Federated Nearest Neighbor Classification with a Colony of Fruit-Flies: With Supplement
Federated Nearest Neighbor Classification with a Colony of Fruit-Flies: With Supplement
The mathematical formalization of a neurological mechanism in the olfactory circuit of a fruit-fly as a locality sensitive hash (Flyhash) and bloom filter (FBF) has been recently proposed and "reprogrammed" for various machine learning tasks such as similarity search, outlier detection and text embeddings. We propose a novel reprogramming of this hash and bloom filter to emulate the canonical nearest neighbor classifier (NNC) in the challenging Federated Learning (FL) setup where training and test data are spread across parties and no data can leave their respective parties. Specifically, we utilize Flyhash and FBF to create the FlyNN classifier, and theoretically establish conditions where FlyNN matches NNC. We show how FlyNN is trained exactly in a FL setup with low communication overhead to produce FlyNNFL, and how it can be differentially private. Empirically, we demonstrate that (i) FlyNN matches NNC accuracy across 70 OpenML datasets, (ii) FlyNNFL training is highly scalable with low communication overhead, providing up to $8\times$ speedup with $16$ parties.
Kaushik Sinha、Parikshit Ram
生物科学现状、生物科学发展计算技术、计算机技术生物科学研究方法、生物科学研究技术
Kaushik Sinha,Parikshit Ram.Federated Nearest Neighbor Classification with a Colony of Fruit-Flies: With Supplement[EB/OL].(2021-12-13)[2025-08-10].https://arxiv.org/abs/2112.07157.点此复制
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