Type Two Errors

Error

Type Two Errors, also known as false negatives, occur when a statistical test fails to reject a null hypothesis that is actually false. In quantitative finance, this means a trading model or risk system fails to detect a genuine market signal or a real risk event. For instance, an algorithm might miss a significant impending price movement that would have been profitable to trade. These errors represent missed opportunities or unacknowledged risks.