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On the Learning and Learnability of Quasimetrics

On the Learning and Learnability of Quasimetrics

30 June 2022
Tongzhou Wang
Phillip Isola
ArXivPDFHTML

Papers citing "On the Learning and Learnability of Quasimetrics"

9 / 9 papers shown
Title
Physics-informed Temporal Difference Metric Learning for Robot Motion Planning
Physics-informed Temporal Difference Metric Learning for Robot Motion Planning
Ruiqi Ni
Zherong Pan
A. H. Qureshi
SSL
41
0
0
09 May 2025
State Chrono Representation for Enhancing Generalization in
  Reinforcement Learning
State Chrono Representation for Enhancing Generalization in Reinforcement Learning
Jianda Chen
Wen Zheng Terence Ng
Zichen Chen
Sinno Jialin Pan
Tianwei Zhang
OffRL
37
0
0
09 Nov 2024
Quasimetric Value Functions with Dense Rewards
Quasimetric Value Functions with Dense Rewards
Khadichabonu Valieva
Bikramjit Banerjee
OffRL
35
0
0
13 Sep 2024
Learning Temporal Distances: Contrastive Successor Features Can Provide a Metric Structure for Decision-Making
Learning Temporal Distances: Contrastive Successor Features Can Provide a Metric Structure for Decision-Making
Vivek Myers
Chongyi Zheng
Anca Dragan
Sergey Levine
Benjamin Eysenbach
OffRL
45
7
0
24 Jun 2024
Optimal Goal-Reaching Reinforcement Learning via Quasimetric Learning
Optimal Goal-Reaching Reinforcement Learning via Quasimetric Learning
Tongzhou Wang
Antonio Torralba
Phillip Isola
Amy Zhang
OffRL
32
33
0
03 Apr 2023
Improved Representation of Asymmetrical Distances with Interval
  Quasimetric Embeddings
Improved Representation of Asymmetrical Distances with Interval Quasimetric Embeddings
Tongzhou Wang
Phillip Isola
27
7
0
28 Nov 2022
Model-Based Visual Planning with Self-Supervised Functional Distances
Model-Based Visual Planning with Self-Supervised Functional Distances
Stephen Tian
Suraj Nair
F. Ebert
Sudeep Dasari
Benjamin Eysenbach
Chelsea Finn
Sergey Levine
SSL
OffRL
168
58
0
30 Dec 2020
Shortest path distance approximation using deep learning techniques
Shortest path distance approximation using deep learning techniques
Fatemeh Salehi Rizi
Jorg Schlotterer
Michael Granitzer
GNN
24
35
0
12 Feb 2020
Input Convex Neural Networks
Input Convex Neural Networks
Brandon Amos
Lei Xu
J. Zico Kolter
187
601
0
22 Sep 2016
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