TL;DR
This paper proposes using a Learning Classifier System to decompose input space into smaller autoencoders, improving efficiency and reducing code size compared to traditional global autoencoder models.
Contribution
It introduces a novel approach combining LCS with autoencoders to create adaptive, local models that enhance efficiency and reduce computational costs.
Findings
Reduced training and evaluation time.
Lower code and decoder size.
Comparable or improved performance.
Abstract
Autoencoders are data-specific compression algorithms learned automatically from examples. The predominant approach has been to construct single large global models that cover the domain. However, training and evaluating models of increasing size comes at the price of additional time and computational cost. Conditional computation, sparsity, and model pruning techniques can reduce these costs while maintaining performance. Learning classifier systems (LCS) are a framework for adaptively subdividing input spaces into an ensemble of simpler local approximations that together cover the domain. LCS perform conditional computation through the use of a population of individual gating/guarding components, each associated with a local approximation. This article explores the use of an LCS to adaptively decompose the input domain into a collection of small autoencoders where local solutions of…
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Taxonomy
MethodsPruning
