AI RESEARCH

A Mathematical Conflict Framework for Contextual Data Modulation

arXiv CS.AI

ArXi:2606.02381v1 Announce Type: new In this study, a generalized operator-based mathematical conflict framework is presented to explicitly represent structural discrepancies between raw data and contextual data. The proposed structure treats conflict as a local, directional, and context-sensitive quantity, integrating components such as weighting, scale behavior, and output mapping under a unified abstract operator. Without being reduced to a specific learning algorithm or optimization method, the framework is defined as a general structure adaptable to different classes of problems.