Reactive or creative evolution?
In the world of computer viruses the hypothesis of intelligent design is unproblematic because we know
that humans create computer viruses (Ludwig himself included), but in the biological world things are different.
What argument does Ludwig advance for ascribing intelligent design to evolving organisms?
Ludwig's argument heavily relies on the distinction between 'reactive' and 'creative' evolution
(7).
'Reactive' means reacting on the selection pressures of the environment.
Darwinian mutation and selection do not create information,
because "the selection process is injecting information into the system",
just like Richard Dawkins injects information in his artificial selection experiments.
Creative evolution does not exist according to Ludwig (2).
Does this make sense?
Ludwig overlooks the fact that natural selection (the core of Darwin's theory) means the interaction of the environment
with the organism.
The environment can be the physical environment.
Consider for example aerodynamics.
Do the laws of aerodynamics inject information into the genomes of birds, bats, and insects?
In an abstract sense, yes.
Consider an extraterrestrial civilization analysing the anatomy of a bird, bat, and insect.
They clearly could infer certain properties about our earth's atmosphere and gravity without investigating our planet itself.
So there is information about the environment built into these organisms.
Next consider the different anatomical solutions of birds, bats and insects.
It is hard to see how these different solutions could follow directly from the laws of aerodynamics.
The different solutions for the same problem arose from heritable variation, natural selection and common descent.
Information injection? Yes, but it has arrived there in a natural way.
No miracles here.
Secondly, the environment of an organism often is another organism.
More than half the world's species live in or on the bodies of other organisms.
Carnivores and herbivores depend on other organisms. Prey-predator are in an evolutionary arms race.
In insects (butterflies) mimicry is the result.
Co-evolution of organisms means a two-way interaction.
In the computer world: viruses and virus scanners co-evolve.
Even in the virtual computer world viruses contain features of their environment because viruses are designed with full
knowledge of the target Operating System (OS).
So although Ludwig is right that the OS is not designed for viruses, the reverse is true.
No wonder that viruses work.
So, do organisms 'inject information' into each other? Again, yes, in an abstract sense
and again by perfect natural Darwinian processes.
Ludwig's label 'reactive' is not an objection to evolution by natural selection at all.
Darwin never claimed that evolution created species 'out of thin air'.
The creative aspect of evolution is that species change by natural selection and thereby change the information content
of their genomes.
This change of information content is natural and not supernatural.
There is no philosophical materialism necessary here.
Since Ludwig accepts reactive evolution and his distinction between reactive and creative evolution melts away,
his argument against creative evolution evaporates too.
Does information increase during development?
Does information increase during development?
If it does, then development apparently is a creative process.
Let us define the algorithmic information content (16) of a fertilised egg of an
animal as the shortest full description of the egg on the molecular level.
It is clear that even for an egg the sequence of DNA in the egg is not enough for a full
description (information in cytoplasm). When the egg grows into an embryo, foetus, baby, child, and adult the algorithmic
information content steadily increases. The reasons are manifold. Size alone means there are more molecules to describe.
Events during life, such as virus infections change the immune system based on a creative genetic process (more).
Mutations in body cells cause cancer and increase the total information content of the body.
Whether or not this increase should be described 'reactive' or 'creative', nobody would claim that supernatural intervention is necessary
to explain information increase during the development and life of an individual.
Why would evolution need supernatural causes to explain information increase?
|
Calculating the phenotype from the genotype
|
| Artist calculating bird (phenotype) from egg (genotype) |
The first half of the book is based on the idea that viruses and Artificial Life are nothing but instructions to be
executed (by a computer).
Ludwig translates this view to biological systems.
By analogy the genotypes (DNA) of living organisms are also viewed as instructions to be executed (by a cell).
The name of the game is now: calculate the phenotype from the genotype.
This seems reasonable if the genotype is available and can be computed (by a computer)
and those instructions fully determine the phenotype.
Let's first discuss the computation of the phenotype, then the computation of the power of evolution (Power).

The essential questions of evolution (page 155) |

Fig. 20.10. Fitness function unfriendly to evolution (page 215)
|
Whatever the computability of Artificial Life and Evolution, biological research is not done and cannot be done by computing
complete phenotypes from genotypes (with or without interaction with the environment).
Richard Dawkins (2009) wrote:
"Nobody, reading the sequence of letters in the DNA of a fertilized egg, could predict the shape
of the animal it is going to grow into. The only way to discover that is to grow the egg, in the natural way,
and see what it turns into. No electronic computer computer could work it out, unless it it was programmed to simulate
the natural biological process itself, in which case you might as well dispense with the electronic version and use
the developing embryo as its own computer." (28).
So, Ludwig is on the wrong track.
His drawing (page 155) of the relation between genotype, phenotype and environment is extremely simplistic.
Remarkably, in a sense Ludwig knows that one cannot compute a complete phenotype (15).
