How can I help?
How can I help?
Seminar
Online

Obesity Institute presents: Table 2 Fallacy

  • 13.00 - 14.00
  • 27 Sep 2023
  • Online
Register
Obesity Institute presents:  Table 2 Fallacy
Professor Mark S Gilthorpe from Leeds Beckett University and PhD student Ridda Ali will discuss Table 2 Fallacy.

A common analytical error for research that seeks causal explanation that stems from conflating prediction with causal inference, yielding meaningless causal estimates.

This talk will cover:

  • Professor Mark S Gilthorpe will introduce the statistical concepts with the aid of causal diagrams.
  • Ridda Ali will give a real-world example of causal inference-informed reanalysis in the context of attrition within weight management programmes.

The Obesity Institute at Leeds Beckett University brings together academics from a range of disciplines across the university with policy makers, practitioners, and people living with or at risk of obesity and their families and carers, to coproduce innovative person-centred advances in obesity locally, nationally and internationally.

The Obesity Institute at Leeds Beckett University brings together academics from a range of disciplines across the university with policy makers, practitioners, and people living with or at risk of obesity and their families and carers, to coproduce innovative person-centred advances in obesity locally, nationally and internationally.

Professor Mark S Gilthorpe is a Professor of Statistical Epidemiology in the Carnegie School of Sport and Obesity Institute, Leeds Beckett University, and a Fellow of the Alan Turing Institute for Data Science and Artificial Intelligence, London.

Trained as a mathematical physicist, Mark's driving interest centres on improving our understanding of the observable world through modelling. Mark has fashioned a programme of interdisciplinary research that spans the gap between theoretical and applied data analytics.

Mark focuses on modelling complexity, highlighting and solving common analytical problems in observational research. His research and teaching interests have converged around the insights and utility of causal inference methods. His applied domain is around the causes and consequences of obesity within our society.

Ridda Ali is a PhD student in Causal Data Science at the Leeds Institute for Data Analytics (LIDA).

Ridda graduated with a First-Class Honours degree in Computer Science in 2019 before starting a 4-year ESRC funded integrated PhD and MSc in Data Analytics and Society. As part of her PhD, she was accepted into the highly competitive Alan Turing Enrichment Scheme, which allowed her to enhance her current research by taking advantage of the facilities and opportunities available at The Alan Turing Institute and its partners.

Ridda is multilingual and speaks English, Italian, Urdu, Hindi and Punjabi fluently. Her research interests include observational data analysis, causal inference, epidemiology, and data science. Her research focuses on methodological and applied advances in the understanding of prediction and causal explanation, as well as their distinct differences in obesity research.

Related Events

  • 17.45 - 22.00
  • 26 Feb 2026
  • Leeds School of Arts, City Campus
  • 08.00 - 10.00
  • 27 Feb 2026
  • The Knowledge Exchange, Rose Bowl
Online
Event Seminar
  • 12.00 - 13.00
  • 03 Mar 2026
  • Online
All events