviews

机译:基于项目方面的推荐系统的比较分析来自用户评论的意见

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In popular applications such as e-commerce sites and social media, users provide online reviews giving personal opinions about a wide array of items, such as products, services and people. These reviews are usually in the form of free text, and represent a rich source of information about the users' preferences. Among the information elements that can be extracted from reviews, opinions about particular item aspects (i.e., characteristics, attributes or components) have been shown to be effective for user modeling and personalized recommendation. In this paper, we investigate the aspect-based top-N recommendation problem by separately addressing three tasks, namely identifying references to item aspects in user reviews, classifying the sentiment orientation of the opinions about such aspects in the reviews, and exploiting the extracted aspect opinion information to provide enhanced recommendations. Differently to previous work, we integrate and empirically evaluate several state-of-the-art and novel methods for each of the above tasks. We conduct extensive experiments on standard datasets and several domains, analyzing distinct recommendation quality metrics and characteristics of the datasets, domains and extracted aspects. As a result of our investigation, we not only derive conclusions about which combination of methods is most appropriate according to the above issues, but also provide a number of valuable resources for opinion mining and recommendation purposes, such as domain aspect vocabularies and domain-dependent, aspect-level lexicons.
机译:在商务网站和社交媒体等流行应用中,用户提供在线评论,为各种项目提供个人意见,例如产品,服务和人员。这些审查通常是自由文本的形式,并代表有关用户偏好的丰富信息来源。在可以从评论中提取的信息元素中,已显示关于特定项目方面的意见(即,特征,属性或组件)对用户建模和个性化推荐有效。在本文中,我们通过单独解决三个任务,即识别对用户评论中的项目方面的引用,对评论中的评论和利用提取方面的意见的情感方向来识别对项目方面的引用的引用意见信息提供加强建议。与以前的工作不同,我们整合并经验为上述每个任务进行了多种最先进的新方法。我们对标准数据集和多个域进行广泛的实验,分析了不同的推荐质量指标和数据集,域和提取方面的特征。由于我们的调查,我们不仅会得出关于根据上述问题最合适的方法的结论,还提供了一些有价值的矿业和建议目的资源,如域名词汇表和域名,方面级词汇。

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