He claims that the phenotype is 'emergent' because it cannot be calculated from the genotype.
This is important for him: emergent behaviour is part of the definition of life he uses (see: Definition).
One cannot even begin to ask the question how a genotype produces a phenotype, if one does not know the genotype.
Biologists rarely know the complete genotype (genome) of a species, although knowledge is rapidly growing.
Before DNA sequencing (genomics) was discovered, a (partial) genotype could only be indirectly inferred from the
phenotype.
Gregor Mendel was the first who inferred genotypes.
Today, more than 1,800 genes are known to cause hereditary disorders in humans
(Online Mendelian Inheritance in Man).
The first direct access to the genotype was possible through the study of aberrant chromosomes (cytogenetics).
For example, prenatal diagnosis can predict the Down's syndrome phenotype from the trisomy-21 genotype with nearly 100%
certainty.
A hundred years after the rediscovery of Mendel in 1900, DNA sequencing techniques opened for the first time direct access
to complete genotypes.
Biologists and biochemists needed a hundred years to arrive at a point where AL-scientists simply started:
knowlegde of complete genotypes.
As if biologists simply needed to load the genotype into a computer and run it!
The difference between biology and AL is that:
- AL always knows the complete genotype simply because the genotype is the software they have written themselves;
- in AL it is always possible to compute whole phenotypes from the genotype simply because the program has been
written to do just that : produce a complete self-reproducing agent.
Half an organism does not reproduce very well.
- biology cannot predict a complete phenotype from a genotype, because it is impossible to calculate the net effect
of thousands of genes (humans have 22,500 genes), the mutual interactions of their proteins and interactions with the
environment (24).
Above that, an organism consists of thousands up to billions of cells (22)
which differ in the parts of their genomes that are being read or not read.
Not predictable in strict sense
One of the reasons for the incomputability of real biological organisms is unpredictability (in the strict sense) at the
molecular level.
In 1953 Watson & Crick discovered the structure of DNA.
On the basis of its structure alone it is impossible to predict how the bases in DNA are translated into the
amino acids of proteins.
Mathematics did not and could not solve the genetic code problem. The answer cannot be computed.
Only after more than 10 years the relation between base sequence and amino acid sequence could be established empirically
in the laboratory.
The decoding of the genetic code made it possible to predict protein sequence from an arbitrary gene sequence with high
accuracy (a few exceptions occur, which again could only be discovered in the laboratory).
That is only the first step from genotype to phenotype.
"While it is a challenging problem to predict the structure of a protein form its amino acid sequence,
it would be impossible to tell what a protein did in a cell" (my emphasis) (3).
Similarly, it seems nearly impossible to predict what a particular gene is for, based solely on its base sequence.
Moreover, it is impossible to predict with certainty the number of genes encode in a genome on the basis
of the complete DNA sequence.
Another matter is predicting when and where a gene will be expressed.
This can only be established experimentally, but cannot be predicted.
It can be experimentally established which regulators regulate the expression of a specific gene,
but again this cannot be predicted from the DNA sequence of the gene alone.
Additionally, it cannot be predicted which amino acids of the protein are essential for its function, but knowledge of
protein variation in populations in the wild helps a lot.
|
Not by genes alone
Do genes code the organismal form? Not quite, says evolutionary biologist Massimo Pigliucci.
"Genes by themselves do literally nothing. Organisms do not begin with a bunch of genes that generate everything else:
they need a set of environmental conditions, as well as the inheritance of materials and extra-genetic information from the
previous generation. From the point of view of causal analysis, genes may be said to be a necessary but far from sufficient
condition for the development (and evolution) of organisms."
Clearly, this is another reason why the phenotype cannot be computed from the genotype.
|
To construct a complete 'fitness landscape' one needs all the data of the phenotype effects
of all possible protein variants of the whole organism.
So it is clear that a accurate fitness landscape cannot be calculated.
In practice geneticists isolate and study well defined phenotypic effects of well defined mutations.
This works fine. In the same way evolutionary biologists (population geneticists) calculate what will happen with
well defined mutations in a population. This works fine too.
It is easy to construct a hypothetical Fitness Function unfriendly to evolution as Ludwig did.
To construct a realistic fitness landscape one needs a lot of data.
Ludwig's figure (page 215) is just an imaginary illustration. It is not based on data.
No conclusions about Darwinian selection can be based on that.
Calculating the 'Power of Evolution'
Ludwig asks the BIG question:
"Are the mechanisms proposed by biologists powerful enough to produce all life on Earth?".
Ludwig observes that
"most biologists believe evolution is powerful enough to create all the complexity and diversity of life we see
on earth over the period of about a billion years." (4).
Then he concludes:
"we need a scientific theory of the power of evolution.",
"Today, we don't even have a theory" (p.153),
"nobody can really prove it is powerful enough to do the job." (4).
