LGIROCMLJul 9, 2015

Locally Non-linear Embeddings for Extreme Multi-label Learning

arXiv:1507.02743v18 citations
Originality Highly original
AI Analysis

This addresses the scalability and accuracy limitations in extreme multi-label classification for applications with large label sets, representing a significant but not foundational advance.

The paper tackles the problem of extreme multi-label learning where traditional embedding methods fail due to violations of the low-rank assumption, resulting in X-One, a classifier that uses local distance-preserving embeddings to improve prediction accuracy by up to 35% over state-of-the-art methods and scale to datasets with a million labels.

The objective in extreme multi-label learning is to train a classifier that can automatically tag a novel data point with the most relevant subset of labels from an extremely large label set. Embedding based approaches make training and prediction tractable by assuming that the training label matrix is low-rank and hence the effective number of labels can be reduced by projecting the high dimensional label vectors onto a low dimensional linear subspace. Still, leading embedding approaches have been unable to deliver high prediction accuracies or scale to large problems as the low rank assumption is violated in most real world applications. This paper develops the X-One classifier to address both limitations. The main technical contribution in X-One is a formulation for learning a small ensemble of local distance preserving embeddings which can accurately predict infrequently occurring (tail) labels. This allows X-One to break free of the traditional low-rank assumption and boost classification accuracy by learning embeddings which preserve pairwise distances between only the nearest label vectors. We conducted extensive experiments on several real-world as well as benchmark data sets and compared our method against state-of-the-art methods for extreme multi-label classification. Experiments reveal that X-One can make significantly more accurate predictions then the state-of-the-art methods including both embeddings (by as much as 35%) as well as trees (by as much as 6%). X-One can also scale efficiently to data sets with a million labels which are beyond the pale of leading embedding methods.

Foundations

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