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What does it mean to understand the brain function?
In search of neuroscience paradigms [part 0 - introduction]

A lot of papers are published daily on brain function on multiple levels. What I found interesting is that each study contains an implicit set of assumptions, which are part of a larger research program. Thus, different researchers mean different things when generating scientific insight.

This can lead to vastly different interpretations of the same experimental result. The biggest problem is in my opinion that these assumptions/paradigms are kept implicit and researchers are sometimes not even aware which theories they assume to be true while generating hypotheses and conducting experiments.

I will attempt to bridge this brain-science to "meta-science" gap in the next few posts, of course on the level of a beginner PhD student and from a perspective of a neuroscientist (within rather than above science) that seeks precision and awareness of scientific frameworks we all choose to work on.

Neuroscience is one of the fields with a unique position in this regard - as opposed to physics we really don't have a coherent picture unifying different scales where we established certain laws. We actually rarely have laws and theories that are universally accepted - this is the beauty of being in this field, but also a curse because hot debates are unavoidable.

So, in the next posts I will cover some of the old and emerging theories & frameworks about what it means to understand a biological neural network:

1. "Grandmother cells" & single-neuron frameworks
2. Cell-assemblies & Hebbian associations
3. Embodied & ecological cognition, naturalistic settings
4. Predictive coding & Bayesian brain
5. Feedforward processing & I/O relations, decoding
6. Dynamical systems & population codes
7. Connectomics & structural mapping
8. Computations in electric fields vs spiking
9. Cognitive modules vs distributed processing

What I won't cover for now but maybe will, is the philosophy of scientific insight (realism vs instrumentalism, functional vs mechanistic, reductionist vs holistic, explanation vs description). Also I won't touch AI computations for now, however might do in the future when it becomes more relevant to my research.

Hopefully, after this post series you will gain something valuable to apply to your work. Or you will learn about the existential troubles neuroscientists face, if you're just interested in the field 😉

Which topic would you like to read about first?

P.S. As for the extended read for those interested, here is the paper that stimulated my deeper exploration. Frankly I did not enjoy it too much but it definitely asked the right questions and forced me to try to prove the authors wrong.



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What does it mean to understand the brain function?
In search of neuroscience paradigms [part 0 - introduction]

A lot of papers are published daily on brain function on multiple levels. What I found interesting is that each study contains an implicit set of assumptions, which are part of a larger research program. Thus, different researchers mean different things when generating scientific insight.

This can lead to vastly different interpretations of the same experimental result. The biggest problem is in my opinion that these assumptions/paradigms are kept implicit and researchers are sometimes not even aware which theories they assume to be true while generating hypotheses and conducting experiments.

I will attempt to bridge this brain-science to "meta-science" gap in the next few posts, of course on the level of a beginner PhD student and from a perspective of a neuroscientist (within rather than above science) that seeks precision and awareness of scientific frameworks we all choose to work on.

Neuroscience is one of the fields with a unique position in this regard - as opposed to physics we really don't have a coherent picture unifying different scales where we established certain laws. We actually rarely have laws and theories that are universally accepted - this is the beauty of being in this field, but also a curse because hot debates are unavoidable.

So, in the next posts I will cover some of the old and emerging theories & frameworks about what it means to understand a biological neural network:

1. "Grandmother cells" & single-neuron frameworks
2. Cell-assemblies & Hebbian associations
3. Embodied & ecological cognition, naturalistic settings
4. Predictive coding & Bayesian brain
5. Feedforward processing & I/O relations, decoding
6. Dynamical systems & population codes
7. Connectomics & structural mapping
8. Computations in electric fields vs spiking
9. Cognitive modules vs distributed processing

What I won't cover for now but maybe will, is the philosophy of scientific insight (realism vs instrumentalism, functional vs mechanistic, reductionist vs holistic, explanation vs description). Also I won't touch AI computations for now, however might do in the future when it becomes more relevant to my research.

Hopefully, after this post series you will gain something valuable to apply to your work. Or you will learn about the existential troubles neuroscientists face, if you're just interested in the field 😉

Which topic would you like to read about first?

P.S. As for the extended read for those interested, here is the paper that stimulated my deeper exploration. Frankly I did not enjoy it too much but it definitely asked the right questions and forced me to try to prove the authors wrong.

BY the last neural cell




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After fleeing Russia, the brothers founded Telegram as a way to communicate outside the Kremlin's orbit. They now run it from Dubai, and Pavel Durov says it has more than 500 million monthly active users. At the start of 2018, the company attempted to launch an Initial Coin Offering (ICO) which would enable it to enable payments (and earn the cash that comes from doing so). The initial signals were promising, especially given Telegram’s user base is already fairly crypto-savvy. It raised an initial tranche of cash – worth more than a billion dollars – to help develop the coin before opening sales to the public. Unfortunately, third-party sales of coins bought in those initial fundraising rounds raised the ire of the SEC, which brought the hammer down on the whole operation. In 2020, officials ordered Telegram to pay a fine of $18.5 million and hand back much of the cash that it had raised. Russian President Vladimir Putin launched Russia's invasion of Ukraine in the early-morning hours of February 24, targeting several key cities with military strikes. But Telegram says people want to keep their chat history when they get a new phone, and they like having a data backup that will sync their chats across multiple devices. And that is why they let people choose whether they want their messages to be encrypted or not. When not turned on, though, chats are stored on Telegram's services, which are scattered throughout the world. But it has "disclosed 0 bytes of user data to third parties, including governments," Telegram states on its website. The last couple days have exemplified that uncertainty. On Thursday, news emerged that talks in Turkey between the Russia and Ukraine yielded no positive result. But on Friday, Reuters reported that Russian President Vladimir Putin said there had been some “positive shifts” in talks between the two sides.
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