Abstract

<p>Streaming services were popular platforms often visited by internet users. However, the abundance of content can be confusing for its users, prompting them to look for a recommendation from other people. Some of the users looked for content to enjoy with the help of Twitter. However, there were irrelevant tweets shown in the results, showing sentences not related at all to the content in the streaming services platform. This study addressed the classification of relevant and irrelevant tweets for streaming services’ content recommendation using random forests and the Convolutional Neural Network (CNN). The result showed that the CNN performed better in the test set with higher accuracy of 94% but slower in running time compared to the random forest. There were indeed distinctive characteristics between the two categories of the tweets. Finally, based on the resulting classification, users could identify the right words to use and avoid while searching on Twitter.</p><strong>Keywords: </strong>text mining, streaming services, classification, random forest, CNN

Highlights

  • Streaming services were on the rise recently

  • In Indonesia, Twitter is one of the most visited platforms, amassing more than 90 million monthly traffic with 56% of internet users actively using the platform for social media activity [1]

  • The word cloud displayed the name of streaming service platforms in the relevant tweets (Netflix and Disney), suggesting that people should write the keywords with the specific platforms in mind while searching for a content recommendation on Twitter

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Summary

Introduction

There were 59% of internet users aged 16 to 64 owning a technology device watching television content via streaming services platform each month [1]. Two of the most popular streaming services in Indonesia are Netflix and Disney+, offering various content such as movies, series, and animation. Due to the vast collection offered on the platform, some subscribers cannot decide on what kind of content that they want to enjoy. This leads to them checking out the recommendation from their colleagues, and some even ended up browsing for a recommendation from a stranger on social media, for example, Twitter. In Indonesia, Twitter is one of the most visited platforms, amassing more than 90 million monthly traffic with 56% of internet users actively using the platform for social media activity [1]

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