Date
Publisher
arXiv
Computer-aided teacher training is a state-of-the-art method designed to
enhance teachers' professional skills effectively while minimising concerns
related to costs, time constraints, and geographical limitations. We
investigate the potential of large language models (LLMs) in teacher education,
using a case of teaching hate incidents management in schools. To this end, we
create a multi-agent LLM-based system that mimics realistic situations of hate,
using a combination of retrieval-augmented prompting and persona modelling. It
is designed to identify and analyse hate speech patterns, predict potential
escalation, and propose effective intervention strategies. By integrating
persona modelling with agentic LLMs, we create contextually diverse simulations
of hate incidents, mimicking real-life situations. The system allows teachers
to analyse and understand the dynamics of hate incidents in a safe and
controlled environment, providing valuable insights and practical knowledge to
manage such situations confidently in real life. Our pilot evaluation
demonstrates teachers' enhanced understanding of the nature of annotator
disagreements and the role of context in hate speech interpretation, leading to
the development of more informed and effective strategies for addressing hate
in classroom settings.
What is the application?
Who is the user?
Who age?
Why use AI?
