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A New Approach to Learning Linear Dynamical Systems

A New Approach to Learning Linear Dynamical Systems

23 January 2023
Ainesh Bakshi
Allen Liu
Ankur Moitra
Morris Yau
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Papers citing "A New Approach to Learning Linear Dynamical Systems"

6 / 6 papers shown
Title
Learning Linear Dynamics from Bilinear Observations
Learning Linear Dynamics from Bilinear Observations
Yahya Sattar
Yassir Jedra
Sarah Dean
24
1
0
24 Sep 2024
Learning Low-dimensional Latent Dynamics from High-dimensional
  Observations: Non-asymptotics and Lower Bounds
Learning Low-dimensional Latent Dynamics from High-dimensional Observations: Non-asymptotics and Lower Bounds
Yuyang Zhang
Shahriar Talebi
Na Li
29
1
0
09 May 2024
Structure learning of Hamiltonians from real-time evolution
Structure learning of Hamiltonians from real-time evolution
Ainesh Bakshi
Allen Liu
Ankur Moitra
Ewin Tang
16
13
0
30 Apr 2024
Safely Learning Dynamical Systems
Safely Learning Dynamical Systems
Amir Ali Ahmadi
A. Chaudhry
Vikas Sindhwani
Stephen Tu
13
3
0
20 May 2023
List Decodable Subspace Recovery
List Decodable Subspace Recovery
P. Raghavendra
Morris Yau
23
25
0
07 Feb 2020
Spectral Filtering for General Linear Dynamical Systems
Spectral Filtering for General Linear Dynamical Systems
Elad Hazan
Holden Lee
Karan Singh
Cyril Zhang
Yi Zhang
40
97
0
12 Feb 2018
1