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Computational Neuroscience. |
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| Jul29-12, 03:52 PM | #18 |
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Computational Neuroscience.Without concrete quantitative predictions, there's not much to verify or falsify in an experiment. Sometimes I feel like biology papers are just stabbing around in the dark with no real hypothesis to test (or at least no hypothesis that is strictly defined before you get the results of the experiment). I definitely believe mathematical models are an important part of understanding the brain. |
| Jul29-12, 04:00 PM | #19 |
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Sorry, I meant jack's statement was false.
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| Jul29-12, 04:06 PM | #20 |
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"You share 98% DNA with monkeys" "You share 50% DNA with your siblings" no catastrophe theory needed to explain the problem with intuition here... the problem is that the statements are ambiguous. The are both true in their original context. A biologist does not need to know much mathematics (let alone catastrophe theory) to demonstrate to a student that there's two different ways to count groups of things. |
| Jul29-12, 04:20 PM | #21 |
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OP, I think madness answered your question best:
All that it takes to be computational neuroscience right now is that you apply computational approaches to neuroscience problems. One approach is the deterministic nonlinear approach. It will depend on your university, though, so you should actually look at what kind of research people are doing, maybe even try looking at their papers or their websites. "Computational Neuroscience" is a huge, complex field, with lots of interacting disciplines but also little pockets of interest. |
| Jul29-12, 04:29 PM | #22 |
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| Jul30-12, 04:46 PM | #23 |
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I do think that nonlinear differential equations are the only way to understand the brain. However, it must also be understood that formalisms that seem not related to nonlinear differential equations are intimately related. For example, the Volterra approximation is used when the dynamical system "resets" to the same state in the absence of a stimulus, ie. when the stimulus can be considered a "disturbance" about a fixed point. Similarly, although at the microscopic level, there may be a fundamental distinction between fixed points and limit cycles, if the experimentalist only measures a coarse-grained variable in which he is unable to distinguish the separate states in a limit cycle, the resulting coarse grained variable may be described by a probabilistic dynamical system. The basic message is that because the deterministic nonlinear dynamics of the brain are very high dimensional, if one is working in a regime in which an effective theory with fewer degrees of freedom provides sufficient accuracy for one's purposes, then one should use the effective theory. This in general requires guesswork and luck. Mostly luck - the systematic hardwork prepares you to take advantage of luck when it comes your way.
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| Jul30-12, 06:23 PM | #24 |
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Now, I'm not sure that's the way to interpret that. If not, I'd appreciate someone saying so. But I believe that's what it means when we say 98% of the DNA found in apes can be found in humans. But I haven't researched it yet so you guys can jump on Jack if that's not right. Keep in mind, I do not believe the answer to this question has been firmly established. I'm only proposing a possible answer based on dynamics: Why or more precisely, how can a small change create a very large difference? One possibility is that perhaps the genetic dynamics trajected through a critical point. It could have just as eassily been 99.9% similarity and still effected a very big change because of the qualitative change that often occurs when passing through a critical point. My proposal is that maybe humans emerged from the ape lineage through a critical-point transition in genetic dynamics. But just saying that is not easily understood. But if you know non-linear dynamics, it then becomes much easier to understand. Likewise, the entire principle of "Punctuated Equilibrium" is beautifully explanable by critical-point non-linear dynamics. |
| Jul30-12, 06:35 PM | #25 |
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| Jul30-12, 11:19 PM | #26 |
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In fact, the amount of genetics we share with all vertebrae (let alone other hominids) is an amazing example of diversity that can occur with small gene sets. One interesting example is the hox genes, which decide vertebrae flavor. In snakes, during development, their genetic dynamics get "stuck" in a "thorax loop" We have the evo-devo story: ![]() for fun (it's a fish! no a reptile! no it's a panda bear! no a human!): http://www.youtube.com/watch?list=SP...tailpage#t=10s |
| Jul30-12, 11:26 PM | #27 |
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When I can, I see the whole world in terms of nonlinear dynamics: from my social relationships to the physics of the atmosphere when I'm sailing, to my biophysical signatures when I'm being mindful. Superposition is the special case. I just wanted to remove the elitist tone is all. |
| Jul31-12, 09:37 AM | #28 |
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