会议专题

Similarity-Aware Deep Attentive Model for Clickbait Detection

  Clickbait is a type of web content advertisements designed to entice readers into clicking accompanying links.Usually,such links will lead to articles that are either misleading or non-informative,making the detection of clickbait essential for our daily lives.Automated clickbait detection is a relatively new research topic.Most recent work handles the clickbait detection problem with deep learning approaches to extract features from the meta-data of content.However,little attention has been paid to the relationship between the misleading titles and the target content,which we found to be an important clue for enhancing clickbait detection.In this work,we propose a deep similarity-aware attentive model to capture and represent such similarities with better expressiveness.In particular,we present the ways of either using similarity only or integrating it with other available quality features for the clickbait detection.We evaluate our model on two benchmark datasets,and the experimental results demonstrate the effectiveness of our approach by outperforming a series of competitive state-of-the-arts and baseline methods.

Manqing Dong Lina Yao Xianzhi Wang Boualem Benatallah Chaoran Huang

Department of Computer Science,University of New South Wales,Sydney,Australia School of Software,University of Technology Sydney,Sydney,Australia

国际会议

The 23rd Pacific-Asia Conference on Knowledge Discovery and Data Mining (第23届亚太知识发现和数据挖掘国际会议(PAKDD2019)

澳门

英文

56-69

2019-04-14(万方平台首次上网日期,不代表论文的发表时间)