Grocking done. I think.

I'm 'stuck' on replicating the signaling that happens in the brain using the 
physics the brain uses (just not the bio-basis). It uses the electric dipole 
(evanescent) and magnetic field produced by the collapse of the field inside a 
capacitor due to an ultra-thin current filament(s). In its operation I looks 
more like a sloppy diode (big accretion/depletion zones).

I intend to replicate this physics because it is what creates the field system 
of the brain. That is what has to be done first. You probably won't get why 
this is of primary concern. Take from me that to demonstrate its importance 
means making it.

The necessity of this physical form of the fields is a question to be asked 
after I have built it. It may well prove that the dynamics may be more 
effective using a whole pile of different quasi-stable oscillators, of which SR 
is an example. Half centre osc., relaxation etc etc etc

I am in no position to judge how this will turn out. It does not mean I dismiss 
SR as a way to improve on nature. I'll settle for doing it nature's way first 
and work from there. If that's ok for now. Call me fixated for the moment if 
you must! 😊 That fixation is of science necessity, not a dismissal of other 
options.

The real issue is the idea of model-less ness and the difference between 
computation with and without a computer (analog or digital) and how they 
differ. 

That battle is best fought, initially, will nature as a benchmark. 

If you are using SR as part of an adaptive control strategy that involves, as 
it appears to, quasi-stable (pencil analogy) dynamics then go for it! 

What is the physical field system produced by an SR? If it radiates at all it's 
a problem. The fields I must produce are quasi-static. If the SR does not make 
the membrane-mimetic field system then I can't know what effect that difference 
has until I do the bio-mimetic version.

Not sure I can grok much more out of this! 😊

Cheers
Colin 




-----Original Message-----
From: "Steve Richfield" <[email protected]>
Sent: ‎11/‎05/‎2015 4:46 AM
To: "AGI" <[email protected]>
Subject: Re: [agi] Restating Colin's Hypothesis

Colin,


OK, I think I see our point of confusion. I covered this point briefly before. 
I'll try again...

You seem to be stuck on a particular explanation involving exquisite 
sensitivity that is NOT needed to make super-sensitive systems, Further, 
exquisite sensitivity has some operational issues that seem to make it 
impractical. Even if it were there it would slow the system WAY down (over 
other better methods) as the point of exquisite sensitivity is searched for. 


Yes, things can be made super-sensitive as you describe, like standing a pencil 
on its point. This is called "regeneration" because in some way 99.999% of the 
output is fed back into the input (with the pencil it is 100.000%, which is why 
you can't stand a pencil on its point). In the case of the pencil, the energy 
that is used to regenerate is gravity. The problem with regeneration in neurons 
is that it is slow (like the time it takes to stand a pencil on its point) and 
not readily adaptable to responding to signals, e.g. specific correlations, 
frequencies, etc., though regenerative receivers have been made.


However, super-regeneration (SR) sidesteps the limitations of regeneration, and 
does NOT need any sort of exquisite adjustment to achieve its nearly limitless 
sensitivity. It is the adjustment that makes regeneration slow, so SR can 
respond immediately without the "settling time" of regeneration. In SR, the 
pencil is let drop, then quickly stood up and let drop again, and again, and 
again. The output is the time to fall, rather than slowly searching for the 
point of perfect balance. Microscopic changes that would be seen as shifts in 
the pencil's balance instead become changes in the time to fall in its rapidly 
repeating cycle.


It isn't just cells that repetitively fire. Dendritic structures have also been 
seen to do this. I suspect that this extends all the way down to individual ion 
channels, but this would be SO low-level that no one would have noticed this if 
they weren't specifically looking for it.


Suppose for a moment that the "output" of a repetitively firing structure like 
a neuron (or dendrite or ion channel) is NOT its voltage or firing rate, but 
rather is the VARIATION in its output or firing rate. This would dovetail 
perfectly into SR methodology. Integrating would provide the signal without an 
absolute reference, like capacitor coupling, which would be NO problem where 
the signals represented the logarithms of things like probabilities.


Neurons are well known for dynamically adjusting their sensitivity. I suspect 
that this is NOT looking for some point of exquisite sensitivity, but rather to 
normalize their firing rates, etc., to avoid metabolic problems attendant in 
firing too fast, and response time problems of firing too slow.


Anyway, SR is but an implementation detail overlaying your basic theory. For 
me, it makes your theory believable, and provides a general framework for the 
multi-level 
channel-synapse-dendrite-cell-column-region-hemisphere-brain-family-society 
emergence of intelligence.


Please grok SR before dismissing it.


Steve

=======================



On Sat, May 9, 2015 at 5:27 PM, colin hales <[email protected]> wrote:

Ok gotcha. 

2 issues.

1) the EM field coupling has at least some empirical verification in the lab. I 
can cite the papers if you want although I suspect you know them.  So there is 
your first glimmer of proof that the fields are strong enough to be causally 
active.

