Consistent Collaborative Filtering via Tensor Decomposition

01/28/2022
by   Shiwen Zhao, et al.
0

Collaborative filtering is the de facto standard for analyzing users' activities and building recommendation systems for items. In this work we develop Sliced Anti-symmetric Decomposition (SAD), a new model for collaborative filtering based on implicit feedback. In contrast to traditional techniques where a latent representation of users (user vectors) and items (item vectors) are estimated, SAD introduces one additional latent vector to each item, using a novel three-way tensor view of user-item interactions. This new vector extends user-item preferences calculated by standard dot products to general inner products, producing interactions between items when evaluating their relative preferences. SAD reduces to state-of-the-art (SOTA) collaborative filtering models when the vector collapses to one, while in this paper we allow its value to be estimated from data. The proposed SAD model is simple, resulting in an efficient group stochastic gradient descent (SGD) algorithm. We demonstrate the efficiency of SAD in both simulated and real world datasets containing over 1M user-item interactions. By comparing SAD with seven alternative SOTA collaborative filtering models, we show that SAD is able to more consistently estimate personalized preferences.

READ FULL TEXT

page 4

page 7

page 15

research
05/14/2018

Collaborative Item Embedding Model for Implicit Feedback Data

Collaborative filtering is the most popular approach for recommender sys...
research
09/26/2013

One-class Collaborative Filtering with Random Graphs: Annotated Version

The bane of one-class collaborative filtering is interpreting and modell...
research
05/09/2019

Compositional Coding for Collaborative Filtering

Efficiency is crucial to the online recommender systems. Representing us...
research
01/05/2022

An Evaluation Study of Generative Adversarial Networks for Collaborative Filtering

This work explores the reproducibility of CFGAN. CFGAN and its family of...
research
04/14/2023

HEAT: A Highly Efficient and Affordable Training System for Collaborative Filtering Based Recommendation on CPUs

Collaborative filtering (CF) has been proven to be one of the most effec...
research
12/07/2020

Probabilistic Latent Factor Model for Collaborative Filtering with Bayesian Inference

Latent Factor Model (LFM) is one of the most successful methods for Coll...
research
12/21/2016

Boolean kernels for collaborative filtering in top-N item recommendation

In many personalized recommendation problems available data consists onl...

Please sign up or login with your details

Forgot password? Click here to reset