Bayesian decision theory combines prior knowledge with new data to make optimal choices under uncertainty. It uses Bayes' theorem to update beliefs and incorporates decision-makers' preferences through utility functions, aiming to minimize expected loss or maximize expected utility. This approach differs from classical decision theory by explicitly using prior knowledge. It's applicable in various fields, including statistics, machine learning, and economics. Key concepts include prior and posterior probabilities, likelihood, and loss functions.