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Interactive Representation Learning: Symmetries, Metric Spaces and Uncertainty
KTH, Skolan för elektroteknik och datavetenskap (EECS), Robotik, perception och lärande.ORCID-id: 0000-0001-8938-9363
2026 (engelsk)Doktoravhandling, med artikler (Annet vitenskapelig)
Abstract [en]

This thesis investigates how interaction can be used as self-supervision to learn structured state representations that simplify downstream tasks. We formalize two inductive biases naturally present in the trajectories generated by agents that interact with their environment: geometry and temporal consistency of the underlying state space. We show that injecting these biases into representation learning yields additional, taskrelevant properties. First, we focus on geometric bias: we learn translationally equivariant latent spaces from images in which agent actions correspond to vector additions. We show how these representations can be used to estimate a recovery policy that mitigates the compounding of error in data-driven sequential decision-making policies. We further extend equivariant representations to scenes with external objects. Under an interaction-by-contact model, we prove that aligning the object’s and the agent’s latent embeddings yields an isometric, disentangled representation of both. Second, we relax the geometry assumption and explore the milder temporal consistency bias. This allows us to construct representations where the temporal order between states is preserved, a property we refer to as distance monotonicity. In the reinforcement learning setting, we show that, under suitable conditions, this property is enough to recover an approximation of the value function and provably estimate an optimal policy. In a multiple-sensor framework, these representations can be used to construct a Bayesian filtering state estimate robust under unknown noise. Lastly, we extend the concept of interactions from physical systems to the parametric space of a learner. We show how distance monotonic representations of the parameters of a model can be used to approximate the posterior distribution of a Bayesian neural network. Finally,in a meta-learning setting, we explore implicit representations of the learner to reduce the variance of a fast-adaptation model. Collectively, these results demonstrate that interaction-driven biases produce structured representations that simplify or enhance the learning process.

Abstract [sv]

Denna avhandling undersöker hur interaktion kan användas som självövervakning för att lära strukturerade tillståndsrepresentationer som förenklar nedströmsuppgifter. Vi formaliserar två induktiva bias som naturligt uppstår i trajektorier genererade av agenter som interagerar med sin omgivning: geometri samt temporal konsistens i det underliggande tillståndsrummet. Vi visar att införandet av dessa bias i representationsinlärning ger ytterligare, uppgiftsrelevanta egenskaper. Först fokuserar vi på geometrisk bias: vi lär translationsekvivarianta latenta rum från bilder där agentens handlingar motsvarar vektoradditioner. Vi visar hur sådana representationer kan användas för att estimera en återhämtningsstrategi som dämpar felackumulering i datadrivna, sekventiella beslutspolicys. Vi utvidgar därefter ekvivarianta representationer till scener med externa objekt. Under en kontaktbaserad interaktionsmodell bevisar vi att en inriktning (alignment) av objektets och agentens latenta inbäddningar ger en isometrisk och separerad (disentangled) representation av båda. Därefter lättar vi på geometriantagandet och studerar den mildare biasen temporal konsistens. Detta möjliggör konstruktion av representationer där den temporala ordningen mellan tillstånd bevaras—en egenskap vi benämner distansmonotonicitet. I en förstärkningsinlärningsmiljö visar vi att denna egenskap, under lämpliga villkor, räcker för att återvinna en approximation av värdefunktionen och bevisligen skatta en optimal policy. I ett flersensorramverk kan dessa representationer dessutom användas för att konstruera en Bayesiansk filtreringsbaserad tillståndsskattning som är robust mot okänt brus. Slutligen utvidgar vi interaktionsbegreppet från fysikaliska system till en lärares parametriska rum. Vi visar hur distansmonotona representationer av modellparametrar kan utnyttjas för att approximera posteriordistributionen i en Bayesiansk neuronnätmodell. I en meta-inlärningssättning undersöker vi även implicita representationer av läraren för att minska variansen hos en modell för snabb anpassning. Sammantaget demonstrerar resultaten att interaktionsdrivna bias leder till strukturerade representationer som förenklar eller förbättrar inlärningsprocessen.

sted, utgiver, år, opplag, sider
Stockholm: KTH Royal Institute of Technology, 2026. , s. xv, 57
Serie
TRITA-EECS-AVL ; 2026:18
HSV kategori
Forskningsprogram
Datalogi
Identifikatorer
URN: urn:nbn:se:kth:diva-376773ISBN: 978-91-8106-539-8 (tryckt)OAI: oai:DiVA.org:kth-376773DiVA, id: diva2:2038904
Disputas
2026-03-16, https://kth-se.zoom.us/w/63788305553, F3, Lindstedtsvägen 26, Stockholm, 09:00 (engelsk)
Opponent
Veileder
Merknad

