2021
DOI: 10.48550/arxiv.2105.04769
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Scalable Personalised Item Ranking through Parametric Density Estimation

Riku Togashi,
Masahiro Kato,
Mayu Otani
et al.

Abstract: Learning from implicit feedback is challenging because of the difficult nature of the one-class problem: we can observe only positive examples. Most conventional methods use a pairwise ranking approach and negative samplers to cope with the one-class problem. However, such methods have two main drawbacks particularly in large-scale applications; (1) the pairwise approach is severely inefficient due to the quadratic computational cost; and (2) even recent model-based samplers (e.g. IRGAN) cannot achieve practic… Show more

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