Abstract

The focus of this work is detecting semantically similar news articles for search engines and recommender systems which is an important step towards processing and understanding natural language. Search engines and recommender systems typically filter out near-duplicate articles which are often just a paraphrasing of a previous article and therefore irrelevant for the users. Articles with a high level of overlapping content are not interesting to the reader and should be avoided. Here, we focus on named entities, such as people, organizations and places, and their role as a key feature for identifying near-duplicate articles. Since our dataset from the energy business contains a significant amount of paraphrased articles, standard techniques, e.g. based on the Jaccard coefficient, already serve quite well. A fine-tuned BERT model evaluated on named entities achieves best model results with more than 97% accuracy and highest True Positive Rates. The importance of individual words for the model decisions is evaluated by computing their Shapley values. It was found that the explanations are in overall good agreement with the human intuitive interpretation.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call