RanDumb: a simple approach that questions the efficacy of continual representation learning
<p>We propose RanDumb to examine the efficacy of continual representation learning. RanDumb embeds raw pixels using a fixed random transform which approximates an RBF-Kernel, initialized before seeing any data, and learns a simple linear classifier on top. We present a surprising and consisten...
Main Authors: | Prabhu, A, Sinha, S, Kumaraguru, P, Torr, PHS, Sener, O, Dokania, PK |
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Format: | Conference item |
Language: | English |
Published: |
2024
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