Causal Modelling Agents: Augmenting Causal Discovery with LLMs

Поделиться
HTML-код
  • Опубликовано: 20 сен 2024
  • A talk by Ayodeji Ijishakin and Ahmed Abdulaal, Computer Science PhD Student’s at University College London.
    Scientific discovery hinges on the effective integration of metadata, which refers to a set of ‘cognitive’ operations such as determining what information is relevant for inquiry, and data, which encompasses physical operations such as observation and experimentation. This talk introduces the Causal Modelling Agent (CMA), a novel framework that synergizes the metadata-based reasoning capabilities of Large Language Models (LLMs) with the data-driven modelling of Deep Structural Causal Models (DSCMs) for the task of causal discovery. We evaluate the CMA’s performance on a number of benchmarks, as well as on the real-world task of modelling the clinical and radiological phenotype of Alzheimer’s Disease (AD). Our experimental results indicate that the CMA can outperform previous data-driven or metadata-driven approaches to causal discovery. In our real-world application, we use the CMA to derive new insights into the causal relationships among biomarkers of AD.
    This session was part of the Data Science Festival Sandbox Sessions in 2023. Find out more at datasciencefes...
    The Data Science Festival is the place for data driven people to come together, share cutting edge ideas and solve real-world problems. We run monthly events, meetups and the biggest free to attend data festivals in the UK. Join the community at datasciencefes...

Комментарии •