Personalized online live video streaming using softmax-based multinomial classification

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Abstract

As the demand for over-the-top and online streaming services exponentially increases, many techniques for Quality of Experience (QoE) provisioning have been studied. Users can take actions (e.g., skipping) while streaming a video. Therefore, we should consider the viewing pattern of users rather than the network condition or video quality. In this context, we propose a proactive content-loading algorithm for improving per-user personalized preferences using multinomial softmax classification. Based on experimental results, the proposed algorithm has a personalized per-user content waiting time that is significantly lower than that of competing algorithms.

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Kim, K., Kwon, D., Kim, J., & Mohaisen, A. (2019). Personalized online live video streaming using softmax-based multinomial classification. Applied Sciences (Switzerland), 9(11). https://doi.org/10.3390/app9112297

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