In hypothesis testing, controlling type I and type II errors is crucial for reaching valid statistical conclusions. A type I error occurs when we disprove the null hypothesis when it is actually true, leading to a false positive. Conversely, a type II error happens when we overlook to reject the null hypothesis when it is false, resulting in a fals