L3DMC: Lifelong Learning using Distillation via Mixed-Curvature Space
Kaushik Roy, Peyman Moghadam, Mehrtash Harandi

TL;DR
L3DMC introduces a novel lifelong learning approach that uses mixed-curvature spaces and kernel methods to better preserve and adapt knowledge across sequential tasks, outperforming fixed-space models.
Contribution
It proposes a distillation strategy operating on mixed-curvature spaces and RKHS to enhance knowledge retention and adaptation in lifelong learning models.
Findings
Effective in medical image classification benchmarks
Outperforms fixed-curvature space methods
Preserves learned knowledge better during sequential learning
Abstract
The performance of a lifelong learning (L3) model degrades when it is trained on a series of tasks, as the geometrical formation of the embedding space changes while learning novel concepts sequentially. The majority of existing L3 approaches operate on a fixed-curvature (e.g., zero-curvature Euclidean) space that is not necessarily suitable for modeling the complex geometric structure of data. Furthermore, the distillation strategies apply constraints directly on low-dimensional embeddings, discouraging the L3 model from learning new concepts by making the model highly stable. To address the problem, we propose a distillation strategy named L3DMC that operates on mixed-curvature spaces to preserve the already-learned knowledge by modeling and maintaining complex geometrical structures. We propose to embed the projected low dimensional embedding of fixed-curvature spaces (Euclidean and…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Medical Imaging and Analysis · Radiomics and Machine Learning in Medical Imaging
