Time to indulge in the occasional revisiting of one of my technical papers, in the hope that they may be of more general interest then the original audience they were written for. This time I’m going to focus on one that I co-wrote with my long-time collaborator, Maarten Boudry, and published in 2013 in the journal Studies in History and Philosophy of Biological and Biomedical Sciences. The title of the paper is: “The mismeasure of machine: synthetic biology and the trouble with engineering metaphors.”
We began by noting that the scientific study of living organisms is permeated by machine and design metaphors. Genes are often characterized as providing the “blueprint” for an organism, organisms in turn are “reverse engineered” to discover their functionality, and living cells are compared to biochemical factories, complete with assembly lines, transport systems, messenger circuits, etc.
Although the notion of design is indispensable to think about adaptations, and engineering analogies have considerable heuristic value (e.g., when it comes to deploying optimality assumptions), Maarten and I argue in the paper that they are limited in several important respects. In particular, the analogy with human-made machines falters when we move down to the level of molecular biology and genetics.
Living organisms are far more messy and less transparent than human-made machines, as David Hume famously put it when addressing the classical argument from design. In part II of Dialogues Concerning Natural Religion, he writes:
“If we see a house … we conclude, with the greatest certainty, that it had an architect or builder because this is precisely that species of effect which we have experienced to proceed from that species of cause. But surely you will not affirm that the universe bears such a resemblance to a house that we can with the same certainty infer a similar cause, or that the analogy is here entire and perfect.”
Indeed, Hume continued:
“A continual circulation of matter in [the universe] produces no disorder; a continual waste in every part is incessantly repaired: The closest sympathy is perceived throughout the entire system: And each part or member, in performing its proper offices, operates both to its own preservation and to that of the whole. The world, therefore, I infer, is an animal.”
So, if anything, the universe resembles the messiness and organic development of living beings, not the precision and exact functionality of machines. The analogy with man-made artifacts, he concludes, is flawed and should be rejected. If that’s true at the level of the cosmos, we think it is also true — and for similar reasons — at the level of biological organisms.
A better way to think of evolution is as an opportunistic tinkerer, blindly stumbling on “designs” that no sensible engineer would come up with. This was pointed out by Francois Jacob back in his classical 1977 paper, “Evolution and Tinkering,” where he says:
“The action of natural selection has often been compared to that of an engineer. This, however, does not seem to be a suitable comparison. First, because in contrast to what occurs in evolution, the engineer works according to a preconceived plan … Second, because of the way the engineer works: to make a new product, he has at his disposal both materials specially prepared to that end and machines designed solely for that task. Finally, because the objects produced by the engineer … approach the level of perfection made possible by the technology of the time. In contrast, evolution is far from perfection. … Natural selection has no analogy with any aspect of human behavior. … It works like a tinkerer — a tinkerer who does not know exactly what he is going to produce but uses whatever he finds around him whether it be pieces of string, fragments of wood, or old cardboards; in short it works like a tinkerer who uses everything at his disposal to produce some kind of workable object.”
That is, natural selection is a satisficying — not optimizing — process, as well as the ultimate recycler!
If you are thinking that perhaps we are building a strawman, that nobody really thinks of organisms as engineered, here is George Williams, one of the foremost evolutionists of the second part of 20th century:
“Whenever I believe that an effect is produced as the function of an adaptation perfected by natural selection to serve that function, I will use terms appropriate to human artifice and conscious design. The designation of something as the means or mechanism for a certain goal or function or purpose will imply that the machinery involved was fashioned by natural selection for the goal attributed to it.”
And yet, even arch-adaptationist Richard Dawkins — whose popular work was derived in part from William’s — had this to say while watching the dissection of a giraffe’s neck:
“Not only would a designer never have made a mistake like that nervous detour; a decent designer would never have perpetrated anything of the shambles that is the criss-crossing maze of arteries, veins, nerves, intestines, wads of fat and muscle, mesenteries and more.”