QC 20260216

Tilgjengelig fra: 2026-02-16 Laget: 2026-02-16 Sist oppdatert: 2026-02-23bibliografisk kontrollert
Delarbeid
1. Back to the Manifold: Recovering from Out-of-Distribution States
Åpne denne publikasjonen i ny fane eller vindu >>Back to the Manifold: Recovering from Out-of-Distribution States
Vise andre…
2022 (engelsk)Inngår i: 2022 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), Institute of Electrical and Electronics Engineers (IEEE) , 2022, s. 8660-8666Konferansepaper, Publicerat paper (Fagfellevurdert)
Abstract [en]

Learning from previously collected datasets of expert data offers the promise of acquiring robotic policies without unsafe and costly online explorations. However, a major challenge is a distributional shift between the states in the training dataset and the ones visited by the learned policy at the test time. While prior works mainly studied the distribution shift caused by the policy during the offline training, the problem of recovering from out-of-distribution states at the deployment time is not very well studied yet. We alleviate the distributional shift at the deployment time by introducing a recovery policy that brings the agent back to the training manifold whenever it steps out of the in-distribution states, e.g., due to an external perturbation. The recovery policy relies on an approximation of the training data density and a learned equivariant mapping that maps visual observations into a latent space in which translations correspond to the robot actions. We demonstrate the effectiveness of the proposed method through several manipulation experiments on a real robotic platform. Our results show that the recovery policy enables the agent to complete tasks while the behavioral cloning alone fails because of the distributional shift problem.

sted, utgiver, år, opplag, sider
Institute of Electrical and Electronics Engineers (IEEE), 2022
Serie
IEEE International Conference on Intelligent Robots and Systems, ISSN 2153-0858
HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-324860 (URN)10.1109/IROS47612.2022.9981315 (DOI)000909405301050 ()2-s2.0-85146319849 (Scopus ID)
Konferanse
IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), OCT 23-27, 2022, Kyoto, JAPAN
Merknad

QC 20230322

Tilgjengelig fra: 2023-03-22 Laget: 2023-03-22 Sist oppdatert: 2026-02-16bibliografisk kontrollert
2. Learning Geometric Representations of Objects via Interaction
Åpne denne publikasjonen i ny fane eller vindu >>Learning Geometric Representations of Objects via Interaction
Vise andre…
2023 (engelsk)Inngår i: Machine Learning and Knowledge Discovery in Databases: Research Track - European Conference, ECML PKDD 2023, Proceedings, Springer Nature , 2023, s. 629-644Konferansepaper, Publicerat paper (Fagfellevurdert)
Abstract [en]

We address the problem of learning representations from observations of a scene involving an agent and an external object the agent interacts with. To this end, we propose a representation learning framework extracting the location in physical space of both the agent and the object from unstructured observations of arbitrary nature. Our framework relies on the actions performed by the agent as the only source of supervision, while assuming that the object is displaced by the agent via unknown dynamics. We provide a theoretical foundation and formally prove that an ideal learner is guaranteed to infer an isometric representation, disentangling the agent from the object and correctly extracting their locations. We evaluate empirically our framework on a variety of scenarios, showing that it outperforms vision-based approaches such as a state-of-the-art keypoint extractor. We moreover demonstrate how the extracted representations enable the agent to solve downstream tasks via reinforcement learning in an efficient manner.

sted, utgiver, år, opplag, sider
Springer Nature, 2023
Emneord
Equivariance, Interaction, Representation Learning
HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-339271 (URN)10.1007/978-3-031-43421-1_37 (DOI)001156141200037 ()2-s2.0-85174436596 (Scopus ID)
Konferanse
European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases, ECML PKDD 2023, Turin, Italy, Sep 18 2023 - Sep 22 2023
Merknad

Part of ISBN 9783031434204

QC 20231106

Tilgjengelig fra: 2023-11-06 Laget: 2023-11-06 Sist oppdatert: 2026-02-16bibliografisk kontrollert
3. Goal-Conditioned Reinforcement Learning from Sub-Optimal Data on Metric Spaces
Åpne denne publikasjonen i ny fane eller vindu >>Goal-Conditioned Reinforcement Learning from Sub-Optimal Data on Metric Spaces
(engelsk)Manuskript (preprint) (Annet vitenskapelig)
Abstract [en]

We study the problem of learning optimal behavior from sub-optimal datasets for goal-conditioned offline reinforcement learning under sparse rewards, invertible actions and deterministic transitions. To mitigate the effects of distribution shift, we propose MetricRL, a method that combines metric learning for value function approximation with weighted imitation learning for policy estimation. MetricRL avoids conservative or behavior-cloning constraints, enabling effective learning even in severely sub-optimal regimes. We introduce distance monotonicity as a key property linking metric representations to optimality and design an objective that explicitly promotes it. Empirically, MetricRL consistently outperforms prior state-of-the-art goal-conditioned RL methods in recovering near-optimal behavior from sub-optimal offline data. 

HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-376772 (URN)
Merknad

QC 20260216

Tilgjengelig fra: 2026-02-16 Laget: 2026-02-16 Sist oppdatert: 2026-02-16bibliografisk kontrollert
4. Geometry of Uncertainty: Learning Metric Spaces for Multimodal State Estimation in RL
Åpne denne publikasjonen i ny fane eller vindu >>Geometry of Uncertainty: Learning Metric Spaces for Multimodal State Estimation in RL
2026 (engelsk)Inngår i: Geometry of Uncertainty: Learning Metric Spaces for Multimodal State Estimation in RL, 2026Konferansepaper, Poster (with or without abstract) (Fagfellevurdert)
Abstract [en]

Estimating the state of an environment from high-dimensional, multimodal, and noisy observations is a fundamental challenge in reinforcement learning (RL). Traditional approaches rely on probabilistic models to account for the uncertainty, but often require explicit noise assumptions, in turn limiting generalization. In this work, we contribute a novel method to learn a structured latent representation, in which distances between states directly correlate with the minimum number of actions required to transition between them. The proposed metric space formulation provides a geometric interpretation of uncertainty without the need for explicit probabilistic modeling. To achieve this, we introduce a multimodal latent transition model and a sensor fusion mechanism based on inverse distance weighting, allowing for the adaptive integration of multiple sensor modalities without prior knowledge of noise distributions. We empirically validate the approach on a range of multimodal RL tasks, demonstrating improved robustness to sensor noise and superior state estimation compared to baseline methods. Our experiments show enhanced performance of an RL agent via the learned representation, eliminating the need of explicit noise augmentation. The presented results suggest that leveraging transition-aware metric spaces provides a principled and scalable solution for robust state estimation in sequential decision-making.

HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-376770 (URN)
Konferanse
ICLR 2026 The Fourteenth International Conference on Learning Representations, Riocentro Convention and Event Center, Rio de Janeiro, Brazil, Apr 23-27, 2026
Merknad

QC 20260218

Tilgjengelig fra: 2026-02-16 Laget: 2026-02-16 Sist oppdatert: 2026-02-18
5. Walking on the Fiber: A Simple Geometric Approximation for Bayesian Neural Networks
Åpne denne publikasjonen i ny fane eller vindu >>Walking on the Fiber: A Simple Geometric Approximation for Bayesian Neural Networks
2025 (engelsk)Inngår i: Transactions on Machine Learning Research, E-ISSN 2835-8856, Vol. 2025-JulyArtikkel i tidsskrift (Fagfellevurdert) Published
Abstract [en]

Bayesian Neural Networks provide a principled framework for uncertainty quantification by modeling the posterior distribution of network parameters. However, exact posterior inference is computationally intractable, and widely used approximations like the Laplace method struggle with scalability and posterior accuracy in modern deep networks. In this work, we revisit sampling techniques for posterior exploration, proposing a simple variation tailored to efficiently sample from the posterior in over-parameterized networks by leveraging the low-dimensional structure of loss minima. Building on this, we introduce a model that learns a deformation of the parameter space, enabling rapid posterior sampling without requiring iterative methods. Empirical results demonstrate that our approach achieves competitive posterior approximations with improved scalability compared to recent refinement techniques. These contributions provide a practical alternative for Bayesian inference in deep learning.

sted, utgiver, år, opplag, sider
Transactions on Machine Learning Research, 2025
HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-369023 (URN)2-s2.0-105011329903 (Scopus ID)
Merknad

QC 20250908

Tilgjengelig fra: 2025-09-08 Laget: 2025-09-08 Sist oppdatert: 2026-02-16bibliografisk kontrollert
6. Reducing Variance in Meta-Learning via Laplace Approximation for Regression Tasks
Åpne denne publikasjonen i ny fane eller vindu >>Reducing Variance in Meta-Learning via Laplace Approximation for Regression Tasks
Vise andre…
2024 (engelsk)Inngår i: Transactions on Machine Learning Research, E-ISSN 2835-8856, Vol. 2024Artikkel i tidsskrift (Fagfellevurdert) Published
Abstract [en]

Given a finite set of sample points, meta-learning algorithms aim to learn an optimal adaptation strategy for new, unseen tasks. Often, this data can be ambiguous as it might belong to different tasks concurrently. This is particularly the case in meta-regression tasks. In such cases, the estimated adaptation strategy is subject to high variance due to the limited amount of support data for each task, which often leads to sub-optimal generalization performance. In this work, we address the problem of variance reduction in gradient-based meta-learning and formalize the class of problems prone to this, a condition we refer to as task overlap. Specifically, we propose a novel approach that reduces the variance of the gradient estimate by weighing each support point individually by the variance of its posterior over the parameters. To estimate the posterior, we utilize the Laplace approximation, which allows us to express the variance in terms of the curvature of the loss landscape of our meta-learner. Experimental results demonstrate the effectiveness of the proposed method and highlight the importance of variance reduction in meta-learning.

sted, utgiver, år, opplag, sider
Transactions on Machine Learning Research, 2024
HSV kategori
Identifikatorer
urn:nbn:se:kth:diva-361197 (URN)2-s2.0-85219566964 (Scopus ID)
Merknad

QC 20250312

Tilgjengelig fra: 2025-03-12 Laget: 2025-03-12 Sist oppdatert: 2026-02-16bibliografisk kontrollert

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