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''On Intelligence: How a New Understanding of the Brain will Lead to the Creation of Truly Intelligent Machines'' is a 2004 book by
Jeff Hawkins Jeffrey Hawkins is a co-founder of the companies Palm Computing, where he co-created the PalmPilot, and Handspring, where he was one of the creators of the Treo.Jeff Hawkins, ''On Intelligence'', p.28 He subsequently turned to work on neurosc ...
and
Sandra Blakeslee Sandra Blakeslee (born 1943) is an American science correspondent of over four decades for ''The New York Times'' and science writer, specializing in neuroscience. Together with neuroscientist V. S. Ramachandran, she authored the 1998 popular s ...
. The book explains Hawkins' memory-prediction framework theory of the
brain A brain is an organ that serves as the center of the nervous system in all vertebrate and most invertebrate animals. It is located in the head, usually close to the sensory organs for senses such as vision. It is the most complex organ in a ve ...
and describes some of its consequences.


The theory

Hawkins' basic idea is that the brain is a mechanism to predict the future, specifically, hierarchical regions of the brain predict their future input sequences. Perhaps not always far in the future, but far enough to be of real use to an organism. As such, the brain is a feed forward hierarchical state machine with special properties that enable it to
learn Learning is the process of acquiring new understanding, knowledge, behaviors, skills, values, attitudes, and preferences. The ability to learn is possessed by humans, animals, and some machines; there is also evidence for some kind of learn ...
. The state machine actually controls the behavior of the organism. Since it is a feed forward state machine, the machine responds to future events predicted from past data. The hierarchy is capable of memorizing frequently observed sequences (
Cognitive modules A cognitive module in cognitive psychology is a specialized tool or sub-unit that can be used by other parts to resolve cognitive tasks. It is used in theories of the modularity of mind and the closely related society of mind theory and was develo ...
) of patterns and developing invariant representations. Higher levels of the cortical hierarchy predict the future on a longer time scale, or over a wider range of sensory input. Lower levels interpret or control limited domains of experience, or sensory or effector systems. Connections from the higher level states predispose some selected transitions in the lower-level state machines.
Hebbian learning Hebbian theory is a neuroscientific theory claiming that an increase in synaptic efficacy arises from a presynaptic cell's repeated and persistent stimulation of a postsynaptic cell. It is an attempt to explain synaptic plasticity, the adaptatio ...
is part of the framework, in which the event of learning physically alters neurons and connections, as learning takes place.
Vernon Mountcastle Vernon Benjamin Mountcastle (July 15, 1918 – January 11, 2015) was an American neurophysiologist and Professor Emeritus of Neuroscience at Johns Hopkins University. He discovered and characterized the columnar organization of the cerebral co ...
's formulation of a cortical column is a basic element in the framework. Hawkins places particular emphasis on the role of the interconnections from peer columns, and the activation of columns as a whole. He strongly implies that a column is the cortex's physical representation of a state in a state machine. As an engineer, any specific failure to find a natural occurrence of some process in his framework does not signal a fault in the memory-prediction framework ''per se'', but merely signals that the natural process has performed Hawkins' functional decomposition in a different, unexpected way, as Hawkins' motivation is to create intelligent machines. For example, for the purposes of his framework, the nerve impulses can be taken to form a temporal sequence (but phase encoding could be a possible implementation of such a sequence; these details are immaterial for the framework).


Predictions of the theory of the memory-prediction framework

His predictions use the
visual system The visual system comprises the sensory organ (the eye) and parts of the central nervous system (the retina containing photoreceptor cells, the optic nerve, the optic tract and the visual cortex) which gives organisms the sense of sight (th ...
as a prototype for some example predictions, such as Predictions 2, 8, 10, and 11. Other predictions cite the auditory system ( Predictions 1, 3, 4, and 7). *An Appendix of 11 Testable Predictions, beginning on page 237:


Enhanced neural activity in anticipation of a sensory event

1. In all areas of
cortex Cortex or cortical may refer to: Biology * Cortex (anatomy), the outermost layer of an organ ** Cerebral cortex, the outer layer of the vertebrate cerebrum, part of which is the ''forebrain'' *** Motor cortex, the regions of the cerebral cortex i ...
, Hawkins (2004) predicts "we should find ''anticipatory cells''", cells that fire in anticipation of a sensory
event Event may refer to: Gatherings of people * Ceremony, an event of ritual significance, performed on a special occasion * Convention (meeting), a gathering of individuals engaged in some common interest * Event management, the organization of e ...
. :Note: As of 2005
mirror neuron A mirror neuron is a neuron that fires both when an animal acts and when the animal observes the same action performed by another. Thus, the neuron "mirrors" the behavior of the other, as though the observer were itself acting. Such neurons ha ...
s have been observed to fire ''before'' an anticipated event.


Spatially specific prediction

2. In primary sensory
cortex Cortex or cortical may refer to: Biology * Cortex (anatomy), the outermost layer of an organ ** Cerebral cortex, the outer layer of the vertebrate cerebrum, part of which is the ''forebrain'' *** Motor cortex, the regions of the cerebral cortex i ...
, Hawkins predicts, for example, "we should find anticipatory cells in or near V1, at a precise location in the visual field (the scene)". It has been experimentally determined, for example, after mapping the angular position of some objects in the visual field, there will be a one-to-one correspondence of cells in the scene to the angular positions of those objects. Hawkins predicts that when the features of a visual scene are known in a memory, anticipatory cells should fire ''before'' the actual objects are seen in the scene.