Maarten and I also point out that the engineering-inspired idea that natural selection is capable of “solving a near intractable physics-problem,” as Steven Pinker said with regard to the smooth movement of your limbs, though having a kernel of truth, is profoundly misleading. Animals don’t use algebraic fractions to calculate the level of altruism they should extend to their kin (not even unconsciously), any more than birds use latitude and trigonometry to navigate to their brooding places, or dogs compute parabolic trajectories when they’re catching a ball in flight. All these animals use surprisingly simple rules of thumb which, in their specific ecological environments, produce behaviors that more or less track engineering solutions.
Yet in popular science books the language may be ambiguous. Dawkins, for instance, writes in The Selfish Gene:
“When a man throws a ball high in the air and catches it again, he behaves as if he had solved a set of differential equations in predicting the trajectory of the ball. He may neither know nor care what a differential equation is, but this does not affect his skill with the ball. At some subconscious level, something functionally equivalent to the mathematical calculations is going on.”
Well, much hinges on what one means by “functionally equivalent.” Experiments show that humans (and dogs) use a deceptively simple heuristic to catch a ball: keep your gaze fixed at the ball, and adjust your running speed such that the angle of the ball remains constant (for references to this and other claims in this post, see the original paper). When you follow this heuristic, you will be there when the ball hits the ground. As it happens, baseball players are very poor at predicting where a ball is going to hit the ground when they are asked not to run towards it. They just manage to get there when the ball does. This is a little surprising since computing the trajectory of a ball is a very complicated physical problem: one has to take into account initial velocity, angle, direction, spin, as well as the air current and the distance from the player.
We then move on from a preliminary discussion of the use of engineering metaphors in biology to consider more directly the field of synthetic biology. To begin with, there is no such thing as a single research program in this emerging area. The literature distinguishes at least five conceptually distinct, if somewhat overlapping programs associated with synthetic biology:
(1) Bioengineering. Uses standard biotechnology tools to build novel biochemical pathways in host organisms.
(2) In silico synthetic biology. Similar to bioengineering, but carried out using computer simulations of novel metabolic pathways, rather than by experimentation with living organisms.
(3) Synthetic genomics. As the name plainly implies, this is a much broader scale of bioengineering intervention, at the level of whole genomes — rather than individual pathways — being slated into a (de-genomicized) host cell.
(4) Protocell synthetic biology. Here the aim is somewhat complementary to that of synthetic genomics: to bioengineer “living” cells that could then be used as entirely artificial hosts for other bioengineering projects.
(5) Unnatural molecular biology. This approach is arguably the most ambitious, as researchers in this area pursue the goal of producing entirely new molecular biologies, for instance using expanded genetic codes, capable of incorporating more and different amino acids from those used by the natural code.
Despite impressive technological innovation, the prospect of artificially designing new life forms from scratch has proven more difficult than the superficial analogy with “programming” the right “software” might have initially suggested. The idea of applying straightforward engineering approaches to living systems and their genomes — isolating functional components, designing new parts from scratch, recombining and assembling them into novel life forms — pushes the analogy with human artifacts beyond its limits and onto the breaking point. In the absence of a one-to-one correspondence between genotype and phenotype (which does hold, instead, in the case of blueprints and actual engineering projects), there is no straightforward way to implement novel biological functions and design new life forms.
Both the developmental complexity of gene expression and the multifarious interactions of genes and environments are serious obstacles for “engineering” a particular phenotype. The problem of reverse-engineering a desired phenotype to its genetic “instructions,” we suggest, is probably intractable for any but the most simple phenotypes, and recent developments in the field of bio-engineering and synthetic biology reflect these limitations.
Instead of genetically engineering a desired trait from scratch, as the machine/engineering metaphor promises, we suggest that researchers are more likely to make progress by co-opting natural selection itself to “search” for a suitable genotype, or by borrowing and recombining genetic material from extant life forms.
Maarten and I conclude the paper by suggesting that perhaps we should be looking for new metaphors, or even shy away from metaphorical language whenever possible. One alternative metaphor for thinking about the relationship between genomes and phenomes is the idea of a recipe, where DNA contributes the equivalent of the instructions for cooking, but does not specify all of the details of the process, which are left to a continuous interaction between the recipe itself and the environment and ingredients that are being used.
