New Recommendation Algorithm for Implicit Data Motivated by the Multivariate Normal Distribution

12/21/2020
by   Markus Viljanen, et al.
0

The goal of recommender systems is to help users find useful items from a large catalog of items by producing a list of item recommendations for every user. Data sets based on implicit data collection have a number of special characteristics. The user and item interaction matrix is often complete, i.e. every user and item pair has an interaction value or zero for no interaction, and the goal is to rank the items for every user. This study presents a simple new algorithm for implicit data that matches or outperforms baselines in accuracy. The algorithm can be motivated intuitively by the Multivariate Normal Distribution (MVN), where have a closed form expression for the ranking of non-interactions given user's interactions. The main difference to kNN and SVD baselines is that predictions are carried out using only the known interactions. Modified baselines with this trick have a better accuracy, however it also results in simpler models with fewer hyperparameters for implicit data. Our results suggest that this idea should used in Top-N recommendation with small seed sizes and the MVN is a simple way to do so.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/17/2023

DRIFT: A Federated Recommender System with Implicit Feedback on the Items

Nowadays there are more and more items available online, this makes it h...
research
03/17/2016

Cascading Bandits for Large-Scale Recommendation Problems

Most recommender systems recommend a list of items. The user examines th...
research
01/23/2019

Scalable Realistic Recommendation Datasets through Fractal Expansions

Recommender System research suffers currently from a disconnect between ...
research
11/16/2018

Wing Expansion Menu - An approach for faster and more precise navigation with cascading pull-down menus

This paper presents a new design suggestion for cascading pull-down menu...
research
04/08/2019

Scaling Up Collaborative Filtering Data Sets through Randomized Fractal Expansions

Recommender system research suffers from a disconnect between the size o...
research
11/07/2022

Justification of Recommender Systems Results: A Service-based Approach

With the increasing demand for predictable and accountable Artificial In...
research
05/24/2023

Breaking the Curse of Quality Saturation with User-Centric Ranking

A key puzzle in search, ads, and recommendation is that the ranking mode...

Please sign up or login with your details

Forgot password? Click here to reset