Javascript must be enabled to continue!
Holographic Factorization Machines for Recommendation
View through CrossRef
Factorization Machines (FMs) are a class of popular algorithms that have been widely adopted for collaborative filtering and recommendation tasks. FMs are characterized by its usage of the inner product of factorized parameters to model pairwise feature interactions, making it highly expressive and powerful. This paper proposes Holographic Factorization Machines (HFM), a new novel method of enhancing the representation capability of FMs without increasing its parameter size. Our approach replaces the inner product in FMs with holographic reduced representations (HRRs), which are theoretically motivated by associative retrieval and compressed outer products. Empirically, we found that this leads to consistent improvements over vanilla FMs by up to 4% improvement in terms of mean squared error, with improvements larger at smaller parameterization. Additionally, we propose a neural adaptation of HFM which enhances its capability to handle nonlinear structures. We conduct extensive experiments on nine publicly available datasets for collaborative filtering with explicit feedback. HFM achieves state-of-theart performance on all nine, outperforming strong competitors such as Attentional Factorization Machines (AFM) and Neural Matrix Factorization (NeuMF).
Association for the Advancement of Artificial Intelligence (AAAI)
Title: Holographic Factorization Machines for Recommendation
Description:
Factorization Machines (FMs) are a class of popular algorithms that have been widely adopted for collaborative filtering and recommendation tasks.
FMs are characterized by its usage of the inner product of factorized parameters to model pairwise feature interactions, making it highly expressive and powerful.
This paper proposes Holographic Factorization Machines (HFM), a new novel method of enhancing the representation capability of FMs without increasing its parameter size.
Our approach replaces the inner product in FMs with holographic reduced representations (HRRs), which are theoretically motivated by associative retrieval and compressed outer products.
Empirically, we found that this leads to consistent improvements over vanilla FMs by up to 4% improvement in terms of mean squared error, with improvements larger at smaller parameterization.
Additionally, we propose a neural adaptation of HFM which enhances its capability to handle nonlinear structures.
We conduct extensive experiments on nine publicly available datasets for collaborative filtering with explicit feedback.
HFM achieves state-of-theart performance on all nine, outperforming strong competitors such as Attentional Factorization Machines (AFM) and Neural Matrix Factorization (NeuMF).
Related Results
Factorization Machines with libFM
Factorization Machines with libFM
Factorization approaches provide high accuracy in several important prediction problems, for example, recommender systems. However, applying factorization approaches to a new predi...
Factorization structures, cones, and polytopes
Factorization structures, cones, and polytopes
Abstract
Factorization structures occur in toric differential and discrete geometry and can be viewed in multiple ways, e.g., as objects determining substantial classes of expli...
The Holographic Human for Surgical Navigation using Microsoft HoloLens
The Holographic Human for Surgical Navigation using Microsoft HoloLens
In surgical navigation, to accurately know the position of a surgical instrument in a patient's body is very important. Using transparent smart glasses is very useful for surgical ...
FAKTORISASI PADA GRAF REGULER
FAKTORISASI PADA GRAF REGULER
This research aims to: (1) know the criteria of a graph that has a -factor, (2) know the conditions of a regular graph that has a 1-factorization , (3) know the conditions of a reg...
Technologies for Creating Holographic 3D Showcase Presentations
Technologies for Creating Holographic 3D Showcase Presentations
Introduction. The article considers the aspects of using modern information technologies in the creating of presentations. Technologies for creating holographic 3D showcase present...
AARC Clinical Practice Guideline: Patient-Ventilator Assessment
AARC Clinical Practice Guideline: Patient-Ventilator Assessment
Given the important role of patient-ventilator assessments in ensuring the safety and efficacy of mechanical ventilation, a team of respiratory therapists and a librarian used Grad...
Slim-panel holographic video display
Slim-panel holographic video display
AbstractSince its discovery almost 70 years ago, the hologram has been considered to reproduce the most realistic three dimensional images without visual side effects. Holographic ...
Doctor Recommendation Model for Pre-Diagnosis Online in China: Integrating Ontology Characteristics and Disease Text Mining (Preprint)
Doctor Recommendation Model for Pre-Diagnosis Online in China: Integrating Ontology Characteristics and Disease Text Mining (Preprint)
BACKGROUND
Background: The online health community provides diagnosis and treatment assistance online so that doctors and patients can keep in touch continu...

