Performance Evaluation of Analytics Models for Trends Analysis of News

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Abstract

Microblogging services, especially Twitter, allow the user to share their most recent thoughts, feelings or news freely and almost immediately. Hence, the number of news tweets generated by the news media is increasing exponentially. Mining the valuable data from the large volume of tweets can help increase the revenue of organisations by allowing them to engage with the public faster and better by responding to the latest topics of interest. In this work, mining the hot keywords and being able in classifying the news tweets, trending topic and keywords in the news tweets. Both supervised and unsupervised machine learning models are used. Several machine learning algorithms are being used to compare the accuracy in classifying the tweets.

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Heng, L. Y., Logeswaran, R., & Marikannan, B. P. (2020). Performance Evaluation of Analytics Models for Trends Analysis of News. In Journal of Physics: Conference Series (Vol. 1712). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/1712/1/012021

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