Sherlock: Sparse Hierarchical Embeddings for Visually-aware One-class Collaborative Filtering

04/20/2016
by   Ruining He, et al.
0

Building successful recommender systems requires uncovering the underlying dimensions that describe the properties of items as well as users' preferences toward them. In domains like clothing recommendation, explaining users' preferences requires modeling the visual appearance of the items in question. This makes recommendation especially challenging, due to both the complexity and subtlety of people's 'visual preferences,' as well as the scale and dimensionality of the data and features involved. Ultimately, a successful model should be capable of capturing considerable variance across different categories and styles, while still modeling the commonalities explained by `global' structures in order to combat the sparsity (e.g. cold-start), variability, and scale of real-world datasets. Here, we address these challenges by building such structures to model the visual dimensions across different product categories. With a novel hierarchical embedding architecture, our method accounts for both high-level (colorfulness, darkness, etc.) and subtle (e.g. casualness) visual characteristics simultaneously.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/04/2016

Ups and Downs: Modeling the Visual Evolution of Fashion Trends with One-Class Collaborative Filtering

Building a successful recommender system depends on understanding both t...
research
11/11/2019

Learning Preferences and Demands in Visual Recommendation

Visual information is an important factor in recommender systems, in whi...
research
07/15/2016

Vista: A Visually, Socially, and Temporally-aware Model for Artistic Recommendation

Understanding users' interactions with highly subjective content---like ...
research
06/28/2018

A Multimodal Recommender System for Large-scale Assortment Generation in E-commerce

E-commerce platforms surface interesting products largely through produc...
research
10/06/2015

VBPR: Visual Bayesian Personalized Ranking from Implicit Feedback

Modern recommender systems model people and items by discovering or `tea...
research
08/20/2019

Hierarchical Bayesian Personalized Recommendation: A Case Study and Beyond

Items in modern recommender systems are often organized in hierarchical ...
research
12/20/2020

eTREE: Learning Tree-structured Embeddings

Matrix factorization (MF) plays an important role in a wide range of mac...

Please sign up or login with your details

Forgot password? Click here to reset