The author introduces 'ontological inversion,' a technique designed to expand the one-directional inference nature of Large Language Models. This method allows models to capture nuanced, multifaceted concepts, such as memories that evoke both sorrow and joy simultaneously. The approach was developed by applying a negative gain factor during sweeps into the Niodoo steering architecture. It addresses the common limitation where LLMs overfit to singular emotional labels when prompted with personal experiences. By inverting concepts similarly to physics involution, the technique enables models to flip emotional states, such as transforming sorrowful memories into joyful ones. The work is shared via a GitHub repository titled 'ontological-inversion' by user Ruffian-L.