In advanced analytics, one of the biggest and most persistent dilemmas is the trade-off between predictive accuracy and model interpretability.
As organizations adopt more complex algorithms like gradient boosting, neural networks, or ensemble systems accuracy often soars,
but transparency plummets. Business leaders may be impressed by the numbers but grow uneasy when they can’t understand why a model made a certain decision.