Although the recipe metaphor does get us away from a straightforward talk of “blueprints,” and particularly from a simplistic, near one-to-one Genotype => Phenotype mapping function, it is of mostly educational use and is unlikely to generate novel insights to guide professional researchers.
The same holds another common metaphor, that of an origami, proposed by Lewis Wolpert. It captures some important elements of embryological development (like the circuitous step-by-step folding), but it obviously will not work as a new master metaphor for thinking about living organisms (nor was it intended as such).
While we acknowledge that metaphorical and analogical thinking are part and parcel of the way human beings make sense of the world, in some highly specialized areas of human endeavor it may simply be the case that the object of study becomes so remote from everyday experience that analogies begin to do more harm than good (Hume docet). In particular, the systematic application of engineering metaphors to a domain that is fundamentally different from the world of human artifacts may send scientists on a wild goose chase. Wittgenstein famously said that “Philosophy is a battle against the bewitchment of our intelligence by means of our language.” Perhaps a contribution of philosophy of biology to the field of synthetic biology is to help free the scientists from the bewitching effects of misleading metaphors, so that they can simply get on with the difficult and unpredictably creative work lying ahead.
_____
P.S.: a few sentences in this essay have been edited to reflect critical points raised by some readers, see below.

“At some subconscious level, something functionally equivalent to the mathematical calculations is going on.”
Rather than a ballplayer catching a ball, make it a cheetah catching a gazelle and the issue of constant recalculation might be more obvious.
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Actual progress! -{:>)=
Yeah, Massimo, I thought you had Dawkins wrong on this. I do still object to some of his metaphors. When you have to ‘take back’ the title in the introduction, you should perhaps change the title.
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Socratic,
Now now, be nice to Rebecca, she’ll be our Philosophy Day keynote speaker at City College in November: https://sites.google.com/site/philosophydayatccny/keynote-speaker
Also, I suggest that the exchange between you and Coel is more informative when you both abstain from sniping…
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Cousin: To me that just means it gets the same answers as solving the equation. It is only ‘functionally” equivalent. The wording could be clearer, but it going a bit far to say Dawkins is saying the ‘subconscious’ is solving differential equations. It’s all in what is meant by ‘functionally’. I think he’s only refering to the result.
In particle physics we some times use a ‘simulated neural net’ to do the functional equivalent of a likelihood fit. The result is pretty much the same. You may lose the theorem about the likelihood being the best estimator, but it’s a lot less work to code and the answer is just about as good.
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In that case, we’re back to Dawkins then speaking very unclearly. And, per Coel’s response, we’re back to cakes, whatever flavor.
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Socratic,
Sure. And the “something functionally equivalent” is something that produces the same ball-catching behaviour (since the “function” here is catching the ball) and the thing that is going on at the subconscious level is the heuristic outlined by Massimo in the OP.
And no, I neither forgot nor ignored what Dawkins said. Perhaps there is a third possibility? How about “interpreted differently” what Dawkins said?
Socratic, can I ask you? Are you asserting that not even on the most charitable reading could one interpret that sentence, in context, the way I just did? (And we now have at least 4 people, myself, synred, ghost and now Massimo all accepting that reading.) Or are you just wanting to take the least charitable reading because you so want Dawkins to be wrong?
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Hi Massimo,
Sure, happy to. 🙂 Since the quote is on page 12 of his book I’ve just read the first 15 pages to ensure I have it in context. It’s all about what an engineer would do if they were trying to build a robot to emulate human behaviour. From Massimo’s OP:
When I read Pinker’s “solving [the] problem”, I interpret him as meaning producing something that achieves the task. In this case the task being the smooth and efficient movement of limbs. Again, the whole discussion is about how a robot would be engineered to emulate a human. In context, anything that emulates the human “solves the problem”. Pinker is saying that this would be hard for a human engineer and robot programmer to achieve, and yet natural selection has produced a human that does it.