Prediction should stop propagating in the cortical column at layers 2 and 3

3. In layers 2 and 3, predictive activity (neural firing) should stop propagating at specific cells, corresponding to a specific prediction. Hawkins does not rule out anticipatory cells in layers 4 and 5.


"Name cells" at layers 2 and 3 should preferentially connect to layer 6 cells of cortex

4. Learned sequences of firings comprise a representation of ''temporally constant invariants''. Hawkins calls the cells which fire in this sequence "name cells". Hawkins suggests that these ''name cells'' are in layer 2, physically adjacent to layer 1. Hawkins does not rule out the existence of layer 3 cells with dendrites in layer 1, which might perform as ''name cells''.


"Name cells" should remain ON during a learned sequence

5. By definition, a ''temporally constant invariant'' will be active during a learned sequence. Hawkins posits that these cells will remain active for the duration of the learned sequence, even if the remainder of the cortical column is shifting state. Since we do not know the encoding of the sequence, we do not yet know the definition of ''ON'' or ''active''; Hawkins suggests that the ON pattern may be as simple as a simultaneous
AND or AND may refer to: Logic, grammar, and computing * Conjunction (grammar), connecting two words, phrases, or clauses * Logical conjunction in mathematical logic, notated as "∧", "⋅", "&", or simple juxtaposition * Bitwise AND, a boolea ...
(i.e., the name cells simultaneously "light up") across an array of name cells. :See Neural ensemble#Encoding for ''grandmother neurons'' which perform this type of function.


"Exception cells" should remain OFF during a learned sequence

6. Hawkins' novel prediction is that certain cells are inhibited during a learned sequence. A class of cells in layers 2 and 3 should NOT fire during a learned sequence, the axons of these "exception cells" should fire ''only if a local prediction is failing''. This prevents flooding the brain with the usual sensations, leaving only exceptions for post-processing.


"Exception cells" should propagate unanticipated events

7. If an unusual event occurs (the learned sequence fails), the "exception cells" should fire, propagating up the cortical hierarchy to the
hippocampus The hippocampus (via Latin from Greek , ' seahorse') is a major component of the brain of humans and other vertebrates. Humans and other mammals have two hippocampi, one in each side of the brain. The hippocampus is part of the limbic system, ...
, the repository of new memories.


"Aha! cells" should trigger predictive activity

8. Hawkins predicts a cascade of predictions, when recognition occurs, propagating down the cortical column (with each
saccade A saccade ( , French for ''jerk'') is a quick, simultaneous movement of both eyes between two or more phases of fixation in the same direction.Cassin, B. and Solomon, S. ''Dictionary of Eye Terminology''. Gainesville, Florida: Triad Publishi ...
of the eye over a learned scene, for example).


Pyramidal cells should detect coincidences of synaptic activity on thin dendrites

9. Pyramidal cells should be capable of detecting coincident events on thin
dendrite Dendrites (from Greek δένδρον ''déndron'', "tree"), also dendrons, are branched protoplasmic extensions of a nerve cell that propagate the electrochemical stimulation received from other neural cells to the cell body, or soma, of the ...
s, even for a
neuron A neuron, neurone, or nerve cell is an electrically excitable cell that communicates with other cells via specialized connections called synapses. The neuron is the main component of nervous tissue in all animals except sponges and placozoa. ...
with thousands of synapses. Hawkins posits a temporal window (presuming time-encoded firing) which is necessary for his
theory A theory is a rational type of abstract thinking about a phenomenon, or the results of such thinking. The process of contemplative and rational thinking is often associated with such processes as observational study or research. Theories may be ...
to remain viable.


Learned representations move down the cortical hierarchy, with training

10. Hawkins posits, for example, that if the inferotemporal (IT) level has learned a sequence, that eventually cells in V4 will also learn the sequence.


"Name cells" exist in all regions of cortex

11. Hawkins predicts that "name cells" will be found in all regions of the cortex.


See also

*
Hierarchical temporal memory Hierarchical temporal memory (HTM) is a biologically constrained machine intelligence technology developed by Numenta. Originally described in the 2004 book ''On Intelligence'' by Jeff Hawkins with Sandra Blakeslee, HTM is primarily used today for ...
, a technology by Hawkins's startup Numenta Inc. to replicate the properties of the neocortex. * Memory-prediction framework


References


External links

* *
Saulius Garalevicius' research page
- Research papers and programs presenting experimental results with Bayesian models of the Memory-Prediction Framework
Project Neocortex
- An open source project for modeling Memory-Prediction Framework


Reviews

* ** * * {{cite web, url=http://www.techcentralstation.com/article.aspx?id=112204B, archive-url=https://web.archive.org/web/20120305062713/http://www.techcentralstation.com/article.aspx?id=112204B, archive-date=2012-03-05, title=On Intelligence, People and Computers, first=Arnold, last=Kling, website=Tech Central Station, date=22 November 2004

A review by
Ben Goertzel Ben Goertzel is a cognitive scientist, artificial intelligence researcher, CEO and founder of SingularityNET, leader of the OpenCog Foundation, and the AGI Society, and chair of Humanity+. He helped popularize the term 'artificial general inte ...
(7 Oct 2004) 2004 non-fiction books Science books Artificial intelligence publications Books about human intelligence