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- Date: Wed, 6 Jan 1993 22:17:57 -0700
- Sender: "Control Systems Group Network (CSGnet)" <CSG-L@UIUCVMD.BITNET>
- From: "William T. Powers" <POWERS_W%FLC@VAXF.COLORADO.EDU>
- Subject: Statistics; Skinner; PCT vs S-R
- Lines: 244
-
- [From Bill Powers (930106.2100)]
-
- Dennis Delprato (930106) --
-
- >Hedges takes as examples the Particle Group Data reviews that
- >examine "stable-particles" and focuses on mass and lifetime
- >estimates. He argues that the Birge ratio (the accepted index
- >of determining "how well the data from [a] set of studies agree
- >(except for sampling error)" is comparable to that obtained
- >with socio-behavioral research.
-
- Interesting that he had to go to particle physics to find a
- parallel -- and even more interesting that the statistical facts
- of particle physics are no better than those of the socio-
- behavioral sciences! Of course particle physics is strictly about
- mass phenomena: there is no such thing as "an" electron. The low
- predictivity arises, I should think, in such pursuits as
- measuring solar neutrinos or trying to find a new particle, where
- the number of events is very small and willy-nilly, the
- physicists find themselves trying to apply mass-statistical
- measures to single events -- "Was that a real top quark?"
-
- Control theory is more akin to classical physics, which deals
- with a continuous macroscopic world. Quantum mechanics shades
- into classical physics for large-scale phenomena -- on the scale,
- say, of a mitochondrion in a cell or a speck of dust. There have
- been numerous psychologists (and physicists) who have speculated
- about quantum phenomena in the mind -- less, I suspect, because
- of any justification for applying quantum concepts on a scale as
- large as a neuron than because the predominance of statistics
- gives them familiar ground to walk on.
-
- Hedges would have found a very different picture if he had talked
- to physicists in areas not connected with the quantum physics of
- rare phenomena, or with engineers.
- --------------------------------------------
- >>Did Skinner ever face the problem of the specificity of the
- >>relationship between deprivation and reinforcement?
-
- >I am fairly certain he would invoke evolution. When the
- >organism is deprived of certain opportunities (to eat,
- >sometimes exercise...), it is more likely to eat, be active...
- >when given the opportunity than under conditions of
- >nondeprivation. "In the evolutionary sense this 'explains' why
- >water deprivation strengthens all conditioned and unconditioned
- >behavior concerned with the intake of water"
-
- This is one of those non-explanations, isn't it? If it turned out
- that organisms were LESS likely to eat, exercise, and so on under
- deprivation, evolution would explain that, too. This is what I
- call the "will of God" way of invoking evolution. Saying that the
- observed relationship is due to evolution is no more explanatory
- than saying that God wanted it that way.
-
- The real question that needs an answer is "What is the
- organization that evolved (or that God willed, it makes no difference) such
- that we observe this relationship?" A real
- explanation would elucidate that organization and not futz around
- with evolutionary pseudo-explanations.
-
- >I intepret him as taking the position that one way to make an
- >object or activity reinforcing is by way of deprivation. Thus,
- >his theory agrees with the statement that something is
- >reinforcing (functions as a reinforcer) because of deprivation.
-
- This is like explaining how a radio works by saying that one way
- to make the music louder is to turn the volume control, and
- another is to take the cover off the speaker. I'm reminded of the
- quote that Rick (or was it Tom) came up with, in which Skinner
- admitted that it would be better to understand how the insides of
- the organism work. He was really battling against people who
- tossed off glib and question-begging explanations in terms of
- traits and tendencies, and of course I'm with him all the way,
- there. Unfortunately, he persuaded a lot of people that
- successful models of the insides were millenia off, and not worth
- thinking about.
-
- >He would object to adding that deprivation leads to a want
- >that in turn enters into the control of behavior. To him,
- >want is an inner cause that is of no use in predicting
- >and controlling behavior. He would ask how would we
- >produce a want, how do we know what the organism wants?
-
- Yes, to him a "want" was forever a fiction, a mentalism, a ghost
- in the machine. He had another reason for rejecting "inner
- causes," no matter of what kind. He insisted that the only causes
- of behavior lay ultimately in the environment; the existence of
- even a single inner cause would call all of his explanations, and
- his whole philosophy, into doubt.
-
- I wrote him a letter once explaining that control theory could
- provide a scientific meaning for terms like wants and goals and
- intentions. He wrote a two or three line letter back saying that
- there was nothing in this idea that he found useful.
-
- >Note the relevance of phylogeny (in Skinner's view) to the
- >fish case.
-
- Relevance, maybe. Explanation, no.
- ------------------------------------------------------------
- Greg Williams (920106 - 2) --
-
- >Using the PCT model for the tracking of a particular subject,
- >which gives a very high correlation between model-predicted
- >handle positions and actual handle positions during the course
- >of runs with disturbances other than the disturbance used to
- >calibrate the model, what is the correlation between model-
- >predicted cursor positions and actual cursor positions during
- >the course of such runs?
