Premium Only Content
ActInf GuestStream 123.1 ~ Marcelo Guzman: "Learning in Physical Systems"
Physical networks become what they learn
Menachem Stern, Marcelo Guzman, Felipe Martins, Andrea J Liu, Vijay Balasubramanian
https://arxiv.org/abs/2406.09689
Physical networks can develop diverse responses, or functions, by design, evolution or learning. We focus on electrical networks of nodes connected by resistive edges. Such networks can learn by adapting edge conductances to lower a cost function that penalizes deviations from a desired response. The network must also satisfy Kirchhoff's law, balancing currents at nodes, or, equivalently, minimizing total power dissipation by adjusting node voltages. The adaptation is thus a double optimization process, in which a cost function is minimized with respect to conductances, while dissipated power is minimized with respect to node voltages. Here we study how this physical adaptation couples the cost landscape, the landscape of the cost function in the high-dimensional space of edge conductances, to the physical landscape, the dissipated power in the high-dimensional space of node voltages. We show how adaptation links the physical and cost Hessian matrices, suggesting that the physical response of networks to perturbations holds significant information about the functions to which they are adapted.
Microscopic Imprints of Learned Solutions in Tunable Networks
Marcelo Guzman, Felipe Martins, Menachem Stern, and Andrea J. Liu
https://journals.aps.org/prx/abstract/10.1103/f2hb-c9s1
In physical networks trained using supervised learning, physical parameters are adjusted to produce desired responses to inputs. An example is an electrical contrastive local learning network of nodes connected by edges that adjust their conductances during training. When an edge conductance changes, it upsets the current balance of every node. In response, physics adjusts the node voltages to minimize the dissipated power. Learning in these systems is therefore a coupled double-optimization process, in which the network descends both a cost landscape in the high-dimensional space of edge conductances and a physical landscape—the power dissipation—in the high-dimensional space of node voltages. Because of this coupling, the physical landscape of a trained network contains information about the learned task. Here, we derive a structure-function relation for trained tunable networks and demonstrate that all the physical information relevant to the trained input-output relation can be captured by a tuning susceptibility, an experimentally measurable quantity. We supplement our theoretical results with simulations to show that the tuning susceptibility is correlated with functional importance and that we can extract physical insight into how the system performs the task from the conductances of highly susceptible edges. Our analysis is general and can be applied directly to mechanical networks, such as networks trained for protein-inspired function such as allostery.
----
Active Inference Institute information:
Website: https://www.activeinference.institute/
Activities: https://activities.activeinference.institute/
Discord: https://discord.activeinference.institute/
Donate: http://donate.activeinference.institute/
YouTube: https://www.youtube.com/c/ActiveInference/
X: https://x.com/InferenceActive
Active Inference Livestreams: https://video.activeinference.institute/
-
1:43:29
Active Inference Institute
1 month agoActInf GuestStream 121.1 ~ Conscious active inference (Wiest and Puniani)
171 -
2:56:34
Parallel 8 Media
2 hours agoFriday Night Huddle - Ep 31- Julie Donuts, Rachel & Betsy
15.8K1 -
5:03:56
Illyes Jr Gaming
13 hours agoCall Of Duty Black Ops 7 LAUNCH DAY!!!!
8.16K -
LIVE
Drew Hernandez
21 hours agoTUCKER CLASHES W/ FBI, TRUMP PUSHES EPSTEIN DISCLOSURE AFTER HOAX CLAIM & IS MEGYN KELLY IN DANGER?
1,102 watching -
LIVE
Phyxicx
3 hours agoRumble Spartans Halo Night! - HMR#20 - 11/14/2025
74 watching -
LIVE
FusedAegisTV
1 day ago*NEW F2P MMORPG, SoulsLike/Action Game // Global LAUNCH - EN Servers 🔴 FUSEDAEGIS
278 watching -
3:31:00
Barry Cunningham
7 hours agoFOOD STAMPS FRAUD | STARBUCKS BARISTAS BIG MAD | MORE NEWS (AND NO REAL ESTATE!)
78.3K30 -
LIVE
Reidboyy
1 day ago $0.30 earned24/7 BO7 Camo Grind! Stream Doesn't End Until I Unlock EVERY Camo in Black Ops 7!
34 watching -
2:27:02
TheSaltyCracker
5 hours agoTucker Blows Up FBI ReeEEStream 11-14-25
85.8K161 -
LIVE
I_Came_With_Fire_Podcast
14 hours agoThe Private Equity Crisis | Oh SNAP, Massive Fraud | Reindustrialization
199 watching