A different question is: Is evolution not too powerful for the job? Is evolution infinitely powerful like God? (14).
Ludwig's expectations for a theory of evolution are strongly influenced by the field of Artificial Life.
Evolutionary processes run on a computer, so are fully computable.
In analogy with Artificial Life, Ludwig thinks an evolutionary theory in biology must compute the generation of complex life.
"A theory, though, ought to give me the tools to start with a set of initial conditions and predict what is going to happen." (4).
Then he concludes that evolutionary theory fails in making these kind of predictions
and"
Experimental and theoretical evolutionary biology are in a abysmal state"! (4).
Requirements
Are Ludwig's requirements for a theory of evolution reasonable?
Not really.
Ludwig knows that real biological organisms are too complex to be modelled on a computer, because
the phenotype cannot be calculated from the genotype (Ludwig's 'emergence' is the defining property of life!),
let alone that evolution of a population of those organisms can be predicted.
It does not make sense to blame biologists for this when complete phenotypes are fundamentally unpredictable.
There are several good reasons for the difficulty of calculating the power of natural selection.
One reason is that species have histories. That makes them unique.
"Evolutionary biology is a historical science" (10).
Additionally, a complicating factor is the role of chance in evolution:
"The outcome of an evolutionary process is usually the result of an interaction of numerous incidental factors." (10).
Despite this, some evolutionary biologists claimed things as "The All-Sufficiency of Natural Selection" (11).
But even if the majority of biologists would claim something like the above, the answer still depends on the precise meaning
of the claim. What precisely has to be explained? And in what detail?
Is the theory of evolution required to predict all the details of all species that ever lived on Earth
(the existence of the duck-billed platypus, giraffe, flying fish, panda's thumb, chromosome number of humans, blind spot in
human eye, introns in genes, etc) in contrast to general principles (adaptation, the power of natural selection, mimicry,
parasitism, sex, sexual selection)?
According to historian Roger G. Newton, the thing that has gradually separated physics from the other branches of science
over the past 6,000 years is "the ability to predict future events with some confidence of success." (26).
Biology versus physics
However, do the combined laws of physics and cosmology explain all the details of the non-living
universe?
The laws of Newton predict with such precision which orbits planets can have, that eclipses of the sun and moon can be
made with amazing accuracy and they are routinely successful.
Also, it is no accident that all planets of our solar system go in one direction and are in one plane.
However, Newton's laws cannot predict number, size, and distances of the planets of our own solar system!
Neither do they predict which planets have moons or rings, there sizes and distances.
The actual orbits of planets, moons and rings are only one of the many possibilities. Which possiblity is realised depends
on many historical and environmental factors which are not part of the laws of Newton (23).
The physicist Paul Davies stated "We know now that the arrangement of the planets is largely a historical accident" (27).
Similarily, physics cannot predict the constellations (Ursa Major, Orion, Cassiopeia, etc).
Since historical accidents are a big factor in evolution, it is unreasonable to require detailed predictions of
the theory of evolution.
At the moment, physicists cannot rigorously deduce the structure of the helium atom from basic physics, a non-historical
problem, let alone that of a living organism.
Evolutionary biologists do not 'tacitly assume' that evolution is omnipotent and therefore a mathematical quantification is
not necessary (p.154). They do not assume it at all, but because they know natural selection
is not omnipotent (14).
fact - path - causes
There is an important distinction absent in Ludwig's evaluation of the theory of evolution,
which blocks any meaningful result.
That is the well-known distinction fact - path - causes (12).
The evidence for common descent ('The Fact of Evolution') is so strong that biologists do not constantly
try to prove or disprove it, just like physicists are not constantly trying to prove or disprove the second law of
thermodynamics.
The historical path of evolution (phylogeny) may never be completely known in all its details.
The causes (mechanisms) of evolution can and are being experimentally investigated.
Biologists do not test whether Darwinian mechanisms could produce all life forms on earth,
they investigate the relative importance of different mechanisms and search for new mechanisms.
Ludwig completely misses this three-part division.
I recommend reading reference 12, but there are many others.
population genetics
Furthermore, Ludwig completely misses the theory of population genetics (13).
Despite all the theoretical restrictions, population genetics is the most mathematical thing in evolutionary biology:
it comes closest to calculating the power of evolution (18).
Population genetics is the most fundamental body of theory in evolutionary biology.
It is the proving ground for almost all ideas in evolutionary biology (8).
The difference of population genetics and Artificial Life is that population genetics makes useful abstractions.
Typically, population genetics calculates what happens with genes, not with individual organisms.
|
In the last 150 years evolutionists did more to elucidate the powers of nature to create life forms, then all
theologians in 3000 years! Did theologians prove that God has the power to create the universe?
How could such a proof be possible, since God by definition has the power to create the universe?
He was invented to do just that.
