TY - JOUR
T1 - Getting aligned on representational alignment
AU - Sucholutsky, Ilia
AU - Muttenthaler, Lukas
AU - Weller, Adrian
AU - Peng, Andi
AU - Bobu, Andreea
AU - Kim, Been
AU - Love, Bradley C.
AU - Cueva, Christopher J.
AU - Grant, Erin
AU - Groen, Iris
AU - Achterberg, Jascha
AU - Tenenbaum, Joshua B.
AU - Collins, Katherine M.
AU - Hermann, Katherine L.
AU - Oktar, Kerem
AU - Greff, Klaus
AU - Hebart, Martin N.
AU - Cloos, Nathan
AU - Kriegeskorte, Nikolaus
AU - Jacoby, Nori
AU - Zhang, Qiuyi
AU - Marjieh, Raja
AU - Geirhos, Robert
AU - Chen, Sherol
AU - Kornblith, Simon
AU - Rane, Sunayana
AU - Konkle, Talia
AU - O’connell, Thomas P.
AU - Unterthiner, Thomas
AU - Lampinen, Andrew K.
AU - Müller, Klaus Robert
AU - Toneva, Mariya
AU - Griffiths, Thomas L.
N1 - Publisher Copyright:
© 2025, Transactions on Machine Learning Research. All rights reserved.
PY - 2025
Y1 - 2025
N2 - Biological and artificial information processing systems form representations of the world that they can use to categorize, reason, plan, navigate, and make decisions. How can we measure the similarity between the representations formed by these diverse systems? Do similarities in representations then translate into similar behavior? If so, then how can a system’s representations be modified to better match those of another system? These questions pertaining to the study of representational alignment are at the heart of some of the most promising research areas in contemporary cognitive science, neuroscience, and machine learning. In this Perspective, we survey the exciting recent developments in representational alignment research in the fields of cognitive science, neuroscience, and machine learning. Despite their overlapping interests, there is limited knowledge transfer between these fields, so work in one field ends up duplicated in another, and useful innovations are not shared effectively. To improve communication, we propose a unifying framework that can serve as a common language for research on representational alignment, and map several streams of existing work across fields within our framework. We also lay out open problems in representational alignment where progress can benefit all three of these fields. We hope that this paper will catalyze cross-disciplinary collaboration and accelerate progress for all communities studying and developing information processing systems.
AB - Biological and artificial information processing systems form representations of the world that they can use to categorize, reason, plan, navigate, and make decisions. How can we measure the similarity between the representations formed by these diverse systems? Do similarities in representations then translate into similar behavior? If so, then how can a system’s representations be modified to better match those of another system? These questions pertaining to the study of representational alignment are at the heart of some of the most promising research areas in contemporary cognitive science, neuroscience, and machine learning. In this Perspective, we survey the exciting recent developments in representational alignment research in the fields of cognitive science, neuroscience, and machine learning. Despite their overlapping interests, there is limited knowledge transfer between these fields, so work in one field ends up duplicated in another, and useful innovations are not shared effectively. To improve communication, we propose a unifying framework that can serve as a common language for research on representational alignment, and map several streams of existing work across fields within our framework. We also lay out open problems in representational alignment where progress can benefit all three of these fields. We hope that this paper will catalyze cross-disciplinary collaboration and accelerate progress for all communities studying and developing information processing systems.
UR - https://www.scopus.com/pages/publications/105021811524
UR - https://www.scopus.com/pages/publications/105021811524#tab=citedBy
M3 - Article
AN - SCOPUS:105021811524
SN - 2835-8856
VL - 2025-October
JO - Transactions on Machine Learning Research
JF - Transactions on Machine Learning Research
ER -