Synthetic Data Generation using
Augmented Language Models (ALMs) pt. 4/5
Workshop | Dr Steve Bickley
Date: 21 August & 3 September
Workshop: 10am-12pm
Location: QUT Gardens Point
Event Details
Speaker Details
Steve bickley
For Part 4 and 5 of Steve's workshop, we will delve further into the transformative impact of Augmented Language Models (ALMs) like OpenAI's ChatGPT and the innovative Assistants API on research analytics. Utilizing pre-trained models such as GPT-3.5-turbo and GPT-4, along with impressive advancements from providers like Google's Gemini and Anthropic's Claude series, ALMs are revolutionizing empirical study designs. These technologies enhance decision-making processes, especially through synthetic data generation and silicon sampling. In this session, participants will engage in a hands-on exercise using SurveyLM, working in small groups to simulate and analyze complex agent behaviors. This exercise will provide a deep dive into real-world decision-making, leveraging research methods and tools from behavioral economics, and demonstrating the significant capabilities and applications of ALMs in modern research.
Steve is a trained Behavioural Economist and Research Fellow at the ARC Training Centre for Behavioural Insights for Technology Adoption (BITA Centre) at QUT, dedicated to understanding how real-world factors shape human behaviour and decision-making. His unique blend of professional backgrounds in electrical engineering, project management, and behavioural economics has shaped his distinctive approach to problem-solving. Steve’s research delves into the complex systems literature and beyond, offering fresh perspectives and innovative approaches to behavioural economics and social AI, aiming to enrich these fields by making social science research more robust and effective. His innovative research culminated in his PhD thesis, "Bridging Complexity and Behavioural Economics: The Constrained Methods Matrix," which presents novel tools and insights for modeling and analyzing dynamic and complex societal systems, especially during unforeseen events like disease outbreaks and technological transformations.