论文标题
自学在线文章质量的认知表示
Cognitive Representation Learning of Self-Media Online Article Quality
论文作者
论文摘要
自动媒体在线文章的自动质量评估是一个紧迫而新的问题,这对于在线推荐和搜索非常有价值。与传统和形成良好的文章不同,自我媒体在线文章主要由用户创建,这些文章具有不同的文本级别和多模式混合动力编辑的外观特征,以及不同内容,不同样式,大型语义跨度的潜在特征,大型语义跨度和良好的交互式体验需求。为了解决这些挑战,我们建立了一个联合模型COQAN与布局组织结合使用,编写特征和文本语义,设计不同的表示子网,尤其是用于特征学习过程和移动终端上的交互式阅读习惯。这与表达专家对文章评估的认知方式更加一致。我们还构建了一个大型现实世界评估数据集。广泛的实验结果表明,所提出的框架大大优于最先进的方法,并有效地学习和整合了在线文章质量评估的不同因素。
The automatic quality assessment of self-media online articles is an urgent and new issue, which is of great value to the online recommendation and search. Different from traditional and well-formed articles, self-media online articles are mainly created by users, which have the appearance characteristics of different text levels and multi-modal hybrid editing, along with the potential characteristics of diverse content, different styles, large semantic spans and good interactive experience requirements. To solve these challenges, we establish a joint model CoQAN in combination with the layout organization, writing characteristics and text semantics, designing different representation learning subnetworks, especially for the feature learning process and interactive reading habits on mobile terminals. It is more consistent with the cognitive style of expressing an expert's evaluation of articles. We have also constructed a large scale real-world assessment dataset. Extensive experimental results show that the proposed framework significantly outperforms state-of-the-art methods, and effectively learns and integrates different factors of the online article quality assessment.