If he could not do it, then we needed to invent a God that did have the power.
|
Definition of Life
Although Ludwig is sceptical about the possibility to give a list of defining characteristics of life,
("We don't understand life well enough to give a set of hard rules to determine what is alive"
and " The very concept cannot be put in terms accessible to science.")
he works with the list used by Artificial Life researchers:
- the ability to reproduce and the method of reproduction
- emergent behaviour
- "a system exhibits strong emergent behaviour when one or more aspects of its behaviour
is theoretically incalculable"
- metabolism
- the ability to function under permutations of the environment and interact with the environment
- ability to evolve
This list is a mix of real life criteria (#3,#4) and potential life criteria (#1,#5) according to Gánti's life criteria
(review).
That explains his problems.
Ludwig states that the approach of refusing to call something alive unless it can evolve is rather blind
(I agree). He claims that evolution cannot be used as a dividing line between life and non-life (I agree),
and evolution must be divorced from the definition of life,
but he does so for the reason that evolution 'cannot be observed'.
However, living individuals have the potential to reproduce (#1) and the potential to evolve (#5), but need
not actually do it at the moment of observation.
Every thing that reproduces, has heredity and hereditary variation, has also the ability to evolve.
The same holds for reproduction, which is also a potential and cannot be observed immediately.
A cell that is not dividing is not dead.
That's why reproduction and evolution are potential life criteria.
Above that, evolution is a property of populations of individuals, not of individuals.
Remarkably, Ludwig claims that computer viruses can be designed to show Darwinian evolution (I agree).
Because Ludwig does not make the important step of discriminating between the non-overlapping units of life and units of
evolution, he is driven to the conclusion that from a mechanical perspective, it seems safe to say that computer viruses
have a fairly strong claim to "life" (I disagree). In the Gánti definition neither biological nor computer viruses are alive.
Viruses are parasitic objects without their own metabolism and that's why computer viruses are not a good model for
non-parasitic cellular life.
Regrettably, most of his book is based on the assumption that viruses are alive
(computer viruses are a good model of biological viruses, but that's another matter; see this page).
Furthermore, Ludwig does not distinguish between the properties 'self-reproduction' and 'information system' (DNA).
This prevents him from making an information subsystem a primary life criterion, and self-reproduction a secondary criterion of life.
This is important because an information system has also the function to inform metabolism (gene > enzyme > metabolic pathway).
That's why an information system belongs to the primary characteristics of life.
The metabolic function of DNA is most clearly present in the soma, while the genetic function of DNA is present in the
germline.
Conclusions
Ludwig's goal was an unbiased, unprejudiced assessment of the theory of biological evolution (1).
Did he succeed?
His approach was to study the evolution of computer viruses and Artificial Life.
This seems a sensible thing to do, especially if you are a physicist with good knowledge of computer viruses but without
sufficient training in biology.
Ludwig's knowledge of computer viruses is unique. He published several books on computer viruses.
He demonstrated that computer viruses can and do evolve (Darwinian mutation engine).
What he says about viruses and Artificial Life (AL) I trust to be largely correct.
However, the success of his approach ultimately depends on whether the results say anything meaningful about biological
evolution.
How did he establish that his results are relevant for biological evolution?
Surprisingly, he did not even attempt to answer that question.
He did not realise that it was a crucial question for the success of his investigation.
Yet, he found it appropriate to claim that 'AL holds the promise of a real theory of evolution' (my emphasis).
This statement is wrong.
The reason why the statement is wrong is that AL has abstracted everything that is crucial for the evolution of life
on earth: having a body, getting and digesting food, urinate, respiration, metabolism, maintaining body temperature,
adjusting blood sugar, blood pressure, diploidy, meiosis, getting a mate, getting pregnant, etc, and all complications that
go with these things.
Paradoxically, despite incorporating 'the essentials of life', whatever can be calculated in AL does have restricted
value for biology.
Above that, viruses are parasitic, so are not a good model for non-parasitic life.
Remarkably, Ludwig's knows that biological objects are too complex and computer viruses and AL are too easy to study,
but at the same time he beliefs that AL done properly could reveal insights about biological life forms.
He did not resolve this dilemma: how to gain insight in complex life if your method eliminates complexity right from the start?
I'm afraid there is simply no substitute for studying the messy, wet and dirty thing called 'life'.
This does not mean that mathematics has no role to play. The secret is making the right abstractions.
One of those magnificent and very useful abstractions is 'The Selfish Gene' (Richard Dawkins,1976), that is the idea
of a replicator. Darwin's message can be translated in the language of today with one concept: replicators
(25).
If anyone could have understood the power of the idea of the replicator, it's Ludwig because viruses are selfish replicators.
The second question is the assessment of the theory of evolution itself.
Ludwig claimed that 'the theory of evolution is in an abysmal state'.
This statement is wrong, naive, arrogant and insulting.
Two main reasons are: lack of relevant knowledge and presence of bias in the technical sense.
