Position and Distance: Recommendation beyond Matrix Factorization

02/13/2018
by   Shuai Zhang, et al.
0

For the last two decades, matrix factorization has become one of the fundamental methods for tackling recommendation problems. Recent studies demonstrate that the interaction function dot product used in MF can limit its expressiveness and lead to sub-optimal solutions. In this work, we propose modelling user-item interaction patterns in an alternative way by considering positions and distances of users and items. We assume that users and items can be positioned in a low dimensional space and their explicit closeness can be measured using Euclidean distance metric. In addition, we adopted a weighted strategy to adaptively assign different confidence levels for positive and negative samples, which introduces more flexibility for recommendation with implicit interactions. Comprehensive experiments on multiple real-world datasets demonstrate superior performances of our model over state-of-the-art competing methods including conventional matrix factorization based approaches and recent metric learning based approaches.

READ FULL TEXT

page 7

page 8

research
10/19/2022

Diversely Regularized Matrix Factorization for Accurate and Aggregately Diversified Recommendation

When recommending personalized top-k items to users, how can we recommen...
research
06/29/2018

Play Duration based User-Entity Affinity Modeling in Spoken Dialog System

Multimedia streaming services over spoken dialog systems have become ubi...
research
04/17/2023

Collaborative Residual Metric Learning

In collaborative filtering, distance metric learning has been applied to...
research
03/18/2022

SiMCa: Sinkhorn Matrix Factorization with Capacity Constraints

For a very broad range of problems, recommendation algorithms have been ...
research
05/27/2021

Towards a Better Understanding of Linear Models for Recommendation

Recently, linear regression models, such as EASE and SLIM, have shown to...
research
08/09/2023

Unified Matrix Factorization with Dynamic Multi-view Clustering

Matrix factorization (MF) is a classical collaborative filtering algorit...
research
03/04/2020

Fast Adaptively Weighted Matrix Factorization for Recommendation with Implicit Feedback

Recommendation from implicit feedback is a highly challenging task due t...

Please sign up or login with your details

Forgot password? Click here to reset