logo
ResearchBunny Logo
Efficient Meta-Learning via Error-based Context Pruning for Implicit Neural Representations

Computer Science

Efficient Meta-Learning via Error-based Context Pruning for Implicit Neural Representations

J. Tack, S. Kim, et al.

Introducing Error-based Context Pruning (ECoP), a groundbreaking meta-learning technique that optimizes large-scale implicit neural representations (INRs) by intelligently selecting context points based on predictive error. This innovative approach enhances reconstruction quality and facilitates learning in high-dimensional signals, showcasing remarkable improvements across various modalities. This research was conducted by Jihoon Tack, Subin Kim, Sihyun Yu, Jaeho Lee, Jinwoo Shin, and Jonathan Richard Schwarz.

00:00
00:00
~3 min • Beginner • English
Abstract
We introduce an efficient optimization-based meta-learning technique for learning large-scale implicit neural representations (INRs). Our main idea is designing an online selection of context points, which can significantly reduce memory requirements for meta-learning in any established setting. By doing so, we expect additional memory savings which allows longer per-signal adaptation horizons (at a given memory budget), leading to better meta-initializations by reducing myopia and, more crucially, enabling learning on high-dimensional signals. To implement such context pruning, our technical novelty is threefold. First, we propose a selection scheme that adaptively chooses a subset at each adaptation step based on the predictive error, leading to the modeling of the global structure of the signal in early steps and enabling the later steps to capture its high-frequency details. Second, we counteract any possible information loss from context pruning by minimizing the parameter distance to a bootstrapped target model trained on a full context set. Finally, we suggest using the full context set with a gradient scaling scheme at testtime. Our technique is model-agnostic, intuitive, and straightforward to implement, showing significant reconstruction improvements for a wide range of signals. Code is available at https: //github.com/jihoontack/ECoP
Publisher
arXiv
Published On
Feb 01, 2023
Authors
Jihoon Tack, Subin Kim, Sihyun Yu, Jaeho Lee, Jinwoo Shin, Jonathan Richard Schwarz
Tags
Error-based Context Pruning
meta-learning
implicit neural representations
adaptive selection
high-dimensional signals
reconstruction
bootstrapped correction
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny