How do you balance the trade-off between accuracy and simplicity in uncertainty analysis?
Uncertainty analysis is a process of quantifying and communicating the variability and limitations of your data, models, and assumptions. It can help you make better decisions by revealing the range of possible outcomes, the sources of uncertainty, and the level of confidence you have in your results. However, uncertainty analysis also involves a trade-off between accuracy and simplicity. How do you balance this trade-off and choose the most appropriate methods and tools for your situation? Here are some tips to guide you.