Abstract

The current study systematically examines the application of the Bayesian approach or Bayesian estimation methods in large-scale datasets, emphasizing their adaptability as well as predictive prowess across various domains. The study navigates the challenges inherent in the computational efficacy and scalability of these techniques to offer insights into their application in the fields of text analysis, image processing, recommendation systems, and social network analysis. The study uses experimental designs that highlight how well Bayesian methods perform in comparison to more conventional methods, emphasizing how much better they are able to handle uncertainty and incorporate prior knowledge. The future directions and possible enhancements of Bayesian techniques are also discussed, especially with regard to overcoming computational limitations by integrating machine learning and developing sophisticated algorithms. As a crucial tool for modern data analysis and predictive modelling, the study's conclusion upholds the critical role that Bayesian estimation plays in the world of big data.

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