Title
V-Elliot: Design, Evaluate and Tune Visual Recommender Systems
Abstract
ABSTRACTThe paper introduces Visual-Elliot (V-Elliot), a reproducibility framework for Visual Recommendation systems (VRSs) based on Elliot. framework provides the widest set of VRSs compared to other recommendation frameworks in the literature (i.e., 6 state-of-the-art models which have been commonly employed as baselines in recent works). The framework pipeline spans from the dataset preprocessing and item visual features loading to easily train and test complex combinations of visual models and evaluation settings. V-Elliot provides an extended set of features to ease the design, testing, and integration of novel VRSs into V-Elliot. The framework exploits of dataset filtering/splitting functions, 40 evaluation metrics, five hyper-parameter optimization methods, more than 50 recommendation algorithms, and two statistical hypothesis tests. The files of this demonstration are available at: github.com/sisinflab/elliot.
Year
DOI
Venue
2021
10.1145/3460231.3478881
RECSYS
Keywords
DocType
Citations 
Visual recommendation, Recommender Systems, Reproducibility
Conference
1
PageRank 
References 
Authors
0.35
25
8
Name
Order
Citations
PageRank
Vito Walter Anelli19118.45
Alejandro BellogíN263846.83
Antonio Ferrara3183.94
Daniele Malitesta4192.91
Felice Antonio Merra5326.46
Claudio Pomo6185.04
Francesco M. Donini73481452.47
Tommaso Di Noia81857152.07