Finding similar movies: dataset, tools, and methods
Files
Date issued
2018
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
Recommender systems are becoming ubiquitous in online commerce as well as in video-on-demand (VOD) and
music streaming services. A popular form of giving recommendations is to base them on a currently selected
product (or items), and provide “More Like This,” “Items Similar to This,” or “People Who Bought This also
Bought” functionality. These recommendations are based on similarity computations, also known as item-item
similarity computations. Such computations are typically implemented by heuristic algorithms, which may not
match the perceived item-item similarity of users. In contrast, we study in this paper a data-driven approach to
similarity for movies using labels crowdsourced from a previous work. Specifically, we develop four similarity
methods and investigate how user-contributed labels can be used to improve similarity computations to better match
user perceptions in movie recommendations. These four methods were tested against the best known method with
a user experiment (n = 114) using the MovieLens 20M dataset. Our experiment showed that all our supervised
methods beat the unsupervised benchmark and the differences were both statistically and practically significant.
This paper’s main contributions include user evaluation of similarity methods for movies, user-contributed labels
indicating movie similarities, and code for the annotation tool which can be found at http://MovieSim.org.
Description
Subject(s)
doporučující systémy, podobnost položek, crowdsourcing, učení pod dohledem, MovieLens
Citation
WSCG '2018: short communications proceedings: The 26th International Conference in Central Europe on Computer Graphics, Visualization and Computer Vision 2016 in co-operation with EUROGRAPHICS: University of West Bohemia, Plzen, Czech Republic May 28 - June 1 2018, p. 115-124.