Section 01
HDM-HMM: Introduction to the New AI Detection Method for Mixed Authorship
HDM-HMM is an innovative AI detection method for mixed-authorship documents (co-created by humans and AI). It achieves word-level author inference using a Hierarchical Dirichlet-Multinomial Hidden Markov Model. Treating detection as a sequence labeling problem, this method addresses the failure of traditional binary classification methods in real-world mixed scenarios, reducing the error rate by over 40% compared to traditional methods and providing a new tool for maintaining academic integrity and information authenticity.