How much about our interaction with – and experience of – our world can be deduced from
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Transcript of How much about our interaction with – and experience of – our world can be deduced from
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How much about our interaction with and experience of our world can be deduced frombasic principles? This talk reviews recent attempts to understand the self-organised behaviour ofembodied agents like ourselves as satisfying basic imperatives for sustained exchanges withour world.
In brief, one simple driving force appears to explain nearly every aspect of our behaviour andexperience. This driving force is the minimisation of surprise or prediction error. In the context ofperception, this corresponds to (Bayes-optimal) predictive coding that suppresses exteroceptiveprediction errors. In the context of action, simple reflexes can be seen as suppressingproprioceptive prediction errors.
We will look at some of the phenomena that emerge from this formulation, such as hierarchicalmessage passing in the brain and the perceptual inference that ensues. I hope to illustrate thesepoints using simple simulations of auditory processing, with a special focus on repetitionsuppression in the context of the mismatch negativity and omission related responses.
Predictive coding and repetition suppression
Karl Friston, University College London
The anatomy of inferencepredictive codinggraphical modelscanonical microcircuits
Birdsongperceptual categorizationrepetition suppressionomission related responsessensory attenuationa birdsong duetOverview
Objects are always imagined as being present in the field of vision as would have to be there in order to produce the same impression on the nervous mechanism - von Helmholtz
Thomas BayesGeoffrey HintonRichard FeynmanThe Helmholtz machine and the Bayesian brainRichard Gregory
Hermann von Helmholtz Objects are always imagined as being present in the field of vision as would have to be there in order to produce the same impression on the nervous mechanism - von Helmholtz Richard Gregory
Hermann von Helmholtz sensory impressionsPlato: The Republic (514a-520a)
Bayesian filtering and predictive coding
changes in expectations are predicted changes and (prediction error) corrections
prediction error
Minimizing prediction error
Change sensationssensations predictionsPrediction errorChange predictionsActionPerception
A simple hierarchyGenerative models
whatwhereSensory fluctuations
Generative modelModel inversion (inference)A simple hierarchyDescendingpredictionsAscending prediction errorsFrom models to perception
Expectations:Predictions:Prediction errors:Predictive coding
Haeusler and Maass: Cereb. Cortex 2006;17:149-162Bastos et al: Neuron 2012; 76:695-711Canonical microcircuits for predictive coding
ThalamusArea XHigher vocal centreHypoglossal Nucleus
Prediction error (superficial pyramidal cells)Expectations (deep pyramidal cells)Perception
Action
David Mumford
Interim summary
Hierarchical predictive coding is a neurobiological plausible scheme that the brain might use for (approximate) Bayesian inference about the causes of sensations
Predictive coding requires the dual encoding of expectations and errors, with reciprocal (neuronal) message passing
Much of the known neuroanatomy and neurophysiology of cortical architectures is consistent with the requisite message passing
It is the theory of the sensations of hearing to which the theory of music has to look for the foundation of its structure." (Helmholtz, 1877 p.4)
Helmholtz, H. (1877). On the Sensations of Tone as a Physiological Basis for the Theory of Music", Fourth German edition,; translated, revised, corrected with notes and additional appendix by Alexander J. Ellis. Reprint: New York, Dover Publications Inc.,1954
Hermann von Helmholtz The anatomy of inferencepredictive codinggraphical modelscanonical microcircuits
Birdsongperceptual categorizationrepetition suppressionomission related responsessensory attenuationa birdsong duetOverview
Generating bird songs with attractorsSyrinxHigher vocal centertime (sec)FrequencySonogram0.511.5
Hidden causesHidden states
102030405060-505101520prediction and error102030405060-505101520hidden statesDescending predictionsAscending prediction error102030405060-10-505101520causal statesPredictive coding and message passingstimulus0.20.40.60.82000250030003500400045005000time (seconds)
Perceptual categorization
Frequency (Hz)Song a
time (seconds)Song b
Song c