2) the effect is 'butterfly'. That is, 1:10^5 to 1:10^6 will, if persistent, 
rapidly involve themselves in entrainment of neuron firing. This occurs at the 
axon hillock poised right on the verge of firing. Hypersensitised. 

My own calc show that only certain cell densities will achieve this. Only 
certain bran regions and morphologies will do it.

This is about state trajectories around complex time-varying stable and 
unstable equilibrium points where sensitivities are exquisitely high. That is 
where EM coupling comes into causal range... When 50000 cells all near each 
other cohere even briefly and create a 1 v/m field on top of the 10,000,000 v/m 
field in the initial segment/hillock. It only has to perstently shift 
(advance/retard) firing times by a tiny amount to cause a massive change in 
state trajectory. Such things as Hopf bifurcation points do this kind of 
radical state change with tiny changes.

Finally, to go into the more esoteric end of my proposal.... Even when the 
fields are too small to do local change, they are vastly greater than all the 
chemical noise of cell componentry. 

And I hypothesise that they deliver consciousness from the 1st person 
perspective of being the fields. I am looking at how a 'virtual' feedback loop, 
at the level of whole percepts, can additionally impact the state. 

Imagine a visual scene that is expected and the actual visual scene superposed 
on each other and that mismatch. That mismatch is a distributed thing involving 
many neurons that may collectively be biased in the manner already described.

What I am looking at is tissue elegance at a spectacular level. Tissue can 
contribute to conscious AND be/not be causally efficacious

Or

Tissue need not contribute to consciousness at all AND yet be causally 
efficacious. All based on cell density and morphology.... 

Once you see how this can work and then do the numbers, finding it possible....

Then you end up in my position, embarked on testing it inorganically.

This is vastly more complex than any previous view of the brain. The 
overlapping, superposing dynamic interference patterns in millions of cells 
contains a vast amount of information that is currently thrown out.

Imagine how much information there is merely to specify the exact morphology of 
a cell. Now imagine how the fields embody, literally, that information. 

Now imagine 10,000 cells near each other. 10,000 _factorial_ different field 
systems not counting any modulation by even 1 synapse. Just by the cell firing. 
Not including subthreshold oscillations.

Can you see how vastly underestimated brains have been? Is it any wonder the 
story of the last half century of AGI might have underestimated brain tissue 
complexity?

I hope you can now see this.

The good news is that, if you stop using computers, accessing to the same 
complexity is straightforward.

And ... To hark back to the Wright bros even tho I promised I wouldn't, if, in 
a hundred years we have a computer that could compute a model of it all .. It 
would be an AGI simulator, not an AGI. Because the fields are INPUTS. Just like 
a flight simulator traces you about flight but is not flight.

That is how this could all turn out. 

Damn. Batteries. Gotta go.

Cheers
Colin 


--------



From: Steve Richfield
Sent: ‎10/‎05/‎2015 6:06 AM

To: AGI
Subject: Re: [agi] Restating Colin's Hypothesis


Colin,


I think you missed my point. I'll try again...


The "information content" in the EM field is, except for that portion of the EM 
field that is generated by adjacent structures, VERY low-level - too low for it 
to be able to have much effect on ion channel chemistry **UNLESS** there is 
some sort of positive feedback mechanism. To illustrate, extracellular 
electrodes tend to only see what they are next to, with everything else being 
apparent "noise" superimposed on that signal.

Hence, if your EM theory is correct, then there absolutely **MUST** be positive 
feedback to get enough gain to be able to make sense the "noise" subtleties in 
the EM field.


However, positive feedback is fundamentally an unstable thing, unless there is 
some "clever" mechanism that sidesteps the complex stability issues. Automatic 
Gain Control (AGC) works well in systems that do NOT have positive feedback, 
but the sudden onrush to lockup as feedback approaches 100% makes AGC 
approaches unworkable for positive feedback systems.


Super-regenerative (SR) approaches sidestep these problems AND exhibit 
properties well known in neurons, like spiking. SR operates just BEYOND 100% 
feedback, squelching high-level oscillation when it occurs, with the "output" 
being the rate of squelching (spikes in the case of neurons).


Yea, people associate SR with glassical electronics, but it is still alive and 
well in modern devices now being manufactured, e.g. keyless security systems. A 
Google search finds more recent applications than glassical applications.


The reason SR never really dominated the shortwave receiver market was that its 
operation only reflected its input over a small portion of its "cycle" of 
repetitive oscillations, so while it was able to produce full output regardless 
of how weak input signals might be, as input signals got weaker, the output got 
noisier FASTER than competing approaches like superheterodyne designs. Of 
course superheterodyne systems utilizing AGC were MUCH more complex, but people 
gladly paid for a few more tubes to better hear signals from around the world.


So, how can a seemingly simple 2-tube radio possibly drive a speaker from 
micro-volt signals received from around the world? THAT is the sort of 
combination of operational simplicity combined with limitless sensitivity that 
ion channels MUST have to work as you envision.


So, it seems to me that you must make up your mind here. If ion channels are 
able to respond to subtleties in EM fields then there MUST be some sort of 
positive feedback mechanism that operates more or less independently of input 
amplitude, or the presence of high-level signals that are NOT of interest to a 
particular ion channel. If you don't think it is SR, then what else DO you 
think it might be?

