How to Predict Player Churn, with Some Help From ChatGPT

<p>In the world of gaming, companies strive not only to attract players but also to retain them for as long as possible, especially in free-to-play games that rely on in-game micro-transactions. These micro-transactions often involve the purchase of in-game currency, allowing players to acquire items for progression or customization, and funding the game&rsquo;s development. Monitoring the&nbsp;<em>churn rate</em>, which represents the number of players who stop playing, is crucial. This is because a high churn rate means a significant loss in income, which in turn leads to higher stress levels for developers and managers.</p> <p>This article explores the use of a real-world dataset based on data acquired from a mobile app, specifically focusing on the levels played by users. Leveraging&nbsp;<em>machine learning</em>, which has become an essential part of the technology landscape and forms the basis of Artificial Intelligence (AI), businesses can extract valuable insights from their data.</p> <p><a href="https://medium.com/towards-data-science/player-churn-rate-prediction-data-analysis-and-visualisation-part-1-12a9fdff9c10"><strong>Read More</strong></a></p>
Tags: Player