As a comparison, let’s again consider the streamlined hydrodynamic shape of a shark of the aerodynamics of an eagle. Those are hard problems if one starts with the physics of fluid flow and Bernoulli’s equation, etc. In practice, a human engineer would spend ages in a wind tunnel with a suck-it-and-see tinkering. Efficient shapes would be “near intractable” to arrive at by calculation. Again, natural selection has arrived at very good shapes for sharks and eagles. Thus again, natural selection has “solved a near-intractable physics problem”. The “solution” here is the shape, the functional shape.
The “solving physics” talk by Pinker does not — again, this is just how I read it — point to algebra or physics equations or calculations, it points to the end product, the function, in these cases the streamlined shape or the smooth movement of limbs.
Thus, as I read it, I do not see Pinker as having been misled by machine analogies, nor would I personally, on reading Pinker’s chapter, have been misled by such analogies. So, again, I don’t see anything wrong with what Pinker said, interpreting it as I do.
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“Efficient shapes would be “near intractable” to arrive at by calculation. Again, natural selection has arrived at very good shapes for sharks and eagles. Thus again, natural selection has “solved a near-intractable physics problem”. The “solution” here is the shape, the functional shape.”
Endless realtime feedback.
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As I see it, the real trouble with engineering metaphors is that they are used by people who have no idea what engineering is. If you were to program an off-the-shelf robot arm to catch a thrown ball, it would not involve solving a single differential equation (in real-time applications what you need is a numeric approximation computed in time to act on it, not a solution).
For the real geniuses (the root word of “engineer”), the metaphors go also from biology towards engineering. Leonardo da Vinci dissected corpses to find out their mechanisms, and a lot of his sketches for machines were influenced by the designs (as he saw it) of nature revealed.
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Massimo: “Thanks for bluntly reminding me about virtue epistemology.”
😉
Maybe we should all sign-up to be publicly photographed standing in front of that slide so we can all be bluntly reminded of it when we occasionally violations of its principles.
Massimo: “[…] you have convinced me that Maarten and I misinterpreted what Dawkins was saying there.”
Public mind-changing is an all-to-rare, admirable, difficult, beautiful thing. Hats off to you! Remember this occasion next time Julia Galef asks you for an example of a public mind-change. 🙂
Please may I suggest adding a note at the bottom of the OP to alert readers that the text has now been tweaked to reflect conversations in the comments? Otherwise the comments will be terribly confusing.
FWIW, it’s not 100% clear to me that Dawkins’ passage was claiming the opposite either (ie claiming to know that there are no such calculations). I just think it was explicit about the question being open (and about the answer not mattering to the point being made).
Massimo: “I reject the idea that we misrepresented him, since that involves intention […]”
OK. Then I happily withdraw any such suggestion of intention and apologise for any resultant sore feelings.
Massimo: “Now, anyone wishes to defend Pinker’s more obvious and less ambiguous statement about reverse engineering the mind?”
I’m not sure which one you mean. I suspect I might well think it worthy of defence (since I liked the book you reference) but I doubt I’m up to the job of persuading anyone that doesn’t already agree. 🙂
SocraticGadfly: “Massimo: Pinker needs to start with reverse-engineering his wife’s mind […]”
Really? That strikes me as a remarkably unpleasant and uncalled-for choice of phrase.
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Coel,
My problem with Pinker’s approach is in the whole idea of reverse engineering. Of course animal limbs “solve near intractable physical problems,” but they don’t do so as the result of engineering. Just look again at Dawkins’ description of the mess inside a giraffe’s neck. If one took the engineering metaphor seriously one would have to account for a functionality of every detail of that mess, which would be hopelessly misguided. Just like hyper-adaptationist programs in biology, to which both Dawkins and Pinker happily subscribe to (no, I don’t think this is a mischaracterization, just look at what they have to say about, for instance, S.J. Gould and his insistence on stochasticity and constraints). It would be a bit like trying to reverse engineer a Ruei Goldberg machine.