I don't (yet) see any other candidates.


Thoughts?



Steve
=================



On Sat, May 9, 2015 at 2:13 AM, colin hales <[email protected]> wrote:

I remember those circuits.... You sometimes can find them in old books that 
also speak of the 'aether' 

It's not a route to brain-mimetic fields.

All we really have to do is replicate the fields of the membrane. I already 
know how they are generated. They 100% consistent but non-uniquely related to 
all the familiar compartmental equivalent- circuit models. The potentials they 
express have complex Hodgkin -Huxley and Fitzhugh-Nagumo non-linearity. 
Paradoxically you can make these nonlinearities with old-school valves!

But the fields are out in the space between cells and have complex power law 
spatiotemporal dynamics and vast information content. 

I'm concerned more with the system underlying action-potential signaling at the 
moment. Without the fields. Designed in a way that makes the addition of the 
fields a relatively simple thing. 

If only things were as simple as those old circuits! 

Cheers
Colin





From: Steve Richfield
Sent: ‎7/‎05/‎2015 7:15 PM
To: AGI
Subject: Re: [agi] Restating Colin's Hypothesis


Colin,


Are you familiar with super-regenerative receivers? These are simple circuits - 
well within what we already know neurons can do, that extract subtle features 
of EM fields - like the energy at a particular frequency. This concept could be 
adapted to extract all sorts of subtle features from EM fields.


These were in common use around WW1, and have returned in the form of various 
wireless devices.


I thought maybe that understanding these might get your reverse engineering the 
brain "juices" flowing.


Steve
===================



On Wed, May 6, 2015 at 8:21 PM, Colin Hales <[email protected]> wrote:

Hi all,
I'm struggling to find time to attend here. My appearances will be patchy.


Your restatement of where I am is heading in the right direction. That is, 
you're grappling with the beginnings of the right ideas. Which is good to see. 
My goal here is simply to get the general idea of AGI as a computer-less 
adaptive control system based on brain physics implemented in inorganic 
crystalline solid form. Artificial brain tissue.


Imagine a cascade of intricately dynamically nested resonating loops each 
triggering downstream cascades that branch and converge ... a massive parallel 
state machine where the entire thing is intrinsically dynamic and its primary 
physics is EM fields. There are a virtually infinite number of ways that any 
dynamic cascade can happen. All because the of EM field physics. 


Whatever it does as a form of 'computation' is emergent. I actually don't care 
ahead of time what that 'computation' looks like. The only thing I know for 
sure is that it's a product of a massive quadrature resonance. 2 axes. Action 
Potential (is the main slow strong loop) and EM field coupling (that weakly 
links loops orthogonally through space at the speed of light). I am replicating 
both these axes, not computing any model of any computation it might appear  to 
produce. The dynamic interaction between these two axes (both of which are 
actually implemented in the one single unified physical EM field sytem)  and 
its self-modification of its own dynamics that is the reason why this is better 
classed as an adaptive control system.


With respect, Feymann diagrams are irrelevant here unless you can tell me the 
science of 'what it's like to be a Feynmann diagram' from a 1st  person 
perspective. It's just the virtual photon exchange diagram of EM fields. 
Nothing to it. There's no esoteric quantum states or other magic. Classical 
wave mechanics. Of course it's all ultimately quantised EM fields at the finest 
scales. But I don't care - as long as I recreate the brain's fields the way the 
brain creates them and uses them (causally) ....voila ....I get the QM/space 
deep structural fabric contribution for free. I am, in effect, involved in an 
experiment that this very fabric is important (indeed essential) and I am do it 
to find out why it is important without knowing fully how it works or what it 
is. Like we do in science. Building it to understand it. Make fire to 
understand combustion. Like that.


The most important concept of all is that what we humans are, literally, is 
'being' this field system. We are not 'being' any apparent computation that 
someone might characterise, by observing the fields. My hypothesis is that 
'being' the field system in the process of complex resonances is essential and 
non-optional in cognition and intelligence in the same way that air/flight 
surface interaction is essential to flight and fuel chemistry is important in 
combustion. I do not claim to know the truth of this yet. But I also know that 
nobody else does either, including everyone on this list. If this hypothesis is 
upheld then it means that computer-based cognition has the same relation to AGI 
as a flight simulator has to flight  - that is, it is a way of designing it and 
understanding it but it is not flight. It's just that it's obvious when flight 
is absent (CRASH!) or underperforming. A mature understanding of this 
underperformance is what I seek.


Whatever it is that is in the brain, from a 3rd person perspective its just 
Maxwell's equations doing their thing. What no physics currently explores is 
the 1st person perspective of being the field system. I have worked out a way 
of viewing the 3rd person membrane-centric fields from the 1st person and how 
it might be ;like something'. I published it here by Trojan Horse in the last 
section of 


Hales, C. G. (2014). "The origi

[The entire original message is not included.]


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