Unsupervised multivariate methods in machine learning involve analyzing and extracting patterns from data where the goal is not to predict an outcome, but to uncover hidden structures, relationships, or groupings within the data itself. Unlike supervised learning, where the algorithm is provided with labeled data to learn patterns, unsupervised methods work with unlabeled data and aim to discover inherent structures without explicit guidance.