- Ludwig is unaware of relevant biological knowledge. Yes, life on earth is extremely complex,
but it turned out that life is not too complex to make predictions of partial phenotypes.
Gregor Mendel is a magnificent example of the success of biological science in isolating specific
characteristics among thousands of them and to predict the frequency of them in the next generation with mathematical precision (17).
Mendelian genetics gave rise to population genetics and out of the marriage of population genetics with Darwinism
the neo-Darwinian Synthesis was born (more).
Ludwig failed to investigate the structure of Evolution Theory (more)
and the evidence (I don't know any critics of evolution who sufficiently know the theory!).
Apart from missing population genetics, he missed the argument for common descent.
That led him to the idea that in evolutionary biology only the mechanism counts and additionally, when one cannot
calculate the evolution of bacterium to humans, the whole theory fails (6).
Ludwig is pessimistic about what wet biology has produced.
Regrettably, Ludwig has no idea what biological research has produced.
It is not the theory of evolution, but his knowledge of biology and evolution that are 'in an abysmal state'.
It would be easy to make fun about the state of physics and mathematics (21).
- What about bias? Was Ludwig unbiased in the gathering of the necessary information and his judgement?
If not, did he compensate for the bias?
Bias is present when judgement is unfair. Applying standards of theory construction common in the physical
sciences to biology is unfair, because biology is different from the physical sciences.
Is there religious bias too?
In the first half of the book (studying viruses and AL) he is admirably unprejudiced, but then he introduces
Phillip Johnson.
Phillip Johnson is neither a biologist, nor an Artificial Life expert, but a lawyer.
Is it professional for a physicist to consult a lawyer to gain insight in the field of evolutionary biology?
Ludwig entered unfamiliar territory with a non-expert guide.
Above that, introducing and recommending Phillip Johnson is introducing religious bias into his investigation (9).
This is not the same as making his whole book worthless, but it is the opposite of what he wanted to do.
Further, he did read biologist Michael Denton. Denton is a critic of evolution (19).
Ludwig's list of 'Selected References' is extremely one-sided. That is easy to establish.
Nearly all his references are critical of evolution or Darwinism.
Did Ludwig compensate for this bias in any way?
Insight into the uniqueness of biological knowledge could have counterbalanced his judgement,
but that is absent in his book.
A different question is whether Ludwig is an Intelligent Design Theorist (IDT);
the question addressed in the title of this review.
It is not meant to dismiss Ludwig, but it is a question of the history of ideas.
His book pre-dates Michael Behe (1996) and William Dembski (1999) who made the ID concept popular.
At the time Ludwig wrote his book, the word IDT was not common.
As far as I know, Dembski and Behe do not refer to him.
In his own summary of the book, Ludwig does not advertise himself as an IDT,
nor does he mention that the book is about IDT.
So, what evidence do I have for my claim that Ludwig is an early IDT?
The signature of IDT is clear:
belief that nature does not have the creative power to create species (conspicuous in Johnson: 7);
information is the essence of life;
information must be injected into the system from outside the system;
anti-materialism;
limitations of Evolution Theory;
rejection old-style creationism;
"science can never tell us whether life actually began as the result of a natural chemical process or a divine miracle" (p.145);
evolution is (only) a theory and should be tested;
belief in the supernatural ("I have to admit the supernatural into my worldview", page 330);
endorsement of Phillip Johnson.
For Ludwig ID is not a superficial idea: it deeply penetrates his thinking (20).
I do think that this strongly influenced his ability to judge the current status of evolutionary theory.
I do think that it substantially contributed to the outrageous claim that 'evolutionary biology is in a abysmal state'.
Despite all my criticism, I did enjoy reading and reviewing Ludwig's book, because he asks
the big questions. Only an outsider is able to ask this charming and naive question: "
I want to try to find out how likely it is that natural law could cause what is observed in the fossil record and in today's world." (p.146).
This is nothing less than 'A Theory of Everything' in Biology!
It is easy to forget the big questions because professional science usually is about small, manageable but more fruitful questions (5).
Contents
Mark A. Ludwig (1993) 'Computer Viruses, Artificial Life and Evolution'.
American Eagle Publications, paperback 373 pages
Preface
1. Introduction
2. Are Viruses Alive?
Part I: The Mechanics of Life
3. Mechanical Properties of Life
4. Self-Reproduction
5. Emergent Behavior
6. Metabolism and Adaptability
7. Evolution
8. Conclusions |
Part II: The Philosophy of Life
9. The Importance of Philosophy
10. Ancient philosphy and Modern Science
11. Emergent Behavior Revisited
12. Self-reproduction and Information
13. Autonomy
14. So Are Viruses Alive? |
Part III: The Genesis and Evolution of Life
15. Introduction
16. The Creationist's Fall
17. Evolution, Myth, and Mathematics
18. The Creator and the Created
19. The Fact of Evolution
20. The Theory of Evolution
21. The Real World: Evolution
22. In The Beginning
23. The Real World: Beginnings
24. The Juggernaut of AL?
25. The New Evolution?
26. Last Words |
Appendix A: Introduction to Cellular Automata
Appendix B: Some Basic Biochemistry
Appendix C: The First International Virus Writing Contest
Appendix D: Solving Differential Equations
Appendix E: Stochastic Population Equations
Appendix F: The Darwinian Genetic Mutation Engine
Selected References
Index
|
Notes
- Ludwig recognises philosophical and religious biases in the controversy about evolution:
"There are people who outright reject evolution because they firmly believe God created the world.
