Contributors
Abstract
Folksonomy of movies covers a wide range of heterogeneous information about movies, like the genre, plot structure, visual experiences, soundtracks, metadata, and emotional experiences from watching a movie. Being able to automatically generate or predict tags for movies can help recommendation engines improve retrieval of similar movies, and help viewers know what to expect from a movie in advance. In this work, we explore the problem of creating tags for movies from plot synopses. We propose a novel neural network model that merges information from synopses and emotion flows throughout the plots to predict a set of tags for movies. We compare the system with multiple baselines and found that the addition of emotion flows boosts the performance of the network by learning ≈17% more tags than a traditional machine learning system.
Funded By :
National Science Foundation under grant number 1462141 and U.S. Department of Defense under grant W911NF-16-1-0422
Live Demo :
** First few tags are the most relevant ones according to the model.
Links: Paper | Slide | Source Code | Dataset
Cite the paper using
@InProceedings{C18-1244, author = "Kar, Sudipta and Maharjan, Suraj and Solorio, Thamar", title = "Folksonomication: Predicting Tags for Movies from Plot Synopses using Emotion Flow Encoded Neural Network", booktitle = "Proceedings of the 27th International Conference on Computational Linguistics", year = "2018", publisher = "Association for Computational Linguistics", pages = "2879--2891", location = "Santa Fe, New Mexico, USA", url = "http://aclweb.org/anthology/C18-1244" }
For any query, please contact the first author skar3 AT uh DOT edu.