This study tackles the problem of detecting incongruities between headlines and body text in news articles, where a news headline is irrelevant or even in opposition to t...
Abstract:
This paper tackles the problem of detecting incongruities between headlines and body text, where a news headline is irrelevant or even in opposition to the information in...Show MoreMetadata
Abstract:
This paper tackles the problem of detecting incongruities between headlines and body text, where a news headline is irrelevant or even in opposition to the information in its body. Our model, called the graph-based hierarchical dual encoder (GHDE), utilizes a graph neural network to efficiently learn the content similarity between news headlines and long body paragraphs. This paper also releases a million-item-scale dataset of incongruity labels that can be used for training. The experimental results show that the proposed graph-based neural network model outperforms previous state-of-the-art models by a substantial margin (5.3%) on the area under the receiver operating characteristic (AUROC) curve. Real-world experiments on recent news articles confirm that the trained model successfully detects headline incongruities. We discuss the implications of these findings for combating infodemics and news fatigue.
This study tackles the problem of detecting incongruities between headlines and body text in news articles, where a news headline is irrelevant or even in opposition to t...
Published in: IEEE Access ( Volume: 9)