A review of predictive coding algorithms. Spratling, M. W. Brain and Cognition, 112:92–97, March, 2017.
Paper doi abstract bibtex Predictive coding is a leading theory of how the brain performs probabilistic inference. However, there are a number of distinct algorithms which are described by the term “predictive coding”. This article provides a concise review of these different predictive coding algorithms, highlighting their similarities and differences. Five algorithms are covered: linear predictive coding which has a long and influential history in the signal processing literature; the first neuroscience-related application of predictive coding to explaining the function of the retina; and three versions of predictive coding that have been proposed to model cortical function. While all these algorithms aim to fit a generative model to sensory data, they differ in the type of generative model they employ, in the process used to optimise the fit between the model and sensory data, and in the way that they are related to neurobiology.
@article{spratling_review_2017,
series = {Perspectives on {Human} {Probabilistic} {Inferences} and the '{Bayesian} {Brain}'},
title = {A review of predictive coding algorithms},
volume = {112},
issn = {0278-2626},
url = {https://www.sciencedirect.com/science/article/pii/S027826261530035X},
doi = {10.1016/j.bandc.2015.11.003},
abstract = {Predictive coding is a leading theory of how the brain performs probabilistic inference. However, there are a number of distinct algorithms which are described by the term “predictive coding”. This article provides a concise review of these different predictive coding algorithms, highlighting their similarities and differences. Five algorithms are covered: linear predictive coding which has a long and influential history in the signal processing literature; the first neuroscience-related application of predictive coding to explaining the function of the retina; and three versions of predictive coding that have been proposed to model cortical function. While all these algorithms aim to fit a generative model to sensory data, they differ in the type of generative model they employ, in the process used to optimise the fit between the model and sensory data, and in the way that they are related to neurobiology.},
urldate = {2024-04-25},
journal = {Brain and Cognition},
author = {Spratling, M. W.},
month = mar,
year = {2017},
keywords = {Cortex, Free energy, Neural networks, Predictive coding, Retina, Signal processing},
pages = {92--97},
}
Downloads: 0
{"_id":"qzxJieCGByBzJ9Rdt","bibbaseid":"spratling-areviewofpredictivecodingalgorithms-2017","author_short":["Spratling, M. W."],"bibdata":{"bibtype":"article","type":"article","series":"Perspectives on Human Probabilistic Inferences and the 'Bayesian Brain'","title":"A review of predictive coding algorithms","volume":"112","issn":"0278-2626","url":"https://www.sciencedirect.com/science/article/pii/S027826261530035X","doi":"10.1016/j.bandc.2015.11.003","abstract":"Predictive coding is a leading theory of how the brain performs probabilistic inference. However, there are a number of distinct algorithms which are described by the term “predictive coding”. This article provides a concise review of these different predictive coding algorithms, highlighting their similarities and differences. Five algorithms are covered: linear predictive coding which has a long and influential history in the signal processing literature; the first neuroscience-related application of predictive coding to explaining the function of the retina; and three versions of predictive coding that have been proposed to model cortical function. While all these algorithms aim to fit a generative model to sensory data, they differ in the type of generative model they employ, in the process used to optimise the fit between the model and sensory data, and in the way that they are related to neurobiology.","urldate":"2024-04-25","journal":"Brain and Cognition","author":[{"propositions":[],"lastnames":["Spratling"],"firstnames":["M.","W."],"suffixes":[]}],"month":"March","year":"2017","keywords":"Cortex, Free energy, Neural networks, Predictive coding, Retina, Signal processing","pages":"92–97","bibtex":"@article{spratling_review_2017,\n\tseries = {Perspectives on {Human} {Probabilistic} {Inferences} and the '{Bayesian} {Brain}'},\n\ttitle = {A review of predictive coding algorithms},\n\tvolume = {112},\n\tissn = {0278-2626},\n\turl = {https://www.sciencedirect.com/science/article/pii/S027826261530035X},\n\tdoi = {10.1016/j.bandc.2015.11.003},\n\tabstract = {Predictive coding is a leading theory of how the brain performs probabilistic inference. However, there are a number of distinct algorithms which are described by the term “predictive coding”. This article provides a concise review of these different predictive coding algorithms, highlighting their similarities and differences. Five algorithms are covered: linear predictive coding which has a long and influential history in the signal processing literature; the first neuroscience-related application of predictive coding to explaining the function of the retina; and three versions of predictive coding that have been proposed to model cortical function. While all these algorithms aim to fit a generative model to sensory data, they differ in the type of generative model they employ, in the process used to optimise the fit between the model and sensory data, and in the way that they are related to neurobiology.},\n\turldate = {2024-04-25},\n\tjournal = {Brain and Cognition},\n\tauthor = {Spratling, M. W.},\n\tmonth = mar,\n\tyear = {2017},\n\tkeywords = {Cortex, Free energy, Neural networks, Predictive coding, Retina, Signal processing},\n\tpages = {92--97},\n}\n\n\n\n\n\n\n\n","author_short":["Spratling, M. W."],"key":"spratling_review_2017","id":"spratling_review_2017","bibbaseid":"spratling-areviewofpredictivecodingalgorithms-2017","role":"author","urls":{"Paper":"https://www.sciencedirect.com/science/article/pii/S027826261530035X"},"keyword":["Cortex","Free energy","Neural networks","Predictive coding","Retina","Signal processing"],"metadata":{"authorlinks":{}},"html":""},"bibtype":"article","biburl":"https://bibbase.org/zotero/saurabhr","dataSources":["nxjWwW7fWbb5tfpKz"],"keywords":["cortex","free energy","neural networks","predictive coding","retina","signal processing"],"search_terms":["review","predictive","coding","algorithms","spratling"],"title":"A review of predictive coding algorithms","year":2017}