There are people who insist that evolution is a logical necessity because they firmly believe there is no God."
(from his website).
- Remarkably, Ludwig accepts evolution in the computer world: "The reason is that evolution can proceed a billion times
faster in the world of bits and bytes than it can in the world of carbon and water." (from his website).
- Jan Witkowski (2005) The Inside Story. DNA to RNA to Protein. Cold Spring Harbor Laboratory Press, page xv.
- Ludwig's homepage
- For example: the spread of a favourable gene in a population.
- The data supporting common descent are so strong that biologists do not test whether the mechanisms could produce the
tree of life. But again, this is a big question.
- For Phillip Johnson the denial of the creative power of natural selection is crucial: "But what if Darwin was wrong,
and natural selection doesn't have the fantastic creative power Darwinists credit it with?" (Darwin on Trial,
page 111 and many other pages). Ludwig read, recommended and admired Johnson, so very likely he got the idea from Johnson.
Historically the idea is older: Ernst Haeckel: selection only eliminates the less successful species. Bowler,2003, p.191.
- Mark Ridley (2004) Evolution. Third edition, page 93.
- "My primary goal in writing Darwin on Trial was to legitimate the assertion of a theistic worldview in the secular universities.", Phillip Johnson, 2nd ed page 165.
I really don't understand why one wants to destruct Darwinism with any means in order to defend a theistic worldview.
It is confusing two things. But that is another matter. See here
what's wrong with Johnson.
- Ernst Mayr (2004) What Makes Biology Unique, page 32 and 34.
- August Weismann (1893) wrote a book with this title (quoted by S.J. Gould (2002), page198)
- This threefold division is explained for example in Michael Ruse (1988) But is it Science?
Chapter 8 Is There a Limit to Our Knowledge of Evolution?, pp.116-126.
- A course book is John Maynard Smith (1998) Evolutionary Genetics and a textbook is
Daniel Hartl and Andrew Clark (1997) Principles of Population Genetics.
For a historical introduction to population genetics read chapter 9 'Population Genetics' in Michael Ruse (2005) The Evolution-Creation Struggle.
See further any Evolution textbook (overview).
- Evolution textbooks clearly explain why natural selection is not infinitely powerful. See Stearns & Hoekstra (2005),
Evolution, second edition, page 44: Four factors can limit adaptation.
See for an excellent discussion of constraints on adaptation par. 10.7 of Mark Ridley Evolution,
third edition, pp.272-286. See also Chapter 3 'The mutational meltdown' of his Mendel's Demon
(Review).
- "If real-world life is strongly emergent then there is truly no way to determine how genotype causes phenotype
at a microscopic level." (page 86); "most real-world phenomena are completely beyond its [mathematical] grasp" (page 147) "Real world biology is too complicated" (p.295).
- Ludwig discusses the example of a rock: "Every microscopic irregularity must be accounted for". Although impractical to
describe and although Ludwig claims it is 'a deeply philosphical question', simply applying the definition of algorithmic
information content suggests a tremendous algorithmic information content. Just imagine taking a series of digital
photographs of ultra-thin slices of the rock with an electron microscope. And that is just a dead rock!
- Mendel did not ask big questions such as 'how did flowers evolve?' but 'how is the color of a flower inherited?'.
He focussed for example on the inheritance of purple and white flowers.
The answers to this simple question formed the foundation for modern genetics.
More about Mendel.
- Other critics such as physicists Fred Hoyle (posthumously published Mathematics of Evolution, review)
and Lee Spetner (review)
did know population genetics and tried to use it to refute neo-Darwinism. Neither was aware of Ludwig's work.
- Ludwig follows uncritically many ideas of Johnson and Michael Denton. Johnson himself copied a lot from Denton.
Ludwig even copies examples (the lungs of birds, etc) uncritically from Denton's Evolution. A Theory in Crisis (review)
while earlier in his book he pointed out that his book is not the place to evaluate the evidence for evolution.
- Additionally, I found the following books of Mark Allen Ludwig in Amazon:
Third Paradigm: God and Government in the 21st Century (1997);
Christian Revolutionary (2001);
True Christian Government (2001).
These books are not listed on his site.
This is additional evidence that Ludwig is not only an ID advocate but also a Christian.
