Bennett’s answer to Igor’s Supersymmetric Artificial Neural Network Question:

There are a number of ways I proposed to construct a supersymmetric deep learning model, which can be reasonably distilled as variants to your inquiries/question parts.

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A. Re: your 1st Question about Grasmann relation:

My 2016 paper proposed a C∞ Supermanifold model, involving charts, related to Grasmann and Stiefel manifolds.

We know reasonably, that anticommutation involves Grasmannian numbers.

**Source**: Seen in the naive Supersymmetric architecture in my paper, attached to Url[a].

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B. Re: your 2nd Question about Exact Susy solutions:

In 2017, I proposed Supersymmetrizing a Boltzmann machine, aka creating a transverse field Ising spin compatible super Hamiltonian, which reasonably concerns N=1 SQCD, where exact solutions may be computed with finite length.

Side note: As seen in Url[d], a somewhat informal colleague had become interested in my work in 2017, then wrote about the this proposal in 2019, in addition to a number of proposals or pathways of mine for my so called supersymmetric neural network. (I am computer scientist, while the colleague originates from a Physics background!)

*Source**: Seen in my Github repository’s question collection, attached to Url[b] and Url[c].

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Urls/Appendix

[a] My supersymmetric neural network [2016]:

  1. https://openreview.net/pdf?id=SJewsu6qOV
  2. https://github.com/JordanMicahBennett/Supersymmetric-artificial-neural-network

[b] My github repository collection concerning my 2017 proposal for transverse field ising spin compatible super hamiltonian (last edited 2017):

https://github.com/JordanMicahBennett/Supermathematics-and-Artificial-General-Intelligence/blob/master/3.%20Relevant%20physics%20forum%20discussions%20wrt%20'thought%20curvature'.md

[c] A particular [2017] forum post containing a sample question from collection [b], concerning my 2017 proposal for Transverse Field Ising Spin compatible Super Hamiltonian:

https://www.physicsoverflow.org/39603/possible-create-transverse-ising-compatible-hamiltonian

[d] Mitchel Porter’s reasonably robust review [2019] citing my work in section 5.1, page 5, where Michel correctly identifies the ways I proposed a Susy Deep Learning model:

https://openreview.net/pdf?id=Byei_AwYOE

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Lecturer of Artificial Intelligence, and inventor of “Supersymmetric Deep Learning” → Github/Supersymmetric-artificial-neural-network

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God Bennett

Lecturer of Artificial Intelligence, and inventor of “Supersymmetric Deep Learning” → Github/Supersymmetric-artificial-neural-network