In other words, the issue is that there is no easy way to tell apart characteristics of living organisms that really do have a semi-optimized function from those that result from a messy historical process and have still maintained some functionality. History is important in biology, not so in engineering.
Google Ghost,
Right, I’ll add a note at the end of the OP to alert readers to this discussion.
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Massimo, “This is little surprising” > This is “a” little surprising
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It is possible to ‘reverse engineer’ a simulated neural net. When they were introduced into the BaBar experiment, we were very skeptical of them, so we took it and figured out what variables it was in end cutting on. These turned out to be sensible, so we concluded the neural net was ok with us.
Now the neural net does not work by rational choosing cut variables that discriminate among the hypothesis your trying to discriminate between (such as whether a particle is an electron or a pion). In stead you feed it the data for known samples of pions and electrons and use ‘back propagation’
to adjust the the strengths of ‘synapse’ to obtain an optimal discrimination. It’s do hypothesis free clustering, but in particle physics we often have the luxury of knowing what were looking for.
So in this case ‘reverse engineering’ is just a matter of figuring out the ‘functional equivalent’ engineered selection rather than letting the neural net learn.
I am skeptical of our ability to do this in the more complicated case of biology.
One defect of neural net approach is over training. If presented with too small samples of say electrons and protons it may tune in on what are only statistical fluctuation in the samples, so that when you apply it to an independent sample it may not meet expectations. Reverse engineering can help in this case as if you see it ‘cutting hard’ on a variable that should not matter, it’s likely due to over training.
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Hi Massimo,
But surely one can take the engineering metaphor seriously AND take into account the “messy historical process” of evolution that you quite-rightly point to. I don’t think one could understand an animal without adopting a functional, reverse-engineering perspective of what all the various systems do and how they interact. An eagle’s wings are for flying; our lungs are for oxygenating blood; the stomach is there for digesting food, etc. All such statements are adopting a functional/engineering perspective.
One should not, of course, then over-interpret that and look for “functionality of every detail of that mess”, because one then realises the differences between biological evolution and human engineering. (Even in human engineering there is historical contingency, for the example the choice between metric and imperial thread sizes might come from historical contingency rather than the function of the system one is building.)
Thus Pinker’s writing is as much about contrasting the evolved brain with human engineering as it is comparing them. Again, one only goes wrong and gets misled if one forgets those differences. I don’t see that Pinker does.
Much of Dawkins’s critique of Gould was that stochasticity and constraints were already part of the standard picture, and that pointing to them wasn’t new (though perhaps they might have been insufficiently emphasized). I suspect that neither Dawkins nor Pinker would disagree with anything you’ve said about the importance of historical contingency and stochasticity. I don’t see that there’s an either/or here, with the reverse-engineering perspective. Can we have both, as appropriate?
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On my own little train of thought here; One of the issues of natural selection are that mutations seem far more focused than chance would assume, so what process would guide them? What if there is the constant pressure constraints at work in the mutability of cells, as throughout the entire process of species selection? In other words, thermodynamics all the way down. Then the mutations are not so much random, as guided by context…..
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Nice to see that charitable behavior is being demonstrated regarding this passage from Dawkins:
“When a man throws a ball high in the air and catches it again, he behaves as if he had solved a set of differential equations in predicting the trajectory of the ball. He may neither know nor care what a differential equation is, but this does not affect his skill with the ball. At some subconscious level, something functionally equivalent to the mathematical calculations is going on.”
It may be that this passage is not a fit enough example to demonstrate Massimo’s and Boudry’s thesis. And Massimo hints at why in his following sentence: “Well, much hinges on what one means by ‘functionally equivalent.’ ”
Socratic, at some point, if I remember correctly, reasonably questions whether Dawkins is even engaged in useful analogy in the sense of comparing particulars from which a clarifying inference can be made, i.e., “ball catching” = “differential equations” or “ball catching” = “something functionally equivalent to . . . mathematical calculations.” Is this really all that helpful? No. He could throw an imaginary ball into the air, catch it and “behave as if.” So maybe this is not a useful example of either analogy or synecdoche, for that matter.
