CT-1.4

Predictive Coding Networks for Temporal Prediction

Beren Millidge, Mufeng Tang, University of Oxford, United Kingdom; Mahyar Osanlouy, University of Auckland, New Zealand; Rafal Bogacz, University of Oxford, United Kingdom

Session:
Contributed Talks 1 Lecture

Track:
Cognitive science

Location:
South Schools / East Schools

Presentation Time:
Fri, 25 Aug, 15:45 - 16:00 United Kingdom Time

Abstract:
Predicting future events is an important function of cortical circuits, yet its precise computational mechanisms remain elusive. Although predictive coding (PC) provides a theoretical framework to describe predictive information processing in the cortex, classical PC models have neglected the temporal dimension, whereas previous efforts to incorporate time into PC models often compromised their biological plausibility and simplicity. In this work, we propose temporal predictive coding (tPC), which performs predictive processing over time while retaining the simple and plausible neural implementation of classical PC. We show that tPC approximates the optimal Kalman filtering in linear filtering problems, and can be straightforwardly extended to nonlinear models to perform more challenging cortical functions, including those related to dynamic visual processing and sequential memory.

Manuscript:
License:
Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 Unported License.
DOI:
10.32470/CCN.2023.1262-0
Publication:
2023 Conference on Cognitive Computational Neuroscience
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Session CT-1
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CT-1.2: NeuralPlayground: A Standardised Environment for Evaluating Models of Hippocampus and Entorhinal Cortex
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CT-1.3: Confidence is detection-like in high-dimensional spaces
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CT-1.4: Predictive Coding Networks for Temporal Prediction
Beren Millidge, Mufeng Tang, University of Oxford, United Kingdom; Mahyar Osanlouy, University of Auckland, New Zealand; Rafal Bogacz, University of Oxford, United Kingdom
CT-1.5: Age-Related Changes in Neural Noise in a Decision-Making Task
Fenying Zang, Leiden University, Netherlands; Anup Khanal, University of California Los Angeles, United States; International Brain Laboratory, www.internationalbrainlab.com, United States; Anne K Churchland, University of California Los Angeles, United States; Anne E Urai, Leiden University, Netherlands
CT-1.6: A shared neural circuit for maintenance and integration of information over time
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