LGCLCVJan 25, 2021

Curriculum Learning: A Survey

arXiv:2101.10382v3546 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in machine learning, but it is incremental as it synthesizes existing literature without introducing new methods.

This survey examines curriculum learning, which improves model performance by training from easy to hard samples without extra computational cost, and presents a taxonomy and hierarchical tree of methods to address its limitations like sample ranking and pacing.

Training machine learning models in a meaningful order, from the easy samples to the hard ones, using curriculum learning can provide performance improvements over the standard training approach based on random data shuffling, without any additional computational costs. Curriculum learning strategies have been successfully employed in all areas of machine learning, in a wide range of tasks. However, the necessity of finding a way to rank the samples from easy to hard, as well as the right pacing function for introducing more difficult data can limit the usage of the curriculum approaches. In this survey, we show how these limits have been tackled in the literature, and we present different curriculum learning instantiations for various tasks in machine learning. We construct a multi-perspective taxonomy of curriculum learning approaches by hand, considering various classification criteria. We further build a hierarchical tree of curriculum learning methods using an agglomerative clustering algorithm, linking the discovered clusters with our taxonomy. At the end, we provide some interesting directions for future work.

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