Seyed Abdullah


2026

Ajman University Team develops a set of specialized architectures for longitudinal affective forecasting for SemEval-2026 Task 2. We establish a baseline for our performance with a standard transformer model that sets our performance floor in Subtask 1 (ranked 18). In Subtask 2A (ranked 7) and Subtask 2B (ranked 8), our main contribution is to address the problem of scale collapse. To address the scale collapse, we use a novel "bifurcated leviathan" architecture to combine residual learning with target scaling. Our additional contribution is that we counteract the effects of regression to the mean by using optimized covariance via specialized objective functions (CCC and Huber). We use these objective functions while enforcing strict user level data splits. Finally, we show empirically that standard gradient stabilization methods decrease zero shot cross subject generalization, even when they optimize intra subject memorization.