I think I’m in basic agreement with couvent2104 when he says, “[Dawkins] gives a loose analogy with something completely different, the ability to catch a ball. We are asked to believe that this ability is “functionally equivalent” to a calculation (in itself a controversial statement).”
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Hi Coel,
What your example shows is that the gene will become more prevalent if the animal carrying it engages in altruistic behaviour, compared to the animal carrying it not engaging in altruistic behaviour.
That tells us nothing at all about whether carrying the gene and engaging in altruistic behaviour makes the gene more prevalent in the population in general. In your example, for every chance that the life of an animal carrying the gene is saved, there are three chances that the life of an animal not carrying the gene will be saved.
Suppose you have ten animals, all siblings and so it is likely that around half of them have the gene if one does. And suppose the ones with the gene help the others survive at a slight cost to their own survival chances, so the gene itself should, according to the hypothesis, have a greater chance of surviving.
Suppose further each sibling had, without the gene being present, an equal chance of procreating. I model this by giving all them an initial weighting of 20. Assume that the gene is present in exactly 5 of these 10 siblings
I model the change in probability of procreating by those animals with the gene losing one point of weighting and each of them adding one point of weighting to all of the other siblings. Then I can adjust the probability that they will procreate on this basis.
But this results in the ones with the gene ending up with 23 weighting points each and the ones without the gene ending up with 25, and so adjusting the probability on this basis, the ones without the mutation end up with a slightly higher probability of procreating and so the mutation is disadvantaged by this.
No matter how much you make the disadvantage slight compared to the advantage to other siblings, the same thing holds.
This can be generalised to a population, types of relatives, genetic drift, different ways of apportioning the benefit/disadvantage, what have you, the same problem seems to occur – even with a perfect hit rate on relatives and the benefit conferred in just the right proportions, or much more generously, the mutation itself is disadvantaged relative to the population generally.
Now, I know that I am missing something here, because this would have been noticed before. But I just can’t work out what it is.
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To make a ball catching robot the real trick is discovering the differential equation not to solve it. Mathematica or Maple can solve it once somebody has discovered the equation and how to apply it.
It’s understanding the physics that is the hard part; Newton did that for us. Baseball players human, robotic or ape’s don’t need to know how it works to learn how to do it (‘learn’ –> be programmed or in the case of a simulated neural net something like learning.)
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https://goo.gl/ltgXcs
Ball catching robot!
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Thomas,
Would that make me, driving down the highway, functionally equivalent to driving in the Indy 500?
To further my particular little rant, considering the popular example of a butterfly’s wings in Central America affecting a tornado in the Midwest, it would seem that if one is looking for metaphors for understanding biology, thermodynamics would be quite useful for describing extended context and feedback. As I pointed out in my first post and Miles observed above, engineering is a subset of evolution and given that biology totally evolved in a thermodynamic environment, such that even time is only evident as a consequence of evolution, otherwise events would appear entirely cyclical, it does seem the broadest possible concept to explain the ebb and flow of biology is this dynamic of energized expansion and stabilized consolidation in which it formed.
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OK, once more,
“At some subconscious level, something functionally equivalent to the mathematical calculations is going on.”
What “mathematical calculations” are being referred to in this sentence? Obviously – solving a set of differential equations. So the sentence says that, at some subconscious level, something functionally equivalent to solving a set of differential equations is going on.
So, clearly that is technically wrong. As I say Dawkins himself would probably say so.
It is not, as I say, important in the context because it has served to illustrate his point and this illustration is not altered by the issue.
It is, however, important in other contexts to note that, when we throw and catch a ball, nothing functionally equivalent to solving a set of differential equations is happening, as many people used to think.
