Fuzzy Simplicial Networks: A Topology-Inspired Model to Improve Task Generalization in Few-shot Learning
Henry Kvinge, Zachary New, Nico Courts, Jung H. Lee, Lauren A., Phillips, Courtney D. Corley, Aaron Tuor, Andrew Avila, Nathan O. Hodas

TL;DR
This paper introduces Fuzzy Simplicial Networks, a topology-inspired model that enhances task generalization in few-shot learning by capturing class manifold structures, outperforming existing models on new challenging tasks.
Contribution
The paper proposes a novel topology-based few-shot learning model called Fuzzy Simplicial Networks that better captures class structures and improves generalization to diverse tasks.
Findings
FSN outperforms state-of-the-art models on new challenging tasks.
FSN remains competitive on standard few-shot benchmarks.
The model effectively captures class manifold structures.
Abstract
Deep learning has shown great success in settings with massive amounts of data but has struggled when data is limited. Few-shot learning algorithms, which seek to address this limitation, are designed to generalize well to new tasks with limited data. Typically, models are evaluated on unseen classes and datasets that are defined by the same fundamental task as they are trained for (e.g. category membership). One can also ask how well a model can generalize to fundamentally different tasks within a fixed dataset (for example: moving from category membership to tasks that involve detecting object orientation or quantity). To formalize this kind of shift we define a notion of "independence of tasks" and identify three new sets of labels for established computer vision datasets that test a model's ability to generalize to tasks which draw on orthogonal attributes in the data. We use these…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Multimodal Machine Learning Applications · Human Pose and Action Recognition
