Team:ETH Zurich/human/interviews/expert7

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I would say that complexity is not a property, but a characterization of a system. The next question is what could be the defining criterion for this characterization. At some point, people tried to come up with formal definitions of  what complexity could actually be and how it can be measured quantitatively. Before that happened, for a long time,  for decades actually, people were talking about complex systems in a colloquial sense. What you’ll find in literature  is criteria like, for instance: “The coupling of a system with its environment is important for the behavior of the system” (open systems), “Many complex systems have a lot of constituents” (Nevertheless, we can find complex systems with a small number of degrees of freedom, for example in deterministic chaos). What you need for complexity is non-linear behavior, non-linear feedback. Another criterion that some people use is that you are dealing with systems far from thermal equilibrium. In biology, you are typically far from the thermal equilibrium. Another feature of complex systems is their intrinsic instability, which makes it difficult or impossible to treat their behavior as stationary. In many of these complex systems, it is not easy to find those domains of behavior in which they are stationary, stable structurally, stable dynamically, stable. There are these stability islands, which are generally not easy to find. This is a number of terms and concepts which have been used for a long time.  
I would say that complexity is not a property, but a characterization of a system. The next question is what could be the defining criterion for this characterization. At some point, people tried to come up with formal definitions of  what complexity could actually be and how it can be measured quantitatively. Before that happened, for a long time,  for decades actually, people were talking about complex systems in a colloquial sense. What you’ll find in literature  is criteria like, for instance: “The coupling of a system with its environment is important for the behavior of the system” (open systems), “Many complex systems have a lot of constituents” (Nevertheless, we can find complex systems with a small number of degrees of freedom, for example in deterministic chaos). What you need for complexity is non-linear behavior, non-linear feedback. Another criterion that some people use is that you are dealing with systems far from thermal equilibrium. In biology, you are typically far from the thermal equilibrium. Another feature of complex systems is their intrinsic instability, which makes it difficult or impossible to treat their behavior as stationary. In many of these complex systems, it is not easy to find those domains of behavior in which they are stationary, stable structurally, stable dynamically, stable. There are these stability islands, which are generally not easy to find. This is a number of terms and concepts which have been used for a long time.  
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=== Can one measure complexity quantitatively? ===
=== Can one measure complexity quantitatively? ===
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In a review paper back in the 1990s, we reviewed all the complexity measures that existed at that time(more than 40). We tried to identify to which class they belong and how they behave on the basis of a very simple example, an artificial example: the so-called logistic map. The logistic map is a discrete recursive map. That means that you have a starting value x. The value of x at the next step is given by rx(1-x). It is a very simple map. It is a nice example because it is very simple on the one side and on the other side; it exhibits quite a lot of complicated, complex if you prefer, dynamics.  
In a review paper back in the 1990s, we reviewed all the complexity measures that existed at that time(more than 40). We tried to identify to which class they belong and how they behave on the basis of a very simple example, an artificial example: the so-called logistic map. The logistic map is a discrete recursive map. That means that you have a starting value x. The value of x at the next step is given by rx(1-x). It is a very simple map. It is a nice example because it is very simple on the one side and on the other side; it exhibits quite a lot of complicated, complex if you prefer, dynamics.  
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=== What were the results of your review? ===
=== What were the results of your review? ===
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In a way, all the other people including ourselves, just tried to identify certain measures of complexity that we thought would be interesting for a particular purpose but we did not care about a theoretical framework for them. Finally, if you are interested in identifying certain kinds of instabilities in a system, particular measures serve this purpose best but they are maybe not very sensitive to other features, like identifying periods.  
In a way, all the other people including ourselves, just tried to identify certain measures of complexity that we thought would be interesting for a particular purpose but we did not care about a theoretical framework for them. Finally, if you are interested in identifying certain kinds of instabilities in a system, particular measures serve this purpose best but they are maybe not very sensitive to other features, like identifying periods.  
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===Is complexity linked to Emergence? ===
===Is complexity linked to Emergence? ===
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Emergence is very intensely discussed in the context of complex systems. Another issue that is more and more discussed in the context of complex systems is the issue of reproducibility of certain results or experiments.  
Emergence is very intensely discussed in the context of complex systems. Another issue that is more and more discussed in the context of complex systems is the issue of reproducibility of certain results or experiments.  
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=== Why are complex systems most of time not reproducible? Is it due to the subjectivity of the observer that has to be taken into account? ===
=== Why are complex systems most of time not reproducible? Is it due to the subjectivity of the observer that has to be taken into account? ===
