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Most Influential ICML 2007 Paper · 2026-03 edition

Self-taught Learning: Transfer Learning From Unlabeled Data

Rajat Raina; Alexis Battle; Honglak Lee; Benjamin Packer; Andrew Y. Ng

Venue
International Conference on Machine Learning (ICML) 2007
Recognition
Most Influential ICML 2007 Paper (Rank No. 7)
Edition
2026-03
Impact factor
9
Certificate ID
974bd0853b721874

Abstract

We present a new machine learning framework called "self-taught learning" for using unlabeled data in supervised classification tasks. We do not assume that the unlabeled data follows the same class labels or generative distribution as the labeled data. Thus, we would like to use a large number of unlabeled images (or audio samples, or text documents) randomly downloaded from the Internet to improve performance on a given image (or audio, or text) classification task. Such unlabeled data is significantly easier to obtain than in typical semi-supervised or transfer learning settings, making self-taught learning widely applicable to many practical learning problems. We describe an approach to self-taught learning that uses sparse coding to construct higher-level features using the unlabeled data. These features form a succinct input representation and significantly improve classification performance. When using an SVM for classification, we further show how a Fisher kernel can be learned for this representation.

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