- Mathematics: Alan Turing found that it cannot be decided in a finite number of steps whether or not a computer will
complete a given task in some finite number of steps (halting problem). Physics: 96% of our universe is unaccounted for.
Finding the missing 96% is the single biggest challenge in physics today. Since I am not an expert in physics and mathematics,
I will refrain from suggesting that the state of those sciences is abysmal!
- To put things into perspective, the number of neurons in the human brain is estimated to be a hundred billion.
- Was the 10th planet of our solar system predicted?
Cosmology can predict solar eclipses with great accuracy, but it seems it can say no more than that 'there are no fundamental
reasons why Pluto should not have more satellites', and indeed two additional moons around Pluto have been discovered:
H. A. Weaver (2006) "Discovery of two new satellites of Pluto", Nature, 23 Feb 2006. The same holds for Uranus
and probably for any planet.
- Weiwei Zhong and Paul W. Sternberg (2006) "Unfortunately, a genome of 20,000 genes has as many as 200 million pairwise combinations, posing a formidable challenge." SCIENCE VOL 311 10 MARCH 2006 1481.
- see for a short discussion of the importance of the Selfisch Gene for
evolutionary biology and the relation with population genetics: Alan Grafen (2006) "The Intellectual Contribution of The Selfish Gene to
Evolutionary Theory" in: Alan Grafen and Mark Ridley (2006) Richard Dawkins. How a scientist changed the way we think
(2006). Please note that The Selfish Gene is not an atheïstic book. There are some criticisms of the selfish gene also.
[ 9 Apr 2006 ]
- Robert P. Crease (2007) Six Millennia of Truth Seeking, American Scientist sept/oct 2007.
- Paul Davies (2007) The Goldilocks Enigma. Why is the universe just right for life?
page 174 Penguin paperback. On page 175 he describes it as 'a frozen accident of history': so just as in biology, physics has its
own frozen accidents! There are some more beautiful examples: Earth goes around the sun anticlockwise, but Newton cannot
predict this (p.179); pencil falls in arbitrary direction (page 180).
- Richard Dawkins (2009) The Greatest Show on Earth p.247-248.
The point is however, whether one is able to program a computer to simulate development. That would be a huge success.
He continues: "This way of generating large and complex structures purely by the execution of local rules is deeply
distinct from the blueprint way of doing things." It certainly is different from blueprints, but following local rules
is exactly what computers are good at! C. elegans could be programmed on a computer because al local rules are known.
Please note that Dawkins did not exclude the possibility of simulating development:
"unless it it was programmed to simulate the natural biological process itself".
Further Reading
Reply by the author Mark Ludwig to Korthof's review of his book, posted 10 June 2006.
- Mark Ludwig about himself and his work (the page is difficult
to find in Google). Contains summary of his Computer Viruses, Artificial Life and Evolution. Recommended if you want
to get a quick idea of the author's goals in his own words.
- Mark Ludwig's index page. The reviewed book can be
downloaded as a self-extracting password protected file.
Unfortunately, the pdf of the book (cvale.pdf) does not allow a full-text search (Adobe reader 7.0).
Warning: the book is delivered together with the source codes of the viruses discussed in the book.
This is not announced on Ludwig's site!
Norton Antivirus detected the following 10 viruses in the zipped file cvaledsk.zip:
Small.Compagnion.101 (2x), Trojan Horse, Trivial.42.A, Hacktool, TPE.RV.1600 (2x), Infector.1312,
HD Trojan (p1), AEP.626. The zip file is not automatically unzipped, but Norton reads it in zipped state.
Best delete the zip file. Study the contents on a standalone PC.
- Recommended for everyone, but especially for physicists are the following books by Ernst Mayr:
This is Biology; What Evolution is;
What Makes Biology Unique.
If Ludwig had studied those books, he would not have made the following blunder:
"I am a physical scientist who is used to seeing equations that make predictions, and experiments
that can test the validity of those equations. From this vantage point, evolutionary biology today appears
to be unusually vacuous." (page 136). It does not harm being a physicist with mathematical training, but it certainly does not harm adapting ones approach to the subject under study.
- Review of Tibor Gánti's
Principles of Life. A groundbreaking but much ignored book.
- Andrew G. Clark (2000) 'Limits to Prediction of Phenotypes from Knowledge of Genotypes' in: Michael T. Clegg, et al
(2000) Limits to Knowledge in Evolutionary Genetics (Evolutionary Biology Vol 32).
- A paperback (now 20 years old, but still recommended for its clarity) by an expert: John Maynard Smith (1986)
The Problems of Biology chapter 5 Problems of evolutionary biology in which he
discusses the 'big questions' of evolutionary biology: 1) has there been time? 2) Is all change adaptive? 3) Does evolution
always proceed uphill? 4) Are there 'group' adaptations?