Perceptual inference: suppressing error over peristimulus time
Perceptual learning: suppression over repetitionsSimulating ERPs to repeated chirps
100200300-10010LFP (micro-volts)prediction error00.20.4-505hidden states
Frequency (Hz)percept0.10.20.32000300040005000100200300-10010LFP (micro-volts)00.20.4-505
Frequency (Hz)0.10.20.320004000100200300-10010LFP (micro-volts)00.20.4-505
Frequency (Hz)0.10.20.320004000100200300-10010LFP (micro-volts)00.20.4-505
Frequency (Hz)0.10.20.320004000100200300-10010LFP (micro-volts)00.20.4-505
Frequency (Hz)0.10.20.320004000100200300-10010peristimulus time (ms)LFP (micro-volts)00.20.4-505
Time (sec)Frequency (Hz)0.10.20.320004000Time (sec)17Synthetic MMN
Last presentation(after learning)First presentation(before learning)1234500.511.522.53Synaptic efficacypresentationchanges in parameters123450123456Synaptic gainpresentationhyperparameters100200300-10010100200300-0.4-0.200.2100200300-10010100200300-0.4-0.200.2100200300-10010100200300-0.4-0.200.2100200300-10010100200300-0.4-0.200.2100200300-10010100200300-0.4-0.200.20100200300400-15-10-505101520primary level (N1/P1)peristimulus time (ms)Difference waveform0100200300400-0.6-0.4-0.200.20.4secondary level (MMN)peristimulus time (ms)Difference waveformSensory prediction errorExtrasensory prediction error
18Synthetic and real ERPs
A1A1STGsubcortical inputSTGIntrinsic connections12345020406080100120140160180200123450Extrinsic connections20406080100120140160180200presentationpresentation1234500.511.522.53presentationchanges in parameters123450123456presentationhyperparametersSynaptic efficacySynaptic gain
19The anatomy of inferencepredictive codinggraphical modelscanonical microcircuits
Birdsongperceptual categorizationrepetition suppressionomission related responsessensory attenuationa birdsong duetOverview
Sequences of sequences
Time (sec)Frequency (KHz)0.511.5
SyrinxHigher vocal centerSonogramArea X
omission and violation of predictionsStimulus but no perceptPercept but no stimulusFrequency (Hz)stimulus (sonogram)25003000350040004500Time (sec)Frequency (Hz)percept0.511.525003000350040004500500100015002000-100-50050100peristimulus time (ms)LFP (micro-volts)ERP (prediction error)without last syllableTime (sec)percept0.511.5500100015002000-100-50050100peristimulus time (ms)LFP (micro-volts)with omission
The anatomy of inferencepredictive codinggraphical modelscanonical microcircuits
Birdsongperceptual categorizationrepetition suppressionomission related responsessensory attenuationa birdsong duetOverview
ThalamusArea X
Higher vocal centreHypoglossal Nucleus
Active inference: creating your own sensationsMotor commands (proprioceptive predictions)Corollary discharge(exteroceptive predictions)
Active inference and sensory attenuation
Active inference and sensory attenuationMirror neuron system
time (sec)Frequency (Hz)percept1234567250030003500400045005000012345678-50050100time (seconds)First level expectations (hidden states)012345678-40-20020406080time (seconds)Second level expectations (hidden states)
time (sec)Frequency (Hz)percept1234567250030003500400045005000012345678-50050100time (seconds)First level expectations (hidden states)012345678-40-20020406080time (seconds)Second level expectations (hidden states)Active inference and communication
-20-100102030405060-20-100102030405060Synchronizationsecond level expectations (first bird)second level expectations (second bird)-20-100102030405060-30-20-1001020304050No synchronizationsecond level expectations (first bird)second level expectations (second bird)Mutual prediction and synchronization of chaossynchronization manifold
"There is nothing in the nature of music itself to determine the pitch of the tonic of any composition...In short, the pitch of the tonic must be chosen so as to bring the compass of the tones of the piece within the compass of the executants, vocal or instrumental. (Helmholtz, 1877 p. 310)
Helmholtz, H. (1877). On the Sensations of Tone as a Physiological Basis for the Theory of Music", Fourth German edition,; translated, revised, corrected with notes and additional appendix by Alexander J. Ellis. Reprint: New York, Dover Publications Inc.,1954
Hermann von Helmholtz Thank you
And thanks to collaborators:
Rick AdamsAndre BastosSven BestmannHarriet BrownJean DaunizeauMark EdwardsXiaosi GuLee HarrisonStefan KiebelJames KilnerJrmie MattoutRosalyn MoranWill PennyLisa Quattrocki Knight Klaas Stephan
And colleagues:
Andy ClarkPeter DayanJrn DiedrichsenPaul FletcherPascal FriesGeoffrey HintonJames HopkinsJakob HohwyHenry KennedyPaul VerschureFlorentin Wrgtter
And many others