ARCHIVES
Analyzing and Enhancing You tube Ranking Algorithms for Video Recommendations
Published Online: May-June 2024
Pages: 15-20
Cite this article
↗ https://www.doi.org/10.59256/ijire.20240503004Abstract
Abstract: In the rapidly evolving digital space, staying ahead is pivotal for video platforms. The dynamics of recommendation systems, responsible for curating a tailored experience for millions of users daily, become paramount in this pursuit. This study embarks on a comprehensive journey to dissect, simulate, and optimize the algorithms underpinning these recommendations. The proposed segments delve deeper into the specific objectives of this research endeavor. Analyzing YouTube's existing recommendation algorithms and leveraging a proposed model to create a user-friendly interface for the simulation of these algorithms. Testing and evaluating the efficacy of the enhanced algorithms against a benchmark dataset. The future of digital video platforms is intertwined with the evolution of recommended algorithm By enhancing the way platforms like YouTube recommend videos, this study aspires to contribute significantly to improving user experience and platform efficiency.
Related Articles
2024
Embedding Artificial Intelligence for Personal Voice Assistant Using NLP
2024
Analysis of Pedestrian Steel Bridge subjected the Seismic Load and Wind Load using Damper at different Span
2024
Review Paper on Comparison of Asymmetric and Symmetric RCC Building with Soil Structure Interaction by Dynamic Loading
2024
BLYNK RFID and Retinal Lock Access System
2024
ML-Driven Facial Synthesis from Spoken Words Using Conditional GANs
2024