Self-Net: Lifelong Learning via Continual Self-Modeling
Blake Camp, Jaya Krishna Mandivarapu, Rolando Estrada

TL;DR
Self-Net introduces a novel continual learning framework that uses autoencoders to compress and generate neural network weights, enabling scalable, data-efficient lifelong learning without storing previous data.
Contribution
It is the first to use autoencoders for encoding network weights to facilitate continual learning with minimal storage and retraining.
Findings
Outperforms state-of-the-art methods on multiple datasets.
Achieves over 10X storage compression in continual learning.
Parameters grow logarithmically with the number of tasks.
Abstract
Learning a set of tasks over time, also known as continual learning (CL), is one of the most challenging problems in artificial intelligence. While recent approaches achieve some degree of CL in deep neural networks, they either (1) grow the network parameters linearly with the number of tasks, (2) require storing training data from previous tasks, or (3) restrict the network's ability to learn new tasks. To address these issues, we propose a novel framework, Self-Net, that uses an autoencoder to learn a set of low-dimensional representations of the weights learned for different tasks. We demonstrate that these low-dimensional vectors can then be used to generate high-fidelity recollections of the original weights. Self-Net can incorporate new tasks over time with little retraining and with minimal loss in performance for older tasks. Our system does not require storing prior training…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Human Pose and Action Recognition
MethodsSolana Customer Service Number +1-833-534-1729
