Explicit Content
Explicit content modeling in various domains focuses on accurately identifying and representing information directly stated (explicit) versus implied (implicit). Current research explores this distinction across diverse applications, employing techniques like contrastive learning, multi-objective reinforcement learning, and transformer-based models to improve accuracy and efficiency in tasks ranging from content moderation and recommendation systems to natural language processing and 3D reconstruction. This work is significant for advancing automated systems in areas like content filtering, personalized experiences, and human-computer interaction, while also shedding light on the limitations of current models in capturing nuanced human perception and bias.
Papers
Modeling Human Subjectivity in LLMs Using Explicit and Implicit Human Factors in Personas
Salvatore Giorgi, Tingting Liu, Ankit Aich, Kelsey Isman, Garrick Sherman, Zachary Fried, João Sedoc, Lyle H. Ungar, Brenda Curtis
Detecting sexually explicit content in the context of the child sexual abuse materials (CSAM): end-to-end classifiers and region-based networks
Weronika Gutfeter, Joanna Gajewska, Andrzej Pacut