Learning to Identify Ambiguous and Misleading News Headlines

Accuracy is one of the basic principles of journalism. However, it is increasingly hard to manage due to the diversity of news media. Some editors of online news tend to use catchy headlines which trick readers into clicking. These headlines are either ambiguous or misleading, degrading the reading experience of the audience. Thus, identifying inaccurate news headlines is a task worth studying. Previous work names these headlines "clickbaits" and mainly focus on the features extracted from the headlines, which limits the performance since the consistency between headlines and news bodies is underappreciated. In this paper, we clearly redefine the problem and identify ambiguous and misleading headlines separately. We utilize class sequential rules to exploit structure information when detecting ambiguous headlines. For the identification of misleading headlines, we extract features based on the congruence between headlines and bodies. To make use of the large unlabeled data set, we apply a co-training method and gain an increase in performance. The experiment results show the effectiveness of our methods. Then we use our classifiers to detect inaccurate headlines crawled from different sources and conduct a data analysis.

[1]  B. Magnini,et al.  Recognizing Textual Entailment with Tree Edit Distance Algorithms , 2005 .

[2]  Niloy Ganguly,et al.  Stop Clickbait: Detecting and preventing clickbaits in online news media , 2016, 2016 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM).

[3]  Prakhar Biyani,et al.  "8 Amazing Secrets for Getting More Clicks": Detecting Clickbaits in News Streams Using Article Informality , 2016, AAAI.

[4]  F. T. Marquez How Accurate Are the Headlines , 1980 .

[5]  J. N. Blom,et al.  Click bait: Forward-reference as lure in online news headlines , 2015 .

[6]  Ullrich K. H. Ecker,et al.  The effects of subtle misinformation in news headlines. , 2014, Journal of experimental psychology. Applied.

[7]  Percy H. Tannenbaum,et al.  The Effect of Headlines on the Interpretation of News Stories , 1953 .

[8]  Peter Kulchyski and , 2015 .

[9]  Bing Liu,et al.  Web Data Mining: Exploring Hyperlinks, Contents, and Usage Data , 2006, Data-Centric Systems and Applications.

[10]  Yimin Chen,et al.  Misleading Online Content: Recognizing Clickbait as "False News" , 2015, WMDD@ICMI.

[11]  Volume 22 , 1998 .

[12]  Günter Neumann,et al.  Recognizing Textual Entailment Using Sentence Similarity based on Dependency Tree Skeletons , 2007, ACL-PASCAL@ACL.

[13]  Katarzyna Molek-Kozakowska Towards a pragma-linguistic framework for the study of sensationalism in news headlines , 2013 .

[14]  Thorsten Joachims,et al.  Learning to classify text using support vector machines - methods, theory and algorithms , 2002, The Kluwer international series in engineering and computer science.

[15]  Yi Yang,et al.  Learning to Identify Review Spam , 2011, IJCAI.

[16]  Tanmoy Chakraborty,et al.  We Used Neural Networks to Detect Clickbaits: You Won't Believe What Happened Next! , 2016, ECIR.

[17]  Avrim Blum,et al.  The Bottleneck , 2021, Monopsony Capitalism.

[18]  Katarzyna Molek-Kozakowska,et al.  CoerCive Metaphors in news headlines: a Cognitive-pragMatiC approaCh , 2014 .

[19]  Xiaojun Wan,et al.  PKUSUMSUM : A Java Platform for Multilingual Document Summarization , 2016, COLING.

[20]  Xiaojun Wan,et al.  Co-Training for Cross-Lingual Sentiment Classification , 2009, ACL.

[21]  Claire Cardie,et al.  Weakly Supervised Natural Language Learning Without Redundant Views , 2003, NAACL.