-
- This depends on the difficulty (how rapidly the disturbance
- changes). For low-difficulty tasks, the predicted cursor movements have a low
- correlation, maybe only 0.5, with the actual
- cursor movements. That's because the cursor hardly moves from its
- ideal position, so the noise is large in comparison with
- meaningful movements. When the difficulty is much higher, so the
- cursor excursions away from ideal amount to 10 or 15 percent or
- so of the peak-to-peak handle movements, the correlation improves
- considerably; the model cursor correlates as high as 0.8 or 0.9
- with the actual cursor movements. That's because the errors are
- due to systematic sluggishness of tracking, which the model
- reflects faithfully. You would expect the cursor predictions to
- be worse than handle predictions because the cursor position is
- the difference between two large numbers, handle position and
- disturbance magnitude.
-
- At the highest difficulties the correlation falls off again
- because tracking itself begins to break down; the person simply
- loses control altogether. I'm speaking of experiments in which
- there is a moving target and also a disturbance applied directly
- to the cursor. I think this is also true for plain compensatory
- "tracking."
-
- I'm giving you these numbers from memory. I think Tom Bourbon may
- have some old data in which these numbers were calculated,
- although not for varying degrees of difficulty.
-
- >I suppose that the latter correlation will not be very
- >high. Is that true? If so, the COMPLETE model is wrong, isn't
- >it?
-
- COMPLETE and RIGHT are two different things. A complete model
- commits itself to a prediction that is exact within the limits of
- measurement error. It says "At time t=120, the equivalent handle
- position is 248 pixels above zero." In fact, the real handle
- position might be 300 pixels BELOW zero at that time. If that's
- the case, the modeler would go back to the drawing board;
- something is really wrong with the model. Or, sometimes, the
- modeler will look at the real handle trace and see that just at
- that time there was an abrupt and very large departure from the
- pattern of movement before and after that time, and that the
- model fit just fine both before and after. In that case, the
- modeler would shrug and say that something happened that the
- model can't explain. It's not worthwhile trying to make a model
- fit every anomaly. But there had better not be too many of them,
- and they had better not occur in the same position in every run.
-
- Somtimes anomalies are meaningful, as in the independent
- discovery, by Rick and me, of spontaneous reversals. Even
- practiced trackers will occasionally, for no apparent reason,
- reverse the sign of the connection between error and action.
- There is then a brief period of exponential runaway, followed in
- about half a second by a return to normal tracking. Rick
- proceeded to put reversals in on purpose, and found that the
- model reproduced the exponential runaway extremely well. Of
- course we had to put in an ad-hoc higher level that, half a
- second later, reverse the output sign of the control system to compensate for
- the external reversal. The signature of a
- spontaneous reversals is unmistakable, once you've seen a few of
- them. So that kind of anomaly is accounted for, if not explained.
-
- The main point of insisting that a model or an explanation be
- complete enough to give an exact (even spuriously exact)
- prediction is so you can tell when the model is wrong, and by
- about how much. You can't do anything systematic to improve a
- model that makes predictions so uncertain that you can't tell
- whether they match the data or not. If you can measure the
- behavior with an accuracy of 1%, then the model should predict
- within 1%, no matter how foolish you feel about making such
- accurate predictions with a model you know can't be right yet. If
- the model predicts to 1%, then at least you know it's complete
- enough to test.
-
- >I see no reason why a predictive S-R model could not be
- >developed to predict cursor movement.
-
- Well, I think I do, but if you want to put your model where your
- mouth is, I will pay attention. Of course I expect it to be a
- real S-R model -- no feedback allowed!
-
- If you don't want to devise the demonstration to prove your
- point, then I can only agree with you: you can see no reason why
- a predictive S-R model could not be developed.
-
- >It seems to me that a large number of models (PCT and S-R, each
- >differing from the others in parameters and/or basic forms) can
- >produce equally high correlations between actual handle
- >position and model-predicted handle position, because the
- >moment-to-moment differences in the predictions of the various
- >models get "washed out" in computing those correlations.
-
- In one sense this is certainly true, at least of PCT models. You
- could propose that the comparator contains an integrator, and
- that the output function is just a linear multiplier. You could
- propose that the input function multiplies the perceptual signal
- by 25.9923, and that the input where the perceptual signal enters
- the comparator weights the perceptual signal by 1/25.9923. Or you
- could say that the reference signal is also multiplied by 25.993
- and the integration factor of the output is 1/25.993 of the
- factor in the canonical model with an input gain of 1. You could
- say that the reference signal enters the input function, or the
- output function, and there is no comparator. You could say that
- there are three reference signals, one entering the input
- function, one entering the comparator, and the other entering the
- output function.
-
- These variations would be indistinguishable in terms of their
- behavior, and could all be adjusted to match the real behavior
- equally well. But they would all be convertible to an equivalent
- model of the canonical form we use, so these differences are
- trivial from the behavioral standpoint. Only through circuit-
- tracing can we really decide among them -- and where circuit- tracing has been
- done, the canonical model is usually, but not
- always, the best geometric fit.
-
- You're actually talking about differences of an even subtler
- form, where the model, for example, might contain an instability
- that causes oscillations at 100 MHz. Since these oscillations
- would never be visible in the behavior, this model would also fit
- the data. But there's a principle of parsimony, which recommends
- that you put nothing into the model that isn't required to
- explain observations. So far, no variation on the model explains
- what we see any better than the canonical one.
-
- But I deny that any S-R model will be able to predict the
- behavior of the handle and the cursor with any interesting degree
- of accuracy. It's up to you to show that I'm wrong, and you're
- not going to accomplish that with words.
-
- Sorry about the old demon. I kind of liked him.
- ---------------------------------------------------------------
- Best to all and goodnight,
-
- Bill P.
-