- Similarities and Dissimilarities of Computer Viruses and Biological
Viruses (Gert Korthof)
- Mark Perakh Sewell's Thermodynamic Failure January 2, 2006. Please note the following remark:
"(A general remark: evolution theory cannot be proven or rejected by applying any mathematical equations or laws of physics. ET is an empirical science based on immense experimental and observational material. The fact of evolution has been established beyond a reasonable doubt, although mechanisms of evolution continue to be discussed by evolutionary biologists. If certain mathematical equations or laws of physics seem to contradict ET, the reasonable explanation is that the equations or laws in question have been misapplied or misinterpreted.)"
- To catch a glimpse of the proces of the origin of new species I recommend Menno Schilthuizen (2001) Frogs, flies & dandelions. After reading this book it will be clear that the origin of species is not a matter of computation, but observation, data collection, analysis and experiment.
- David Sloan Wilson (2005) Essay Evolution for Everyone: How to Increase Acceptance of, Interest in, and Knowledge about Evolution. A success story about teaching evolution: when presented as unthreatening, explanatory, and useful, evolution can be easily appreciated by most people, regardless of their religious and political beliefs or prior knowledge of evolution.
- See also section Artificial Life & Evolution of the Introduction page.
- Another reason why evolution seems to lack creative power is that evolutionists ignored the creative power of evolution or did not know how to study it. See review of The Origin of Animal Body Plans. A study in Evolutionary Developmental Biology.
- Richard A. Watson (2006) Compositional Evolution : The Impact of Sex, Symbiosis, and Modularity
on the Gradualist Framework of Evolution (Vienna Series in Theoretical Biology) (Hardcover) The MIT Press
(February 17, 2006). From Amazon: "In Compositional Evolution, Richard Watson uses the tools of computer science and
computational biology to show that certain mechanisms of genetic variation (such as sex, gene transfer, and symbiosis)
allowing the combination of preadapted genetic material enable an evolutionary process, compositional evolution, that is
algorithmically distinct from the Darwinian gradualist framework."
- Walter M. Elsasser (1998) Reflections on a Theory of Organisms, The Johns Hopkins University Press. "Elsasser argues instead that the structural complexity of even a single living cell is "transcomputational"--that is, beyond the power of any imaginable system to compute". (publisher info).
- Claus O. Wilke and Christoph Adami (2002) The biology of digital organisms, Trends in Ecology and Evolution, 17, 11, 1 Nov 2002, 528-532.
- Roger Brent and Jehoshua Bruck (2006) "Can computers help to explain biology?" NATURE|Vol 440|23 March 2006 p.416-417. The road leading from computer formalisms to explaining biological function will be difficult, but Roger Brent and Jehoshua Bruck suggest three hopeful paths that could take us closer to this goal.
- Mikhail Burtsev & Peter Turchin (2006) "Evolution of cooperative strategies from first principles", Nature Vol 440|20 April 2006 p1041-1044. Is a nice example of an evolutionary artificial life model with no predetermined behaviors; the process of evolution constructs them from elementary actions.
- The Digital Life Laboratory: "We have developed a computational system, the Avida software, which can be used to study certain basic properties of simple living systems, namely those that do not depend on the particular embodiment of information storage and machinery. Avida creates an environment within any standard computer in which populations of computer programs can live, evolve, and adapt. These programs can be thought of as a form of domesticated computer viruses..."! [ 30 Jun 06 ]
- Greg Miller (2006) "A Scientist's Nightmare: Software Problem Leads to Five Retractions", 22 December 2006 VOL 314 SCIENCE 1856-1857 www.sciencemag.org.
This nightmare is also a risk for a field of research which relies 100% on software.
- Bertram G. Murray Jr. (2001) Are ecological and evolutionary theories scientific?,
Biological Reviews (2001), 76: 255-289. "I argue that theoretical biology (concerned with unobservables, such as fitness and natural selection) is not scientific because it lacks universal laws and predictive theory."
- Computational Biology: Open Access online journal. Frequently articles about computational evolution.
- An Introduction to Chaos: Newton tried to solve the problem of two "Suns" and a single "Earth." (The Three Body Gravitational Problem). To his surprise, he failed to find a solution to this second-simplest gravitational system. Through the years, others tried without success to solve this "three body problem."
- About prediction in evolution see: Adam S. Wilkins (2007) 'Between "design" and "bricolage": Genetic networks, levels of selection, and adaptive evolution', PNAS, Published online before print May 9, 2007. Free access.
"In effect, a network perspective may help transform evolutionary biology into a scientific enterprise with greater predictive capability than it has hitherto possessed."
- Lucas Laursen (2009) 'Computational biology: Biological logic', Nature, Newsfeature, 462, 408-410 (2009):
"Executable biology's real pay-off is that it can help biologists to understand the complexity of living things, whether at
the level of groups of molecules, such as Kappa describes, or at that of signals sent between cells, as in the nematodes
Fisher herself studies."