Predicting change in time production -- A machine learning approach to time perception
Amrapali Pednekar, Alvaro Garrido, Yara Khaluf, Pieter Simoens

TL;DR
This study uses machine learning to predict individual changes in time perception based on naturalistic online experiments, achieving higher accuracy than traditional models and providing insights into cognitive factors influencing timing.
Contribution
It introduces a machine learning model trained on ecologically valid data to predict change in time production, bridging timing research with practical applications.
Findings
Model achieved 61% accuracy in predicting timing change
Previous performance significantly influences future timing behavior
Model generalizes well across different experimental datasets
Abstract
Time perception research has advanced significantly over the years. However, some areas remain largely unexplored. This study addresses two such under-explored areas in timing research: (1) A quantitative analysis of time perception at an individual level, and (2) Time perception in an ecological setting. In this context, we trained a machine learning model to predict the direction of change in an individual's time production. The model's training data was collected using an ecologically valid setup. We moved closer to an ecological setting by conducting an online experiment with 995 participants performing a time production task that used naturalistic videos (no audio) as stimuli. The model achieved an accuracy of 61%. This was 10 percentage points higher than the baseline models derived from cognitive theories of timing. The model performed equally well on new data from a second…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Neural Networks and Applications · Data Visualization and Analytics