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A few probably trivial thoughts I had reading Massimo’s OP and the as usual good comments. One was on how many mathematical procedures (algorithms) are actually not that different from the heuristics the dog uses to catch a ball eg calculating a square root, “hill climbing” to maximize a complex function. A second was that the topic in question was teleonomy v. teleology revisited. A machine is “an apparatus [a complex arrangement of matter] consisting of interrelated parts with separate functions, used in the performance of some kind of work“. It is therefore a very productive concept to wield in biology because it links function and thermodynamics via physics and chemistry. To my mind, this concept of a functional machine has long since been disconnected from the corollary of a designer or engineer, but not from the corollary that there are multiple constraints on the structure, in terms of efficiency, constituent materials, energetics.
A final analogy was markets in economics. These are carrying out complex mathematical optimizations, but again, the calculations are not being done in any particular place, consciously or unconsciously. Darwin was one thinker who saw this acting elsewhere.
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It could have been expressed more clearly and explicitly, but your reading just assumes Dawkins is an idiot. You may not like him, but he ain’t stupid, I think.
As noted elsewhere solving the equation is not really the issue. For using it to solve the problem of catching it is knowing the equation that is the trick Algebra is pretty mechanical and the program Maple can solve the equation, if you can tell it what equation to solve.
Even robots can get the result using heuristic methods — either designed or ‘neural net’ type where the robot learns (so to speak).
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brodix, like it: “Would that make me, driving down the highway, functionally equivalent to driving in the Indy 500?” But in this case, no. 🙂
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Coel,
Ah, now I think I see one possible root of our disagreement: you seem to be taking “functional” and “engineered” as near synonyms, but in biology they aren’t. The hypothesis that a biological structure is functional is indeed a good heuristic. The idea that it was “designed” in any way like what an engineer would do isn’t, because it tends to underestimate the messiness and historicity of the process.
As for Dawkins vs Gould, sure, some people had pointed out the existence of stochastic factors before, but nowhere near close to the relevance and coherence that Gould gave them. It’s not a either/or, but Dawkins & co. often behave as if it was. (See Gould and Lewontin’s famous paper on the Spandrels of San Marco, or my commentary on it, with Jonathan Kaplan, here (horribly long link…): https://www.dropbox.com/s/rlzj7mj8stgm2b2/2000-Pigliucci-The%20fall%20and%20rise%20of%20Dr%20Pangloss%20adaptationism%20and%20the%20Spandrels%20paper%2020%20years%20later-Trends%20in%20Ecology%20%26%20Evolution.pdf?dl=0
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There was a young lady attending Stanford who’s father was a famous race car driver and taught her how to drive. In an interview in the Stanford Daily she was bragging about how fast she could drive up Page Mill Rd to Skyline boulevard (a difficult mountain road that borders Stanford). The reporter seemed to think she was great. As someone who occasional drove Page Mill myself I thought she was an ass.
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Thomas,
My calculations in 70mph traffic might be considerably less precise than someone driving in 200mph traffic, but they are calculations none the less. Our spatial sense is fairly well honed in these situations, not just in terms of safety, but propriety as well. For instance, driving in some places, some behaviors, such as lane splitting by motorcycles, is less accepted than others. We are all making constant calculations, even walking, conversing, etc, much of it about spatial relationships. A certain prez candidate is in hot water for trespassing other’s spaces. Yet if you were to examine this perception, what concepts would seem most relevant? Geometry, or thermodynamics? Now your brand new car would be using radar and light sensors, but when you do it, what registers, frequency, or amplitude/magnitude? I would argue our more basic, emotional senses operate on the latter and that is hot/cold/pressure/tension/etc. That these mental calculations are based on a thermodynamic based sense. Not to say we don’t have a well developed geometric sense, given we are bifocal, but the deeper instinct is thermal.
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Massimo, the TinyURL recommended by DM works well. See again:
http://tinyurl.com/create.php?url=https%3A%2F%2Fwww.google.com%2F_%2Fchrome%2Fnewtab%3Fespv%3D2%26ie%3DUTF-8
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Massimo, the TinyURL recommended by DM works well. See again:
http://tinyurl.com/
Your citation: http://tinyurl.com/henrkpt
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Oopps. Two citations. Here’s yours via TinyURL
http://tinyurl.com/henrkpt
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