Deep Item-based Collaborative Filtering for Sparse Implicit Feedback
Recommender systems are ubiquitous in the domain of e-commerce, used to improve the user experience and to market inventory, thereby increasing revenue for the site. Techniques such as item-based collaborative filtering are used to model users' behavioral interactions with items and make recomm...
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Main Authors | , , , , |
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Format | Journal Article |
Language | English |
Published |
26.12.2018
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Subjects | |
Online Access | Get full text |
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Summary: | Recommender systems are ubiquitous in the domain of e-commerce, used to
improve the user experience and to market inventory, thereby increasing revenue
for the site. Techniques such as item-based collaborative filtering are used to
model users' behavioral interactions with items and make recommendations from
items that have similar behavioral patterns. However, there are challenges when
applying these techniques on extremely sparse and volatile datasets. On some
e-commerce sites, such as eBay, the volatile inventory and minimal structured
information about items make it very difficult to aggregate user interactions
with an item. In this work, we describe a novel deep learning-based method to
address the challenges. We propose an objective function that optimizes a
similarity measure between binary implicit feedback vectors between two items.
We demonstrate formally and empirically that a model trained to optimize this
function estimates the log of the cosine similarity between the feedback
vectors. We also propose a neural network architecture optimized on this
objective. We present the results of experiments comparing the output of the
neural network with traditional item-based collaborative filtering models on an
implicit-feedback dataset, as well as results of experiments comparing
different neural network architectures on user purchase behavior on eBay.
Finally, we discuss the results of an A/B test that show marked improvement of
the proposed technique over eBay's existing collaborative filtering recommender
system. |
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DOI: | 10.48550/arxiv.1812.10546 |