The key insights and findings of the content are:
The authors observe that a natural and complementary notion of complexity of a continuous function F: Rn → R is the number of homeomorphism classes of its sublevel sets F≤a for a ∈ R.
For smooth functions, Morse theory provides a toolkit for computing the algebro-topological invariants of the sublevel sets and understanding how they change as the threshold varies. However, for piecewise-linear (PL) functions realized by ReLU neural networks, a more delicate analysis is required.
The authors associate to each (connected component of) flat cell(s) K at level t its local homological complexity, defined as the rank of the relative homology of the pair (F≤t, F≤t\K). They then define the total H-complexity of a finite PL map as the sum of all the local H-complexities.
The authors prove that if the level set complex C(F)F∈[a,b] contains no flat cells, then the sublevel sets F≤a and F≤b are homotopy equivalent, as are the superlevel sets F≥a and F≥b. This allows them to give a coarse description of the topological complexity of F in terms of the Betti numbers of the sublevel sets F≤a for a << 0 and the superlevel sets F≥a for a >> 0.
The authors construct a canonical polytopal complex K(F) and a deformation retraction from the domain of F to K(F), which allows them to compute the homology of the sublevel and superlevel sets efficiently.
Finally, the authors present a construction showing that the local H-complexity of a ReLU neural network function can be arbitrarily large.
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by J. Elisenda ... om arxiv.org 04-03-2024
https://arxiv.org/pdf/2204.06062.pdfDiepere vragen