DeepAI AI Chat
Log In Sign Up

Two-level monotonic multistage recommender systems

10/06/2021
by   Ben Dai, et al.
0

A recommender system learns to predict the user-specific preference or intention over many items simultaneously for all users, making personalized recommendations based on a relatively small number of observations. One central issue is how to leverage three-way interactions, referred to as user-item-stage dependencies on a monotonic chain of events, to enhance the prediction accuracy. A monotonic chain of events occurs, for instance, in an article sharing dataset, where a “follow” action implies a “like” action, which in turn implies a “view” action. In this article, we develop a multistage recommender system utilizing a two-level monotonic property characterizing a monotonic chain of events for personalized prediction. Particularly, we derive a large-margin classifier based on a nonnegative additive latent factor model in the presence of a high percentage of missing observations, particularly between stages, reducing the number of model parameters for personalized prediction while guaranteeing prediction consistency. On this ground, we derive a regularized cost function to learn user-specific behaviors at different stages, linking decision functions to numerical and categorical covariates to model user-item-stage interactions. Computationally, we derive an algorithm based on blockwise coordinate descent. Theoretically, we show that the two-level monotonic property enhances the accuracy of learning as compared to a standard method treating each stage individually and an ordinal method utilizing only one-level monotonicity. Finally, the proposed method compares favorably with existing methods in simulations and an article sharing dataset.

READ FULL TEXT
07/26/2016

An Adaptive Matrix Factorization Approach for Personalized Recommender Systems

Given a set U of users and a set of items I, a dataset of recommendation...
04/05/2021

A data-driven personalized smart lighting recommender system

Recommender systems attempts to identify and recommend the most preferab...
11/16/2021

Utilizing Textual Reviews in Latent Factor Models for Recommender Systems

Most of the existing recommender systems are based only on the rating da...
09/01/2020

Exploration in two-stage recommender systems

Two-stage recommender systems are widely adopted in industry due to thei...
12/15/2022

Membership Inference Attacks Against Latent Factor Model

The advent of the information age has led to the problems of information...