This document presents a comparative study of machine learning algorithms for classifying Myanmar news into four categories: political, business, entertainment, and sport. The study evaluates naïve bayes, k-nearest neighbors, and support vector machines on a dataset of 12,000 documents, finding that the support vector machine achieves the highest accuracy. It highlights the unique challenges of working with the Myanmar language and suggests that further research could explore deep learning approaches for improved classification.