This is the last (and somewhat unfinished) short book by John von Neumann.
It's a short book, the PDF file is only 97 pages, the download link is visible from here: scholar.google.com/scholar?q=%22The+computer+and+the+brain%22"
I've read this very interesting book during the last few days, and I'll record my impressions in the comments to this post.
It's a short book, the PDF file is only 97 pages, the download link is visible from here: scholar.google.com/scholar?q=%22The+computer+and+the+brain%22"
I've read this very interesting book during the last few days, and I'll record my impressions in the comments to this post.
no subject
Date: 2020-08-27 04:29 pm (UTC)In addition, one should remember that recurrent machines X_{n+1}=F(X_n) work reasonable well, when F is close to the identity map, e.g. https://dmm.dreamwidth.org/19100.html .
Cf. also the comment on "The Analog Procedure" above.
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At the same time, if one want to explore the math, specifically oriented towards probability and statistics and/or interval numbers, and then perhaps to add the ability to work with partial contradictions in probabilistic and interval setups (https://www.cs.brandeis.edu/~bukatin/dmm-probabilistic-samples.pdf ; https://www.cs.brandeis.edu/~bukatin/PartiallyInconsistentIntervalNumbers.pdf), this is a fertile ground for such experiments.
And then one might try to formulate all this in topos terms, just like people explored this for quantum theory, e.g. https://arxiv.org/abs/1107.1083 "Unsharp Values, Domains and Topoi".
So, one could still use von Neumann remarks on the need for different "intrinsic math" for neural computations as an inspiration for various non-trivial explorations here, even if rather mild changes are quite sufficient to satisfy von Neumann's desiderata from a superficial viewpoint.
Perhaps, there are reasons to move beyond this superficial viewpoint, even if they are not sufficiently articulated in the von Neumann's text.
no subject
Date: 2020-08-27 04:43 pm (UTC)Digital but Statistical" section, page 88-89).
I am always interesting in the attempts to move from rate coding to spike synchronizations and oscillations associated with those synchronizations. However, I usually assumed that non-synchronized neurons yield something close to Poisson spike trains. Regardless, of what it is in actual biology, it might be quite fruitful to take a hint from von Neumann and consider periodic behavior even for non-synchronized neurons, and proceed with synchronization models from that basis.
no subject
Date: 2020-08-27 04:52 pm (UTC)***
I learned about this book here
https://twitter.com/JohnMeuser/status/1293339704226656258
and then John pushed me to actually read it
https://twitter.com/JohnMeuser/status/1296918998391697415
and there are various discussions between us around those threads, e.g.
https://twitter.com/JohnMeuser/status/1297639656922767362
(He is obviously seeing something else there, not what I am seeing, e.g.
https://twitter.com/JohnMeuser/status/1297640700872450050
https://twitter.com/JohnMeuser/status/1297641242474446848
https://twitter.com/JohnMeuser/status/1297639967280291844
Most of what I wrote in those twitter threads is consolidated in my comments to this post.)