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Urdu News Article Recommendation Model using Natural Language Processing Techniques

2022-05-29 12:43:32
Syed Zain Abbas, Dr. Arif ur Rahman, Abdul Basit Mughal, Syed Mujtaba Haider

Abstract

There are several online newspapers in urdu but for the users it is difficult to find the content they are looking for because these most of them contain irrelevant data and most users did not get what they want to retrieve. Our proposed framework will help to predict Urdu news in the interests of users and reduce the users searching time for news. For this purpose, NLP techniques are used for pre-processing, and then TF-IDF with cosine similarity is used for gaining the highest similarity and recommended news on user preferences. Moreover, the BERT language model is also used for similarity, and by using the BERT model similarity increases as compared to TF-IDF so the approach works better with the BERT language model and recommends news to the user on their interest. The news is recommended when the similarity of the articles is above 60 percent.

Abstract (translated)

URL

https://arxiv.org/abs/2206.11862

PDF

https://arxiv.org/pdf/2206.11862.pdf


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