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I think there was a very decisive point in time in the study of complexity. That was when people could buy for not so much money high-power computing system. The reason is obvious. You cannot analytically solve complex systems in most cases and if you really want to study them, you have to run them in simulation studies. Everything that happened before the late 1970s was more or less heuristic: mathematicians had analyticalexamples for complex systems. Those examples were the simplest ones. After powerful computer came up, everything could be simulated. Then, the whole field exploded.
I think there was a very decisive point in time in the study of complexity. That was when people could buy for not so much money high-power computing system. The reason is obvious. You cannot analytically solve complex systems in most cases and if you really want to study them, you have to run them in simulation studies. Everything that happened before the late 1970s was more or less heuristic: mathematicians had analyticalexamples for complex systems. Those examples were the simplest ones. After powerful computer came up, everything could be simulated. Then, the whole field exploded.
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===You just talked about simple complex systems. Does an antagonist notion of complexity like simplicity exist?===
===You just talked about simple complex systems. Does an antagonist notion of complexity like simplicity exist?===
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There are differences in the notion of universality classes on the way from regular to chaotic behavior. I am not saying that complexity lacks completely of a kind of universal behavior. But what we do not have is a compact set of equations that describes everything, like Maxwell’s equations. Maxwell’s equations resulted from the attempt of physicists to create a fundamental universal law for electromagnetism. In complex systems research, something like this has simply never happened. My intuition is that it is a fundamental problem in complex system theory and it is not simply that we have to work harder or to work for a longer time. Considering universality as a methodological pillar on scientific work, Peter Grassberger had an intuitive argument about this issue. He brings in the issue of meaning. For him, complexity is nothing else than the “difficulty of a meaningful task”. Thus, meaning implies subjectivity, which implies uniqueness, which is opposed to universality. That created some real controversy at that time in the study of complex systems because people realized that when you try to import meaning as an explicit object of study in physics, then you are really not doing physics anymore. At that time, a lot of people considered this as a no-go in physics. But Grassberger was courageous, he did it. I think it is interesting because it opens up a whole new level of discussion and deliberation. My favorite notion in this kind of discussion is contextuality. I would not contrast universality with the subjective but with the contextual.  
There are differences in the notion of universality classes on the way from regular to chaotic behavior. I am not saying that complexity lacks completely of a kind of universal behavior. But what we do not have is a compact set of equations that describes everything, like Maxwell’s equations. Maxwell’s equations resulted from the attempt of physicists to create a fundamental universal law for electromagnetism. In complex systems research, something like this has simply never happened. My intuition is that it is a fundamental problem in complex system theory and it is not simply that we have to work harder or to work for a longer time. Considering universality as a methodological pillar on scientific work, Peter Grassberger had an intuitive argument about this issue. He brings in the issue of meaning. For him, complexity is nothing else than the “difficulty of a meaningful task”. Thus, meaning implies subjectivity, which implies uniqueness, which is opposed to universality. That created some real controversy at that time in the study of complex systems because people realized that when you try to import meaning as an explicit object of study in physics, then you are really not doing physics anymore. At that time, a lot of people considered this as a no-go in physics. But Grassberger was courageous, he did it. I think it is interesting because it opens up a whole new level of discussion and deliberation. My favorite notion in this kind of discussion is contextuality. I would not contrast universality with the subjective but with the contextual.  
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=== What do you mean by contextuality?===
=== What do you mean by contextuality?===
For instance, measures of complexity are not universal but they have to be applied in a way that respects the context of the question that you have. What do you want to know? What do you look for? If your answer would be independent of the context, then it would be universal.  
For instance, measures of complexity are not universal but they have to be applied in a way that respects the context of the question that you have. What do you want to know? What do you look for? If your answer would be independent of the context, then it would be universal.  
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=== It seems to be a vain quest to have a global wrap up of complexity. However, could meta-models give new insights on this issue?===
=== It seems to be a vain quest to have a global wrap up of complexity. However, could meta-models give new insights on this issue?===
I cannot rule this out. That would change the whole methodology of theory building. What you usually do is considering experimental results, facts or data and then you try to find a model that more or less fits your data. With a meta-model, you would presuppose the data and the model that you have and try to see the relationship between them. It may be a possible path to come up with something more universal than present-day models of complex systems.
I cannot rule this out. That would change the whole methodology of theory building. What you usually do is considering experimental results, facts or data and then you try to find a model that more or less fits your data. With a meta-model, you would presuppose the data and the model that you have and try to see the relationship between them. It may be a possible path to come up with something more universal than present-day models of complex systems.
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== To learn more ==
== To learn more ==

Revision as of 08:11, 17 October 2014

iGEM ETH Zurich 2014