Lightweight Learner for Shared Knowledge Lifelong Learning
Yunhao Ge, Yuecheng Li, Di Wu, Ao Xu, Adam M. Jones, Amanda Sofie, Rios, Iordanis Fostiropoulos, Shixian Wen, Po-Hsuan Huang, Zachary William, Murdock, Gozde Sahin, Shuo Ni, Kiran Lekkala, Sumedh Anand Sontakke, Laurent, Itti

TL;DR
This paper introduces a decentralized lifelong learning framework where multiple agents share knowledge efficiently through lightweight modules, enabling parallel learning of numerous tasks with improved accuracy and scalability.
Contribution
The paper proposes a novel Shared Knowledge Lifelong Learning (SKILL) paradigm with lightweight agents that share task-specific modules and anchors, enhancing parallel learning and knowledge consolidation.
Findings
Achieved state-of-the-art accuracy on SKILL-102 dataset.
Demonstrated near-perfect parallelization in lifelong learning.
Outperformed 8 baseline methods in accuracy.
Abstract
In Lifelong Learning (LL), agents continually learn as they encounter new conditions and tasks. Most current LL is limited to a single agent that learns tasks sequentially. Dedicated LL machinery is then deployed to mitigate the forgetting of old tasks as new tasks are learned. This is inherently slow. We propose a new Shared Knowledge Lifelong Learning (SKILL) challenge, which deploys a decentralized population of LL agents that each sequentially learn different tasks, with all agents operating independently and in parallel. After learning their respective tasks, agents share and consolidate their knowledge over a decentralized communication network, so that, in the end, all agents can master all tasks. We present one solution to SKILL which uses Lightweight Lifelong Learning (LLL) agents, where the goal is to facilitate efficient sharing by minimizing the fraction of the agent that is…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Domain Adaptation and Few-Shot Learning
MethodsTest
