Generic Generators
Logic
2025-03-11 v2
Authors:
Grigor Sargsyan
Abstract
The goal of this paper is to present an approach to Hod Pair Capturing (HPC). HPC is the most outstanding open problem of descriptive inner model theory. More specifically, we introduce two principles, the Direct Limit Independence and the Bounded Direct Limits, and show that they together imply HPC.
Cite
@article{arxiv.2307.00109,
title = {Generic Generators},
author = {Grigor Sargsyan},
journal= {arXiv preprint arXiv:2307.00109},
year = {2025}
}
Related papers
View all related →
Machine Learning · Computer Science
Building Expressive and Tractable Probabilistic Generative Models: A Review
Sahil Sidheekh, Sriraam Natarajan
2024-06-07
Systems and Control · Electrical Eng. & Systems
Hybrid Gaussian Process Modeling Applied to Economic Stochastic Model Predictive Control of Batch Processes
E. Bradford, L. Imsland, M. Reble, E. A. del Rio-Chanona
2021-08-17
Artificial Intelligence · Computer Science
Probabilistic Generating Circuits
Honghua Zhang, Brendan Juba, Guy Van den Broeck
2021-06-15
Systems and Control · Electrical Eng. & Systems
Nonlinear Model Predictive Control of Permanent Magnet Synchronous Generators in DC Microgrids
Luis Herrera, Chad Miller, Bang-Hung Tsao
2020-10-09
Systems and Control · Electrical Eng. & Systems
A Modular Framework for Distributed Model Predictive Control of Nonlinear Continuous-Time Systems (GRAMPC-D)
Daniel Burk, Andreas Völz, Knut Graichen
2020-10-26
Machine Learning · Computer Science
Comprehensive Performance Modeling and System Design Insights for Foundation Models
Shashank Subramanian, Ermal Rrapaj, Peter Harrington, Smeet Chheda +5
2024-10-02
Optimization and Control · Mathematics
Efficiently solving the harmonic model predictive control formulation
Pablo Krupa, Daniel Limon, Alberto Bemporad, Teodoro Alamo
2022-11-16
Optimization and Control · Mathematics
Distributed Model Predictive Control Under Inexact Primal-Dual Gradient Optimization Based on Contraction Analysis
Yanxu Su, Yang Shi, Changyin Sun
2019-07-25
Statistical Mechanics · Physics
Pair contact process with diffusion of pairs
F. L. Santos, Ronald Dickman, U. L. Fulco
2015-05-27
Optimization and Control · Mathematics
Stochastic data-driven model predictive control using Gaussian processes
E. Bradford, L. Imsland, D. Zhang, E. A. del Rio-Chanona
2020-05-26
Optimization and Control · Mathematics
Intrinsic Separation Principles
Boris Houska
2023-07-11
Machine Learning · Computer Science
Probabilistic Graph Circuits: Deep Generative Models for Tractable Probabilistic Inference over Graphs
Milan Papež, Martin Rektoris, Václav Šmídl, Tomáš Pevný
2025-03-18
Computer Vision and Pattern Recognition · Computer Science
Track Extraction with Hidden Reciprocal Chain Models
George Stamatescu, Langford B White, Riley Bruce-Doust
2016-05-16
Systems and Control · Electrical Eng. & Systems
IMMPC: An Internal Model Based MPC for Rejecting Unknown Disturbances
Felix Brändle, Frank Allgöwer
2025-12-08
Robotics · Computer Science
Generative Models From and For Sampling-Based MPC: A Bootstrapped Approach For Adaptive Contact-Rich Manipulation
Lara Brudermüller, Brandon Hung, Xinghao Zhu, Jiuguang Wang +3
2026-01-09
Signal Processing · Electrical Eng. & Systems
Continuously Differentiable Analytical Models for Implicit Control within Power Flow
Aayushya Agarwal, Amritanshu Pandey, Marko Jereminov, Larry Pileggi
2018-11-07
Systems and Control · Computer Science
Gaussian Process Model Predictive Control of Unknown Nonlinear Systems
Gang Cao, Edmund M-K Lai, Fakhrul Alam
2016-12-06
Artificial Intelligence · Computer Science
On the Relationship Between Probabilistic Circuits and Determinantal Point Processes
Honghua Zhang, Steven Holtzen, Guy Van den Broeck
2020-06-30
Optimization and Control · Mathematics
The Separation Principle and the Dual-Certainty Equivalence Gap in Model Predictive Control
Tren Baltussen, Nathan P. Lawrence, Alexander Katriniok, Ali Mesbah +1
2026-04-08
Systems and Control · Electrical Eng. & Systems
Harnessing Uncertainty for a Separation Principle in Direct Data-Driven Predictive Control
Alessandro Chiuso, Marco Fabris, Valentina Breschi, Simone Formentin
2025-01-08
Systems and Control · Computer Science
Modeling and Control of High-Voltage Direct-Current Transmission Systems: From Theory to Practice and Back
Daniele Zonetti, Romeo Ortega, Abdelkrim Benchaib
2016-09-13
Multiagent Systems · Computer Science
Encirclement Guaranteed Cooperative Pursuit with Robust Model Predictive Control
Chen Wang, Hua Chen, Jia Pan, Wei Zhang
2024-04-08
Optimization and Control · Mathematics
Model Predictive Control for Constrained Linear Positive Systems on Graphs
Roland Schurig, David Ohlin, Anders Rantzer, Emma Tegling +1
2026-05-28
Systems and Control · Electrical Eng. & Systems
LGR-MPC: A user-friendly software based on Legendre-Gauss-Radau pseudo spectral method for solving Model Predictive Control problems
Saeid Bayat, James T. Allison
2023-10-25
Systems and Control · Electrical Eng. & Systems
Computationally efficient robust MPC using optimized constraint tightening
Anilkumar Parsi, Panagiotis Anagnostaras, Andrea Iannelli, Roy S. Smith
2022-11-16